| 2023 | "Why Not Looking backward?" A Robust Two-Step Method to Automatically Terminate Bayesian Optimization. Shuang Li, Ke Li, Wei Li |
| 2023 | (Almost) Provable Error Bounds Under Distribution Shift via Disagreement Discrepancy. Elan Rosenfeld, Saurabh Garg |
| 2023 | (Amplified) Banded Matrix Factorization: A unified approach to private training. Christopher A. Choquette-Choo, Arun Ganesh, Ryan McKenna, H. Brendan McMahan, John Rush, Abhradeep Guha Thakurta, Zheng Xu |
| 2023 | (Provable) Adversarial Robustness for Group Equivariant Tasks: Graphs, Point Clouds, Molecules, and More. Jan Schuchardt, Yan Scholten, Stephan Günnemann |
| 2023 | (S)GD over Diagonal Linear Networks: Implicit bias, Large Stepsizes and Edge of Stability. Mathieu Even, Scott Pesme, Suriya Gunasekar, Nicolas Flammarion |
| 2023 | 2Direction: Theoretically Faster Distributed Training with Bidirectional Communication Compression. Alexander Tyurin, Peter Richtárik |
| 2023 | 3D Copy-Paste: Physically Plausible Object Insertion for Monocular 3D Detection. Yunhao Ge, Hong-Xing Yu, Cheng Zhao, Yuliang Guo, Xinyu Huang, Liu Ren, Laurent Itti, Jiajun Wu |
| 2023 | 3D Indoor Instance Segmentation in an Open-World. Mohamed El Amine Boudjoghra, Salwa K. Al Khatib, Jean Lahoud, Hisham Cholakkal, Rao Muhammad Anwer, Salman H. Khan, Fahad Shahbaz Khan |
| 2023 | 3D molecule generation by denoising voxel grids. Pedro O. Pinheiro, Joshua A. Rackers, Joseph Kleinhenz, Michael Maser, Omar Mahmood, Andrew M. Watkins, Stephen Ra, Vishnu Sresht, Saeed Saremi |
| 2023 | 3D-Aware Visual Question Answering about Parts, Poses and Occlusions. Xingrui Wang, Wufei Ma, Zhuowan Li, Adam Kortylewski, Alan L. Yuille |
| 2023 | 3D-IntPhys: Towards More Generalized 3D-grounded Visual Intuitive Physics under Challenging Scenes. Haotian Xue, Antonio Torralba, Josh Tenenbaum, Dan Yamins, Yunzhu Li, Hsiao-Yu Tung |
| 2023 | 3D-LLM: Injecting the 3D World into Large Language Models. Yining Hong, Haoyu Zhen, Peihao Chen, Shuhong Zheng, Yilun Du, Zhenfang Chen, Chuang Gan |
| 2023 | 4D Panoptic Scene Graph Generation. Jingkang Yang, Jun Cen, Wenxuan Peng, Shuai Liu, Fangzhou Hong, Xiangtai Li, Kaiyang Zhou, Qifeng Chen, Ziwei Liu |
| 2023 | 4M: Massively Multimodal Masked Modeling. David Mizrahi, Roman Bachmann, Oguzhan Fatih Kar, Teresa Yeo, Mingfei Gao, Afshin Dehghan, Amir Zamir |
| 2023 | A Adel Nabli, Eugene Belilovsky, Edouard Oyallon |
| 2023 | A Batch-to-Online Transformation under Random-Order Model. Jing Dong, Yuichi Yoshida |
| 2023 | A Bayesian Approach To Analysing Training Data Attribution In Deep Learning. Elisa Nguyen, Minjoon Seo, Seong Joon Oh |
| 2023 | A Bayesian Take on Gaussian Process Networks. Enrico Giudice, Jack Kuipers, Giusi Moffa |
| 2023 | A Bounded Ability Estimation for Computerized Adaptive Testing. Yan Zhuang, Qi Liu, Guanhao Zhao, Zhenya Huang, Weizhe Huang, Zachary A. Pardos, Enhong Chen, Jinze Wu, Xin Li |
| 2023 | A Causal Framework for Decomposing Spurious Variations. Drago Plecko, Elias Bareinboim |
| 2023 | A Closer Look at the Robustness of Contrastive Language-Image Pre-Training (CLIP). Weijie Tu, Weijian Deng, Tom Gedeon |
| 2023 | A Combinatorial Algorithm for Approximating the Optimal Transport in the Parallel and MPC Settings. Nathaniel Lahn, Sharath Raghvendra, Kaiyi Zhang |
| 2023 | A Competitive Algorithm for Agnostic Active Learning. Yihan Zhou, Eric Price |
| 2023 | A Comprehensive Benchmark for Neural Human Radiance Fields. Kenkun Liu, Derong Jin, Ailing Zeng, Xiaoguang Han, Lei Zhang |
| 2023 | A Comprehensive Study on Text-attributed Graphs: Benchmarking and Rethinking. Hao Yan, Chaozhuo Li, Ruosong Long, Chao Yan, Jianan Zhao, Wenwen Zhuang, Jun Yin, Peiyan Zhang, Weihao Han, Hao Sun, Weiwei Deng, Qi Zhang, Lichao Sun, Xing Xie, Senzhang Wang |
| 2023 | A Computation and Communication Efficient Method for Distributed Nonconvex Problems in the Partial Participation Setting. Alexander Tyurin, Peter Richtárik |
| 2023 | A Computationally Efficient Sparsified Online Newton Method. Devvrit, Sai Surya Duvvuri, Rohan Anil, Vineet Gupta, Cho-Jui Hsieh, Inderjit S. Dhillon |
| 2023 | A Cross-Moment Approach for Causal Effect Estimation. Yaroslav Kivva, Saber Salehkaleybar, Negar Kiyavash |
| 2023 | A Data-Free Approach to Mitigate Catastrophic Forgetting in Federated Class Incremental Learning for Vision Tasks. Sara Babakniya, Zalan Fabian, Chaoyang He, Mahdi Soltanolkotabi, Salman Avestimehr |
| 2023 | A Dataset for Analyzing Streaming Media Performance over HTTP/3 Browsers. Sapna Chaudhary, Mukulika Maity, Sandip Chakraborty, Naval Kumar Shukla |
| 2023 | A Dataset of Relighted 3D Interacting Hands. Gyeongsik Moon, Shunsuke Saito, Weipeng Xu, Rohan Joshi, Julia Buffalini, Harley Bellan, Nicholas Rosen, Jesse Richardson, Mallorie Mize, Philippe de Bree, Tomas Simon, Bo Peng, Shubham Garg, Kevyn McPhail, Takaaki Shiratori |
| 2023 | A Deep Instance Generative Framework for MILP Solvers Under Limited Data Availability. Zijie Geng, Xijun Li, Jie Wang, Xiao Li, Yongdong Zhang, Feng Wu |
| 2023 | A Definition of Continual Reinforcement Learning. David Abel, André Barreto, Benjamin Van Roy, Doina Precup, Hado Philip van Hasselt, Satinder Singh |
| 2023 | A Diffusion-Model of Joint Interactive Navigation. Matthew Niedoba, Jonathan Wilder Lavington, Yunpeng Liu, Vasileios Lioutas, Justice Sefas, Xiaoxuan Liang, Dylan Green, Setareh Dabiri, Berend Zwartsenberg, Adam Scibior, Frank Wood |
| 2023 | A Dual-Stream Neural Network Explains the Functional Segregation of Dorsal and Ventral Visual Pathways in Human Brains. Minkyu Choi, Kuan Han, Xiaokai Wang, Yizhen Zhang, Zhongming Liu |
| 2023 | A Dynamical System View of Langevin-Based Non-Convex Sampling. Mohammad Reza Karimi Jaghargh, Ya-Ping Hsieh, Andreas Krause |
| 2023 | A Fast and Accurate Estimator for Large Scale Linear Model via Data Averaging. Rui Wang, Yanyan Ouyang, Panpan Yu, Wangli Xu |
| 2023 | A Finite-Particle Convergence Rate for Stein Variational Gradient Descent. Jiaxin Shi, Lester Mackey |
| 2023 | A Finite-Sample Analysis of Payoff-Based Independent Learning in Zero-Sum Stochastic Games. Zaiwei Chen, Kaiqing Zhang, Eric Mazumdar, Asuman E. Ozdaglar, Adam Wierman |
| 2023 | A Fractional Graph Laplacian Approach to Oversmoothing. Sohir Maskey, Raffaele Paolino, Aras Bacho, Gitta Kutyniok |
| 2023 | A Framework for Fast and Stable Representations of Multiparameter Persistent Homology Decompositions. David Loiseaux, Mathieu Carrière, Andrew J. Blumberg |
| 2023 | A General Framework for Equivariant Neural Networks on Reductive Lie Groups. Ilyes Batatia, Mario Geiger, Jose M. Munoz, Tess E. Smidt, Lior Silberman, Christoph Ortner |
| 2023 | A General Framework for Robust G-Invariance in G-Equivariant Networks. Sophia Sanborn, Nina Miolane |
| 2023 | A General Theory of Correct, Incorrect, and Extrinsic Equivariance. Dian Wang, Xupeng Zhu, Jung Yeon Park, Mingxi Jia, Guanang Su, Robert Platt, Robin Walters |
| 2023 | A Graph-Theoretic Framework for Understanding Open-World Semi-Supervised Learning. Yiyou Sun, Zhenmei Shi, Yixuan Li |
| 2023 | A Guide Through the Zoo of Biased SGD. Yury Demidovich, Grigory Malinovsky, Igor Sokolov, Peter Richtárik |
| 2023 | A Heat Diffusion Perspective on Geodesic Preserving Dimensionality Reduction. Guillaume Huguet, Alexander Tong, Edward De Brouwer, Yanlei Zhang, Guy Wolf, Ian Adelstein, Smita Krishnaswamy |
| 2023 | A Heavy-Tailed Algebra for Probabilistic Programming. Feynman T. Liang, Liam Hodgkinson, Michael W. Mahoney |
| 2023 | A Hierarchical Spatial Transformer for Massive Point Samples in Continuous Space. Wenchong He, Zhe Jiang, Tingsong Xiao, Zelin Xu, Shigang Chen, Ronald Fick, Miles Medina, Christine Angelini |
| 2023 | A Hierarchical Training Paradigm for Antibody Structure-sequence Co-design. Fang Wu, Stan Z. Li |
| 2023 | A High-Resolution Dataset for Instance Detection with Multi-View Object Capture. Qianqian Shen, Yunhan Zhao, Nahyun Kwon, Jeeeun Kim, Yanan Li, Shu Kong |
| 2023 | A Holistic Approach to Unifying Automatic Concept Extraction and Concept Importance Estimation. Thomas Fel, Victor Boutin, Louis Béthune, Rémi Cadène, Mazda Moayeri, Léo Andéol, Mathieu Chalvidal, Thomas Serre |
| 2023 | A Logic for Expressing Log-Precision Transformers. William Merrill, Ashish Sabharwal |
| 2023 | A Long N-step Surrogate Stage Reward for Deep Reinforcement Learning. Junmin Zhong, Ruofan Wu, Jennie Si |
| 2023 | A Massive Scale Semantic Similarity Dataset of Historical English. Emily Silcock, Abhishek Arora, Melissa Dell |
| 2023 | A Measure-Theoretic Axiomatisation of Causality. Junhyung Park, Simon Buchholz, Bernhard Schölkopf, Krikamol Muandet |
| 2023 | A Metadata-Driven Approach to Understand Graph Neural Networks. Ting Wei Li, Qiaozhu Mei, Jiaqi Ma |
| 2023 | A Multi-modal Global Instance Tracking Benchmark (MGIT): Better Locating Target in Complex Spatio-temporal and Causal Relationship. Shiyu Hu, Dailing Zhang, Meiqi Wu, Xiaokun Feng, Xuchen Li, Xin Zhao, Kaiqi Huang |
| 2023 | A Neural Collapse Perspective on Feature Evolution in Graph Neural Networks. Vignesh Kothapalli, Tom Tirer, Joan Bruna |
| 2023 | A Novel Approach for Effective Multi-View Clustering with Information-Theoretic Perspective. Chenhang Cui, Yazhou Ren, Jingyu Pu, Jiawei Li, Xiaorong Pu, Tianyi Wu, Yutao Shi, Lifang He |
| 2023 | A Novel Framework for Policy Mirror Descent with General Parameterization and Linear Convergence. Carlo Alfano, Rui Yuan, Patrick Rebeschini |
| 2023 | A One-Size-Fits-All Approach to Improving Randomness in Paper Assignment. Yixuan Even Xu, Steven Jecmen, Zimeng Song, Fei Fang |
| 2023 | A Partially-Supervised Reinforcement Learning Framework for Visual Active Search. Anindya Sarkar, Nathan Jacobs, Yevgeniy Vorobeychik |
| 2023 | A Path to Simpler Models Starts With Noise. Lesia Semenova, Harry Chen, Ronald Parr, Cynthia Rudin |
| 2023 | A Performance-Driven Benchmark for Feature Selection in Tabular Deep Learning. Valeriia Cherepanova, Roman Levin, Gowthami Somepalli, Jonas Geiping, C. Bayan Bruss, Andrew Gordon Wilson, Tom Goldstein, Micah Goldblum |
| 2023 | A Privacy-Friendly Approach to Data Valuation. Jiachen T. Wang, Yuqing Zhu, Yu-Xiang Wang, Ruoxi Jia, Prateek Mittal |
| 2023 | A Pseudo-Semantic Loss for Autoregressive Models with Logical Constraints. Kareem Ahmed, Kai-Wei Chang, Guy Van den Broeck |
| 2023 | A Randomized Approach to Tight Privacy Accounting. Jiachen T. Wang, Saeed Mahloujifar, Tong Wu, Ruoxi Jia, Prateek Mittal |
| 2023 | A Recurrent Neural Circuit Mechanism of Temporal-scaling Equivariant Representation. Junfeng Zuo, Xiao Liu, Ying Nian Wu, Si Wu, Wenhao Zhang |
| 2023 | A Reduction-based Framework for Sequential Decision Making with Delayed Feedback. Yunchang Yang, Han Zhong, Tianhao Wu, Bin Liu, Liwei Wang, Simon S. Du |
| 2023 | A Regularized Conditional GAN for Posterior Sampling in Image Recovery Problems. Matthew C. Bendel, Rizwan Ahmad, Philip Schniter |
| 2023 | A Riemannian Exponential Augmented Lagrangian Method for Computing the Projection Robust Wasserstein Distance. Bo Jiang, Ya-Feng Liu |
| 2023 | A Rigorous Link between Deep Ensembles and (Variational) Bayesian Methods. Veit David Wild, Sahra Ghalebikesabi, Dino Sejdinovic, Jeremias Knoblauch |
| 2023 | A Robust Exact Algorithm for the Euclidean Bipartite Matching Problem. Akshaykumar Gattani, Sharath Raghvendra, Pouyan Shirzadian |
| 2023 | A Robust and Opponent-Aware League Training Method for StarCraft II. Ruozi Huang, Xipeng Wu, Hongsheng Yu, Zhong Fan, Haobo Fu, Qiang Fu, Wei Yang |
| 2023 | A Scalable Neural Network for DSIC Affine Maximizer Auction Design. Zhijian Duan, Haoran Sun, Yurong Chen, Xiaotie Deng |
| 2023 | A Scale-Invariant Sorting Criterion to Find a Causal Order in Additive Noise Models. Alexander G. Reisach, Myriam Tami, Christof Seiler, Antoine Chambaz, Sebastian Weichwald |
| 2023 | A Simple Solution for Offline Imitation from Observations and Examples with Possibly Incomplete Trajectories. Kai Yan, Alexander G. Schwing, Yu-Xiong Wang |
| 2023 | A Simple Yet Effective Strategy to Robustify the Meta Learning Paradigm. Qi Wang, Yiqin Lv, Yang-He Feng, Zheng Xie, Jincai Huang |
| 2023 | A Single 2D Pose with Context is Worth Hundreds for 3D Human Pose Estimation. Qitao Zhao, Ce Zheng, Mengyuan Liu, Chen Chen |
| 2023 | A Single-Loop Accelerated Extra-Gradient Difference Algorithm with Improved Complexity Bounds for Constrained Minimax Optimization. Yuanyuan Liu, Fanhua Shang, Weixin An, Junhao Liu, Hongying Liu, Zhouchen Lin |
| 2023 | A Smooth Binary Mechanism for Efficient Private Continual Observation. Joel Daniel Andersson, Rasmus Pagh |
| 2023 | A Spectral Algorithm for List-Decodable Covariance Estimation in Relative Frobenius Norm. Ilias Diakonikolas, Daniel Kane, Jasper C. H. Lee, Ankit Pensia, Thanasis Pittas |
| 2023 | A Spectral Theory of Neural Prediction and Alignment. Abdulkadir Canatar, Jenelle Feather, Albert J. Wakhloo, SueYeon Chung |
| 2023 | A State Representation for Diminishing Rewards. Ted Moskovitz, Samo Hromadka, Ahmed Touati, Diana Borsa, Maneesh Sahani |
| 2023 | A Step Towards Worldwide Biodiversity Assessment: The BIOSCAN-1M Insect Dataset. Zahra Gharaee, ZeMing Gong, Nicholas Pellegrino, Iuliia Zarubiieva, Joakim Bruslund Haurum, Scott C. Lowe, Jaclyn T. A. McKeown, Chris C. Y. Ho, Joschka McLeod, Yi-Yun C. Wei, Jireh Agda, Sujeevan Ratnasingham, Dirk Steinke, Angel X. Chang, Graham W. Taylor, Paul W. Fieguth |
| 2023 | A Sublinear-Time Spectral Clustering Oracle with Improved Preprocessing Time. Ranran Shen, Pan Peng |
| 2023 | A Tale of Two Features: Stable Diffusion Complements DINO for Zero-Shot Semantic Correspondence. Junyi Zhang, Charles Herrmann, Junhwa Hur, Luisa Polania Cabrera, Varun Jampani, Deqing Sun, Ming-Hsuan Yang |
| 2023 | A Theoretical Analysis of Optimistic Proximal Policy Optimization in Linear Markov Decision Processes. Han Zhong, Tong Zhang |
| 2023 | A Theoretical Analysis of the Test Error of Finite-Rank Kernel Ridge Regression. Tin Sum Cheng, Aurélien Lucchi, Anastasis Kratsios, Ivan Dokmanic, David Belius |
| 2023 | A Theory of Link Prediction via Relational Weisfeiler-Leman on Knowledge Graphs. Xingyue Huang, Miguel Romero, Ismail Ilkan Ceylan, Pablo Barceló |
| 2023 | A Theory of Multimodal Learning. Zhou Lu |
| 2023 | A Theory of Transfer-Based Black-Box Attacks: Explanation and Implications. Yanbo Chen, Weiwei Liu |
| 2023 | A Theory of Unsupervised Translation Motivated by Understanding Animal Communication. Shafi Goldwasser, David F. Gruber, Adam Tauman Kalai, Orr Paradise |
| 2023 | A Toolkit for Reliable Benchmarking and Research in Multi-Objective Reinforcement Learning. Florian Felten, Lucas N. Alegre, Ann Nowé, Ana L. C. Bazzan, El-Ghazali Talbi, Grégoire Danoy, Bruno C. da Silva |
| 2023 | A Trichotomy for Transductive Online Learning. Steve Hanneke, Shay Moran, Jonathan Shafer |
| 2023 | A U-turn on Double Descent: Rethinking Parameter Counting in Statistical Learning. Alicia Curth, Alan Jeffares, Mihaela van der Schaar |
| 2023 | A Unified Algorithm Framework for Unsupervised Discovery of Skills based on Determinantal Point Process. Jiayu Chen, Vaneet Aggarwal, Tian Lan |
| 2023 | A Unified Approach for Maximizing Continuous DR-submodular Functions. Mohammad Pedramfar, Christopher J. Quinn, Vaneet Aggarwal |
| 2023 | A Unified Approach to Count-Based Weakly Supervised Learning. Vinay Shukla, Zhe Zeng, Kareem Ahmed, Guy Van den Broeck |
| 2023 | A Unified Approach to Domain Incremental Learning with Memory: Theory and Algorithm. Haizhou Shi, Hao Wang |
| 2023 | A Unified Conditional Framework for Diffusion-based Image Restoration. Yi Zhang, Xiaoyu Shi, Dasong Li, Xiaogang Wang, Jian Wang, Hongsheng Li |
| 2023 | A Unified Detection Framework for Inference-Stage Backdoor Defenses. Xun Xian, Ganghua Wang, Jayanth Srinivasa, Ashish Kundu, Xuan Bi, Mingyi Hong, Jie Ding |
| 2023 | A Unified Discretization Framework for Differential Equation Approach with Lyapunov Arguments for Convex Optimization. Kansei Ushiyama, Shun Sato, Takayasu Matsuo |
| 2023 | A Unified Fast Gradient Clipping Framework for DP-SGD. Weiwei Kong, Andrés Muñoz Medina |
| 2023 | A Unified Framework for Rank-based Loss Minimization. Rufeng Xiao, Yuze Ge, Rujun Jiang, Yifan Yan |
| 2023 | A Unified Framework for U-Net Design and Analysis. Christopher Williams, Fabian Falck, George Deligiannidis, Chris C. Holmes, Arnaud Doucet, Saifuddin Syed |
| 2023 | A Unified Framework for Uniform Signal Recovery in Nonlinear Generative Compressed Sensing. Junren Chen, Jonathan Scarlett, Michael Ng, Zhaoqiang Liu |
| 2023 | A Unified Generalization Analysis of Re-Weighting and Logit-Adjustment for Imbalanced Learning. Zitai Wang, Qianqian Xu, Zhiyong Yang, Yuan He, Xiaochun Cao, Qingming Huang |
| 2023 | A Unified Model and Dimension for Interactive Estimation. Nataly Brukhim, Miro Dudík, Aldo Pacchiano, Robert E. Schapire |
| 2023 | A Unified Solution for Privacy and Communication Efficiency in Vertical Federated Learning. Ganyu Wang, Bin Gu, Qingsong Zhang, Xiang Li, Boyu Wang, Charles X. Ling |
| 2023 | A Unified, Scalable Framework for Neural Population Decoding. Mehdi Azabou, Vinam Arora, Venkataramana Ganesh, Ximeng Mao, Santosh Nachimuthu, Michael Mendelson, Blake A. Richards, Matthew G. Perich, Guillaume Lajoie, Eva L. Dyer |
| 2023 | A Unifying Perspective on Multi-Calibration: Game Dynamics for Multi-Objective Learning. Nika Haghtalab, Michael I. Jordan, Eric Zhao |
| 2023 | A Variational Perspective on High-Resolution ODEs. Hoomaan Maskan, Konstantinos Zygalakis, Alp Yurtsever |
| 2023 | A benchmark of categorical encoders for binary classification. Federico Matteucci, Vadim Arzamasov, Klemens Böhm |
| 2023 | A case for reframing automated medical image classification as segmentation. Sarah M. Hooper, Mayee F. Chen, Khaled Saab, Kush Bhatia, Curtis P. Langlotz, Christopher Ré |
| 2023 | A fast heuristic to optimize time-space tradeoff for large models. Akifumi Imanishi, Zijian Xu, Masayuki Takagi, Sixue Wang, Emilio Castillo |
| 2023 | A generative model of the hippocampal formation trained with theta driven local learning rules. Tom M. George, Kimberly L. Stachenfeld, Caswell Barry, Claudia Clopath, Tomoki Fukai |
| 2023 | A graphon-signal analysis of graph neural networks. Ron Levie |
| 2023 | A new perspective on building efficient and expressive 3D equivariant graph neural networks. Weitao Du, Yuanqi Du, Limei Wang, Dieqiao Feng, Guifeng Wang, Shuiwang Ji, Carla P. Gomes, Zhi-Ming Ma |
| 2023 | A normative theory of social conflict. Sergey Shuvaev, Evgeny Amelchenko, Dmitry A. Smagin, Natalia N. Kudryavtseva, Grigori Enikolopov, Alexei A. Koulakov |
| 2023 | A polar prediction model for learning to represent visual transformations. Pierre-Étienne H. Fiquet, Eero P. Simoncelli |
| 2023 | A unified framework for information-theoretic generalization bounds. Yifeng Chu, Maxim Raginsky |
| 2023 | A*Net: A Scalable Path-based Reasoning Approach for Knowledge Graphs. Zhaocheng Zhu, Xinyu Yuan, Michael Galkin, Louis-Pascal A. C. Xhonneux, Ming Zhang, Maxime Gazeau, Jian Tang |
| 2023 | A-NeSI: A Scalable Approximate Method for Probabilistic Neurosymbolic Inference. Emile van Krieken, Thiviyan Thanapalasingam, Jakub M. Tomczak, Frank van Harmelen, Annette ten Teije |
| 2023 | A3FL: Adversarially Adaptive Backdoor Attacks to Federated Learning. Hangfan Zhang, Jinyuan Jia, Jinghui Chen, Lu Lin, Dinghao Wu |
| 2023 | AD-PT: Autonomous Driving Pre-Training with Large-scale Point Cloud Dataset. Jiakang Yuan, Bo Zhang, Xiangchao Yan, Botian Shi, Tao Chen, Yikang Li, Yu Qiao |
| 2023 | ADGym: Design Choices for Deep Anomaly Detection. Minqi Jiang, Chaochuan Hou, Ao Zheng, Songqiao Han, Hailiang Huang, Qingsong Wen, Xiyang Hu, Yue Zhao |
| 2023 | AGD: an Auto-switchable Optimizer using Stepwise Gradient Difference for Preconditioning Matrix. Yun Yue, Zhiling Ye, Jiadi Jiang, Yongchao Liu, Ke Zhang |
| 2023 | AI for Interpretable Chemistry: Predicting Radical Mechanistic Pathways via Contrastive Learning. Mohammadamin Tavakoli, Pierre Baldi, Ann Marie Carlton, Yin Ting T. Chiu, Alexander Shmakov, David Van Vranken |
| 2023 | AIMS: All-Inclusive Multi-Level Segmentation for Anything. Lu Qi, Jason Kuen, Weidong Guo, Jiuxiang Gu, Zhe Lin, Bo Du, Yu Xu, Ming-Hsuan Yang |
| 2023 | ALGO: Synthesizing Algorithmic Programs with Generated Oracle Verifiers. Kexun Zhang, Danqing Wang, Jingtao Xia, William Yang Wang, Lei Li |
| 2023 | ALIM: Adjusting Label Importance Mechanism for Noisy Partial Label Learning. Mingyu Xu, Zheng Lian, Lei Feng, Bin Liu, Jianhua Tao |
| 2023 | AMAG: Additive, Multiplicative and Adaptive Graph Neural Network For Forecasting Neuron Activity. Jingyuan Li, Leo Scholl, Trung Le, Pavithra Rajeswaran, Amy L. Orsborn, Eli Shlizerman |
| 2023 | AMDP: An Adaptive Detection Procedure for False Discovery Rate Control in High-Dimensional Mediation Analysis. Jiarong Ding, Xuehu Zhu |
| 2023 | AND: Adversarial Neural Degradation for Learning Blind Image Super-Resolution. Fangzhou Luo, Xiaolin Wu, Yanhui Guo |
| 2023 | ANPL: Towards Natural Programming with Interactive Decomposition. Di Huang, Ziyuan Nan, Xing Hu, Pengwei Jin, Shaohui Peng, Yuanbo Wen, Rui Zhang, Zidong Du, Qi Guo, Yewen Pu, Yunji Chen |
| 2023 | ANTN: Bridging Autoregressive Neural Networks and Tensor Networks for Quantum Many-Body Simulation. Zhuo Chen, Laker Newhouse, Eddie Chen, Di Luo, Marin Soljacic |
| 2023 | AQuA: A Benchmarking Tool for Label Quality Assessment. Mononito Goswami, Vedant Sanil, Arjun Choudhry, Arvind Srinivasan, Chalisa Udompanyawit, Artur Dubrawski |
| 2023 | AR-Diffusion: Auto-Regressive Diffusion Model for Text Generation. Tong Wu, Zhihao Fan, Xiao Liu, Hai-Tao Zheng, Yeyun Gong, Yelong Shen, Jian Jiao, Juntao Li, Zhongyu Wei, Jian Guo, Nan Duan, Weizhu Chen |
| 2023 | ARTIC3D: Learning Robust Articulated 3D Shapes from Noisy Web Image Collections. Chun-Han Yao, Amit Raj, Wei-Chih Hung, Michael Rubinstein, Yuanzhen Li, Ming-Hsuan Yang, Varun Jampani |
| 2023 | ARTree: A Deep Autoregressive Model for Phylogenetic Inference. Tianyu Xie, Cheng Zhang |
| 2023 | ASIF: Coupled Data Turns Unimodal Models to Multimodal without Training. Antonio Norelli, Marco Fumero, Valentino Maiorca, Luca Moschella, Emanuele Rodolà, Francesco Locatello |
| 2023 | ASL Citizen: A Community-Sourced Dataset for Advancing Isolated Sign Language Recognition. Aashaka Desai, Lauren Berger, Fyodor Minakov, Nessa Milano, Chinmay Singh, Kriston Pumphrey, Richard E. Ladner, Hal Daumé III, Alex X. Lu, Naomi Caselli, Danielle Bragg |
| 2023 | ASPEN: Breaking Operator Barriers for Efficient Parallelization of Deep Neural Networks. Jongseok Park, Kyungmin Bin, Gibum Park, Sangtae Ha, Kyunghan Lee |
| 2023 | ATMAN: Understanding Transformer Predictions Through Memory Efficient Attention Manipulation. Björn Deiseroth, Mayukh Deb, Samuel Weinbach, Manuel Brack, Patrick Schramowski, Kristian Kersting |
| 2023 | ATTA: Anomaly-aware Test-Time Adaptation for Out-of-Distribution Detection in Segmentation. Zhitong Gao, Shipeng Yan, Xuming He |
| 2023 | AUDIT: Audio Editing by Following Instructions with Latent Diffusion Models. Yuancheng Wang, Zeqian Ju, Xu Tan, Lei He, Zhizheng Wu, Jiang Bian, Sheng Zhao |
| 2023 | AV-NeRF: Learning Neural Fields for Real-World Audio-Visual Scene Synthesis. Susan Liang, Chao Huang, Yapeng Tian, Anurag Kumar, Chenliang Xu |
| 2023 | AVIDa-hIL6: A Large-Scale VHH Dataset Produced from an Immunized Alpaca for Predicting Antigen-Antibody Interactions. Hirofumi Tsuruta, Hiroyuki Yamazaki, Ryota Maeda, Ryotaro Tamura, Jennifer N. Wei, Zelda E. Mariet, Poomarin Phloyphisut, Hidetoshi Shimokawa, Joseph R. Ledsam, Lucy J. Colwell, Akihiro Imura |
| 2023 | AVIS: Autonomous Visual Information Seeking with Large Language Model Agent. Ziniu Hu, Ahmet Iscen, Chen Sun, Kai-Wei Chang, Yizhou Sun, David Ross, Cordelia Schmid, Alireza Fathi |
| 2023 | AVOIDDS: Aircraft Vision-based Intruder Detection Dataset and Simulator. Elysia Q. Smyers, Sydney M. Katz, Anthony Corso, Mykel J. Kochenderfer |
| 2023 | AVeriTeC: A Dataset for Real-world Claim Verification with Evidence from the Web. Michael Sejr Schlichtkrull, Zhijiang Guo, Andreas Vlachos |
| 2023 | AbDiffuser: full-atom generation of in-vitro functioning antibodies. Karolis Martinkus, Jan Ludwiczak, Wei-Ching Liang, Julien Lafrance-Vanasse, Isidro Hötzel, Arvind Rajpal, Yan Wu, Kyunghyun Cho, Richard Bonneau, Vladimir Gligorijevic, Andreas Loukas |
| 2023 | AbdomenAtlas-8K: Annotating 8, 000 CT Volumes for Multi-Organ Segmentation in Three Weeks. Chongyu Qu, Tiezheng Zhang, Hualin Qiao, Jie Liu, Yucheng Tang, Alan L. Yuille, Zongwei Zhou |
| 2023 | Abide by the law and follow the flow: conservation laws for gradient flows. Sibylle Marcotte, Rémi Gribonval, Gabriel Peyré |
| 2023 | Accelerated On-Device Forward Neural Network Training with Module-Wise Descending Asynchronism. Xiaohan Zhao, Hualin Zhang, Zhouyuan Huo, Bin Gu |
| 2023 | Accelerated Quasi-Newton Proximal Extragradient: Faster Rate for Smooth Convex Optimization. Ruichen Jiang, Aryan Mokhtari |
| 2023 | Accelerated Training via Incrementally Growing Neural Networks using Variance Transfer and Learning Rate Adaptation. Xin Yuan, Pedro Savarese, Michael Maire |
| 2023 | Accelerated Zeroth-order Method for Non-Smooth Stochastic Convex Optimization Problem with Infinite Variance. Nikita Kornilov, Ohad Shamir, Aleksandr V. Lobanov, Darina Dvinskikh, Alexander V. Gasnikov, Innokentiy Shibaev, Eduard Gorbunov, Samuel Horváth |
| 2023 | Accelerating Exploration with Unlabeled Prior Data. Qiyang Li, Jason Zhang, Dibya Ghosh, Amy Zhang, Sergey Levine |
| 2023 | Accelerating Molecular Graph Neural Networks via Knowledge Distillation. Filip Ekström Kelvinius, Dimitar Georgiev, Artur P. Toshev, Johannes Gasteiger |
| 2023 | Accelerating Monte Carlo Tree Search with Probability Tree State Abstraction. Yangqing Fu, Ming Sun, Buqing Nie, Yue Gao |
| 2023 | Accelerating Motion Planning via Optimal Transport. An T. Le, Georgia Chalvatzaki, Armin Biess, Jan Peters |
| 2023 | Accelerating Reinforcement Learning with Value-Conditional State Entropy Exploration. Dongyoung Kim, Jinwoo Shin, Pieter Abbeel, Younggyo Seo |
| 2023 | Accelerating Value Iteration with Anchoring. Jongmin Lee, Ernest K. Ryu |
| 2023 | Accessing Higher Dimensions for Unsupervised Word Translation. Sida Wang |
| 2023 | Accountability in Offline Reinforcement Learning: Explaining Decisions with a Corpus of Examples. Hao Sun, Alihan Hüyük, Daniel Jarrett, Mihaela van der Schaar |
| 2023 | Accurate Interpolation for Scattered Data through Hierarchical Residual Refinement. Shizhe Ding, Boyang Xia, Dongbo Bu |
| 2023 | Achieving Cross Modal Generalization with Multimodal Unified Representation. Yan Xia, Hai Huang, Jieming Zhu, Zhou Zhao |
| 2023 | Achieving O(ε Yifan Yang, Peiyao Xiao, Kaiyi Ji |
| 2023 | Act As You Wish: Fine-Grained Control of Motion Diffusion Model with Hierarchical Semantic Graphs. Peng Jin, Yang Wu, Yanbo Fan, Zhongqian Sun, Wei Yang, Li Yuan |
| 2023 | Action Inference by Maximising Evidence: Zero-Shot Imitation from Observation with World Models. Xingyuan Zhang, Philip Becker-Ehmck, Patrick van der Smagt, Maximilian Karl |
| 2023 | Active Bipartite Ranking. James Cheshire, Vincent Laurent, Stéphan Clémençon |
| 2023 | Active Learning for Semantic Segmentation with Multi-class Label Query. Sehyun Hwang, Sohyun Lee, Hoyoung Kim, Minhyeon Oh, Jungseul Ok, Suha Kwak |
| 2023 | Active Learning-Based Species Range Estimation. Christian Lange, Elijah Cole, Grant Van Horn, Oisin Mac Aodha |
| 2023 | Active Negative Loss Functions for Learning with Noisy Labels. Xichen Ye, Xiaoqiang Li, Songmin Dai, Tong Liu, Yan Sun, Weiqin Tong |
| 2023 | Active Observing in Continuous-time Control. Samuel Holt, Alihan Hüyük, Mihaela van der Schaar |
| 2023 | Active Reasoning in an Open-World Environment. Manjie Xu, Guangyuan Jiang, Wei Liang, Chi Zhang, Yixin Zhu |
| 2023 | Active Vision Reinforcement Learning under Limited Visual Observability. Jinghuan Shang, Michael S. Ryoo |
| 2023 | Active representation learning for general task space with applications in robotics. Yifang Chen, Yingbing Huang, Simon S. Du, Kevin Jamieson, Guanya Shi |
| 2023 | Actively Testing Your Model While It Learns: Realizing Label-Efficient Learning in Practice. Dayou Yu, Weishi Shi, Qi Yu |
| 2023 | Activity Grammars for Temporal Action Segmentation. Dayoung Gong, Joonseok Lee, Deunsol Jung, Suha Kwak, Minsu Cho |
| 2023 | AdANNS: A Framework for Adaptive Semantic Search. Aniket Rege, Aditya Kusupati, Sharan Ranjit S, Alan Fan, Qingqing Cao, Sham M. Kakade, Prateek Jain, Ali Farhadi |
| 2023 | AdaPlanner: Adaptive Planning from Feedback with Language Models. Haotian Sun, Yuchen Zhuang, Lingkai Kong, Bo Dai, Chao Zhang |
| 2023 | AdaVAE: Bayesian Structural Adaptation for Variational Autoencoders. Paribesh Regmi, Rui Li |
| 2023 | AdaptSSR: Pre-training User Model with Augmentation-Adaptive Self-Supervised Ranking. Yang Yu, Qi Liu, Kai Zhang, Yuren Zhang, Chao Song, Min Hou, Yuqing Yuan, Zhihao Ye, Zaixi Zhang, Sanshi Lei Yu |
| 2023 | Adapting Fairness Interventions to Missing Values. Raymond Feng, Flávio P. Calmon, Hao Wang |
| 2023 | Adapting Neural Link Predictors for Data-Efficient Complex Query Answering. Erik Arakelyan, Pasquale Minervini, Daniel Daza, Michael Cochez, Isabelle Augenstein |
| 2023 | Adapting to Continuous Covariate Shift via Online Density Ratio Estimation. Yu-Jie Zhang, Zhen-Yu Zhang, Peng Zhao, Masashi Sugiyama |
| 2023 | Adaptive Algorithms for Relaxed Pareto Set Identification. Cyrille Kone, Emilie Kaufmann, Laura Richert |
| 2023 | Adaptive Contextual Perception: How To Generalize To New Backgrounds and Ambiguous Objects. Zhuofan Ying, Peter Hase, Mohit Bansal |
| 2023 | Adaptive Data Analysis in a Balanced Adversarial Model. Kobbi Nissim, Uri Stemmer, Eliad Tsfadia |
| 2023 | Adaptive Linear Estimating Equations. Mufang Ying, Koulik Khamaru, Cun-Hui Zhang |
| 2023 | Adaptive Normalization for Non-stationary Time Series Forecasting: A Temporal Slice Perspective. Zhiding Liu, Mingyue Cheng, Zhi Li, Zhenya Huang, Qi Liu, Yanhu Xie, Enhong Chen |
| 2023 | Adaptive Online Replanning with Diffusion Models. Siyuan Zhou, Yilun Du, Shun Zhang, Mengdi Xu, Yikang Shen, Wei Xiao, Dit-Yan Yeung, Chuang Gan |
| 2023 | Adaptive Principal Component Regression with Applications to Panel Data. Anish Agarwal, Keegan Harris, Justin Whitehouse, Zhiwei Steven Wu |
| 2023 | Adaptive Privacy Composition for Accuracy-first Mechanisms. Ryan M. Rogers, Gennady Samorodnitsky, Zhiwei Steven Wu, Aaditya Ramdas |
| 2023 | Adaptive SGD with Polyak stepsize and Line-search: Robust Convergence and Variance Reduction. Xiaowen Jiang, Sebastian U. Stich |
| 2023 | Adaptive Selective Sampling for Online Prediction with Experts. Rui M. Castro, Fredrik Hellström, Tim van Erven |
| 2023 | Adaptive Test-Time Personalization for Federated Learning. Wenxuan Bao, Tianxin Wei, Haohan Wang, Jingrui He |
| 2023 | Adaptive Topological Feature via Persistent Homology: Filtration Learning for Point Clouds. Naoki Nishikawa, Yuichi Ike, Kenji Yamanishi |
| 2023 | Adaptive Uncertainty Estimation via High-Dimensional Testing on Latent Representations. Tsai Hor Chan, Kin Wai Lau, Jiajun Shen, Guosheng Yin, Lequan Yu |
| 2023 | Adaptive recurrent vision performs zero-shot computation scaling to unseen difficulty levels. Vijay Veerabadran, Srinivas Ravishankar, Yuan Tang, Ritik Raina, Virginia de Sa |
| 2023 | Adaptive whitening with fast gain modulation and slow synaptic plasticity. Lyndon R. Duong, Eero P. Simoncelli, Dmitri B. Chklovskii, David Lipshutz |
| 2023 | Add and Thin: Diffusion for Temporal Point Processes. David Lüdke, Marin Bilos, Oleksandr Shchur, Marten Lienen, Stephan Günnemann |
| 2023 | Additive Decoders for Latent Variables Identification and Cartesian-Product Extrapolation. Sébastien Lachapelle, Divyat Mahajan, Ioannis Mitliagkas, Simon Lacoste-Julien |
| 2023 | Addressing Negative Transfer in Diffusion Models. Hyojun Go, Jinyoung Kim, Yunsung Lee, Seunghyun Lee, Shinhyeok Oh, Hyeongdon Moon, Seungtaek Choi |
| 2023 | Addressing the speed-accuracy simulation trade-off for adaptive spiking neurons. Luke Taylor, Andrew King, Nicol S. Harper |
| 2023 | Adjustable Robust Reinforcement Learning for Online 3D Bin Packing. Yuxin Pan, Yize Chen, Fangzhen Lin |
| 2023 | Advances in Neural Information Processing Systems 36: Annual Conference on Neural Information Processing Systems 2023, NeurIPS 2023, New Orleans, LA, USA, December 10 - 16, 2023. Alice Oh, Tristan Naumann, Amir Globerson, Kate Saenko, Moritz Hardt, Sergey Levine |
| 2023 | Advancing Bayesian Optimization via Learning Correlated Latent Space. Seunghun Lee, Jaewon Chu, Sihyeon Kim, Juyeon Ko, Hyunwoo J. Kim |
| 2023 | Adversarial Attacks on Online Learning to Rank with Click Feedback. Jinhang Zuo, Zhiyao Zhang, Zhiyong Wang, Shuai Li, Mohammad Hajiesmaili, Adam Wierman |
| 2023 | Adversarial Counterfactual Environment Model Learning. Xiong-Hui Chen, Yang Yu, Zhengmao Zhu, Zhihua Yu, Zhenjun Chen, Chenghe Wang, Yinan Wu, Rong-Jun Qin, Hongqiu Wu, Ruijin Ding, Fangsheng Huang |
| 2023 | Adversarial Examples Are Not Real Features. Ang Li, Yifei Wang, Yiwen Guo, Yisen Wang |
| 2023 | Adversarial Examples Exist in Two-Layer ReLU Networks for Low Dimensional Linear Subspaces. Odelia Melamed, Gilad Yehudai, Gal Vardi |
| 2023 | Adversarial Examples Might be Avoidable: The Role of Data Concentration in Adversarial Robustness. Ambar Pal, Jeremias Sulam, René Vidal |
| 2023 | Adversarial Learning for Feature Shift Detection and Correction. Míriam Barrabés, Daniel Mas Montserrat, Margarita Geleta, Xavier Giró-i-Nieto, Alexander G. Ioannidis |
| 2023 | Adversarial Model for Offline Reinforcement Learning. Mohak Bhardwaj, Tengyang Xie, Byron Boots, Nan Jiang, Ching-An Cheng |
| 2023 | Adversarial Resilience in Sequential Prediction via Abstention. Surbhi Goel, Steve Hanneke, Shay Moran, Abhishek Shetty |
| 2023 | Adversarial Robustness in Graph Neural Networks: A Hamiltonian Approach. Kai Zhao, Qiyu Kang, Yang Song, Rui She, Sijie Wang, Wee Peng Tay |
| 2023 | Adversarial Robustness through Random Weight Sampling. Yanxiang Ma, Minjing Dong, Chang Xu |
| 2023 | Adversarial Self-Training Improves Robustness and Generalization for Gradual Domain Adaptation. Lianghe Shi, Weiwei Liu |
| 2023 | Adversarial Training for Graph Neural Networks: Pitfalls, Solutions, and New Directions. Lukas Gosch, Simon Geisler, Daniel Sturm, Bertrand Charpentier, Daniel Zügner, Stephan Günnemann |
| 2023 | Adversarial Training from Mean Field Perspective. Soichiro Kumano, Hiroshi Kera, Toshihiko Yamasaki |
| 2023 | Adversarially Robust Distributed Count Tracking via Partial Differential Privacy. Zhongzheng Xiong, Xiaoyi Zhu, Zengfeng Huang |
| 2023 | Adversarially Robust Learning with Uncertain Perturbation Sets. Tosca Lechner, Vinayak Pathak, Ruth Urner |
| 2023 | Advice Querying under Budget Constraint for Online Algorithms. Ziyad Benomar, Vianney Perchet |
| 2023 | Affinity-Aware Graph Networks. Ameya Velingker, Ali Kemal Sinop, Ira Ktena, Petar Velickovic, Sreenivas Gollapudi |
| 2023 | Aggregating Capacity in FL through Successive Layer Training for Computationally-Constrained Devices. Kilian Pfeiffer, Ramin Khalili, Jörg Henkel |
| 2023 | Aging with GRACE: Lifelong Model Editing with Discrete Key-Value Adaptors. Tom Hartvigsen, Swami Sankaranarayanan, Hamid Palangi, Yoon Kim, Marzyeh Ghassemi |
| 2023 | Agnostic Multi-Group Active Learning. Nicholas Rittler, Kamalika Chaudhuri |
| 2023 | Agnostically Learning Single-Index Models using Omnipredictors. Aravind Gollakota, Parikshit Gopalan, Adam R. Klivans, Konstantinos Stavropoulos |
| 2023 | AiluRus: A Scalable ViT Framework for Dense Prediction. Jin Li, Yaoming Wang, Xiaopeng Zhang, Bowen Shi, Dongsheng Jiang, Chenglin Li, Wenrui Dai, Hongkai Xiong, Qi Tian |
| 2023 | Aiming towards the minimizers: fast convergence of SGD for overparametrized problems. Chaoyue Liu, Dmitriy Drusvyatskiy, Mikhail Belkin, Damek Davis, Yi-An Ma |
| 2023 | AirDelhi: Fine-Grained Spatio-Temporal Particulate Matter Dataset From Delhi For ML based Modeling. Sachin Chauhan, Zeel B. Patel, Sayan Ranu, Rijurekha Sen, Nipun Batra |
| 2023 | AircraftVerse: A Large-Scale Multimodal Dataset of Aerial Vehicle Designs. Adam D. Cobb, Anirban Roy, Daniel Elenius, F. Michael Heim, Brian Swenson, Sydney Whittington, James D. Walker, Theodore Bapty, Joseph Hite, Karthik Ramani, Christopher McComb, Susmit Jha |
| 2023 | AlberDICE: Addressing Out-Of-Distribution Joint Actions in Offline Multi-Agent RL via Alternating Stationary Distribution Correction Estimation. Daiki E. Matsunaga, Jongmin Lee, Jaeseok Yoon, Stefanos Leonardos, Pieter Abbeel, Kee-Eung Kim |
| 2023 | Aleatoric and Epistemic Discrimination: Fundamental Limits of Fairness Interventions. Hao Wang, Luxi He, Rui Gao, Flávio P. Calmon |
| 2023 | Alexa Arena: A User-Centric Interactive Platform for Embodied AI. Qiaozi Gao, Govind Thattai, Suhaila Shakiah, Xiaofeng Gao, Shreyas Pansare, Vasu Sharma, Gaurav S. Sukhatme, Hangjie Shi, Bofei Yang, Desheng Zhang, Lucy Hu, Karthika Arumugam, Shui Hu, Matthew Wen, Dinakar Guthy, Shunan Chung, Rohan Khanna, Osman Ipek, Leslie Ball, Kate Bland, Heather Rocker, Michael Johnston, Reza Ghanadan, Dilek Hakkani-Tur, Prem Natarajan |
| 2023 | Algorithm Selection for Deep Active Learning with Imbalanced Datasets. Jifan Zhang, Shuai Shao, Saurabh Verma, Robert D. Nowak |
| 2023 | Algorithmic Regularization in Tensor Optimization: Towards a Lifted Approach in Matrix Sensing. Ziye Ma, Javad Lavaei, Somayeh Sojoudi |
| 2023 | Align Your Prompts: Test-Time Prompting with Distribution Alignment for Zero-Shot Generalization. Jameel Abdul Samadh, Hanan Gani, Noor Hussein, Muhammad Uzair Khattak, Muzammal Naseer, Fahad Shahbaz Khan, Salman H. Khan |
| 2023 | Aligning Gradient and Hessian for Neural Signed Distance Function. Ruian Wang, Zixiong Wang, Yunxiao Zhang, Shuang-Min Chen, Shiqing Xin, Changhe Tu, Wenping Wang |
| 2023 | Aligning Language Models with Human Preferences via a Bayesian Approach. Jiashuo Wang, Haozhao Wang, Shichao Sun, Wenjie Li |
| 2023 | Aligning Optimization Trajectories with Diffusion Models for Constrained Design Generation. Giorgio Giannone, Akash Srivastava, Ole Winther, Faez Ahmed |
| 2023 | Aligning Synthetic Medical Images with Clinical Knowledge using Human Feedback. Shenghuan Sun, Gregory M. Goldgof, Atul J. Butte, Ahmed M. Alaa |
| 2023 | Alignment with human representations supports robust few-shot learning. Ilia Sucholutsky, Tom Griffiths |
| 2023 | All Points Matter: Entropy-Regularized Distribution Alignment for Weakly-supervised 3D Segmentation. Liyao Tang, Zhe Chen, Shanshan Zhao, Chaoyue Wang, Dacheng Tao |
| 2023 | AllSim: Simulating and Benchmarking Resource Allocation Policies in Multi-User Systems. Jeroen Berrevoets, Daniel Jarrett, Alex J. Chan, Mihaela van der Schaar |
| 2023 | Alleviating the Semantic Gap for Generalized fMRI-to-Image Reconstruction. Tao Fang, Qian Zheng, Gang Pan |
| 2023 | AlpacaFarm: A Simulation Framework for Methods that Learn from Human Feedback. Yann Dubois, Chen Xuechen Li, Rohan Taori, Tianyi Zhang, Ishaan Gulrajani, Jimmy Ba, Carlos Guestrin, Percy Liang, Tatsunori B. Hashimoto |
| 2023 | Alternating Gradient Descent and Mixture-of-Experts for Integrated Multimodal Perception. Hassan Akbari, Dan Kondratyuk, Yin Cui, Rachel Hornung, Huisheng Wang, Hartwig Adam |
| 2023 | Alternating Updates for Efficient Transformers. Cenk Baykal, Dylan J. Cutler, Nishanth Dikkala, Nikhil Ghosh, Rina Panigrahy, Xin Wang |
| 2023 | Alternation makes the adversary weaker in two-player games. Volkan Cevher, Ashok Cutkosky, Ali Kavis, Georgios Piliouras, Stratis Skoulakis, Luca Viano |
| 2023 | AmadeusGPT: a natural language interface for interactive animal behavioral analysis. Shaokai Ye, Jessy Lauer, Mu Zhou, Alexander Mathis, Mackenzie W. Mathis |
| 2023 | Amazon-M2: A Multilingual Multi-locale Shopping Session Dataset for Recommendation and Text Generation. Wei Jin, Haitao Mao, Zheng Li, Haoming Jiang, Chen Luo, Hongzhi Wen, Haoyu Han, Hanqing Lu, Zhengyang Wang, Ruirui Li, Zhen Li, Monica Xiao Cheng, Rahul Goutam, Haiyang Zhang, Karthik Subbian, Suhang Wang, Yizhou Sun, Jiliang Tang, Bing Yin, Xianfeng Tang |
| 2023 | Ambient Diffusion: Learning Clean Distributions from Corrupted Data. Giannis Daras, Kulin Shah, Yuval Dagan, Aravind Gollakota, Alex Dimakis, Adam R. Klivans |
| 2023 | American Stories: A Large-Scale Structured Text Dataset of Historical U.S. Newspapers. Melissa Dell, Jacob Carlson, Tom Bryan, Emily Silcock, Abhishek Arora, Zejiang Shen, Luca D'Amico-Wong, Quan Le, Pablo Querubin, Leander Heldring |
| 2023 | Amortized Reparametrization: Efficient and Scalable Variational Inference for Latent SDEs. Kevin Course, Prasanth B. Nair |
| 2023 | An Adaptive Algorithm for Learning with Unknown Distribution Drift. Alessio Mazzetto, Eli Upfal |
| 2023 | An Alternating Optimization Method for Bilevel Problems under the Polyak-Łojasiewicz Condition. Quan Xiao, Songtao Lu, Tianyi Chen |
| 2023 | An Alternative to Variance: Gini Deviation for Risk-averse Policy Gradient. Yudong Luo, Guiliang Liu, Pascal Poupart, Yangchen Pan |
| 2023 | An Efficient Dataset Condensation Plugin and Its Application to Continual Learning. Enneng Yang, Li Shen, Zhenyi Wang, Tongliang Liu, Guibing Guo |
| 2023 | An Efficient Doubly-Robust Test for the Kernel Treatment Effect. Diego Martinez-Taboada, Aaditya Ramdas, Edward Kennedy |
| 2023 | An Efficient End-to-End Training Approach for Zero-Shot Human-AI Coordination. Xue Yan, Jiaxian Guo, Xingzhou Lou, Jun Wang, Haifeng Zhang, Yali Du |
| 2023 | An Efficient and Robust Framework for Approximate Nearest Neighbor Search with Attribute Constraint. Mengzhao Wang, Lingwei Lv, Xiaoliang Xu, Yuxiang Wang, Qiang Yue, Jiongkang Ni |
| 2023 | An Empirical Study Towards Prompt-Tuning for Graph Contrastive Pre-Training in Recommendations. Haoran Yang, Xiangyu Zhao, Yicong Li, Hongxu Chen, Guandong Xu |
| 2023 | An Exploration-by-Optimization Approach to Best of Both Worlds in Linear Bandits. Shinji Ito, Kei Takemura |
| 2023 | An Improved Relaxation for Oracle-Efficient Adversarial Contextual Bandits. Kiarash Banihashem, MohammadTaghi Hajiaghayi, Suho Shin, Max Springer |
| 2023 | An Inductive Bias for Tabular Deep Learning. Ege Beyazit, Jonathan Kozaczuk, Bo Li, Vanessa Wallace, Bilal Fadlallah |
| 2023 | An Information Theory Perspective on Variance-Invariance-Covariance Regularization. Ravid Shwartz-Ziv, Randall Balestriero, Kenji Kawaguchi, Tim G. J. Rudner, Yann LeCun |
| 2023 | An Information-Theoretic Evaluation of Generative Models in Learning Multi-modal Distributions. Mohammad Jalali, Cheuk Ting Li, Farzan Farnia |
| 2023 | An Inverse Scaling Law for CLIP Training. Xianhang Li, Zeyu Wang, Cihang Xie |
| 2023 | An Iterative Self-Learning Framework for Medical Domain Generalization. Zhenbang Wu, Huaxiu Yao, David M. Liebovitz, Jimeng Sun |
| 2023 | An NLP Benchmark Dataset for Assessing Corporate Climate Policy Engagement. Gaku Morio, Christopher D. Manning |
| 2023 | An Optimal Structured Zeroth-order Algorithm for Non-smooth Optimization. Marco Rando, Cesare Molinari, Lorenzo Rosasco, Silvia Villa |
| 2023 | An Optimal and Scalable Matrix Mechanism for Noisy Marginals under Convex Loss Functions. Yingtai Xiao, Guanlin He, Danfeng Zhang, Daniel Kifer |
| 2023 | An Optimization-based Approach To Node Role Discovery in Networks: Approximating Equitable Partitions. Michael Scholkemper, Michael T. Schaub |
| 2023 | An active learning framework for multi-group mean estimation. Abdellah Aznag, Rachel Cummings, Adam N. Elmachtoub |
| 2023 | An information-theoretic quantification of the content of communication between brain regions. Marco Celotto, Jan Bím, Alejandro Tlaie, Vito De Feo, Alessandro Toso, Stefan Lemke, Daniel Chicharro, Hamed Nili, Malte Bieler, Ileana L. Hanganu-Opatz, Tobias Donner, Andrea Brovelli, Stefano Panzeri |
| 2023 | An ε-Best-Arm Identification Algorithm for Fixed-Confidence and Beyond. Marc Jourdan, Rémy Degenne, Emilie Kaufmann |
| 2023 | Analysis of Variance of Multiple Causal Networks. Zhongli Jiang, Dabao Zhang |
| 2023 | Analyzing Generalization of Neural Networks through Loss Path Kernels. Yilan Chen, Wei Huang, Hao Wang, Charlotte Loh, Akash Srivastava, Lam M. Nguyen, Lily Weng |
| 2023 | Analyzing Vision Transformers for Image Classification in Class Embedding Space. Martina G. Vilas, Timothy Schaumlöffel, Gemma Roig |
| 2023 | Analyzing the Sample Complexity of Self-Supervised Image Reconstruction Methods. Tobit Klug, Dogukan Atik, Reinhard Heckel |
| 2023 | Anchor Data Augmentation. Nora Schneider, Shirin Goshtasbpour, Fernando Pérez-Cruz |
| 2023 | AndroidInTheWild: A Large-Scale Dataset For Android Device Control. Christopher Rawles, Alice Li, Daniel Rodriguez, Oriana Riva, Timothy P. Lillicrap |
| 2023 | Annotator: A Generic Active Learning Baseline for LiDAR Semantic Segmentation. Binhui Xie, Shuang Li, Qingju Guo, Chi Harold Liu, Xinjing Cheng |
| 2023 | Anonymous Learning via Look-Alike Clustering: A Precise Analysis of Model Generalization. Adel Javanmard, Vahab Mirrokni |
| 2023 | Anonymous and Copy-Robust Delegations for Liquid Democracy. Markus Utke, Ulrike Schmidt-Kraepelin |
| 2023 | Any-to-Any Generation via Composable Diffusion. Zineng Tang, Ziyi Yang, Chenguang Zhu, Michael Zeng, Mohit Bansal |
| 2023 | Anytime Model Selection in Linear Bandits. Parnian Kassraie, Nicolas Emmenegger, Andreas Krause, Aldo Pacchiano |
| 2023 | Anytime-Competitive Reinforcement Learning with Policy Prior. Jianyi Yang, Pengfei Li, Tongxin Li, Adam Wierman, Shaolei Ren |
| 2023 | Approximate Allocation Matching for Structural Causal Bandits with Unobserved Confounders. Lai Wei, Muhammad Qasim Elahi, Mahsa Ghasemi, Murat Kocaoglu |
| 2023 | Approximate Heavy Tails in Offline (Multi-Pass) Stochastic Gradient Descent. Kruno Lehman, Alain Durmus, Umut Simsekli |
| 2023 | Approximate inference of marginals using the IBIA framework. Shivani Bathla, Vinita Vasudevan |
| 2023 | Approximately Equivariant Graph Networks. Ningyuan Huang, Ron Levie, Soledad Villar |
| 2023 | Approximation-Generalization Trade-offs under (Approximate) Group Equivariance. Mircea Petrache, Shubhendu Trivedi |
| 2023 | Arbitrarily Scalable Environment Generators via Neural Cellular Automata. Yulun Zhang, Matthew C. Fontaine, Varun Bhatt, Stefanos Nikolaidis, Jiaoyang Li |
| 2023 | Architecture Matters: Uncovering Implicit Mechanisms in Graph Contrastive Learning. Xiaojun Guo, Yifei Wang, Zeming Wei, Yisen Wang |
| 2023 | Are Diffusion Models Vision-And-Language Reasoners? Benno Krojer, Elinor Poole-Dayan, Vikram Voleti, Chris Pal, Siva Reddy |
| 2023 | Are Emergent Abilities of Large Language Models a Mirage? Rylan Schaeffer, Brando Miranda, Sanmi Koyejo |
| 2023 | Are GATs Out of Balance? Nimrah Mustafa, Aleksandar Bojchevski, Rebekka Burkholz |
| 2023 | Are These the Same Apple? Comparing Images Based on Object Intrinsics. Klemen Kotar, Stephen Tian, Hong-Xing Yu, Dan Yamins, Jiajun Wu |
| 2023 | Are Vision Transformers More Data Hungry Than Newborn Visual Systems? Lalit Pandey, Samantha M. W. Wood, Justin N. Wood |
| 2023 | Are aligned neural networks adversarially aligned? Nicholas Carlini, Milad Nasr, Christopher A. Choquette-Choo, Matthew Jagielski, Irena Gao, Pang Wei Koh, Daphne Ippolito, Florian Tramèr, Ludwig Schmidt |
| 2023 | Assessor360: Multi-sequence Network for Blind Omnidirectional Image Quality Assessment. Tianhe Wu, Shuwei Shi, Haoming Cai, Mingdeng Cao, Jing Xiao, Yinqiang Zheng, Yujiu Yang |
| 2023 | Assumption violations in causal discovery and the robustness of score matching. Francesco Montagna, Atalanti-Anastasia Mastakouri, Elias Eulig, Nicoletta Noceti, Lorenzo Rosasco, Dominik Janzing, Bryon Aragam, Francesco Locatello |
| 2023 | Asymmetric Certified Robustness via Feature-Convex Neural Networks. Samuel Pfrommer, Brendon G. Anderson, Julien Piet, Somayeh Sojoudi |
| 2023 | Asymptotically Optimal Quantile Pure Exploration for Infinite-Armed Bandits. Evelyn Xiao-Yue Gong, Mark Sellke |
| 2023 | Asymptotics of Bayesian Uncertainty Estimation in Random Features Regression. Youngsoo Baek, Samuel Berchuck, Sayan Mukherjee |
| 2023 | Asynchronous Proportional Response Dynamics: Convergence in Markets with Adversarial Scheduling. Yoav Kolumbus, Menahem Levy, Noam Nisan |
| 2023 | Asynchrony-Robust Collaborative Perception via Bird's Eye View Flow. Sizhe Wei, Yuxi Wei, Yue Hu, Yifan Lu, Yiqi Zhong, Siheng Chen, Ya Zhang |
| 2023 | Attacks on Online Learners: a Teacher-Student Analysis. Riccardo Giuseppe Margiotta, Sebastian Goldt, Guido Sanguinetti |
| 2023 | Attention as Implicit Structural Inference. Ryan Singh, Christopher L. Buckley |
| 2023 | Attentive Transfer Entropy to Exploit Transient Emergence of Coupling Effect. Xiaolei Ru, Xinya Zhang, Zijia Liu, Jack Murdoch Moore, Gang Yan |
| 2023 | Auditing Fairness by Betting. Ben Chugg, Santiago Cortes-Gomez, Bryan Wilder, Aaditya Ramdas |
| 2023 | Auditing for Human Expertise. Rohan Alur, Loren Laine, Darrick K. Li, Manish Raghavan, Devavrat Shah, Dennis L. Shung |
| 2023 | Augmentation-Aware Self-Supervision for Data-Efficient GAN Training. Liang Hou, Qi Cao, Yige Yuan, Songtao Zhao, Chongyang Ma, Siyuan Pan, Pengfei Wan, Zhongyuan Wang, Huawei Shen, Xueqi Cheng |
| 2023 | Augmentation-free Dense Contrastive Distillation for Efficient Semantic Segmentation. Jiawei Fan, Chao Li, Xiaolong Liu, Meina Song, Anbang Yao |
| 2023 | Augmented Memory Replay-based Continual Learning Approaches for Network Intrusion Detection. Suresh Kumar Amalapuram, Sumohana S. Channappayya, Bheemarjuna Reddy Tamma |
| 2023 | Augmenting Language Models with Long-Term Memory. Weizhi Wang, Li Dong, Hao Cheng, Xiaodong Liu, Xifeng Yan, Jianfeng Gao, Furu Wei |
| 2023 | Auslan-Daily: Australian Sign Language Translation for Daily Communication and News. Xin Shen, Shaozu Yuan, Hongwei Sheng, Heming Du, Xin Yu |
| 2023 | AutoGO: Automated Computation Graph Optimization for Neural Network Evolution. Mohammad Salameh, Keith G. Mills, Negar Hassanpour, Fred X. Han, Shuting Zhang, Wei Lu, Shangling Jui, Chunhua Zhou, Fengyu Sun, Di Niu |
| 2023 | Autodecoding Latent 3D Diffusion Models. Evangelos Ntavelis, Aliaksandr Siarohin, Kyle Olszewski, Chaoyang Wang, Luc Van Gool, Sergey Tulyakov |
| 2023 | Automated Classification of Model Errors on ImageNet. Momchil Peychev, Mark Niklas Müller, Marc Fischer, Martin T. Vechev |
| 2023 | Automatic Clipping: Differentially Private Deep Learning Made Easier and Stronger. Zhiqi Bu, Yu-Xiang Wang, Sheng Zha, George Karypis |
| 2023 | Automatic Grouping for Efficient Cooperative Multi-Agent Reinforcement Learning. Yifan Zang, Jinmin He, Kai Li, Haobo Fu, Qiang Fu, Junliang Xing, Jian Cheng |
| 2023 | Automatic Integration for Spatiotemporal Neural Point Processes. Zihao Zhou, Rose Yu |
| 2023 | Autonomous Capability Assessment of Sequential Decision-Making Systems in Stochastic Settings. Pulkit Verma, Rushang Karia, Siddharth Srivastava |
| 2023 | Auxiliary Losses for Learning Generalizable Concept-based Models. Ivaxi Sheth, Samira Ebrahimi Kahou |
| 2023 | BCDiff: Bidirectional Consistent Diffusion for Instantaneous Trajectory Prediction. Rongqing Li, Changsheng Li, Dongchun Ren, Guangyi Chen, Ye Yuan, Guoren Wang |
| 2023 | BEDD: The MineRL BASALT Evaluation and Demonstrations Dataset for Training and Benchmarking Agents that Solve Fuzzy Tasks. Stephanie Milani, Anssi Kanervisto, Karolis Ramanauskas, Sander Schulhoff, Brandon Houghton, Rohin Shah |
| 2023 | BERT Lost Patience Won't Be Robust to Adversarial Slowdown. Zachary Coalson, Gabriel Ritter, Rakesh Bobba, Sanghyun Hong |
| 2023 | BIOT: Biosignal Transformer for Cross-data Learning in the Wild. Chaoqi Yang, M. Brandon Westover, Jimeng Sun |
| 2023 | BIRD: Generalizable Backdoor Detection and Removal for Deep Reinforcement Learning. Xuan Chen, Wenbo Guo, Guanhong Tao, Xiangyu Zhang, Dawn Song |
| 2023 | BLIP-Diffusion: Pre-trained Subject Representation for Controllable Text-to-Image Generation and Editing. Dongxu Li, Junnan Li, Steven C. H. Hoi |
| 2023 | BQ-NCO: Bisimulation Quotienting for Efficient Neural Combinatorial Optimization. Darko Drakulic, Sofia Michel, Florian Mai, Arnaud Sors, Jean-Marc Andreoli |
| 2023 | Back-Modality: Leveraging Modal Transformation for Data Augmentation. Zhi Li, Yifan Liu, Yin Zhang |
| 2023 | BadTrack: A Poison-Only Backdoor Attack on Visual Object Tracking. Bin Huang, Jiaqian Yu, Yiwei Chen, Siyang Pan, Qiang Wang, Zhi Wang |
| 2023 | Balance, Imbalance, and Rebalance: Understanding Robust Overfitting from a Minimax Game Perspective. Yifei Wang, Liangchen Li, Jiansheng Yang, Zhouchen Lin, Yisen Wang |
| 2023 | Balanced Training for Sparse GANs. Yite Wang, Jing Wu, Naira Hovakimyan, Ruoyu Sun |
| 2023 | Balancing Risk and Reward: A Batched-Bandit Strategy for Automated Phased Release. Yufan Li, Jialiang Mao, Iavor Bojinov |
| 2023 | Balancing memorization and generalization in RNNs for high performance brain-machine Interfaces. Joseph T. Costello, Hisham Temmar, Luis Cubillos, Matthew Mender, Dylan Wallace, Matt S. Willsey, Parag G. Patil, Cynthia A. Chestek |
| 2023 | Banana: Banach Fixed-Point Network for Pointcloud Segmentation with Inter-Part Equivariance. Congyue Deng, Jiahui Lei, William B. Shen, Kostas Daniilidis, Leonidas J. Guibas |
| 2023 | Bandit Social Learning under Myopic Behavior. Kiarash Banihashem, MohammadTaghi Hajiaghayi, Suho Shin, Aleksandrs Slivkins |
| 2023 | Bandit Task Assignment with Unknown Processing Time. Shinji Ito, Daisuke Hatano, Hanna Sumita, Kei Takemura, Takuro Fukunaga, Naonori Kakimura, Ken-ichi Kawarabayashi |
| 2023 | BanditPAM++: Faster k-medoids Clustering. Mo Tiwari, Ryan Kang, Donghyun Lee, Sebastian Thrun, Ilan Shomorony, Martin J. Zhang |
| 2023 | BasisFormer: Attention-based Time Series Forecasting with Learnable and Interpretable Basis. Zelin Ni, Hang Yu, Shizhan Liu, Jianguo Li, Weiyao Lin |
| 2023 | Batch Bayesian Optimization For Replicable Experimental Design. Zhongxiang Dai, Quoc Phong Nguyen, Sebastian Tay, Daisuke Urano, Richalynn Leong, Bryan Kian Hsiang Low, Patrick Jaillet |
| 2023 | Batchnorm Allows Unsupervised Radial Attacks. Amur Ghose, Apurv Gupta, Yaoliang Yu, Pascal Poupart |
| 2023 | Battle of the Backbones: A Large-Scale Comparison of Pretrained Models across Computer Vision Tasks. Micah Goldblum, Hossein Souri, Renkun Ni, Manli Shu, Viraj Prabhu, Gowthami Somepalli, Prithvijit Chattopadhyay, Mark Ibrahim, Adrien Bardes, Judy Hoffman, Rama Chellappa, Andrew Gordon Wilson, Tom Goldstein |
| 2023 | Bayes beats Cross Validation: Efficient and Accurate Ridge Regression via Expectation Maximization. Shu Yu Tew, Mario Boley, Daniel F. Schmidt |
| 2023 | BayesDAG: Gradient-Based Posterior Inference for Causal Discovery. Yashas Annadani, Nick Pawlowski, Joel Jennings, Stefan Bauer, Cheng Zhang, Wenbo Gong |
| 2023 | BayesTune: Bayesian Sparse Deep Model Fine-tuning. Minyoung Kim, Timothy M. Hospedales |
| 2023 | Bayesian Active Causal Discovery with Multi-Fidelity Experiments. Zeyu Zhang, Chaozhuo Li, Xu Chen, Xing Xie |
| 2023 | Bayesian Extensive-Rank Matrix Factorization with Rotational Invariant Priors. Farzad Pourkamali, Nicolas Macris |
| 2023 | Bayesian Learning of Optimal Policies in Markov Decision Processes with Countably Infinite State-Space. Saghar Adler, Vijay G. Subramanian |
| 2023 | Bayesian Learning via Q-Exponential Process. Shuyi Li, Michael O'Connor, Shiwei Lan |
| 2023 | Bayesian Metric Learning for Uncertainty Quantification in Image Retrieval. Frederik Warburg, Marco Miani, Silas Brack, Søren Hauberg |
| 2023 | Bayesian Optimisation of Functions on Graphs. Xingchen Wan, Pierre Osselin, Henry Kenlay, Binxin Ru, Michael A. Osborne, Xiaowen Dong |
| 2023 | Bayesian Optimization with Cost-varying Variable Subsets. Sebastian Tay, Chuan Sheng Foo, Daisuke Urano, Richalynn Leong, Bryan Kian Hsiang Low |
| 2023 | Bayesian Risk-Averse Q-Learning with Streaming Observations. Yuhao Wang, Enlu Zhou |
| 2023 | Bayesian nonparametric (non-)renewal processes for analyzing neural spike train variability. David Liu, Máté Lengyel |
| 2023 | Bayesian target optimisation for high-precision holographic optogenetics. Marcus A. Triplett, Marta Gajowa, Hillel Adesnik, Liam Paninski |
| 2023 | BeaverTails: Towards Improved Safety Alignment of LLM via a Human-Preference Dataset. Jiaming Ji, Mickel Liu, Josef Dai, Xuehai Pan, Chi Zhang, Ce Bian, Boyuan Chen, Ruiyang Sun, Yizhou Wang, Yaodong Yang |
| 2023 | Behavior Alignment via Reward Function Optimization. Dhawal Gupta, Yash Chandak, Scott M. Jordan, Philip S. Thomas, Bruno C. da Silva |
| 2023 | Belief Projection-Based Reinforcement Learning for Environments with Delayed Feedback. Jangwon Kim, Hangyeol Kim, Jiwook Kang, Jongchan Baek, Soohee Han |
| 2023 | BenchCLAMP: A Benchmark for Evaluating Language Models on Syntactic and Semantic Parsing. Subhro Roy, Samuel Thomson, Tongfei Chen, Richard Shin, Adam Pauls, Jason Eisner, Benjamin Van Durme |
| 2023 | Benchmark of Machine Learning Force Fields for Semiconductor Simulations: Datasets, Metrics, and Comparative Analysis. Geonu Kim, Byunggook Na, Gunhee Kim, Hyuntae Cho, Seungjin Kang, Hee Sun Lee, Saerom Choi, Heejae Kim, Seungwon Lee, Yongdeok Kim |
| 2023 | Benchmarking Distribution Shift in Tabular Data with TableShift. Josh Gardner, Zoran Popovic, Ludwig Schmidt |
| 2023 | Benchmarking Encoder-Decoder Architectures for Biplanar X-ray to 3D Bone Shape Reconstruction. Mahesh Shakya, Bishesh Khanal |
| 2023 | Benchmarking Foundation Models with Language-Model-as-an-Examiner. Yushi Bai, Jiahao Ying, Yixin Cao, Xin Lv, Yuze He, Xiaozhi Wang, Jifan Yu, Kaisheng Zeng, Yijia Xiao, Haozhe Lyu, Jiayin Zhang, Juanzi Li, Lei Hou |
| 2023 | Benchmarking Large Language Models on CMExam - A comprehensive Chinese Medical Exam Dataset. Junling Liu, Peilin Zhou, Yining Hua, Dading Chong, Zhongyu Tian, Andrew Liu, Helin Wang, Chenyu You, Zhenhua Guo, Lei Zhu, Michael Lingzhi Li |
| 2023 | Benchmarking Robustness of Adaptation Methods on Pre-trained Vision-Language Models. Shuo Chen, Jindong Gu, Zhen Han, Yunpu Ma, Philip H. S. Torr, Volker Tresp |
| 2023 | Benchmarking Robustness to Adversarial Image Obfuscations. Florian Stimberg, Ayan Chakrabarti, Chun-Ta Lu, Hussein Hazimeh, Otilia Stretcu, Wei Qiao, Yintao Liu, Merve Kaya, Cyrus Rashtchian, Ariel Fuxman, Mehmet Tek, Sven Gowal |
| 2023 | Benchmarking and Analyzing 3D-aware Image Synthesis with a Modularized Codebase. Qiuyu Wang, Zifan Shi, Kecheng Zheng, Yinghao Xu, Sida Peng, Yujun Shen |
| 2023 | Best Arm Identification with Fixed Budget: A Large Deviation Perspective. Po-An Wang, Ruo-Chun Tzeng, Alexandre Proutière |
| 2023 | Beta Diffusion. Mingyuan Zhou, Tianqi Chen, Zhendong Wang, Huangjie Zheng |
| 2023 | Better Correlation and Robustness: A Distribution-Balanced Self-Supervised Learning Framework for Automatic Dialogue Evaluation. Peiwen Yuan, Xinglin Wang, Jiayi Shi, Bin Sun, Yiwei Li |
| 2023 | Better Private Linear Regression Through Better Private Feature Selection. Travis Dick, Jennifer Gillenwater, Matthew Joseph |
| 2023 | Better with Less: A Data-Active Perspective on Pre-Training Graph Neural Networks. Jiarong Xu, Renhong Huang, Xin Jiang, Yuxuan Cao, Carl Yang, Chunping Wang, Yang Yang |
| 2023 | Beyond Average Return in Markov Decision Processes. Alexandre Marthe, Aurélien Garivier, Claire Vernade |
| 2023 | Beyond Black-Box Advice: Learning-Augmented Algorithms for MDPs with Q-Value Predictions. Tongxin Li, Yiheng Lin, Shaolei Ren, Adam Wierman |
| 2023 | Beyond Confidence: Reliable Models Should Also Consider Atypicality. Mert Yüksekgönül, Linjun Zhang, James Y. Zou, Carlos Guestrin |
| 2023 | Beyond Deep Ensembles: A Large-Scale Evaluation of Bayesian Deep Learning under Distribution Shift. Florian Seligmann, Philipp Becker, Michael Volpp, Gerhard Neumann |
| 2023 | Beyond Exponential Graph: Communication-Efficient Topologies for Decentralized Learning via Finite-time Convergence. Yuki Takezawa, Ryoma Sato, Han Bao, Kenta Niwa, Makoto Yamada |
| 2023 | Beyond Geometry: Comparing the Temporal Structure of Computation in Neural Circuits with Dynamical Similarity Analysis. Mitchell Ostrow, Adam Eisen, Leo Kozachkov, Ila Fiete |
| 2023 | Beyond Invariance: Test-Time Label-Shift Adaptation for Addressing "Spurious" Correlations. Qingyao Sun, Kevin P. Murphy, Sayna Ebrahimi, Alexander D'Amour |
| 2023 | Beyond MLE: Convex Learning for Text Generation. Chenze Shao, Zhengrui Ma, Min Zhang, Yang Feng |
| 2023 | Beyond Myopia: Learning from Positive and Unlabeled Data through Holistic Predictive Trends. Xinrui Wang, Wenhai Wan, Chuanxing Geng, Shaoyuan Li, Songcan Chen |
| 2023 | Beyond NTK with Vanilla Gradient Descent: A Mean-Field Analysis of Neural Networks with Polynomial Width, Samples, and Time. Arvind V. Mahankali, Haochen Zhang, Kefan Dong, Margalit Glasgow, Tengyu Ma |
| 2023 | Beyond Normal: On the Evaluation of Mutual Information Estimators. Pawel Czyz, Frederic Grabowski, Julia E. Vogt, Niko Beerenwinkel, Alexander Marx |
| 2023 | Beyond Pretrained Features: Noisy Image Modeling Provides Adversarial Defense. Zunzhi You, Daochang Liu, Bohyung Han, Chang Xu |
| 2023 | Beyond Uniform Sampling: Offline Reinforcement Learning with Imbalanced Datasets. Zhang-Wei Hong, Aviral Kumar, Sathwik Karnik, Abhishek Bhandwaldar, Akash Srivastava, Joni Pajarinen, Romain Laroche, Abhishek Gupta, Pulkit Agrawal |
| 2023 | Beyond Unimodal: Generalising Neural Processes for Multimodal Uncertainty Estimation. Myong Chol Jung, He Zhao, Joanna Dipnall, Lan Du |
| 2023 | Beyond probability partitions: Calibrating neural networks with semantic aware grouping. Jia-Qi Yang, De-Chuan Zhan, Le Gan |
| 2023 | Bi-Level Offline Policy Optimization with Limited Exploration. Wenzhuo Zhou |
| 2023 | BiMatting: Efficient Video Matting via Binarization. Haotong Qin, Lei Ke, Xudong Ma, Martin Danelljan, Yu-Wing Tai, Chi-Keung Tang, Xianglong Liu, Fisher Yu |
| 2023 | BiSLS/SPS: Auto-tune Step Sizes for Stable Bi-level Optimization. Chen Fan, Gaspard Choné-Ducasse, Mark Schmidt, Christos Thrampoulidis |
| 2023 | Bias in Evaluation Processes: An Optimization-Based Model. L. Elisa Celis, Amit Kumar, Anay Mehrotra, Nisheeth K. Vishnoi |
| 2023 | Bicriteria Approximation Algorithms for the Submodular Cover Problem. Wenjing Chen, Victoria G. Crawford |
| 2023 | Bicriteria Multidimensional Mechanism Design with Side Information. Siddharth Prasad, Maria-Florina Balcan, Tuomas Sandholm |
| 2023 | Bifurcations and loss jumps in RNN training. Lukas Eisenmann, Zahra Monfared, Niclas Alexander Göring, Daniel Durstewitz |
| 2023 | Bilevel Coreset Selection in Continual Learning: A New Formulation and Algorithm. Jie Hao, Kaiyi Ji, Mingrui Liu |
| 2023 | Binarized Neural Machine Translation. Yichi Zhang, Ankush Garg, Yuan Cao, Lukasz Lew, Behrooz Ghorbani, Zhiru Zhang, Orhan Firat |
| 2023 | Binarized Spectral Compressive Imaging. Yuanhao Cai, Yuxin Zheng, Jing Lin, Xin Yuan, Yulun Zhang, Haoqian Wang |
| 2023 | Binary Classification with Confidence Difference. Wei Wang, Lei Feng, Yuchen Jiang, Gang Niu, Min-Ling Zhang, Masashi Sugiyama |
| 2023 | Binary Radiance Fields. Seungjoo Shin, Jaesik Park |
| 2023 | BioMassters: A Benchmark Dataset for Forest Biomass Estimation using Multi-modal Satellite Time-series. Andrea Nascetti, Ritu Yadav, Kirill Brodt, Qixun Qu, Hongwei Fan, Yuri Shendryk, Isha Shah, Christine Chung |
| 2023 | Birder: Communication-Efficient 1-bit Adaptive Optimizer for Practical Distributed DNN Training. Hanyang Peng, Shuang Qin, Yue Yu, Jin Wang, Hui Wang, Ge Li |
| 2023 | Birth of a Transformer: A Memory Viewpoint. Alberto Bietti, Vivien Cabannes, Diane Bouchacourt, Hervé Jégou, Léon Bottou |
| 2023 | Bitstream-Corrupted Video Recovery: A Novel Benchmark Dataset and Method. Tianyi Liu, Kejun Wu, Yi Wang, Wenyang Liu, Kim-Hui Yap, Lap-Pui Chau |
| 2023 | Black-Box Differential Privacy for Interactive ML. Haim Kaplan, Yishay Mansour, Shay Moran, Kobbi Nissim, Uri Stemmer |
| 2023 | Black-box Backdoor Defense via Zero-shot Image Purification. Yucheng Shi, Mengnan Du, Xuansheng Wu, Zihan Guan, Jin Sun, Ninghao Liu |
| 2023 | Block Broyden's Methods for Solving Nonlinear Equations. Chengchang Liu, Cheng Chen, Luo Luo, John C. S. Lui |
| 2023 | Block Coordinate Plug-and-Play Methods for Blind Inverse Problems. Weijie Gan, Shirin Shoushtari, Yuyang Hu, Jiaming Liu, Hongyu An, Ulugbek Kamilov |
| 2023 | Block Low-Rank Preconditioner with Shared Basis for Stochastic Optimization. Jui-Nan Yen, Sai Surya Duvvuri, Inderjit S. Dhillon, Cho-Jui Hsieh |
| 2023 | Block-Coordinate Methods and Restarting for Solving Extensive-Form Games. Darshan Chakrabarti, Jelena Diakonikolas, Christian Kroer |
| 2023 | Block-State Transformers. Jonathan Pilault, Mahan Fathi, Orhan Firat, Chris Pal, Pierre-Luc Bacon, Ross Goroshin |
| 2023 | Blocked Collaborative Bandits: Online Collaborative Filtering with Per-Item Budget Constraints. Soumyabrata Pal, Arun Sai Suggala, Karthikeyan Shanmugam, Prateek Jain |
| 2023 | Blockwise Parallel Transformers for Large Context Models. Hao Liu, Pieter Abbeel |
| 2023 | Blurred-Dilated Method for Adversarial Attacks. Yang Deng, Weibin Wu, Jianping Zhang, Zibin Zheng |
| 2023 | BoardgameQA: A Dataset for Natural Language Reasoning with Contradictory Information. Mehran Kazemi, Quan Yuan, Deepti Bhatia, Najoung Kim, Xin Xu, Vaiva Imbrasaite, Deepak Ramachandran |
| 2023 | Boosting Adversarial Transferability by Achieving Flat Local Maxima. Zhijin Ge, Xiaosen Wang, Hongying Liu, Fanhua Shang, Yuanyuan Liu |
| 2023 | Boosting Learning for LDPC Codes to Improve the Error-Floor Performance. Heeyoul Kwak, Daeyoung Yun, Yongjune Kim, Sang-Hyo Kim, Jong-Seon No |
| 2023 | Boosting Spectral Clustering on Incomplete Data via Kernel Correction and Affinity Learning. Fangchen Yu, Runze Zhao, Zhan Shi, Yiwen Lu, Jicong Fan, Yicheng Zeng, Jianfeng Mao, Wenye Li |
| 2023 | Boosting Verification of Deep Reinforcement Learning via Piece-Wise Linear Decision Neural Networks. Jiaxu Tian, Dapeng Zhi, Si Liu, Peixin Wang, Cheng Chen, Min Zhang |
| 2023 | Boosting with Tempered Exponential Measures. Richard Nock, Ehsan Amid, Manfred K. Warmuth |
| 2023 | Bootstrapped Training of Score-Conditioned Generator for Offline Design of Biological Sequences. Minsu Kim, Federico Berto, Sungsoo Ahn, Jinkyoo Park |
| 2023 | Bootstrapping Vision-Language Learning with Decoupled Language Pre-training. Yiren Jian, Chongyang Gao, Soroush Vosoughi |
| 2023 | Bottleneck Structure in Learned Features: Low-Dimension vs Regularity Tradeoff. Arthur Jacot |
| 2023 | Bounce: Reliable High-Dimensional Bayesian Optimization for Combinatorial and Mixed Spaces. Leonard Papenmeier, Luigi Nardi, Matthias Poloczek |
| 2023 | Boundary Guided Learning-Free Semantic Control with Diffusion Models. Ye Zhu, Yu Wu, Zhiwei Deng, Olga Russakovsky, Yan Yan |
| 2023 | Bounded rationality in structured density estimation. Tianyuan Teng, Kevin Li, Hang Zhang |
| 2023 | Bounding the Invertibility of Privacy-preserving Instance Encoding using Fisher Information. Kiwan Maeng, Chuan Guo, Sanjay Kariyappa, G. Edward Suh |
| 2023 | Bounding training data reconstruction in DP-SGD. Jamie Hayes, Borja Balle, Saeed Mahloujifar |
| 2023 | Brain Diffusion for Visual Exploration: Cortical Discovery using Large Scale Generative Models. Andrew F. Luo, Margaret M. Henderson, Leila Wehbe, Michael J. Tarr |
| 2023 | Brain Dissection: fMRI-trained Networks Reveal Spatial Selectivity in the Processing of Natural Images. Gabriel Sarch, Michael J. Tarr, Katerina Fragkiadaki, Leila Wehbe |
| 2023 | Brain encoding models based on multimodal transformers can transfer across language and vision. Jerry Tang, Meng Du, Vy A. Vo, Vasudev Lal, Alexander Huth |
| 2023 | Brain-like Flexible Visual Inference by Harnessing Feedback Feedforward Alignment. Tahereh Toosi, Elias B. Issa |
| 2023 | Brant: Foundation Model for Intracranial Neural Signal. Daoze Zhang, Zhizhang Yuan, Yang Yang, Junru Chen, Jingjing Wang, Yafeng Li |
| 2023 | Breadcrumbs to the Goal: Supervised Goal Selection from Human-in-the-Loop Feedback. Marcel Torne Villasevil, Max Balsells, Zihan Wang, Samedh Desai, Tao Chen, Pulkit Agrawal, Abhishek Gupta |
| 2023 | Break It Down: Evidence for Structural Compositionality in Neural Networks. Michael A. Lepori, Thomas Serre, Ellie Pavlick |
| 2023 | Breaking the Communication-Privacy-Accuracy Tradeoff with f-Differential Privacy. Richeng Jin, Zhonggen Su, Caijun Zhong, Zhaoyang Zhang, Tony Q. S. Quek, Huaiyu Dai |
| 2023 | Bridging Discrete and Backpropagation: Straight-Through and Beyond. Liyuan Liu, Chengyu Dong, Xiaodong Liu, Bin Yu, Jianfeng Gao |
| 2023 | Bridging RL Theory and Practice with the Effective Horizon. Cassidy Laidlaw, Stuart J. Russell, Anca D. Dragan |
| 2023 | Bridging the Domain Gap: Self-Supervised 3D Scene Understanding with Foundation Models. Zhimin Chen, Longlong Jing, Yingwei Li, Bing Li |
| 2023 | Bringing regularized optimal transport to lightspeed: a splitting method adapted for GPUs. Jacob Lindbäck, Zesen Wang, Mikael Johansson |
| 2023 | BubbleML: A Multiphase Multiphysics Dataset and Benchmarks for Machine Learning. Sheikh Md Shakeel Hassan, Arthur Feeney, Akash Dhruv, Jihoon Kim, Youngjoon Suh, Jaiyoung Ryu, Yoonjin Won, Aparna Chandramowlishwaran |
| 2023 | Bucks for Buckets (B4B): Active Defenses Against Stealing Encoders. Jan Dubinski, Stanislaw Pawlak, Franziska Boenisch, Tomasz Trzcinski, Adam Dziedzic |
| 2023 | Budgeting Counterfactual for Offline RL. Yao Liu, Pratik Chaudhari, Rasool Fakoor |
| 2023 | Building Socio-culturally Inclusive Stereotype Resources with Community Engagement. Sunipa Dev, Jaya Goyal, Dinesh Tewari, Shachi Dave, Vinodkumar Prabhakaran |
| 2023 | Building the Bridge of Schrödinger: A Continuous Entropic Optimal Transport Benchmark. Nikita Gushchin, Alexander Kolesov, Petr Mokrov, Polina Karpikova, Andrei Spiridonov, Evgeny Burnaev, Alexander Korotin |
| 2023 | BuildingsBench: A Large-Scale Dataset of 900K Buildings and Benchmark for Short-Term Load Forecasting. Patrick Emami, Abhijeet Sahu, Peter Graf |
| 2023 | Bullying10K: A Large-Scale Neuromorphic Dataset towards Privacy-Preserving Bullying Recognition. Yiting Dong, Yang Li, Dongcheng Zhao, Guobin Shen, Yi Zeng |
| 2023 | Bypass Exponential Time Preprocessing: Fast Neural Network Training via Weight-Data Correlation Preprocessing. Josh Alman, Jiehao Liang, Zhao Song, Ruizhe Zhang, Danyang Zhuo |
| 2023 | Bypassing spike sorting: Density-based decoding using spike localization from dense multielectrode probes. Yizi Zhang, Tianxiao He, Julien Boussard, Charles Windolf, Olivier Winter, Eric Trautmann, Noam Roth, Hailey Barrell, Mark Churchland, Nicholas A. Steinmetz, Erdem Varol, Cole L. Hurwitz, Liam Paninski |
| 2023 | Bypassing the Simulator: Near-Optimal Adversarial Linear Contextual Bandits. Haolin Liu, Chen-Yu Wei, Julian Zimmert |
| 2023 | Byzantine-Tolerant Methods for Distributed Variational Inequalities. Nazarii Tupitsa, Abdulla Jasem Almansoori, Yanlin Wu, Martin Takác, Karthik Nandakumar, Samuel Horváth, Eduard Gorbunov |
| 2023 | C-Disentanglement: Discovering Causally-Independent Generative Factors under an Inductive Bias of Confounder. Xiaoyu Liu, Jiaxin Yuan, Bang An, Yuancheng Xu, Yifan Yang, Furong Huang |
| 2023 | C-Eval: A Multi-Level Multi-Discipline Chinese Evaluation Suite for Foundation Models. Yuzhen Huang, Yuzhuo Bai, Zhihao Zhu, Junlei Zhang, Jinghan Zhang, Tangjun Su, Junteng Liu, Chuancheng Lv, Yikai Zhang, Jiayi Lei, Yao Fu, Maosong Sun, Junxian He |
| 2023 | CADet: Fully Self-Supervised Out-Of-Distribution Detection With Contrastive Learning. Charles Guille-Escuret, Pau Rodríguez, David Vázquez, Ioannis Mitliagkas, João Monteiro |
| 2023 | CAMEL: Communicative Agents for "Mind" Exploration of Large Language Model Society. Guohao Li, Hasan Hammoud, Hani Itani, Dmitrii Khizbullin, Bernard Ghanem |
| 2023 | CAP: Correlation-Aware Pruning for Highly-Accurate Sparse Vision Models. Denis Kuznedelev, Eldar Kurtic, Elias Frantar, Dan Alistarh |
| 2023 | CAPP-130: A Corpus of Chinese Application Privacy Policy Summarization and Interpretation. Pengyun Zhu, Long Wen, Jinfei Liu, Feng Xue, Jian Lou, Zhibo Wang, Kui Ren |
| 2023 | CAPro: Webly Supervised Learning with Cross-modality Aligned Prototypes. Yulei Qin, Xingyu Chen, Yunhang Shen, Chaoyou Fu, Yun Gu, Ke Li, Xing Sun, Rongrong Ji |
| 2023 | CARE-MI: Chinese Benchmark for Misinformation Evaluation in Maternity and Infant Care. Tong Xiang, Liangzhi Li, Wangyue Li, Mingbai Bai, Lu Wei, Bowen Wang, Noa Garcia |
| 2023 | CARE: Modeling Interacting Dynamics Under Temporal Environmental Variation. Xiao Luo, Haixin Wang, Zijie Huang, Huiyu Jiang, Abhijeet Gangan, Song Jiang, Yizhou Sun |
| 2023 | CAST: Cross-Attention in Space and Time for Video Action Recognition. Dongho Lee, Jongseo Lee, Jinwoo Choi |
| 2023 | CAT-Walk: Inductive Hypergraph Learning via Set Walks. Ali Behrouz, Farnoosh Hashemi, Sadaf Sadeghian, Margo I. Seltzer |
| 2023 | CBD: A Certified Backdoor Detector Based on Local Dominant Probability. Zhen Xiang, Zidi Xiong, Bo Li |
| 2023 | CD-GraB: Coordinating Distributed Example Orders for Provably Accelerated Training. A. Feder Cooper, Wentao Guo, Khiem Pham, Tiancheng Yuan, Charlie Ruan, Yucheng Lu, Christopher De Sa |
| 2023 | CEIL: Generalized Contextual Imitation Learning. Jinxin Liu, Li He, Yachen Kang, Zifeng Zhuang, Donglin Wang, Huazhe Xu |
| 2023 | CELLE-2: Translating Proteins to Pictures and Back with a Bidirectional Text-to-Image Transformer. Emaad Khwaja, Yun Song, Aaron Agarunov, Bo Huang |
| 2023 | CHAMMI: A benchmark for channel-adaptive models in microscopy imaging. Zitong Sam Chen, Chau Pham, Siqi Wang, Michael Doron, Nikita Moshkov, Bryan A. Plummer, Juan C. Caicedo |
| 2023 | CL-NeRF: Continual Learning of Neural Radiance Fields for Evolving Scene Representation. Xiuzhe Wu, Peng Dai, Weipeng Deng, Handi Chen, Yang Wu, Yan-Pei Cao, Ying Shan, Xiaojuan Qi |
| 2023 | CLIP-OGD: An Experimental Design for Adaptive Neyman Allocation in Sequential Experiments. Jessica Dai, Paula Gradu, Christopher Harshaw |
| 2023 | CLIP4HOI: Towards Adapting CLIP for Practical Zero-Shot HOI Detection. Yunyao Mao, Jiajun Deng, Wengang Zhou, Li Li, Yao Fang, Houqiang Li |
| 2023 | CLadder: A Benchmark to Assess Causal Reasoning Capabilities of Language Models. Zhijing Jin, Yuen Chen, Felix Leeb, Luigi Gresele, Ojasv Kamal, Zhiheng Lyu, Kevin Blin, Fernando Gonzalez Adauto, Max Kleiman-Weiner, Mrinmaya Sachan, Bernhard Schölkopf |
| 2023 | CLeAR: Continual Learning on Algorithmic Reasoning for Human-like Intelligence. Bong Gyun Kang, HyunGi Kim, Dahuin Jung, Sungroh Yoon |
| 2023 | CMMA: Benchmarking Multi-Affection Detection in Chinese Multi-Modal Conversations. Yazhou Zhang, Yang Yu, Qing Guo, Benyou Wang, Dongming Zhao, Sagar Uprety, Dawei Song, Qiuchi Li, Jing Qin |
| 2023 | COCO-Counterfactuals: Automatically Constructed Counterfactual Examples for Image-Text Pairs. Tiep Le, Vasudev Lal, Phillip Howard |
| 2023 | CODA: Generalizing to Open and Unseen Domains with Compaction and Disambiguation. Chaoqi Chen, Luyao Tang, Yue Huang, Xiaoguang Han, Yizhou Yu |
| 2023 | COOM: A Game Benchmark for Continual Reinforcement Learning. Tristan Tomilin, Meng Fang, Yudi Zhang, Mykola Pechenizkiy |
| 2023 | CORL: Research-oriented Deep Offline Reinforcement Learning Library. Denis Tarasov, Alexander Nikulin, Dmitry Akimov, Vladislav Kurenkov, Sergey Kolesnikov |
| 2023 | CORNN: Convex optimization of recurrent neural networks for rapid inference of neural dynamics. Fatih Dinc, Adam Shai, Mark J. Schnitzer, Hidenori Tanaka |
| 2023 | CP-SLAM: Collaborative Neural Point-based SLAM System. Jiarui Hu, Mao Mao, Hujun Bao, Guofeng Zhang, Zhaopeng Cui |
| 2023 | CQM: Curriculum Reinforcement Learning with a Quantized World Model. Seungjae Lee, Daesol Cho, Jonghae Park, H. Jin Kim |
| 2023 | CROMA: Remote Sensing Representations with Contrastive Radar-Optical Masked Autoencoders. Anthony Fuller, Koreen Millard, James R. Green |
| 2023 | CRoSS: Diffusion Model Makes Controllable, Robust and Secure Image Steganography. Jiwen Yu, Xuanyu Zhang, Youmin Xu, Jian Zhang |
| 2023 | CS-Isolate: Extracting Hard Confident Examples by Content and Style Isolation. Yexiong Lin, Yu Yao, Xiaolong Shi, Mingming Gong, Xu Shen, Dong Xu, Tongliang Liu |
| 2023 | CS4ML: A general framework for active learning with arbitrary data based on Christoffel functions. Juan M. Cardenas, Ben Adcock, Nick C. Dexter |
| 2023 | CSLP-AE: A Contrastive Split-Latent Permutation Autoencoder Framework for Zero-Shot Electroencephalography Signal Conversion. Anders Vestergaard Nørskov, Alexander Neergaard Zahid, Morten Mørup |
| 2023 | CSMeD: Bridging the Dataset Gap in Automated Citation Screening for Systematic Literature Reviews. Wojciech Kusa, Óscar E. Mendoza, Matthias Samwald, Petr Knoth, Allan Hanbury |
| 2023 | CSOT: Curriculum and Structure-Aware Optimal Transport for Learning with Noisy Labels. Wanxing Chang, Ye Shi, Jingya Wang |
| 2023 | CWCL: Cross-Modal Transfer with Continuously Weighted Contrastive Loss. Rakshith Sharma Srinivasa, Jaejin Cho, Chouchang Yang, Yashas Malur Saidutta, Ching Hua Lee, Yilin Shen, Hongxia Jin |
| 2023 | CaMP: Causal Multi-policy Planning for Interactive Navigation in Multi-room Scenes. Xiaohan Wang, Yuehu Liu, Xinhang Song, Beibei Wang, Shuqiang Jiang |
| 2023 | Cal-DETR: Calibrated Detection Transformer. Muhammad Akhtar Munir, Salman H. Khan, Muhammad Haris Khan, Mohsen Ali, Fahad Shahbaz Khan |
| 2023 | Cal-QL: Calibrated Offline RL Pre-Training for Efficient Online Fine-Tuning. Mitsuhiko Nakamoto, Simon Zhai, Anikait Singh, Max Sobol Mark, Yi Ma, Chelsea Finn, Aviral Kumar, Sergey Levine |
| 2023 | Calibrate and Boost Logical Expressiveness of GNN Over Multi-Relational and Temporal Graphs. Yeyuan Chen, Dingmin Wang |
| 2023 | Calibrated Stackelberg Games: Learning Optimal Commitments Against Calibrated Agents. Nika Haghtalab, Chara Podimata, Kunhe Yang |
| 2023 | Calibrating "Cheap Signals" in Peer Review without a Prior. Yuxuan Lu, Yuqing Kong |
| 2023 | Calibrating Neural Simulation-Based Inference with Differentiable Coverage Probability. Maciej Falkiewicz, Naoya Takeishi, Imahn Shekhzadeh, Antoine Wehenkel, Arnaud Delaunoy, Gilles Louppe, Alexandros Kalousis |
| 2023 | Calibration by Distribution Matching: Trainable Kernel Calibration Metrics. Charlie Marx, Sofian Zalouk, Stefano Ermon |
| 2023 | CamoPatch: An Evolutionary Strategy for Generating Camoflauged Adversarial Patches. Phoenix Neale Williams, Ke Li |
| 2023 | Can LLM Already Serve as A Database Interface? A BIg Bench for Large-Scale Database Grounded Text-to-SQLs. Jinyang Li, Binyuan Hui, Ge Qu, Jiaxi Yang, Binhua Li, Bowen Li, Bailin Wang, Bowen Qin, Ruiying Geng, Nan Huo, Xuanhe Zhou, Chenhao Ma, Guoliang Li, Kevin Chen-Chuan Chang, Fei Huang, Reynold Cheng, Yongbin Li |
| 2023 | Can Language Models Solve Graph Problems in Natural Language? Heng Wang, Shangbin Feng, Tianxing He, Zhaoxuan Tan, Xiaochuang Han, Yulia Tsvetkov |
| 2023 | Can Language Models Teach? Teacher Explanations Improve Student Performance via Personalization. Swarnadeep Saha, Peter Hase, Mohit Bansal |
| 2023 | Can Pre-Trained Text-to-Image Models Generate Visual Goals for Reinforcement Learning? Jialu Gao, Kaizhe Hu, Guowei Xu, Huazhe Xu |
| 2023 | Can You Rely on Your Model Evaluation? Improving Model Evaluation with Synthetic Test Data. Boris van Breugel, Nabeel Seedat, Fergus Imrie, Mihaela van der Schaar |
| 2023 | Can semi-supervised learning use all the data effectively? A lower bound perspective. Alexandru Tifrea, Gizem Yüce, Amartya Sanyal, Fanny Yang |
| 2023 | Canonical normalizing flows for manifold learning. Kyriakos Flouris, Ender Konukoglu |
| 2023 | Cappy: Outperforming and Boosting Large Multi-Task LMs with a Small Scorer. Bowen Tan, Yun Zhu, Lijuan Liu, Eric P. Xing, Zhiting Hu, Jindong Chen |
| 2023 | Cascading Bandits: Optimizing Recommendation Frequency in Delayed Feedback Environments. Dairui Wang, Junyu Cao, Yan Zhang, Wei Qi |
| 2023 | Cascading Contextual Assortment Bandits. Hyun-Jun Choi, Rajan Udwani, Min-hwan Oh |
| 2023 | Category-Extensible Out-of-Distribution Detection via Hierarchical Context Descriptions. Kai Liu, Zhihang Fu, Chao Chen, Sheng Jin, Ze Chen, Mingyuan Tao, Rongxin Jiang, Jieping Ye |
| 2023 | Causal Component Analysis. Wendong Liang, Armin Kekic, Julius von Kügelgen, Simon Buchholz, Michel Besserve, Luigi Gresele, Bernhard Schölkopf |
| 2023 | Causal Context Connects Counterfactual Fairness to Robust Prediction and Group Fairness. Jacy Reese Anthis, Victor Veitch |
| 2023 | Causal Discovery from Subsampled Time Series with Proxy Variables. Mingzhou Liu, Xinwei Sun, Lingjing Hu, Yizhou Wang |
| 2023 | Causal Discovery in Semi-Stationary Time Series. Shanyun Gao, Raghavendra Addanki, Tong Yu, Ryan A. Rossi, Murat Kocaoglu |
| 2023 | Causal Effect Identification in Uncertain Causal Networks. Sina Akbari, Fateme Jamshidi, Ehsan Mokhtarian, Matthew J. Vowels, Jalal Etesami, Negar Kiyavash |
| 2023 | Causal Effect Regularization: Automated Detection and Removal of Spurious Correlations. Abhinav Kumar, Amit Deshpande, Amit Sharma |
| 2023 | Causal Fairness for Outcome Control. Drago Plecko, Elias Bareinboim |
| 2023 | Causal Imitability Under Context-Specific Independence Relations. Fateme Jamshidi, Sina Akbari, Negar Kiyavash |
| 2023 | Causal Interpretation of Self-Attention in Pre-Trained Transformers. Raanan Y. Rohekar, Yaniv Gurwicz, Shami Nisimov |
| 2023 | Causal de Finetti: On the Identification of Invariant Causal Structure in Exchangeable Data. Siyuan Guo, Viktor Tóth, Bernhard Schölkopf, Ferenc Huszar |
| 2023 | Causal discovery from observational and interventional data across multiple environments. Adam Li, Amin Jaber, Elias Bareinboim |
| 2023 | Causal normalizing flows: from theory to practice. Adrián Javaloy, Pablo Sánchez-Martín, Isabel Valera |
| 2023 | Causal-structure Driven Augmentations for Text OOD Generalization. Amir Feder, Yoav Wald, Claudia Shi, Suchi Saria, David M. Blei |
| 2023 | Cause-Effect Inference in Location-Scale Noise Models: Maximum Likelihood vs. Independence Testing. Xiangyu Sun, Oliver Schulte |
| 2023 | Causes and Effects of Unanticipated Numerical Deviations in Neural Network Inference Frameworks. Alexander Schlögl, Nora Hofer, Rainer Böhme |
| 2023 | Censored Sampling of Diffusion Models Using 3 Minutes of Human Feedback. Taeho Yoon, Kibeom Myoung, Keon Lee, Jaewoong Cho, Albert No, Ernest K. Ryu |
| 2023 | Certifiably Robust Graph Contrastive Learning. Minhua Lin, Teng Xiao, Enyan Dai, Xiang Zhang, Suhang Wang |
| 2023 | Certification of Distributional Individual Fairness. Matthew Wicker, Vihari Piratla, Adrian Weller |
| 2023 | Certified Minimax Unlearning with Generalization Rates and Deletion Capacity. Jiaqi Liu, Jian Lou, Zhan Qin, Kui Ren |
| 2023 | Certified Robustness via Dynamic Margin Maximization and Improved Lipschitz Regularization. Mahyar Fazlyab, Taha Entesari, Aniket Roy, Rama Chellappa |
| 2023 | Chameleon: Plug-and-Play Compositional Reasoning with Large Language Models. Pan Lu, Baolin Peng, Hao Cheng, Michel Galley, Kai-Wei Chang, Ying Nian Wu, Song-Chun Zhu, Jianfeng Gao |
| 2023 | Chanakya: Learning Runtime Decisions for Adaptive Real-Time Perception. Anurag Ghosh, Vaibhav Balloli, Akshay Nambi, Aditya Singh, Tanuja Ganu |
| 2023 | Change point detection and inference in multivariate non-parametric models under mixing conditions. Carlos Misael Madrid Padilla, Haotian Xu, Daren Wang, Oscar Hernan Madrid Padilla, Yi Yu |
| 2023 | Characteristic Circuits. Zhongjie Yu, Martin Trapp, Kristian Kersting |
| 2023 | Characterization and Learning of Causal Graphs with Small Conditioning Sets. Murat Kocaoglu |
| 2023 | Characterization of Overfitting in Robust Multiclass Classification. Jingyuan Xu, Weiwei Liu |
| 2023 | Characterizing Graph Datasets for Node Classification: Homophily-Heterophily Dichotomy and Beyond. Oleg Platonov, Denis Kuznedelev, Artem Babenko, Liudmila Prokhorenkova |
| 2023 | Characterizing Out-of-Distribution Error via Optimal Transport. Yuzhe Lu, Yilong Qin, Runtian Zhai, Andrew Shen, Ketong Chen, Zhenlin Wang, Soheil Kolouri, Simon Stepputtis, Joseph Campbell, Katia P. Sycara |
| 2023 | Characterizing the Impacts of Semi-supervised Learning for Weak Supervision. Jeffrey Li, Jieyu Zhang, Ludwig Schmidt, Alexander J. Ratner |
| 2023 | Characterizing the Optimal 0-1 Loss for Multi-class Classification with a Test-time Attacker. Sihui Dai, Wenxin Ding, Arjun Nitin Bhagoji, Daniel Cullina, Heather Zheng, Ben Zhao, Prateek Mittal |
| 2023 | Chasing Fairness Under Distribution Shift: A Model Weight Perturbation Approach. Zhimeng Stephen Jiang, Xiaotian Han, Hongye Jin, Guanchu Wang, Rui Chen, Na Zou, Xia Hu |
| 2023 | ChatGPT-Powered Hierarchical Comparisons for Image Classification. Zhiyuan Ren, Yiyang Su, Xiaoming Liu |
| 2023 | Chatting Makes Perfect: Chat-based Image Retrieval. Matan Levy, Rami Ben-Ari, Nir Darshan, Dani Lischinski |
| 2023 | Cheap and Quick: Efficient Vision-Language Instruction Tuning for Large Language Models. Gen Luo, Yiyi Zhou, Tianhe Ren, Shengxin Chen, Xiaoshuai Sun, Rongrong Ji |
| 2023 | Cheaply Estimating Inference Efficiency Metrics for Autoregressive Transformer Models. Deepak Narayanan, Keshav Santhanam, Peter Henderson, Rishi Bommasani, Tony Lee, Percy Liang |
| 2023 | ChessGPT: Bridging Policy Learning and Language Modeling. Xidong Feng, Yicheng Luo, Ziyan Wang, Hongrui Tang, Mengyue Yang, Kun Shao, David Mguni, Yali Du, Jun Wang |
| 2023 | ChimpACT: A Longitudinal Dataset for Understanding Chimpanzee Behaviors. Xiaoxuan Ma, Stephan P. Kaufhold, Jiajun Su, Wentao Zhu, Jack Terwilliger, Andres Meza, Yixin Zhu, Federico Rossano, Yizhou Wang |
| 2023 | Cinematic Mindscapes: High-quality Video Reconstruction from Brain Activity. Zijiao Chen, Jiaxin Qing, Juan Helen Zhou |
| 2023 | Circuit as Set of Points. Jialv Zou, Xinggang Wang, Jiahao Guo, Wenyu Liu, Qian Zhang, Chang Huang |
| 2023 | CityRefer: Geography-aware 3D Visual Grounding Dataset on City-scale Point Cloud Data. Taiki Miyanishi, Fumiya Kitamori, Shuhei Kurita, Jungdae Lee, Motoaki Kawanabe, Nakamasa Inoue |
| 2023 | Class-Conditional Conformal Prediction with Many Classes. Tiffany Ding, Anastasios Angelopoulos, Stephen Bates, Michael I. Jordan, Ryan J. Tibshirani |
| 2023 | Class-Distribution-Aware Pseudo-Labeling for Semi-Supervised Multi-Label Learning. Ming-Kun Xie, Jiahao Xiao, Hao-Zhe Liu, Gang Niu, Masashi Sugiyama, Sheng-Jun Huang |
| 2023 | Classical Simulation of Quantum Circuits: Parallel Environments and Benchmark. Xiao-Yang Liu, Zeliang Zhang |
| 2023 | Classification of Heavy-tailed Features in High Dimensions: a Superstatistical Approach. Urte Adomaityte, Gabriele Sicuro, Pierpaolo Vivo |
| 2023 | Clifford Group Equivariant Neural Networks. David Ruhe, Johannes Brandstetter, Patrick Forré |
| 2023 | ClimSim: A large multi-scale dataset for hybrid physics-ML climate emulation. Sungduk Yu, Walter M. Hannah, Liran Peng, Jerry Lin, Mohamed Aziz Bhouri, Ritwik Gupta, Björn Lütjens, Justus C. Will, Gunnar Behrens, Julius Busecke, Nora Loose, Charles Stern, Tom Beucler, Bryce E. Harrop, Benjamin R. Hillman, Andrea M. Jenney, Savannah L. Ferretti, Nana Liu, Animashree Anandkumar, Noah D. Brenowitz, Veronika Eyring, Nicholas Geneva, Pierre Gentine, Stephan Mandt, Jaideep Pathak, Akshay Subramaniam, Carl Vondrick, Rose Yu, Laure Zanna, Tian Zheng, Ryan Abernathey, Fiaz Ahmed, David C. Bader, Pierre Baldi, Elizabeth A. Barnes, Christopher S. Bretherton, Peter M. Caldwell, Wayne Chuang, Yilun Han, Yu Huang, Fernando Iglesias-Suarez, Sanket R. Jantre, Karthik Kashinath, Marat Khairoutdinov, Thorsten Kurth, Nicholas J. Lutsko, Po-Lun Ma, Griffin Mooers, J. David Neelin, David A. Randall, Sara Shamekh, Mark Taylor, Nathan M. Urban, Janni Yuval, Guang Zhang, Mike Pritchard |
| 2023 | ClimateLearn: Benchmarking Machine Learning for Weather and Climate Modeling. Tung Nguyen, Jason Jewik, Hritik Bansal, Prakhar Sharma, Aditya Grover |
| 2023 | ClimateSet: A Large-Scale Climate Model Dataset for Machine Learning. Julia Kaltenborn, Charlotte E. E. Lange, Venkatesh Ramesh, Philippe Brouillard, Yaniv Gurwicz, Chandni Nagda, Jakob Runge, Peer Nowack, David Rolnick |
| 2023 | Closing the Computational-Statistical Gap in Best Arm Identification for Combinatorial Semi-bandits. Ruo-Chun Tzeng, Po-An Wang, Alexandre Proutière, Chi-Jen Lu |
| 2023 | Closing the gap between the upper bound and lower bound of Adam's iteration complexity. Bohan Wang, Jingwen Fu, Huishuai Zhang, Nanning Zheng, Wei Chen |
| 2023 | CluB: Cluster Meets BEV for LiDAR-Based 3D Object Detection. Yingjie Wang, Jiajun Deng, Yuenan Hou, Yao Li, Yu Zhang, Jianmin Ji, Wanli Ouyang, Yanyong Zhang |
| 2023 | Cluster-aware Semi-supervised Learning: Relational Knowledge Distillation Provably Learns Clustering. Yijun Dong, Kevin Miller, Qi Lei, Rachel Ward |
| 2023 | ClusterFomer: Clustering As A Universal Visual Learner. James Liang, Yiming Cui, Qifan Wang, Tong Geng, Wenguan Wang, Dongfang Liu |
| 2023 | Clustering the Sketch: Dynamic Compression for Embedding Tables. Henry Ling-Hei Tsang, Thomas D. Ahle |
| 2023 | CoDA: Collaborative Novel Box Discovery and Cross-modal Alignment for Open-vocabulary 3D Object Detection. Yang Cao, Yihan Zeng, Hang Xu, Dan Xu |
| 2023 | CoDet: Co-occurrence Guided Region-Word Alignment for Open-Vocabulary Object Detection. Chuofan Ma, Yi Jiang, Xin Wen, Zehuan Yuan, Xiaojuan Qi |
| 2023 | CoDrug: Conformal Drug Property Prediction with Density Estimation under Covariate Shift. Siddhartha Laghuvarapu, Zhen Lin, Jimeng Sun |
| 2023 | CoLA: Exploiting Compositional Structure for Automatic and Efficient Numerical Linear Algebra. Andres Potapczynski, Marc Finzi, Geoff Pleiss, Andrew Gordon Wilson |
| 2023 | CoLLAT: On Adding Fine-grained Audio Understanding to Language Models using Token-Level Locked-Language Tuning. Dadallage A. R. Silva, Spencer Whitehead, Christopher T. Lengerich, Hugh Leather |
| 2023 | CoPriv: Network/Protocol Co-Optimization for Communication-Efficient Private Inference. Wenxuan Zeng, Meng Li, Haichuan Yang, Wen-jie Lu, Runsheng Wang, Ru Huang |
| 2023 | Cocktail: Mixing Multi-Modality Control for Text-Conditional Image Generation. Minghui Hu, Jianbin Zheng, Daqing Liu, Chuanxia Zheng, Chaoyue Wang, Dacheng Tao, Tat-Jen Cham |
| 2023 | Cognitive Model Discovery via Disentangled RNNs. Kevin J. Miller, Maria K. Eckstein, Matt M. Botvinick, Zeb Kurth-Nelson |
| 2023 | Cognitive Steering in Deep Neural Networks via Long-Range Modulatory Feedback Connections. Talia Konkle, George A. Alvarez |
| 2023 | Coherent Soft Imitation Learning. Joe Watson, Sandy H. Huang, Nicolas Heess |
| 2023 | Cola: A Benchmark for Compositional Text-to-image Retrieval. Arijit Ray, Filip Radenovic, Abhimanyu Dubey, Bryan A. Plummer, Ranjay Krishna, Kate Saenko |
| 2023 | Cold Diffusion: Inverting Arbitrary Image Transforms Without Noise. Arpit Bansal, Eitan Borgnia, Hong-Min Chu, Jie Li, Hamid Kazemi, Furong Huang, Micah Goldblum, Jonas Geiping, Tom Goldstein |
| 2023 | Collaborative Alignment of NLP Models. Fereshte Khani, Marco Túlio Ribeiro |
| 2023 | Collaborative Learning via Prediction Consensus. Dongyang Fan, Celestine Mendler-Dünner, Martin Jaggi |
| 2023 | Collaborative Score Distillation for Consistent Visual Editing. Subin Kim, Kyungmin Lee, June Suk Choi, Jongheon Jeong, Kihyuk Sohn, Jinwoo Shin |
| 2023 | Collaboratively Learning Linear Models with Structured Missing Data. Chen Cheng, Gary Cheng, John C. Duchi |
| 2023 | Collapsed Inference for Bayesian Deep Learning. Zhe Zeng, Guy Van den Broeck |
| 2023 | Color Equivariant Convolutional Networks. Attila Lengyel, Ombretta Strafforello, Robert-Jan Bruintjes, Alexander Gielisse, Jan van Gemert |
| 2023 | ComSL: A Composite Speech-Language Model for End-to-End Speech-to-Text Translation. Chenyang Le, Yao Qian, Long Zhou, Shujie Liu, Yanmin Qian, Michael Zeng, Xuedong Huang |
| 2023 | Combating Bilateral Edge Noise for Robust Link Prediction. Zhanke Zhou, Jiangchao Yao, Jiaxu Liu, Xiawei Guo, Quanming Yao, Li He, Liang Wang, Bo Zheng, Bo Han |
| 2023 | Combating Representation Learning Disparity with Geometric Harmonization. Zhihan Zhou, Jiangchao Yao, Feng Hong, Ya Zhang, Bo Han, Yanfeng Wang |
| 2023 | Combinatorial Group Testing with Selfish Agents. Georgios Chionas, Dariusz R. Kowalski, Piotr Krysta |
| 2023 | Combinatorial Optimization with Policy Adaptation using Latent Space Search. Félix Chalumeau, Shikha Surana, Clément Bonnet, Nathan Grinsztajn, Arnu Pretorius, Alexandre Laterre, Tom Barrett |
| 2023 | Combining Behaviors with the Successor Features Keyboard. Wilka Carvalho, Andre Saraiva, Angelos Filos, Andrew K. Lampinen, Loic Matthey, Richard L. Lewis, Honglak Lee, Satinder Singh, Danilo Jimenez Rezende, Daniel Zoran |
| 2023 | Common Ground in Cooperative Communication. Xiaoran Hao, Yash Jhaveri, Patrick Shafto |
| 2023 | CommonScenes: Generating Commonsense 3D Indoor Scenes with Scene Graphs. Guangyao Zhai, Evin Pinar Örnek, Shun-Cheng Wu, Yan Di, Federico Tombari, Nassir Navab, Benjamin Busam |
| 2023 | Communication-Efficient Federated Bilevel Optimization with Global and Local Lower Level Problems. Junyi Li, Feihu Huang, Heng Huang |
| 2023 | Compact Neural Volumetric Video Representations with Dynamic Codebooks. Haoyu Guo, Sida Peng, Yunzhi Yan, Linzhan Mou, Yujun Shen, Hujun Bao, Xiaowei Zhou |
| 2023 | Comparing Apples to Oranges: Learning Similarity Functions for Data Produced by Different Distributions. Leonidas Tsepenekas, Ivan Brugere, Freddy Lécué, Daniele Magazzeni |
| 2023 | Comparing Causal Frameworks: Potential Outcomes, Structural Models, Graphs, and Abstractions. Duligur Ibeling, Thomas Icard |
| 2023 | Complementary Benefits of Contrastive Learning and Self-Training Under Distribution Shift. Saurabh Garg, Amrith Setlur, Zachary C. Lipton, Sivaraman Balakrishnan, Virginia Smith, Aditi Raghunathan |
| 2023 | Complex Query Answering on Eventuality Knowledge Graph with Implicit Logical Constraints. Jiaxin Bai, Xin Liu, Weiqi Wang, Chen Luo, Yangqiu Song |
| 2023 | Complex-valued Neurons Can Learn More but Slower than Real-valued Neurons via Gradient Descent. Jin-Hui Wu, Shao-Qun Zhang, Yuan Jiang, Zhi-Hua Zhou |
| 2023 | Complexity Matters: Rethinking the Latent Space for Generative Modeling. Tianyang Hu, Fei Chen, Haonan Wang, Jiawei Li, Wenjia Wang, Jiacheng Sun, Zhenguo Li |
| 2023 | Complexity of Derivative-Free Policy Optimization for Structured H Xingang Guo, Darioush Keivan, Geir E. Dullerud, Peter J. Seiler, Bin Hu |
| 2023 | Composable Coresets for Determinant Maximization: Greedy is Almost Optimal. Siddharth Gollapudi, Sepideh Mahabadi, Varun Sivashankar |
| 2023 | Composing Parameter-Efficient Modules with Arithmetic Operation. Jinghan Zhang, Shiqi Chen, Junteng Liu, Junxian He |
| 2023 | Compositional Abilities Emerge Multiplicatively: Exploring Diffusion Models on a Synthetic Task. Maya Okawa, Ekdeep Singh Lubana, Robert P. Dick, Hidenori Tanaka |
| 2023 | Compositional Foundation Models for Hierarchical Planning. Anurag Ajay, Seungwook Han, Yilun Du, Shuang Li, Abhi Gupta, Tommi S. Jaakkola, Joshua B. Tenenbaum, Leslie Pack Kaelbling, Akash Srivastava, Pulkit Agrawal |
| 2023 | Compositional Generalization from First Principles. Thaddäus Wiedemer, Prasanna Mayilvahanan, Matthias Bethge, Wieland Brendel |
| 2023 | Compositional Policy Learning in Stochastic Control Systems with Formal Guarantees. Dorde Zikelic, Mathias Lechner, Abhinav Verma, Krishnendu Chatterjee, Thomas A. Henzinger |
| 2023 | Compositional Sculpting of Iterative Generative Processes. Timur Garipov, Sebastiaan De Peuter, Ge Yang, Vikas Garg, Samuel Kaski, Tommi S. Jaakkola |
| 2023 | Compressed Video Prompt Tuning. Bing Li, Jiaxin Chen, Xiuguo Bao, Di Huang |
| 2023 | Compression with Bayesian Implicit Neural Representations. Zongyu Guo, Gergely Flamich, Jiajun He, Zhibo Chen, José Miguel Hernández-Lobato |
| 2023 | Computational Complexity of Learning Neural Networks: Smoothness and Degeneracy. Amit Daniely, Nati Srebro, Gal Vardi |
| 2023 | Computational Guarantees for Doubly Entropic Wasserstein Barycenters. Tomas Vaskevicius, Lénaïc Chizat |
| 2023 | Computing Approximate 𝓁 Swati Padmanabhan, David P. Woodruff, Richard Zhang |
| 2023 | Computing Optimal Equilibria and Mechanisms via Learning in Zero-Sum Extensive-Form Games. Brian Hu Zhang, Gabriele Farina, Ioannis Anagnostides, Federico Cacciamani, Stephen McAleer, Andreas A. Haupt, Andrea Celli, Nicola Gatti, Vincent Conitzer, Tuomas Sandholm |
| 2023 | Computing Optimal Nash Equilibria in Multiplayer Games. Youzhi Zhang, Bo An, Venkatramanan Siva Subrahmanian |
| 2023 | Computing a human-like reaction time metric from stable recurrent vision models. Lore Goetschalckx, Lakshmi Narasimhan Govindarajan, Alekh Karkada Ashok, Aarit Ahuja, David L. Sheinberg, Thomas Serre |
| 2023 | ConDaFormer: Disassembled Transformer with Local Structure Enhancement for 3D Point Cloud Understanding. Lunhao Duan, Shanshan Zhao, Nan Xue, Mingming Gong, Gui-Song Xia, Dacheng Tao |
| 2023 | ConRad: Image Constrained Radiance Fields for 3D Generation from a Single Image. Senthil Purushwalkam, Nikhil Naik |
| 2023 | Concept Algebra for (Score-Based) Text-Controlled Generative Models. Zihao Wang, Lin Gui, Jeffrey Negrea, Victor Veitch |
| 2023 | Concept Distillation: Leveraging Human-Centered Explanations for Model Improvement. Avani Gupta, Saurabh Saini, P. J. Narayanan |
| 2023 | Conditional Adapters: Parameter-efficient Transfer Learning with Fast Inference. Tao Lei, Junwen Bai, Siddhartha Brahma, Joshua Ainslie, Kenton Lee, Yanqi Zhou, Nan Du, Vincent Y. Zhao, Yuexin Wu, Bo Li, Yu Zhang, Ming-Wei Chang |
| 2023 | Conditional Matrix Flows for Gaussian Graphical Models. Marcello Massimo Negri, Fabricio Arend Torres, Volker Roth |
| 2023 | Conditional Mutual Information for Disentangled Representations in Reinforcement Learning. Mhairi Dunion, Trevor McInroe, Kevin Sebastian Luck, Josiah Hanna, Stefano V. Albrecht |
| 2023 | Conditional Score Guidance for Text-Driven Image-to-Image Translation. Hyunsoo Lee, Minsoo Kang, Bohyung Han |
| 2023 | Conditional independence testing under misspecified inductive biases. Felipe Maia Polo, Yuekai Sun, Moulinath Banerjee |
| 2023 | Conditional score-based diffusion models for Bayesian inference in infinite dimensions. Lorenzo Baldassari, Ali Siahkoohi, Josselin Garnier, Knut Solna, Maarten V. de Hoop |
| 2023 | Coneheads: Hierarchy Aware Attention. Albert Tseng, Tao Yu, Toni J. B. Liu, Christopher De Sa |
| 2023 | Conformal Meta-learners for Predictive Inference of Individual Treatment Effects. Ahmed M. Alaa, Zaid Ahmad, Mark J. van der Laan |
| 2023 | Conformal PID Control for Time Series Prediction. Anastasios Angelopoulos, Emmanuel J. Candès, Ryan J. Tibshirani |
| 2023 | Conformal Prediction Sets for Ordinal Classification. Prasenjit Dey, Srujana Merugu, Sivaramakrishnan R. Kaveri |
| 2023 | Conformal Prediction for Time Series with Modern Hopfield Networks. Andreas Auer, Martin Gauch, Daniel Klotz, Sepp Hochreiter |
| 2023 | Conformal Prediction for Uncertainty-Aware Planning with Diffusion Dynamics Model. Jiankai Sun, Yiqi Jiang, Jianing Qiu, Parth Nobel, Mykel J. Kochenderfer, Mac Schwager |
| 2023 | Conformalized matrix completion. Yu Gui, Rina Barber, Cong Ma |
| 2023 | Connected Superlevel Set in (Deep) Reinforcement Learning and its Application to Minimax Theorems. Sihan Zeng, Thinh T. Doan, Justin Romberg |
| 2023 | Connecting Certified and Adversarial Training. Yuhao Mao, Mark Niklas Müller, Marc Fischer, Martin T. Vechev |
| 2023 | Connecting Multi-modal Contrastive Representations. Zehan Wang, Yang Zhao, Xize Cheng, Haifeng Huang, Jiageng Liu, Aoxiong Yin, Li Tang, Linjun Li, Yongqi Wang, Ziang Zhang, Zhou Zhao |
| 2023 | Connecting Pre-trained Language Model and Downstream Task via Properties of Representation. Chenwei Wu, Holden Lee, Rong Ge |
| 2023 | Consensus and Subjectivity of Skin Tone Annotation for ML Fairness. Candice Schumann, Femi Olanubi, Auriel Wright, Ellis Monk Jr., Courtney Heldreth, Susanna Ricco |
| 2023 | Conservative Offline Policy Adaptation in Multi-Agent Games. Chengjie Wu, Pingzhong Tang, Jun Yang, Yujing Hu, Tangjie Lv, Changjie Fan, Chongjie Zhang |
| 2023 | Conservative State Value Estimation for Offline Reinforcement Learning. Liting Chen, Jie Yan, Zhengdao Shao, Lu Wang, Qingwei Lin, Saravanakumar Rajmohan, Thomas Moscibroda, Dongmei Zhang |
| 2023 | Consistent Aggregation of Objectives with Diverse Time Preferences Requires Non-Markovian Rewards. Silviu Pitis |
| 2023 | Consistent Diffusion Models: Mitigating Sampling Drift by Learning to be Consistent. Giannis Daras, Yuval Dagan, Alex Dimakis, Constantinos Daskalakis |
| 2023 | Constant Approximation for Individual Preference Stable Clustering. Anders Aamand, Justin Y. Chen, Allen Liu, Sandeep Silwal, Pattara Sukprasert, Ali Vakilian, Fred Zhang |
| 2023 | Constrained Policy Optimization with Explicit Behavior Density For Offline Reinforcement Learning. Jing Zhang, Chi Zhang, Wenjia Wang, Bingyi Jing |
| 2023 | Constraint-Conditioned Policy Optimization for Versatile Safe Reinforcement Learning. Yihang Yao, Zuxin Liu, Zhepeng Cen, Jiacheng Zhu, Wenhao Yu, Tingnan Zhang, Ding Zhao |
| 2023 | Constructing Non-isotropic Gaussian Diffusion Model Using Isotropic Gaussian Diffusion Model for Image Editing. Xi Yu, Xiang Gu, Haozhi Liu, Jian Sun |
| 2023 | Construction of Hierarchical Neural Architecture Search Spaces based on Context-free Grammars. Simon Schrodi, Danny Stoll, Binxin Ru, Rhea Sanjay Sukthanker, Thomas Brox, Frank Hutter |
| 2023 | Content-based Unrestricted Adversarial Attack. Zhaoyu Chen, Bo Li, Shuang Wu, Kaixun Jiang, Shouhong Ding, Wenqiang Zhang |
| 2023 | Context Shift Reduction for Offline Meta-Reinforcement Learning. Yunkai Gao, Rui Zhang, Jiaming Guo, Fan Wu, Qi Yi, Shaohui Peng, Siming Lan, Ruizhi Chen, Zidong Du, Xing Hu, Qi Guo, Ling Li, Yunji Chen |
| 2023 | Context-PIPs: Persistent Independent Particles Demands Context Features. Weikang Bian, Zhaoyang Huang, Xiaoyu Shi, Yitong Dong, Yijin Li, Hongsheng Li |
| 2023 | Context-guided Embedding Adaptation for Effective Topic Modeling in Low-Resource Regimes. Yishi Xu, Jianqiao Sun, Yudi Su, Xinyang Liu, Zhibin Duan, Bo Chen, Mingyuan Zhou |
| 2023 | Context-lumpable stochastic bandits. Chung-wei Lee, Qinghua Liu, Yasin Abbasi-Yadkori, Chi Jin, Tor Lattimore, Csaba Szepesvári |
| 2023 | Contextual Bandits and Imitation Learning with Preference-Based Active Queries. Ayush Sekhari, Karthik Sridharan, Wen Sun, Runzhe Wu |
| 2023 | Contextual Gaussian Process Bandits with Neural Networks. Haoting Zhang, Jinghai He, Rhonda Righter, Zuo-Jun Max Shen, Zeyu Zheng |
| 2023 | Contextual Stochastic Bilevel Optimization. Yifan Hu, Jie Wang, Yao Xie, Andreas Krause, Daniel Kuhn |
| 2023 | Contextually Affinitive Neighborhood Refinery for Deep Clustering. Chunlin Yu, Ye Shi, Jingya Wang |
| 2023 | ContiFormer: Continuous-Time Transformer for Irregular Time Series Modeling. Yuqi Chen, Kan Ren, Yansen Wang, Yuchen Fang, Weiwei Sun, Dongsheng Li |
| 2023 | ContinuAR: Continuous Autoregression For Infinite-Fidelity Fusion. Wei Xing, Yuxin Wang, Zheng Xing |
| 2023 | Continual Learning for Instruction Following from Realtime Feedback. Alane Suhr, Yoav Artzi |
| 2023 | Continuous Parametric Optical Flow. Jianqin Luo, Zhexiong Wan, Yuxin Mao, Bo Li, Yuchao Dai |
| 2023 | Continuous-Time Functional Diffusion Processes. Giulio Franzese, Giulio Corallo, Simone Rossi, Markus Heinonen, Maurizio Filippone, Pietro Michiardi |
| 2023 | Continuous-time Analysis of Anchor Acceleration. Jaewook J. Suh, Jisun Park, Ernest K. Ryu |
| 2023 | Contrast Everything: A Hierarchical Contrastive Framework for Medical Time-Series. Yihe Wang, Yu Han, Haishuai Wang, Xiang Zhang |
| 2023 | Contrast, Attend and Diffuse to Decode High-Resolution Images from Brain Activities. Jingyuan Sun, Mingxiao Li, Zijiao Chen, Yunhao Zhang, Shaonan Wang, Marie-Francine Moens |
| 2023 | Contrastive Lift: 3D Object Instance Segmentation by Slow-Fast Contrastive Fusion. Yash Bhalgat, Iro Laina, João F. Henriques, Andrea Vedaldi, Andrew Zisserman |
| 2023 | Contrastive Modules with Temporal Attention for Multi-Task Reinforcement Learning. Siming Lan, Rui Zhang, Qi Yi, Jiaming Guo, Shaohui Peng, Yunkai Gao, Fan Wu, Ruizhi Chen, Zidong Du, Xing Hu, Xishan Zhang, Ling Li, Yunji Chen |
| 2023 | Contrastive Moments: Unsupervised Halfspace Learning in Polynomial Time. Xinyuan Cao, Santosh S. Vempala |
| 2023 | Contrastive Retrospection: honing in on critical steps for rapid learning and generalization in RL. Chen Sun, Wannan Yang, Thomas Jiralerspong, Dane Malenfant, Benjamin Alsbury-Nealy, Yoshua Bengio, Blake A. Richards |
| 2023 | Contrastive Sampling Chains in Diffusion Models. Junyu Zhang, Daochang Liu, Shichao Zhang, Chang Xu |
| 2023 | Contrastive Training of Complex-Valued Autoencoders for Object Discovery. Aleksandar Stanic, Anand Gopalakrishnan, Kazuki Irie, Jürgen Schmidhuber |
| 2023 | Controlling Text-to-Image Diffusion by Orthogonal Finetuning. Zeju Qiu, Weiyang Liu, Haiwen Feng, Yuxuan Xue, Yao Feng, Zhen Liu, Dan Zhang, Adrian Weller, Bernhard Schölkopf |
| 2023 | Convergence Analysis of Sequential Federated Learning on Heterogeneous Data. Yipeng Li, Xinchen Lyu |
| 2023 | Convergence analysis of ODE models for accelerated first-order methods via positive semidefinite kernels. Jungbin Kim, Insoon Yang |
| 2023 | Convergence of Actor-Critic with Multi-Layer Neural Networks. Haoxing Tian, Alex Olshevsky, Yannis Paschalidis |
| 2023 | Convergence of Adam Under Relaxed Assumptions. Haochuan Li, Alexander Rakhlin, Ali Jadbabaie |
| 2023 | Convergence of Alternating Gradient Descent for Matrix Factorization. Rachel A. Ward, Tamara G. Kolda |
| 2023 | Convergent Bregman Plug-and-Play Image Restoration for Poisson Inverse Problems. Samuel Hurault, Ulugbek Kamilov, Arthur Leclaire, Nicolas Papadakis |
| 2023 | Convex and Non-convex Optimization Under Generalized Smoothness. Haochuan Li, Jian Qian, Yi Tian, Alexander Rakhlin, Ali Jadbabaie |
| 2023 | Convex-Concave Zero-Sum Stochastic Stackelberg Games. Denizalp Goktas, Arjun Prakash, Amy Greenwald |
| 2023 | Convolution Monge Mapping Normalization for learning on sleep data. Théo Gnassounou, Rémi Flamary, Alexandre Gramfort |
| 2023 | Convolutional Neural Operators for robust and accurate learning of PDEs. Bogdan Raonic, Roberto Molinaro, Tim De Ryck, Tobias Rohner, Francesca Bartolucci, Rima Alaifari, Siddhartha Mishra, Emmanuel de Bézenac |
| 2023 | Convolutional State Space Models for Long-Range Spatiotemporal Modeling. Jimmy T. H. Smith, Shalini De Mello, Jan Kautz, Scott W. Linderman, Wonmin Byeon |
| 2023 | Convolutional Visual Prompt for Robust Visual Perception. Yun-Yun Tsai, Chengzhi Mao, Junfeng Yang |
| 2023 | Convolutions Die Hard: Open-Vocabulary Segmentation with Single Frozen Convolutional CLIP. Qihang Yu, Ju He, Xueqing Deng, Xiaohui Shen, Liang-Chieh Chen |
| 2023 | Cookie Consent Has Disparate Impact on Estimation Accuracy. Erik Miehling, Rahul Nair, Elizabeth Daly, Karthikeyan Natesan Ramamurthy, Robert Redmond |
| 2023 | Coop: Memory is not a Commodity. Jianhao Zhang, Shihan Ma, Peihong Liu, Jinhui Yuan |
| 2023 | Core-sets for Fair and Diverse Data Summarization. Sepideh Mahabadi, Stojan Trajanovski |
| 2023 | Correlation Aware Sparsified Mean Estimation Using Random Projection. Shuli Jiang, Pranay Sharma, Gauri Joshi |
| 2023 | Correlative Information Maximization: A Biologically Plausible Approach to Supervised Deep Neural Networks without Weight Symmetry. Bariscan Bozkurt, Cengiz Pehlevan, Alper T. Erdogan |
| 2023 | CorresNeRF: Image Correspondence Priors for Neural Radiance Fields. Yixing Lao, Xiaogang Xu, Zhipeng Cai, Xihui Liu, Hengshuang Zhao |
| 2023 | Corruption-Robust Offline Reinforcement Learning with General Function Approximation. Chenlu Ye, Rui Yang, Quanquan Gu, Tong Zhang |
| 2023 | CosNet: A Generalized Spectral Kernel Network. Yanfang Xue, Pengfei Fang, Jinyue Tian, Shipeng Zhu, Hui Xue |
| 2023 | Counterfactual Conservative Q Learning for Offline Multi-agent Reinforcement Learning. Jianzhun Shao, Yun Qu, Chen Chen, Hongchang Zhang, Xiangyang Ji |
| 2023 | Counterfactual Evaluation of Peer-Review Assignment Policies. Martin Saveski, Steven Jecmen, Nihar B. Shah, Johan Ugander |
| 2023 | Counterfactual Generation with Identifiability Guarantees. Hanqi Yan, Lingjing Kong, Lin Gui, Yuejie Chi, Eric P. Xing, Yulan He, Kun Zhang |
| 2023 | Counterfactual Memorization in Neural Language Models. Chiyuan Zhang, Daphne Ippolito, Katherine Lee, Matthew Jagielski, Florian Tramèr, Nicholas Carlini |
| 2023 | Counterfactual-Augmented Importance Sampling for Semi-Offline Policy Evaluation. Shengpu Tang, Jenna Wiens |
| 2023 | Counterfactually Comparing Abstaining Classifiers. Yo Joong Choe, Aditya Gangrade, Aaditya Ramdas |
| 2023 | Counterfactually Fair Representation. Zhiqun Zuo, Mahdi Khalili, Xueru Zhang |
| 2023 | Counting Distinct Elements Under Person-Level Differential Privacy. Thomas Steinke, Alexander Knop |
| 2023 | Counting Distinct Elements in the Turnstile Model with Differential Privacy under Continual Observation. Palak Jain, Iden Kalemaj, Sofya Raskhodnikova, Satchit Sivakumar, Adam Smith |
| 2023 | Coupled Reconstruction of Cortical Surfaces by Diffeomorphic Mesh Deformation. Hao Zheng, Hongming Li, Yong Fan |
| 2023 | Covariance-adaptive best arm identification. El Mehdi Saad, Gilles Blanchard, Nicolas Verzelen |
| 2023 | Creating Multi-Level Skill Hierarchies in Reinforcement Learning. Joshua B. Evans, Özgür Simsek |
| 2023 | Creating a Public Repository for Joining Private Data. James Cook, Milind Shyani, Nina Mishra |
| 2023 | Credal Marginal MAP. Radu Marinescu, Debarun Bhattacharjya, Junkyu Lee, Fábio G. Cozman, Alexander G. Gray |
| 2023 | Critical Initialization of Wide and Deep Neural Networks using Partial Jacobians: General Theory and Applications. Darshil Doshi, Tianyu He, Andrey Gromov |
| 2023 | Cross-Domain Policy Adaptation via Value-Guided Data Filtering. Kang Xu, Chenjia Bai, Xiaoteng Ma, Dong Wang, Bin Zhao, Zhen Wang, Xuelong Li, Wei Li |
| 2023 | Cross-Episodic Curriculum for Transformer Agents. Lucy Xiaoyang Shi, Yunfan Jiang, Jake Grigsby, Linxi Fan, Yuke Zhu |
| 2023 | Cross-Scale MAE: A Tale of Multiscale Exploitation in Remote Sensing. Maofeng Tang, Andrei Cozma, Konstantinos Georgiou, Hairong Qi |
| 2023 | Cross-links Matter for Link Prediction: Rethinking the Debiased GNN from a Data Perspective. Zihan Luo, Hong Huang, Jianxun Lian, Xiran Song, Xing Xie, Hai Jin |
| 2023 | Cross-modal Active Complementary Learning with Self-refining Correspondence. Yang Qin, Yuan Sun, Dezhong Peng, Joey Tianyi Zhou, Xi Peng, Peng Hu |
| 2023 | Cross-modal Prompts: Adapting Large Pre-trained Models for Audio-Visual Downstream Tasks. Haoyi Duan, Yan Xia, Mingze Zhou, Li Tang, Jieming Zhu, Zhou Zhao |
| 2023 | CrossCodeEval: A Diverse and Multilingual Benchmark for Cross-File Code Completion. Yangruibo Ding, Zijian Wang, Wasi Uddin Ahmad, Hantian Ding, Ming Tan, Nihal Jain, Murali Krishna Ramanathan, Ramesh Nallapati, Parminder Bhatia, Dan Roth, Bing Xiang |
| 2023 | CrossGNN: Confronting Noisy Multivariate Time Series Via Cross Interaction Refinement. Qihe Huang, Lei Shen, Ruixin Zhang, Shouhong Ding, Binwu Wang, Zhengyang Zhou, Yang Wang |
| 2023 | Crystal Structure Prediction by Joint Equivariant Diffusion. Rui Jiao, Wenbing Huang, Peijia Lin, Jiaqi Han, Pin Chen, Yutong Lu, Yang Liu |
| 2023 | Curriculum Learning With Infant Egocentric Videos. Saber Sheybani, Himanshu Hansaria, Justin Wood, Linda B. Smith, Zoran Tiganj |
| 2023 | Curriculum Learning for Graph Neural Networks: Which Edges Should We Learn First. Zheng Zhang, Junxiang Wang, Liang Zhao |
| 2023 | Curvature Filtrations for Graph Generative Model Evaluation. Joshua Southern, Jeremy Wayland, Michael M. Bronstein, Bastian Rieck |
| 2023 | Curve Your Enthusiasm: Concurvity Regularization in Differentiable Generalized Additive Models. Julien Siems, Konstantin Ditschuneit, Winfried Ripken, Alma Lindborg, Maximilian Schambach, Johannes S. Otterbach, Martin Genzel |
| 2023 | Customizable Image Synthesis with Multiple Subjects. Zhiheng Liu, Yifei Zhang, Yujun Shen, Kecheng Zheng, Kai Zhu, Ruili Feng, Yu Liu, Deli Zhao, Jingren Zhou, Yang Cao |
| 2023 | CycleNet: Rethinking Cycle Consistency in Text-Guided Diffusion for Image Manipulation. Sihan Xu, Ziqiao Ma, Yidong Huang, Honglak Lee, Joyce Chai |
| 2023 | D Fenggen Yu, Qimin Chen, Maham Tanveer, Ali Mahdavi-Amiri, Hao Zhang |
| 2023 | D-CIPHER: Discovery of Closed-form Partial Differential Equations. Krzysztof Kacprzyk, Zhaozhi Qian, Mihaela van der Schaar |
| 2023 | D-Separation for Causal Self-Explanation. Wei Liu, Jun Wang, Haozhao Wang, Ruixuan Li, Zhiying Deng, Yuankai Zhang, Yang Qiu |
| 2023 | D4: Improving LLM Pretraining via Document De-Duplication and Diversification. Kushal Tirumala, Daniel Simig, Armen Aghajanyan, Ari Morcos |
| 2023 | D4Explainer: In-distribution Explanations of Graph Neural Network via Discrete Denoising Diffusion. Jialin Chen, Shirley Wu, Abhijit Gupta, Rex Ying |
| 2023 | DAC-DETR: Divide the Attention Layers and Conquer. Zhengdong Hu, Yifan Sun, Jingdong Wang, Yi Yang |
| 2023 | DAMEX: Dataset-aware Mixture-of-Experts for visual understanding of mixture-of-datasets. Yash Jain, Harkirat S. Behl, Zsolt Kira, Vibhav Vineet |
| 2023 | DASpeech: Directed Acyclic Transformer for Fast and High-quality Speech-to-Speech Translation. Qingkai Fang, Yan Zhou, Yang Feng |
| 2023 | DAW: Exploring the Better Weighting Function for Semi-supervised Semantic Segmentation. Rui Sun, Huayu Mai, Tianzhu Zhang, Feng Wu |
| 2023 | DDCoT: Duty-Distinct Chain-of-Thought Prompting for Multimodal Reasoning in Language Models. Ge Zheng, Bin Yang, Jiajin Tang, Hong-Yu Zhou, Sibei Yang |
| 2023 | DDF-HO: Hand-Held Object Reconstruction via Conditional Directed Distance Field. Chenyangguang Zhang, Yan Di, Ruida Zhang, Guangyao Zhai, Fabian Manhardt, Federico Tombari, Xiangyang Ji |
| 2023 | DELIFFAS: Deformable Light Fields for Fast Avatar Synthesis. Youngjoong Kwon, Lingjie Liu, Henry Fuchs, Marc Habermann, Christian Theobalt |
| 2023 | DELTA: Diverse Client Sampling for Fasting Federated Learning. Lin Wang, Yongxin Guo, Tao Lin, Xiaoying Tang |
| 2023 | DESSERT: An Efficient Algorithm for Vector Set Search with Vector Set Queries. Joshua Engels, Benjamin Coleman, Vihan Lakshman, Anshumali Shrivastava |
| 2023 | DFRD: Data-Free Robustness Distillation for Heterogeneous Federated Learning. Kangyang Luo, Shuai Wang, Yexuan Fu, Xiang Li, Yunshi Lan, Ming Gao |
| 2023 | DICES Dataset: Diversity in Conversational AI Evaluation for Safety. Lora Aroyo, Alex S. Taylor, Mark Díaz, Christopher Homan, Alicia Parrish, Gregory Serapio-García, Vinodkumar Prabhakaran, Ding Wang |
| 2023 | DIFFER: Decomposing Individual Reward for Fair Experience Replay in Multi-Agent Reinforcement Learning. Xunhan Hu, Jian Zhao, Wengang Zhou, Ruili Feng, Houqiang Li |
| 2023 | DIFUSCO: Graph-based Diffusion Solvers for Combinatorial Optimization. Zhiqing Sun, Yiming Yang |
| 2023 | DIN-SQL: Decomposed In-Context Learning of Text-to-SQL with Self-Correction. Mohammadreza Pourreza, Davood Rafiei |
| 2023 | DISCO-10M: A Large-Scale Music Dataset. Luca A. Lanzendörfer, Florian Grötschla, Emil Funke, Roger Wattenhofer |
| 2023 | DISCOVER: Making Vision Networks Interpretable via Competition and Dissection. Konstantinos P. Panousis, Sotirios Chatzis |
| 2023 | DISCS: A Benchmark for Discrete Sampling. Katayoon Goshvadi, Haoran Sun, Xingchao Liu, Azade Nova, Ruqi Zhang, Will Grathwohl, Dale Schuurmans, Hanjun Dai |
| 2023 | DOSE: Diffusion Dropout with Adaptive Prior for Speech Enhancement. Wenxin Tai, Yue Lei, Fan Zhou, Goce Trajcevski, Ting Zhong |
| 2023 | DP-HyPO: An Adaptive Private Framework for Hyperparameter Optimization. Hua Wang, Sheng Gao, Huanyu Zhang, Weijie J. Su, Milan Shen |
| 2023 | DP-Mix: Mixup-based Data Augmentation for Differentially Private Learning. Wenxuan Bao, Francesco Pittaluga, Vijay Kumar B. G, Vincent Bindschaedler |
| 2023 | DPM-Solver-v3: Improved Diffusion ODE Solver with Empirical Model Statistics. Kaiwen Zheng, Cheng Lu, Jianfei Chen, Jun Zhu |
| 2023 | DRAUC: An Instance-wise Distributionally Robust AUC Optimization Framework. Siran Dai, Qianqian Xu, Zhiyong Yang, Xiaochun Cao, Qingming Huang |
| 2023 | DSR: Dynamical Surface Representation as Implicit Neural Networks for Protein. Daiwen Sun, He Huang, Yao Li, Xinqi Gong, Qiwei Ye |
| 2023 | DVSOD: RGB-D Video Salient Object Detection. Jingjing Li, Wei Ji, Size Wang, Wenbo Li, Li Cheng |
| 2023 | DYffusion: A Dynamics-informed Diffusion Model for Spatiotemporal Forecasting. Salva Rühling Cachay, Bo Zhao, Hailey Joren, Rose Yu |
| 2023 | DaTaSeg: Taming a Universal Multi-Dataset Multi-Task Segmentation Model. Xiuye Gu, Yin Cui, Jonathan Huang, Abdullah Rashwan, Xuan Yang, Xingyi Zhou, Golnaz Ghiasi, Weicheng Kuo, Huizhong Chen, Liang-Chieh Chen, David A. Ross |
| 2023 | Data Market Design through Deep Learning. Sai Srivatsa Ravindranath, Yanchen Jiang, David C. Parkes |
| 2023 | Data Minimization at Inference Time. Cuong Tran, Ferdinando Fioretto |
| 2023 | Data Portraits: Recording Foundation Model Training Data. Marc Marone, Benjamin Van Durme |
| 2023 | Data Pruning via Moving-one-Sample-out. Haoru Tan, Sitong Wu, Fei Du, Yukang Chen, Zhibin Wang, Fan Wang, Xiaojuan Qi |
| 2023 | Data Quality in Imitation Learning. Suneel Belkhale, Yuchen Cui, Dorsa Sadigh |
| 2023 | Data Selection for Language Models via Importance Resampling. Sang Michael Xie, Shibani Santurkar, Tengyu Ma, Percy Liang |
| 2023 | Data-Centric Learning from Unlabeled Graphs with Diffusion Model. Gang Liu, Eric Inae, Tong Zhao, Jiaxin Xu, Tengfei Luo, Meng Jiang |
| 2023 | Data-Dependent Bounds for Online Portfolio Selection Without Lipschitzness and Smoothness. Chung-En Tsai, Ying-Ting Lin, Yen-Huan Li |
| 2023 | Data-Driven Network Neuroscience: On Data Collection and Benchmark. Jiaxing Xu, Yunhan Yang, David Tse Jung Huang, Sophi Shilpa Gururajapathy, Yiping Ke, Miao Qiao, Alan Wang, Haribalan Kumar, Josh McGeown, Eryn Kwon |
| 2023 | Data-Informed Geometric Space Selection. Shuai Zhang, Wenqi Jiang |
| 2023 | Data-driven Optimal Filtering for Linear Systems with Unknown Noise Covariances. Shahriar Talebi, Amirhossein Taghvaei, Mehran Mesbahi |
| 2023 | DataComp: In search of the next generation of multimodal datasets. Samir Yitzhak Gadre, Gabriel Ilharco, Alex Fang, Jonathan Hayase, Georgios Smyrnis, Thao Nguyen, Ryan Marten, Mitchell Wortsman, Dhruba Ghosh, Jieyu Zhang, Eyal Orgad, Rahim Entezari, Giannis Daras, Sarah M. Pratt, Vivek Ramanujan, Yonatan Bitton, Kalyani Marathe, Stephen Mussmann, Richard Vencu, Mehdi Cherti, Ranjay Krishna, Pang Wei Koh, Olga Saukh, Alexander J. Ratner, Shuran Song, Hannaneh Hajishirzi, Ali Farhadi, Romain Beaumont, Sewoong Oh, Alex Dimakis, Jenia Jitsev, Yair Carmon, Vaishaal Shankar, Ludwig Schmidt |
| 2023 | DataPerf: Benchmarks for Data-Centric AI Development. Mark Mazumder, Colby R. Banbury, Xiaozhe Yao, Bojan Karlas, William Gaviria Rojas, Sudnya Frederick Diamos, Greg Diamos, Lynn He, Alicia Parrish, Hannah Rose Kirk, Jessica Quaye, Charvi Rastogi, Douwe Kiela, David Jurado, David Kanter, Rafael Mosquera, Will Cukierski, Juan Ciro, Lora Aroyo, Bilge Acun, Lingjiao Chen, Mehul Raje, Max Bartolo, Evan Sabri Eyuboglu, Amirata Ghorbani, Emmett D. Goodman, Addison Howard, Oana Inel, Tariq Kane, Christine R. Kirkpatrick, D. Sculley, Tzu-Sheng Kuo, Jonas W. Mueller, Tristan Thrush, Joaquin Vanschoren, Margaret Warren, Adina Williams, Serena Yeung, Newsha Ardalani, Praveen K. Paritosh, Ce Zhang, James Y. Zou, Carole-Jean Wu, Cody Coleman, Andrew Y. Ng, Peter Mattson, Vijay Janapa Reddi |
| 2023 | Dataset Diffusion: Diffusion-based Synthetic Data Generation for Pixel-Level Semantic Segmentation. Quang Nguyen, Truong Vu, Anh Tran, Khoi Nguyen |
| 2023 | DatasetDM: Synthesizing Data with Perception Annotations Using Diffusion Models. Weijia Wu, Yuzhong Zhao, Hao Chen, Yuchao Gu, Rui Zhao, Yefei He, Hong Zhou, Mike Zheng Shou, Chunhua Shen |
| 2023 | Datasets and Benchmarks for Nanophotonic Structure and Parametric Design Simulations. Jungtaek Kim, Mingxuan Li, Oliver Hinder, Paul W. Leu |
| 2023 | De novo Drug Design using Reinforcement Learning with Multiple GPT Agents. Xiuyuan Hu, Guoqing Liu, Yang Zhao, Hao Zhang |
| 2023 | DeWave: Discrete Encoding of EEG Waves for EEG to Text Translation. Yiqun Duan, Charles Chau, Zhen Wang, Yu-Kai Wang, Chin-Teng Lin |
| 2023 | Debias Coarsely, Sample Conditionally: Statistical Downscaling through Optimal Transport and Probabilistic Diffusion Models. Zhong Yi Wan, Ricardo Baptista, Anudhyan Boral, Yi-Fan Chen, John Anderson, Fei Sha, Leonardo Zepeda-Núñez |
| 2023 | Debiased and Denoised Entity Recognition from Distant Supervision. Haobo Wang, Yiwen Dong, Ruixuan Xiao, Fei Huang, Gang Chen, Junbo Zhao |
| 2023 | Debiasing Conditional Stochastic Optimization. Lie He, Shiva Prasad Kasiviswanathan |
| 2023 | Debiasing Pretrained Generative Models by Uniformly Sampling Semantic Attributes. Walter Gerych, Kevin Hickey, Luke Buquicchio, Kavin Chandrasekaran, Abdulaziz Alajaji, Elke A. Rundensteiner, Emmanuel Agu |
| 2023 | Debiasing Scores and Prompts of 2D Diffusion for View-consistent Text-to-3D Generation. Susung Hong, Donghoon Ahn, Seungryong Kim |
| 2023 | Decentralized Matrix Sensing: Statistical Guarantees and Fast Convergence. Marie Maros, Gesualdo Scutari |
| 2023 | Decentralized Randomly Distributed Multi-agent Multi-armed Bandit with Heterogeneous Rewards. Mengfan Xu, Diego Klabjan |
| 2023 | Deciphering Spatio-Temporal Graph Forecasting: A Causal Lens and Treatment. Yutong Xia, Yuxuan Liang, Haomin Wen, Xu Liu, Kun Wang, Zhengyang Zhou, Roger Zimmermann |
| 2023 | Decision Stacks: Flexible Reinforcement Learning via Modular Generative Models. Siyan Zhao, Aditya Grover |
| 2023 | Decision Tree for Locally Private Estimation with Public Data. Yuheng Ma, Han Zhang, Yuchao Cai, Hanfang Yang |
| 2023 | Decision-Aware Actor-Critic with Function Approximation and Theoretical Guarantees. Sharan Vaswani, Amirreza Kazemi, Reza Babanezhad Harikandeh, Nicolas Le Roux |
| 2023 | Decoding the Enigma: Benchmarking Humans and AIs on the Many Facets of Working Memory. Ankur Sikarwar, Mengmi Zhang |
| 2023 | DecodingTrust: A Comprehensive Assessment of Trustworthiness in GPT Models. Boxin Wang, Weixin Chen, Hengzhi Pei, Chulin Xie, Mintong Kang, Chenhui Zhang, Chejian Xu, Zidi Xiong, Ritik Dutta, Rylan Schaeffer, Sang T. Truong, Simran Arora, Mantas Mazeika, Dan Hendrycks, Zinan Lin, Yu Cheng, Sanmi Koyejo, Dawn Song, Bo Li |
| 2023 | Decompose Novel into Known: Part Concept Learning For 3D Novel Class Discovery. Tingyu Weng, Jun Xiao, Haiyong Jiang |
| 2023 | Decompose a Task into Generalizable Subtasks in Multi-Agent Reinforcement Learning. Zikang Tian, Ruizhi Chen, Xing Hu, Ling Li, Rui Zhang, Fan Wu, Shaohui Peng, Jiaming Guo, Zidong Du, Qi Guo, Yunji Chen |
| 2023 | Deconstructing Data Reconstruction: Multiclass, Weight Decay and General Losses. Gon Buzaglo, Niv Haim, Gilad Yehudai, Gal Vardi, Yakir Oz, Yaniv Nikankin, Michal Irani |
| 2023 | Decorate3D: Text-Driven High-Quality Texture Generation for Mesh Decoration in the Wild. Yanhui Guo, Xinxin Zuo, Peng Dai, Juwei Lu, Xiaolin Wu, Li Cheng, Youliang Yan, Songcen Xu, Xiaofei Wu |
| 2023 | Deductive Verification of Chain-of-Thought Reasoning. Zhan Ling, Yunhao Fang, Xuanlin Li, Zhiao Huang, Mingu Lee, Roland Memisevic, Hao Su |
| 2023 | Deep Contract Design via Discontinuous Networks. Tonghan Wang, Paul Duetting, Dmitry Ivanov, Inbal Talgam-Cohen, David C. Parkes |
| 2023 | Deep Equilibrium Based Neural Operators for Steady-State PDEs. Tanya Marwah, Ashwini Pokle, J. Zico Kolter, Zachary C. Lipton, Jianfeng Lu, Andrej Risteski |
| 2023 | Deep Fractional Fourier Transform. Hu Yu, Jie Huang, Lingzhi Li, Man Zhou, Feng Zhao |
| 2023 | Deep Gaussian Markov Random Fields for Graph-Structured Dynamical Systems. Fiona Lippert, Bart Kranstauber, Emiel van Loon, Patrick Forré |
| 2023 | Deep Insights into Noisy Pseudo Labeling on Graph Data. Botao Wang, Jia Li, Yang Liu, Jiashun Cheng, Yu Rong, Wenjia Wang, Fugee Tsung |
| 2023 | Deep Momentum Multi-Marginal Schrödinger Bridge. Tianrong Chen, Guan-Horng Liu, Molei Tao, Evangelos A. Theodorou |
| 2023 | Deep Neural Collapse Is Provably Optimal for the Deep Unconstrained Features Model. Peter Súkeník, Marco Mondelli, Christoph H. Lampert |
| 2023 | Deep Non-line-of-sight Imaging from Under-scanning Measurements. Yue Li, Yueyi Zhang, Juntian Ye, Feihu Xu, Zhiwei Xiong |
| 2023 | Deep Optimal Transport: A Practical Algorithm for Photo-realistic Image Restoration. Theo Adrai, Guy Ohayon, Michael Elad, Tomer Michaeli |
| 2023 | Deep Patch Visual Odometry. Zachary Teed, Lahav Lipson, Jia Deng |
| 2023 | Deep Recurrent Optimal Stopping. Niranjan Damera Venkata, Chiranjib Bhattacharyya |
| 2023 | Deep Reinforcement Learning with Plasticity Injection. Evgenii Nikishin, Junhyuk Oh, Georg Ostrovski, Clare Lyle, Razvan Pascanu, Will Dabney, André Barreto |
| 2023 | Deep Stochastic Processes via Functional Markov Transition Operators. Jin Xu, Emilien Dupont, Kaspar Märtens, Thomas Rainforth, Yee Whye Teh |
| 2023 | Deep learning with kernels through RKHM and the Perron-Frobenius operator. Yuka Hashimoto, Masahiro Ikeda, Hachem Kadri |
| 2023 | DeepACO: Neural-enhanced Ant Systems for Combinatorial Optimization. Haoran Ye, Jiarui Wang, Zhiguang Cao, Helan Liang, Yong Li |
| 2023 | DeepPCR: Parallelizing Sequential Operations in Neural Networks. Federico Danieli, Miguel Sarabia, Xavier Suau Cuadros, Pau Rodríguez, Luca Zappella |
| 2023 | DeepSimHO: Stable Pose Estimation for Hand-Object Interaction via Physics Simulation. Rong Wang, Wei Mao, Hongdong Li |
| 2023 | DeepfakeBench: A Comprehensive Benchmark of Deepfake Detection. Zhiyuan Yan, Yong Zhang, Xinhang Yuan, Siwei Lyu, Baoyuan Wu |
| 2023 | Defending Pre-trained Language Models as Few-shot Learners against Backdoor Attacks. Zhaohan Xi, Tianyu Du, Changjiang Li, Ren Pang, Shouling Ji, Jinghui Chen, Fenglong Ma, Ting Wang |
| 2023 | Defending against Data-Free Model Extraction by Distributionally Robust Defensive Training. Zhenyi Wang, Li Shen, Tongliang Liu, Tiehang Duan, Yanjun Zhu, Donglin Zhan, David S. Doermann, Mingchen Gao |
| 2023 | Degraded Polygons Raise Fundamental Questions of Neural Network Perception. Leonard Tang, Dan Ley |
| 2023 | Delayed Algorithms for Distributed Stochastic Weakly Convex Optimization. Wenzhi Gao, Qi Deng |
| 2023 | Delegated Classification. Eden Saig, Inbal Talgam-Cohen, Nir Rosenfeld |
| 2023 | Demo2Code: From Summarizing Demonstrations to Synthesizing Code via Extended Chain-of-Thought. Yuki Wang, Gonzalo Gonzalez-Pumariega, Yash Sharma, Sanjiban Choudhury |
| 2023 | Demographic Parity Constrained Minimax Optimal Regression under Linear Model. Kazuto Fukuchi, Jun Sakuma |
| 2023 | Demystifying Oversmoothing in Attention-Based Graph Neural Networks. Xinyi Wu, Amir Ajorlou, Zihui Wu, Ali Jadbabaie |
| 2023 | Demystifying Softmax Gating Function in Gaussian Mixture of Experts. Huy Nguyen, TrungTin Nguyen, Nhat Ho |
| 2023 | Demystifying Structural Disparity in Graph Neural Networks: Can One Size Fit All? Haitao Mao, Zhikai Chen, Wei Jin, Haoyu Han, Yao Ma, Tong Zhao, Neil Shah, Jiliang Tang |
| 2023 | Demystifying the Optimal Performance of Multi-Class Classification. Minoh Jeong, Martina Cardone, Alex Dytso |
| 2023 | Dense and Aligned Captions (DAC) Promote Compositional Reasoning in VL Models. Sivan Doveh, Assaf Arbelle, Sivan Harary, Roei Herzig, Donghyun Kim, Paola Cascante-Bonilla, Amit Alfassy, Rameswar Panda, Raja Giryes, Rogério Feris, Shimon Ullman, Leonid Karlinsky |
| 2023 | Dense-Exponential Random Features: Sharp Positive Estimators of the Gaussian Kernel. Valerii Likhosherstov, Krzysztof Marcin Choromanski, Kumar Avinava Dubey, Frederick Liu, Tamás Sarlós, Adrian Weller |
| 2023 | Density of States Prediction of Crystalline Materials via Prompt-guided Multi-Modal Transformer. Namkyeong Lee, Heewoong Noh, Sungwon Kim, Dongmin Hyun, Gyoung S. Na, Chanyoung Park |
| 2023 | Depth-discriminative Metric Learning for Monocular 3D Object Detection. Wonhyeok Choi, Mingyu Shin, Sunghoon Im |
| 2023 | Derandomized novelty detection with FDR control via conformal e-values. Meshi Bashari, Amir Epstein, Yaniv Romano, Matteo Sesia |
| 2023 | DesCo: Learning Object Recognition with Rich Language Descriptions. Liunian Harold Li, Zi-Yi Dou, Nanyun Peng, Kai-Wei Chang |
| 2023 | Describe, Explain, Plan and Select: Interactive Planning with LLMs Enables Open-World Multi-Task Agents. Zihao Wang, Shaofei Cai, Guanzhou Chen, Anji Liu, Xiaojian Ma, Yitao Liang |
| 2023 | Described Object Detection: Liberating Object Detection with Flexible Expressions. Chi Xie, Zhao Zhang, Yixuan Wu, Feng Zhu, Rui Zhao, Shuang Liang |
| 2023 | Design from Policies: Conservative Test-Time Adaptation for Offline Policy Optimization. Jinxin Liu, Hongyin Zhang, Zifeng Zhuang, Yachen Kang, Donglin Wang, Bin Wang |
| 2023 | Designing Robust Transformers using Robust Kernel Density Estimation. Xing Han, Tongzheng Ren, Tan Nguyen, Khai Nguyen, Joydeep Ghosh, Nhat Ho |
| 2023 | Detecting Any Human-Object Interaction Relationship: Universal HOI Detector with Spatial Prompt Learning on Foundation Models. Yichao Cao, Qingfei Tang, Xiu Su, Song Chen, Shan You, Xiaobo Lu, Chang Xu |
| 2023 | Detecting hidden confounding in observational data using multiple environments. Rickard Karlsson, Jesse H. Krijthe |
| 2023 | Detection Based Part-level Articulated Object Reconstruction from Single RGBD Image. Yuki Kawana, Tatsuya Harada |
| 2023 | DiT-3D: Exploring Plain Diffusion Transformers for 3D Shape Generation. Shentong Mo, Enze Xie, Ruihang Chu, Lanqing Hong, Matthias Nießner, Zhenguo Li |
| 2023 | DiViNeT: 3D Reconstruction from Disparate Views using Neural Template Regularization. Aditya Vora, Akshay Gadi Patil, Hao Zhang |
| 2023 | Diff-Foley: Synchronized Video-to-Audio Synthesis with Latent Diffusion Models. Simian Luo, Chuanhao Yan, Chenxu Hu, Hang Zhao |
| 2023 | Diff-Instruct: A Universal Approach for Transferring Knowledge From Pre-trained Diffusion Models. Weijian Luo, Tianyang Hu, Shifeng Zhang, Jiacheng Sun, Zhenguo Li, Zhihua Zhang |
| 2023 | DiffAttack: Evasion Attacks Against Diffusion-Based Adversarial Purification. Mintong Kang, Dawn Song, Bo Li |
| 2023 | DiffComplete: Diffusion-based Generative 3D Shape Completion. Ruihang Chu, Enze Xie, Shentong Mo, Zhenguo Li, Matthias Nießner, Chi-Wing Fu, Jiaya Jia |
| 2023 | DiffInfinite: Large Mask-Image Synthesis via Parallel Random Patch Diffusion in Histopathology. Marco Aversa, Gabriel Nobis, Miriam Hägele, Kai Standvoss, Mihaela Chirica, Roderick Murray-Smith, Ahmed M. Alaa, Lukas Ruff, Daniela Ivanova, Wojciech Samek, Frederick Klauschen, Bruno Sanguinetti, Luis Oala |
| 2023 | DiffKendall: A Novel Approach for Few-Shot Learning with Differentiable Kendall's Rank Correlation. Kaipeng Zheng, Huishuai Zhang, Weiran Huang |
| 2023 | DiffPack: A Torsional Diffusion Model for Autoregressive Protein Side-Chain Packing. Yangtian Zhang, Zuobai Zhang, Bozitao Zhong, Sanchit Misra, Jian Tang |
| 2023 | DiffSketcher: Text Guided Vector Sketch Synthesis through Latent Diffusion Models. Ximing Xing, Chuang Wang, Haitao Zhou, Jing Zhang, Qian Yu, Dong Xu |
| 2023 | DiffTraj: Generating GPS Trajectory with Diffusion Probabilistic Model. Yuanshao Zhu, Yongchao Ye, Shiyao Zhang, Xiangyu Zhao, James Yu |
| 2023 | DiffUTE: Universal Text Editing Diffusion Model. Haoxing Chen, Zhuoer Xu, Zhangxuan Gu, Jun Lan, Xing Zheng, Yaohui Li, Changhua Meng, Huijia Zhu, Weiqiang Wang |
| 2023 | DiffVL: Scaling Up Soft Body Manipulation using Vision-Language Driven Differentiable Physics. Zhiao Huang, Feng Chen, Yewen Pu, Chunru Lin, Hao Su, Chuang Gan |
| 2023 | Differentiable Blocks World: Qualitative 3D Decomposition by Rendering Primitives. Tom Monnier, Jake Austin, Angjoo Kanazawa, Alexei A. Efros, Mathieu Aubry |
| 2023 | Differentiable Clustering with Perturbed Spanning Forests. Lawrence Stewart, Francis R. Bach, Felipe Llinares-López, Quentin Berthet |
| 2023 | Differentiable Neuro-Symbolic Reasoning on Large-Scale Knowledge Graphs. Shengyuan Chen, Yunfeng Cai, Huang Fang, Xiao Huang, Mingming Sun |
| 2023 | Differentiable Random Partition Models. Thomas M. Sutter, Alain Ryser, Joram Liebeskind, Julia E. Vogt |
| 2023 | Differentiable Registration of Images and LiDAR Point Clouds with VoxelPoint-to-Pixel Matching. Junsheng Zhou, Baorui Ma, Wenyuan Zhang, Yi Fang, Yu-Shen Liu, Zhizhong Han |
| 2023 | Differentiable Sampling of Categorical Distributions Using the CatLog-Derivative Trick. Lennert De Smet, Emanuele Sansone, Pedro Zuidberg Dos Martires |
| 2023 | Differentiable and Stable Long-Range Tracking of Multiple Posterior Modes. Ali Younis, Erik B. Sudderth |
| 2023 | Differentiable sorting for censored time-to-event data. Andre Vauvelle, Benjamin Wild, Roland Eils, Spiros C. Denaxas |
| 2023 | Differentially Private Approximate Near Neighbor Counting in High Dimensions. Alexandr Andoni, Piotr Indyk, Sepideh Mahabadi, Shyam Narayanan |
| 2023 | Differentially Private Decoupled Graph Convolutions for Multigranular Topology Protection. Eli Chien, Wei-Ning Chen, Chao Pan, Pan Li, Ayfer Özgür, Olgica Milenkovic |
| 2023 | Differentially Private Image Classification by Learning Priors from Random Processes. Xinyu Tang, Ashwinee Panda, Vikash Sehwag, Prateek Mittal |
| 2023 | Differentially Private Statistical Inference through β-Divergence One Posterior Sampling. Jack Jewson, Sahra Ghalebikesabi, Chris C. Holmes |
| 2023 | DiffuseBot: Breeding Soft Robots With Physics-Augmented Generative Diffusion Models. Tsun-Hsuan Johnson Wang, Juntian Zheng, Pingchuan Ma, Yilun Du, Byungchul Kim, Andrew Spielberg, Joshua B. Tenenbaum, Chuang Gan, Daniela Rus |
| 2023 | Diffused Redundancy in Pre-trained Representations. Vedant Nanda, Till Speicher, John P. Dickerson, Krishna P. Gummadi, Soheil Feizi, Adrian Weller |
| 2023 | Diffused Task-Agnostic Milestone Planner. Mineui Hong, Minjae Kang, Songhwai Oh |
| 2023 | Diffusion Hyperfeatures: Searching Through Time and Space for Semantic Correspondence. Grace Luo, Lisa Dunlap, Dong Huk Park, Aleksander Holynski, Trevor Darrell |
| 2023 | Diffusion Model for Graph Inverse Problems: Towards Effective Source Localization on Complex Networks. Xin Yan, Hui Fang, Qiang He |
| 2023 | Diffusion Model is an Effective Planner and Data Synthesizer for Multi-Task Reinforcement Learning. Haoran He, Chenjia Bai, Kang Xu, Zhuoran Yang, Weinan Zhang, Dong Wang, Bin Zhao, Xuelong Li |
| 2023 | Diffusion Models and Semi-Supervised Learners Benefit Mutually with Few Labels. Zebin You, Yong Zhong, Fan Bao, Jiacheng Sun, Chongxuan Li, Jun Zhu |
| 2023 | Diffusion Probabilistic Models for Structured Node Classification. Hyosoon Jang, Seonghyun Park, Sangwoo Mo, Sungsoo Ahn |
| 2023 | Diffusion Representation for Asymmetric Kernels via Magnetic Transform. Mingzhen He, Fan He, Ruikai Yang, Xiaolin Huang |
| 2023 | Diffusion Schrödinger Bridge Matching. Yuyang Shi, Valentin De Bortoli, Andrew Campbell, Arnaud Doucet |
| 2023 | Diffusion Self-Guidance for Controllable Image Generation. Dave Epstein, Allan Jabri, Ben Poole, Alexei A. Efros, Aleksander Holynski |
| 2023 | Diffusion with Forward Models: Solving Stochastic Inverse Problems Without Direct Supervision. Ayush Tewari, Tianwei Yin, George Cazenavette, Semon Rezchikov, Josh Tenenbaum, Frédo Durand, Bill Freeman, Vincent Sitzmann |
| 2023 | Diffusion-Based Adversarial Sample Generation for Improved Stealthiness and Controllability. Haotian Xue, Alexandre Araujo, Bin Hu, Yongxin Chen |
| 2023 | Diffusion-Based Probabilistic Uncertainty Estimation for Active Domain Adaptation. Zhekai Du, Jingjing Li |
| 2023 | Diffusion-SS3D: Diffusion Model for Semi-supervised 3D Object Detection. Cheng-Ju Ho, Chen-Hsuan Tai, Yen-Yu Lin, Ming-Hsuan Yang, Yi-Hsuan Tsai |
| 2023 | Digital Typhoon: Long-term Satellite Image Dataset for the Spatio-Temporal Modeling of Tropical Cyclones. Asanobu Kitamoto, Jared Hwang, Bastien Vuillod, Lucas Gautier, Yingtao Tian, Tarin Clanuwat |
| 2023 | DinoSR: Self-Distillation and Online Clustering for Self-supervised Speech Representation Learning. Alexander H. Liu, Heng-Jui Chang, Michael Auli, Wei-Ning Hsu, James R. Glass |
| 2023 | Diplomat: A Dialogue Dataset for Situated PragMATic Reasoning. Hengli Li, Song-Chun Zhu, Zilong Zheng |
| 2023 | Direct Diffusion Bridge using Data Consistency for Inverse Problems. Hyungjin Chung, Jeongsol Kim, Jong Chul Ye |
| 2023 | Direct Preference Optimization: Your Language Model is Secretly a Reward Model. Rafael Rafailov, Archit Sharma, Eric Mitchell, Christopher D. Manning, Stefano Ermon, Chelsea Finn |
| 2023 | Direct Preference-based Policy Optimization without Reward Modeling. Gaon An, Junhyeok Lee, Xingdong Zuo, Norio Kosaka, Kyung-Min Kim, Hyun Oh Song |
| 2023 | Direct Training of SNN using Local Zeroth Order Method. Bhaskar Mukhoty, Velibor Bojkovic, William de Vazelhes, Xiaohan Zhao, Giulia De Masi, Huan Xiong, Bin Gu |
| 2023 | Directed Cyclic Graph for Causal Discovery from Multivariate Functional Data. Saptarshi Roy, Raymond K. W. Wong, Yang Ni |
| 2023 | Direction-oriented Multi-objective Learning: Simple and Provable Stochastic Algorithms. Peiyao Xiao, Hao Ban, Kaiyi Ji |
| 2023 | Directional diffusion models for graph representation learning. Run Yang, Yuling Yang, Fan Zhou, Qiang Sun |
| 2023 | Dis-inhibitory neuronal circuits can control the sign of synaptic plasticity. Julian Rossbroich, Friedemann Zenke |
| 2023 | DisDiff: Unsupervised Disentanglement of Diffusion Probabilistic Models. Tao Yang, Yuwang Wang, Yan Lu, Nanning Zheng |
| 2023 | Disambiguated Attention Embedding for Multi-Instance Partial-Label Learning. Wei Tang, Weijia Zhang, Min-Ling Zhang |
| 2023 | Discover and Align Taxonomic Context Priors for Open-world Semi-Supervised Learning. Yu Wang, Zhun Zhong, Pengchong Qiao, Xuxin Cheng, Xiawu Zheng, Chang Liu, Nicu Sebe, Rongrong Ji, Jie Chen |
| 2023 | Discovering General Reinforcement Learning Algorithms with Adversarial Environment Design. Matthew Thomas Jackson, Minqi Jiang, Jack Parker-Holder, Risto Vuorio, Chris Lu, Gregory Farquhar, Shimon Whiteson, Jakob N. Foerster |
| 2023 | Discovering Hierarchical Achievements in Reinforcement Learning via Contrastive Learning. Seungyong Moon, Junyoung Yeom, Bumsoo Park, Hyun Oh Song |
| 2023 | Discovering Intrinsic Spatial-Temporal Logic Rules to Explain Human Actions. Chengzhi Cao, Chao Yang, Ruimao Zhang, Shuang Li |
| 2023 | Discrete-Smoothness in Online Algorithms with Predictions. Yossi Azar, Debmalya Panigrahi, Noam Touitou |
| 2023 | Discriminative Calibration: Check Bayesian Computation from Simulations and Flexible Classifier. Yuling Yao, Justin Domke |
| 2023 | Discriminative Feature Attributions: Bridging Post Hoc Explainability and Inherent Interpretability. Usha Bhalla, Suraj Srinivas, Himabindu Lakkaraju |
| 2023 | Disentangled Counterfactual Learning for Physical Audiovisual Commonsense Reasoning. Changsheng Lv, Shuai Zhang, Yapeng Tian, Mengshi Qi, Huadong Ma |
| 2023 | Disentangled Wasserstein Autoencoder for T-Cell Receptor Engineering. Tianxiao Li, Hongyu Guo, Filippo Grazioli, Mark Gerstein, Martin Renqiang Min |
| 2023 | Disentanglement via Latent Quantization. Kyle Hsu, William Dorrell, James C. R. Whittington, Jiajun Wu, Chelsea Finn |
| 2023 | Disentangling Cognitive Diagnosis with Limited Exercise Labels. Xiangzhi Chen, Le Wu, Fei Liu, Lei Chen, Kun Zhang, Richang Hong, Meng Wang |
| 2023 | Disentangling Voice and Content with Self-Supervision for Speaker Recognition. Tianchi Liu, Kong Aik Lee, Qiongqiong Wang, Haizhou Li |
| 2023 | Dissecting Chain-of-Thought: Compositionality through In-Context Filtering and Learning. Yingcong Li, Kartik Sreenivasan, Angeliki Giannou, Dimitris Papailiopoulos, Samet Oymak |
| 2023 | Distance-Restricted Folklore Weisfeiler-Leman GNNs with Provable Cycle Counting Power. Junru Zhou, Jiarui Feng, Xiyuan Wang, Muhan Zhang |
| 2023 | Distilling Out-of-Distribution Robustness from Vision-Language Foundation Models. Andy Zhou, Jindong Wang, Yu-Xiong Wang, Haohan Wang |
| 2023 | Distributed Inference and Fine-tuning of Large Language Models Over The Internet. Alexander Borzunov, Max Ryabinin, Artem Chumachenko, Dmitry Baranchuk, Tim Dettmers, Younes Belkada, Pavel Samygin, Colin A. Raffel |
| 2023 | Distributed Personalized Empirical Risk Minimization. Yuyang Deng, Mohammad Mahdi Kamani, Pouria Mahdavinia, Mehrdad Mahdavi |
| 2023 | Distribution Learnability and Robustness. Shai Ben-David, Alex Bie, Gautam Kamath, Tosca Lechner |
| 2023 | Distribution-Free Model-Agnostic Regression Calibration via Nonparametric Methods. Shang Liu, Zhongze Cai, Xiaocheng Li |
| 2023 | Distribution-Free Statistical Dispersion Control for Societal Applications. Zhun Deng, Thomas P. Zollo, Jake Snell, Toniann Pitassi, Richard S. Zemel |
| 2023 | Distributional Learning of Variational AutoEncoder: Application to Synthetic Data Generation. Seunghwan An, Jong-June Jeon |
| 2023 | Distributional Model Equivalence for Risk-Sensitive Reinforcement Learning. Tyler Kastner, Murat A. Erdogdu, Amir-massoud Farahmand |
| 2023 | Distributional Pareto-Optimal Multi-Objective Reinforcement Learning. Xin-Qiang Cai, Pushi Zhang, Li Zhao, Jiang Bian, Masashi Sugiyama, Ashley Llorens |
| 2023 | Distributional Policy Evaluation: a Maximum Entropy approach to Representation Learning. Riccardo Zamboni, Alberto Maria Metelli, Marcello Restelli |
| 2023 | Distributionally Robust Bayesian Optimization with φ-divergences. Hisham Husain, Vu Nguyen, Anton van den Hengel |
| 2023 | Distributionally Robust Ensemble of Lottery Tickets Towards Calibrated Sparse Network Training. Hitesh Sapkota, Dingrong Wang, Zhiqiang Tao, Qi Yu |
| 2023 | Distributionally Robust Linear Quadratic Control. Bahar Taskesen, Dan A. Iancu, Çagil Koçyigit, Daniel Kuhn |
| 2023 | Distributionally Robust Skeleton Learning of Discrete Bayesian Networks. Yeshu Li, Brian D. Ziebart |
| 2023 | Diverse Community Data for Benchmarking Data Privacy Algorithms. Aniruddha Sen, Christine Task, Dhruv Kapur, Gary Howarth, Karan Bhagat |
| 2023 | Diverse Conventions for Human-AI Collaboration. Bidipta Sarkar, Andy Shih, Dorsa Sadigh |
| 2023 | Diverse Shape Completion via Style Modulated Generative Adversarial Networks. Wesley Khademi, Fuxin Li |
| 2023 | Diversified Outlier Exposure for Out-of-Distribution Detection via Informative Extrapolation. Jianing Zhu, Yu Geng, Jiangchao Yao, Tongliang Liu, Gang Niu, Masashi Sugiyama, Bo Han |
| 2023 | Diversify & Conquer: Outcome-directed Curriculum RL via Out-of-Distribution Disagreement. Daesol Cho, Seungjae Lee, H. Jin Kim |
| 2023 | Diversify Your Vision Datasets with Automatic Diffusion-based Augmentation. Lisa Dunlap, Alyssa Umino, Han Zhang, Jiezhi Yang, Joseph E. Gonzalez, Trevor Darrell |
| 2023 | Diversifying Spatial-Temporal Perception for Video Domain Generalization. Kun-Yu Lin, Jia-Run Du, Yipeng Gao, Jiaming Zhou, Wei-Shi Zheng |
| 2023 | Divide, Evaluate, and Refine: Evaluating and Improving Text-to-Image Alignment with Iterative VQA Feedback. Jaskirat Singh, Liang Zheng |
| 2023 | Django: Detecting Trojans in Object Detection Models via Gaussian Focus Calibration. Guangyu Shen, Siyuan Cheng, Guanhong Tao, Kaiyuan Zhang, Yingqi Liu, Shengwei An, Shiqing Ma, Xiangyu Zhang |
| 2023 | Do Not Marginalize Mechanisms, Rather Consolidate! Moritz Willig, Matej Zecevic, Devendra Singh Dhami, Kristian Kersting |
| 2023 | Do SSL Models Have Déjà Vu? A Case of Unintended Memorization in Self-supervised Learning. Casey Meehan, Florian Bordes, Pascal Vincent, Kamalika Chaudhuri, Chuan Guo |
| 2023 | DoReMi: Optimizing Data Mixtures Speeds Up Language Model Pretraining. Sang Michael Xie, Hieu Pham, Xuanyi Dong, Nan Du, Hanxiao Liu, Yifeng Lu, Percy Liang, Quoc V. Le, Tengyu Ma, Adams Wei Yu |
| 2023 | DoWG Unleashed: An Efficient Universal Parameter-Free Gradient Descent Method. Ahmed Khaled, Konstantin Mishchenko, Chi Jin |
| 2023 | Does Continual Learning Meet Compositionality? New Benchmarks and An Evaluation Framework. Weiduo Liao, Ying Wei, Mingchen Jiang, Qingfu Zhang, Hisao Ishibuchi |
| 2023 | Does Graph Distillation See Like Vision Dataset Counterpart? Beining Yang, Kai Wang, Qingyun Sun, Cheng Ji, Xingcheng Fu, Hao Tang, Yang You, Jianxin Li |
| 2023 | Does Invariant Graph Learning via Environment Augmentation Learn Invariance? Yongqiang Chen, Yatao Bian, Kaiwen Zhou, Binghui Xie, Bo Han, James Cheng |
| 2023 | Does Localization Inform Editing? Surprising Differences in Causality-Based Localization vs. Knowledge Editing in Language Models. Peter Hase, Mohit Bansal, Been Kim, Asma Ghandeharioun |
| 2023 | Does Visual Pretraining Help End-to-End Reasoning? Chen Sun, Calvin Luo, Xingyi Zhou, Anurag Arnab, Cordelia Schmid |
| 2023 | Does a sparse ReLU network training problem always admit an optimum ? Quoc-Tung Le, Rémi Gribonval, Elisa Riccietti |
| 2023 | Does progress on ImageNet transfer to real-world datasets? Alex Fang, Simon Kornblith, Ludwig Schmidt |
| 2023 | Domain Adaptive Imitation Learning with Visual Observation. Sungho Choi, Seungyul Han, Woojun Kim, Jongseong Chae, Whiyoung Jung, Youngchul Sung |
| 2023 | Domain Agnostic Fourier Neural Operators. Ning Liu, Siavash Jafarzadeh, Yue Yu |
| 2023 | Domain Re-Modulation for Few-Shot Generative Domain Adaptation. Yi Wu, Ziqiang Li, Chaoyue Wang, Heliang Zheng, Shanshan Zhao, Bin Li, Dacheng Tao |
| 2023 | Domain Watermark: Effective and Harmless Dataset Copyright Protection is Closed at Hand. Junfeng Guo, Yiming Li, Lixu Wang, Shu-Tao Xia, Heng Huang, Cong Liu, Bo Li |
| 2023 | Don't Stop Pretraining? Make Prompt-based Fine-tuning Powerful Learner. Zhengxiang Shi, Aldo Lipani |
| 2023 | Don't be so Monotone: Relaxing Stochastic Line Search in Over-Parameterized Models. Leonardo Galli, Holger Rauhut, Mark Schmidt |
| 2023 | Don't blame Dataset Shift! Shortcut Learning due to Gradients and Cross Entropy. Aahlad Manas Puli, Lily H. Zhang, Yoav Wald, Rajesh Ranganath |
| 2023 | Don't just prune by magnitude! Your mask topology is a secret weapon. Duc Hoang, Souvik Kundu, Shiwei Liu, Zhangyang Wang |
| 2023 | Double Auctions with Two-sided Bandit Feedback. Soumya Basu, Abishek Sankararaman |
| 2023 | Double Gumbel Q-Learning. David Yu-Tung Hui, Aaron C. Courville, Pierre-Luc Bacon |
| 2023 | Double Pessimism is Provably Efficient for Distributionally Robust Offline Reinforcement Learning: Generic Algorithm and Robust Partial Coverage. Jose H. Blanchet, Miao Lu, Tong Zhang, Han Zhong |
| 2023 | Double Randomized Underdamped Langevin with Dimension-Independent Convergence Guarantee. Yuanshi Liu, Cong Fang, Tong Zhang |
| 2023 | Double and Single Descent in Causal Inference with an Application to High-Dimensional Synthetic Control. Jann Spiess, Guido Imbens, Amar Venugopal |
| 2023 | Doubly Constrained Fair Clustering. John P. Dickerson, Seyed A. Esmaeili, Jamie H. Morgenstern, Claire Jie Zhang |
| 2023 | Doubly Robust Augmented Transfer for Meta-Reinforcement Learning. Yuankun Jiang, Nuowen Kan, Chenglin Li, Wenrui Dai, Junni Zou, Hongkai Xiong |
| 2023 | Doubly-Robust Self-Training. Banghua Zhu, Mingyu Ding, Philip L. Jacobson, Ming Wu, Wei Zhan, Michael I. Jordan, Jiantao Jiao |
| 2023 | Dream the Impossible: Outlier Imagination with Diffusion Models. Xuefeng Du, Yiyou Sun, Jerry Zhu, Yixuan Li |
| 2023 | DreamHuman: Animatable 3D Avatars from Text. Nikos Kolotouros, Thiemo Alldieck, Andrei Zanfir, Eduard Gabriel Bazavan, Mihai Fieraru, Cristian Sminchisescu |
| 2023 | DreamSim: Learning New Dimensions of Human Visual Similarity using Synthetic Data. Stephanie Fu, Netanel Tamir, Shobhita Sundaram, Lucy Chai, Richard Zhang, Tali Dekel, Phillip Isola |
| 2023 | DreamSparse: Escaping from Plato's Cave with 2D Diffusion Model Given Sparse Views. Paul Yoo, Jiaxian Guo, Yutaka Matsuo, Shixiang Shane Gu |
| 2023 | DreamWaltz: Make a Scene with Complex 3D Animatable Avatars. Yukun Huang, Jianan Wang, Ailing Zeng, He Cao, Xianbiao Qi, Yukai Shi, Zheng-Jun Zha, Lei Zhang |
| 2023 | Drift doesn't Matter: Dynamic Decomposition with Diffusion Reconstruction for Unstable Multivariate Time Series Anomaly Detection. Chengsen Wang, Zirui Zhuang, Qi Qi, Jingyu Wang, Xingyu Wang, Haifeng Sun, Jianxin Liao |
| 2023 | DropCompute: simple and more robust distributed synchronous training via compute variance reduction. Niv Giladi, Shahar Gottlieb, Moran Shkolnik, Asaf Karnieli, Ron Banner, Elad Hoffer, Kfir Y. Levy, Daniel Soudry |
| 2023 | DropPos: Pre-Training Vision Transformers by Reconstructing Dropped Positions. Haochen Wang, Junsong Fan, Yuxi Wang, Kaiyou Song, Tong Wang, Zhaoxiang Zhang |
| 2023 | DrugCLIP: Contrasive Protein-Molecule Representation Learning for Virtual Screening. Bowen Gao, Bo Qiang, Haichuan Tan, Yinjun Jia, Minsi Ren, Minsi Lu, Jingjing Liu, Wei-Ying Ma, Yanyan Lan |
| 2023 | Dual Mean-Teacher: An Unbiased Semi-Supervised Framework for Audio-Visual Source Localization. Yuxin Guo, Shijie Ma, Hu Su, Zhiqing Wang, Yuhao Zhao, Wei Zou, Siyang Sun, Yun Zheng |
| 2023 | Dual Self-Awareness Value Decomposition Framework without Individual Global Max for Cooperative MARL. Zhiwei Xu, Bin Zhang, Dapeng Li, Guangchong Zhou, Zeren Zhang, Guoliang Fan |
| 2023 | DynGFN: Towards Bayesian Inference of Gene Regulatory Networks with GFlowNets. Lazar Atanackovic, Alexander Tong, Bo Wang, Leo J. Lee, Yoshua Bengio, Jason S. Hartford |
| 2023 | DynPoint: Dynamic Neural Point For View Synthesis. Kaichen Zhou, Jia-Xing Zhong, Sangyun Shin, Kai Lu, Yiyuan Yang, Andrew Markham, Niki Trigoni |
| 2023 | DynaDojo: An Extensible Platform for Benchmarking Scaling in Dynamical System Identification. Logan M. Bhamidipaty, Tommy Bruzzese, Caryn Tran, Rami Ratl Mrad, Maxinder S. Kanwal |
| 2023 | Dynamic Context Pruning for Efficient and Interpretable Autoregressive Transformers. Sotiris Anagnostidis, Dario Pavllo, Luca Biggio, Lorenzo Noci, Aurélien Lucchi, Thomas Hofmann |
| 2023 | Dynamic Non-monotone Submodular Maximization. Kiarash Banihashem, Leyla Biabani, Samira Goudarzi, MohammadTaghi Hajiaghayi, Peyman Jabbarzade, Morteza Monemizadeh |
| 2023 | Dynamic Personalized Federated Learning with Adaptive Differential Privacy. Xiyuan Yang, Wenke Huang, Mang Ye |
| 2023 | Dynamic Pricing and Learning with Bayesian Persuasion. Shipra Agrawal, Yiding Feng, Wei Tang |
| 2023 | Dynamic Prompt Learning: Addressing Cross-Attention Leakage for Text-Based Image Editing. Kai Wang, Fei Yang, Shiqi Yang, Muhammad Atif Butt, Joost van de Weijer |
| 2023 | Dynamic Regret of Adversarial Linear Mixture MDPs. Long-Fei Li, Peng Zhao, Zhi-Hua Zhou |
| 2023 | Dynamic Sparsity Is Channel-Level Sparsity Learner. Lu Yin, Gen Li, Meng Fang, Li Shen, Tianjin Huang, Zhangyang Wang, Vlado Menkovski, Xiaolong Ma, Mykola Pechenizkiy, Shiwei Liu |
| 2023 | Dynamic Tensor Decomposition via Neural Diffusion-Reaction Processes. Zheng Wang, Shikai Fang, Shibo Li, Shandian Zhe |
| 2023 | Dynamically Masked Discriminator for GANs. Wentian Zhang, Haozhe Liu, Bing Li, Jinheng Xie, Yawen Huang, Yuexiang Li, Yefeng Zheng, Bernard Ghanem |
| 2023 | Dynamics Generalisation in Reinforcement Learning via Adaptive Context-Aware Policies. Michael Beukman, Devon Jarvis, Richard Klein, Steven James, Benjamin Rosman |
| 2023 | Dynamics of Finite Width Kernel and Prediction Fluctuations in Mean Field Neural Networks. Blake Bordelon, Cengiz Pehlevan |
| 2023 | Dynamo-Depth: Fixing Unsupervised Depth Estimation for Dynamical Scenes. Yihong Sun, Bharath Hariharan |
| 2023 | DäRF: Boosting Radiance Fields from Sparse Input Views with Monocular Depth Adaptation. Jiuhn Song, Seonghoon Park, Honggyu An, Seokju Cho, Minseop Kwak, Sungjin Cho, Seungryong Kim |
| 2023 | E Shihang Feng, Hanchen Wang, Chengyuan Deng, Yinan Feng, Yanhua Liu, Min Zhu, Peng Jin, Yinpeng Chen, Youzuo Lin |
| 2023 | E2PNet: Event to Point Cloud Registration with Spatio-Temporal Representation Learning. Xiuhong Lin, Changjie Qiu, Zhipeng Cai, Siqi Shen, Yu Zang, Weiquan Liu, Xuesheng Bian, Matthias Müller, Cheng Wang |
| 2023 | ECG-QA: A Comprehensive Question Answering Dataset Combined With Electrocardiogram. Jungwoo Oh, Gyubok Lee, Seongsu Bae, Joon-Myoung Kwon, Edward Choi |
| 2023 | EDGI: Equivariant Diffusion for Planning with Embodied Agents. Johann Brehmer, Joey Bose, Pim de Haan, Taco S. Cohen |
| 2023 | EHRSHOT: An EHR Benchmark for Few-Shot Evaluation of Foundation Models. Michael Wornow, Rahul Thapa, Ethan Steinberg, Jason A. Fries, Nigam Shah |
| 2023 | EHRXQA: A Multi-Modal Question Answering Dataset for Electronic Health Records with Chest X-ray Images. Seongsu Bae, Daeun Kyung, Jaehee Ryu, Eunbyeol Cho, Gyubok Lee, Sunjun Kweon, Jungwoo Oh, Lei Ji, Eric I-Chao Chang, Tackeun Kim, Edward Choi |
| 2023 | EICIL: Joint Excitatory Inhibitory Cycle Iteration Learning for Deep Spiking Neural Networks. Zihang Shao, Xuanye Fang, Yaxin Li, Chaoran Feng, Jiangrong Shen, Qi Xu |
| 2023 | ELDEN: Exploration via Local Dependencies. Zizhao Wang, Jiaheng Hu, Peter Stone, Roberto Martín-Martín |
| 2023 | EMBERSim: A Large-Scale Databank for Boosting Similarity Search in Malware Analysis. Dragos-Georgian Corlatescu, Alexandru Dinu, Mihaela Gaman, Paul Sumedrea |
| 2023 | EMMA-X: An EM-like Multilingual Pre-training Algorithm for Cross-lingual Representation Learning. Ping Guo, Xiangpeng Wei, Yue Hu, Baosong Yang, Dayiheng Liu, Fei Huang, Jun Xie |
| 2023 | EPIC Fields: Marrying 3D Geometry and Video Understanding. Vadim Tschernezki, Ahmad Darkhalil, Zhifan Zhu, David Fouhey, Iro Laina, Diane Larlus, Dima Damen, Andrea Vedaldi |
| 2023 | ESSEN: Improving Evolution State Estimation for Temporal Networks using Von Neumann Entropy. Qiyao Huang, Yingyue Zhang, Zhihong Zhang, Edwin R. Hancock |
| 2023 | EV-Eye: Rethinking High-frequency Eye Tracking through the Lenses of Event Cameras. Guangrong Zhao, Yurun Yang, Jingwei Liu, Ning Chen, Yiran Shen, Hongkai Wen, Guohao Lan |
| 2023 | Easy Learning from Label Proportions. Róbert Busa-Fekete, Heejin Choi, Travis Dick, Claudio Gentile, Andrés Muñoz Medina |
| 2023 | Echoes Beyond Points: Unleashing the Power of Raw Radar Data in Multi-modality Fusion. Yang Liu, Feng Wang, Naiyan Wang, Zhaoxiang Zhang |
| 2023 | Ecosystem-level Analysis of Deployed Machine Learning Reveals Homogeneous Outcomes. Connor Toups, Rishi Bommasani, Kathleen Creel, Sarah H. Bana, Dan Jurafsky, Percy Liang |
| 2023 | Effective Bayesian Heteroscedastic Regression with Deep Neural Networks. Alexander Immer, Emanuele Palumbo, Alexander Marx, Julia E. Vogt |
| 2023 | Effective Human-AI Teams via Learned Natural Language Rules and Onboarding. Hussein Mozannar, Jimin J. Lee, Dennis Wei, Prasanna Sattigeri, Subhro Das, David A. Sontag |
| 2023 | Effective Robustness against Natural Distribution Shifts for Models with Different Training Data. Zhouxing Shi, Nicholas Carlini, Ananth Balashankar, Ludwig Schmidt, Cho-Jui Hsieh, Alex Beutel, Yao Qin |
| 2023 | Effective Targeted Attacks for Adversarial Self-Supervised Learning. Minseon Kim, Hyeonjeong Ha, Sooel Son, Sung Ju Hwang |
| 2023 | Effectively Learning Initiation Sets in Hierarchical Reinforcement Learning. Akhil Bagaria, Ben Abbatematteo, Omer Gottesman, Matt Corsaro, Sreehari Rammohan, George Dimitri Konidaris |
| 2023 | Efficient Activation Function Optimization through Surrogate Modeling. Garrett Bingham, Risto Miikkulainen |
| 2023 | Efficient Adaptation of Large Vision Transformer via Adapter Re-Composing. Wei Dong, Dawei Yan, Zhijun Lin, Peng Wang |
| 2023 | Efficient Adversarial Attacks on Online Multi-agent Reinforcement Learning. Guanlin Liu, Lifeng Lai |
| 2023 | Efficient Adversarial Contrastive Learning via Robustness-Aware Coreset Selection. Xilie Xu, Jingfeng Zhang, Feng Liu, Masashi Sugiyama, Mohan S. Kankanhalli |
| 2023 | Efficient Algorithms for Generalized Linear Bandits with Heavy-tailed Rewards. Bo Xue, Yimu Wang, Yuanyu Wan, Jinfeng Yi, Lijun Zhang |
| 2023 | Efficient Batched Algorithm for Contextual Linear Bandits with Large Action Space via Soft Elimination. Osama A. Hanna, Lin Yang, Christina Fragouli |
| 2023 | Efficient Bayesian Learning Curve Extrapolation using Prior-Data Fitted Networks. Steven Adriaensen, Herilalaina Rakotoarison, Samuel Müller, Frank Hutter |
| 2023 | Efficient Beam Tree Recursion. Jishnu Ray Chowdhury, Cornelia Caragea |
| 2023 | Efficient Data Subset Selection to Generalize Training Across Models: Transductive and Inductive Networks. Eeshaan Jain, Tushar Nandy, Gaurav Aggarwal, Ashish Tendulkar, Rishabh K. Iyer, Abir De |
| 2023 | Efficient Diffusion Policies For Offline Reinforcement Learning. Bingyi Kang, Xiao Ma, Chao Du, Tianyu Pang, Shuicheng Yan |
| 2023 | Efficient Equivariant Transfer Learning from Pretrained Models. Sourya Basu, Pulkit Katdare, Prasanna Sattigeri, Vijil Chenthamarakshan, Katherine Driggs-Campbell, Payel Das, Lav R. Varshney |
| 2023 | Efficient Exploration in Continuous-time Model-based Reinforcement Learning. Lenart Treven, Jonas Hübotter, Bhavya Sukhija, Florian Dörfler, Andreas Krause |
| 2023 | Efficient Hyper-parameter Optimization with Cubic Regularization. Zhenqian Shen, Hansi Yang, Yong Li, James T. Kwok, Quanming Yao |
| 2023 | Efficient Learning of Linear Graph Neural Networks via Node Subsampling. Seiyun Shin, Ilan Shomorony, Han Zhao |
| 2023 | Efficient Low-rank Backpropagation for Vision Transformer Adaptation. Yuedong Yang, Hung-Yueh Chiang, Guihong Li, Diana Marculescu, Radu Marculescu |
| 2023 | Efficient Meta Neural Heuristic for Multi-Objective Combinatorial Optimization. Jinbiao Chen, Jiahai Wang, Zizhen Zhang, Zhiguang Cao, Te Ye, Siyuan Chen |
| 2023 | Efficient Model-Free Exploration in Low-Rank MDPs. Zakaria Mhammedi, Adam Block, Dylan J. Foster, Alexander Rakhlin |
| 2023 | Efficient Neural Music Generation. Max W. Y. Lam, Qiao Tian, Tang Li, Zongyu Yin, Siyuan Feng, Ming Tu, Yuliang Ji, Rui Xia, Mingbo Ma, Xuchen Song, Jitong Chen, Yuping Wang, Yuxuan Wang |
| 2023 | Efficient Online Clustering with Moving Costs. Dimitris Christou, Stratis Skoulakis, Volkan Cevher |
| 2023 | Efficient Policy Adaptation with Contrastive Prompt Ensemble for Embodied Agents. Wonje Choi, Woo Kyung Kim, Seunghyun Kim, Honguk Woo |
| 2023 | Efficient Potential-based Exploration in Reinforcement Learning using Inverse Dynamic Bisimulation Metric. Yiming Wang, Ming Yang, Renzhi Dong, Binbin Sun, Furui Liu, Leong Hou U |
| 2023 | Efficient RL with Impaired Observability: Learning to Act with Delayed and Missing State Observations. Minshuo Chen, Yu Bai, H. Vincent Poor, Mengdi Wang |
| 2023 | Efficient Robust Bayesian Optimization for Arbitrary Uncertain inputs. Lin Yang, Junlong Lyu, Wenlong Lyu, Zhitang Chen |
| 2023 | Efficient Sampling of Stochastic Differential Equations with Positive Semi-Definite Models. Anant Raj, Umut Simsekli, Alessandro Rudi |
| 2023 | Efficient Subgame Refinement for Extensive-form Games. Zhenxing Ge, Zheng Xu, Tianyu Ding, Wenbin Li, Yang Gao |
| 2023 | Efficient Symbolic Policy Learning with Differentiable Symbolic Expression. Jiaming Guo, Rui Zhang, Shaohui Peng, Qi Yi, Xing Hu, Ruizhi Chen, Zidong Du, Xishan Zhang, Ling Li, Qi Guo, Yunji Chen |
| 2023 | Efficient Test-Time Adaptation for Super-Resolution with Second-Order Degradation and Reconstruction. Zeshuai Deng, Zhuokun Chen, Shuaicheng Niu, Thomas H. Li, Bohan Zhuang, Mingkui Tan |
| 2023 | Efficient Testable Learning of Halfspaces with Adversarial Label Noise. Ilias Diakonikolas, Daniel Kane, Vasilis Kontonis, Sihan Liu, Nikos Zarifis |
| 2023 | Efficient Training of Energy-Based Models Using Jarzynski Equality. Davide Carbone, Mengjian Hua, Simon Coste, Eric Vanden-Eijnden |
| 2023 | Efficient Uncertainty Quantification and Reduction for Over-Parameterized Neural Networks. Ziyi Huang, Henry Lam, Haofeng Zhang |
| 2023 | Efficiently incorporating quintuple interactions into geometric deep learning force fields. Zun Wang, Guoqing Liu, Yichi Zhou, Tong Wang, Bin Shao |
| 2023 | Ego4D Goal-Step: Toward Hierarchical Understanding of Procedural Activities. Yale Song, Eugene Byrne, Tushar Nagarajan, Huiyu Wang, Miguel Martin, Lorenzo Torresani |
| 2023 | EgoDistill: Egocentric Head Motion Distillation for Efficient Video Understanding. Shuhan Tan, Tushar Nagarajan, Kristen Grauman |
| 2023 | EgoEnv: Human-centric environment representations from egocentric video. Tushar Nagarajan, Santhosh Kumar Ramakrishnan, Ruta Desai, James Hillis, Kristen Grauman |
| 2023 | EgoSchema: A Diagnostic Benchmark for Very Long-form Video Language Understanding. Karttikeya Mangalam, Raiymbek Akshulakov, Jitendra Malik |
| 2023 | EgoTracks: A Long-term Egocentric Visual Object Tracking Dataset. Hao Tang, Kevin J. Liang, Kristen Grauman, Matt Feiszli, Weiyao Wang |
| 2023 | Egocentric Planning for Scalable Embodied Task Achievement. Xiaotian Liu, Héctor Palacios, Christian Muise |
| 2023 | Elastic Decision Transformer. Yueh-Hua Wu, Xiaolong Wang, Masashi Hamaya |
| 2023 | Eliciting User Preferences for Personalized Multi-Objective Decision Making through Comparative Feedback. Han Shao, Lee Cohen, Avrim Blum, Yishay Mansour, Aadirupa Saha, Matthew R. Walter |
| 2023 | Eliminating Catastrophic Overfitting Via Abnormal Adversarial Examples Regularization. Runqi Lin, Chaojian Yu, Tongliang Liu |
| 2023 | Eliminating Domain Bias for Federated Learning in Representation Space. Jianqing Zhang, Yang Hua, Jian Cao, Hao Wang, Tao Song, Zhengui Xue, Ruhui Ma, Haibing Guan |
| 2023 | Embedding Space Interpolation Beyond Mini-Batch, Beyond Pairs and Beyond Examples. Shashanka Venkataramanan, Ewa Kijak, Laurent Amsaleg, Yannis Avrithis |
| 2023 | EmbodiedGPT: Vision-Language Pre-Training via Embodied Chain of Thought. Yao Mu, Qinglong Zhang, Mengkang Hu, Wenhai Wang, Mingyu Ding, Jun Jin, Bin Wang, Jifeng Dai, Yu Qiao, Ping Luo |
| 2023 | Embracing the chaos: analysis and diagnosis of numerical instability in variational flows. Zuheng Xu, Trevor Campbell |
| 2023 | Embroid: Unsupervised Prediction Smoothing Can Improve Few-Shot Classification. Neel Guha, Mayee F. Chen, Kush Bhatia, Azalia Mirhoseini, Frederic Sala, Christopher Ré |
| 2023 | Emergence of Shape Bias in Convolutional Neural Networks through Activation Sparsity. Tianqin Li, Ziqi Wen, Yangfan Li, Tai Sing Lee |
| 2023 | Emergent Communication for Rules Reasoning. Yuxuan Guo, Yifan Hao, Rui Zhang, Enshuai Zhou, Zidong Du, Xishan Zhang, Xinkai Song, Yuanbo Wen, Yongwei Zhao, Xuehai Zhou, Jiaming Guo, Qi Yi, Shaohui Peng, Di Huang, Ruizhi Chen, Qi Guo, Yunji Chen |
| 2023 | Emergent Communication in Interactive Sketch Question Answering. Zixing Lei, Yiming Zhang, Yuxin Xiong, Siheng Chen |
| 2023 | Emergent Correspondence from Image Diffusion. Luming Tang, Menglin Jia, Qianqian Wang, Cheng Perng Phoo, Bharath Hariharan |
| 2023 | Emergent and Predictable Memorization in Large Language Models. Stella Biderman, USVSN Sai Prashanth, Lintang Sutawika, Hailey Schoelkopf, Quentin Anthony, Shivanshu Purohit, Edward Raff |
| 2023 | Empowering Collaborative Filtering with Principled Adversarial Contrastive Loss. An Zhang, Leheng Sheng, Zhibo Cai, Xiang Wang, Tat-Seng Chua |
| 2023 | Empowering Convolutional Neural Nets with MetaSin Activation. Farnood Salehi, Tunç Ozan Aydin, André Gaillard, Guglielmo Camporese, Yuxuan Wang |
| 2023 | Encoding Human Behavior in Information Design through Deep Learning. Guanghui Yu, Wei Tang, Saumik Narayanan, Chien-Ju Ho |
| 2023 | Encoding Time-Series Explanations through Self-Supervised Model Behavior Consistency. Owen Queen, Tom Hartvigsen, Teddy Koker, Huan He, Theodoros Tsiligkaridis, Marinka Zitnik |
| 2023 | End-To-End Latent Variational Diffusion Models for Inverse Problems in High Energy Physics. Alexander Shmakov, Kevin Greif, Michael James Fenton, Aishik Ghosh, Pierre Baldi, Daniel Whiteson |
| 2023 | End-to-End Meta-Bayesian Optimisation with Transformer Neural Processes. Alexandre Maraval, Matthieu Zimmer, Antoine Grosnit, Haitham Bou-Ammar |
| 2023 | Energy Discrepancies: A Score-Independent Loss for Energy-Based Models. Tobias Schröder, Zijing Ou, Jen Lim, Yingzhen Li, Sebastian J. Vollmer, Andrew B. Duncan |
| 2023 | Energy Guided Diffusion for Generating Neurally Exciting Images. Pawel A. Pierzchlewicz, Konstantin Willeke, Arne Nix, Pavithra Elumalai, Kelli Restivo, Tori Shinn, Cate Nealley, Gabrielle Rodriguez, Saumil S. Patel, Katrin Franke, Andreas S. Tolias, Fabian H. Sinz |
| 2023 | Energy Transformer. Benjamin Hoover, Yuchen Liang, Bao Pham, Rameswar Panda, Hendrik Strobelt, Duen Horng Chau, Mohammed J. Zaki, Dmitry Krotov |
| 2023 | Energy-Based Cross Attention for Bayesian Context Update in Text-to-Image Diffusion Models. Geon Yeong Park, Jeongsol Kim, Beomsu Kim, Sang Wan Lee, Jong Chul Ye |
| 2023 | Energy-Based Models for Anomaly Detection: A Manifold Diffusion Recovery Approach. Sangwoong Yoon, Young-Uk Jin, Yung-Kyun Noh, Frank C. Park |
| 2023 | Energy-Based Sliced Wasserstein Distance. Khai Nguyen, Nhat Ho |
| 2023 | Energy-Efficient Scheduling with Predictions. Eric Balkanski, Noémie Périvier, Clifford Stein, Hao-Ting Wei |
| 2023 | Energy-based learning algorithms for analog computing: a comparative study. Benjamin Scellier, Maxence Ernoult, Jack D. Kendall, Suhas Kumar |
| 2023 | Enhancing Adaptive History Reserving by Spiking Convolutional Block Attention Module in Recurrent Neural Networks. Qi Xu, Yuyuan Gao, Jiangrong Shen, Yaxin Li, Xuming Ran, Huajin Tang, Gang Pan |
| 2023 | Enhancing Adversarial Contrastive Learning via Adversarial Invariant Regularization. Xilie Xu, Jingfeng Zhang, Feng Liu, Masashi Sugiyama, Mohan S. Kankanhalli |
| 2023 | Enhancing Adversarial Robustness via Score-Based Optimization. Boya Zhang, Weijian Luo, Zhihua Zhang |
| 2023 | Enhancing CLIP with CLIP: Exploring Pseudolabeling for Limited-Label Prompt Tuning. Cristina Menghini, Andrew Delworth, Stephen H. Bach |
| 2023 | Enhancing Knowledge Transfer for Task Incremental Learning with Data-free Subnetwork. Qiang Gao, Xiaojun Shan, Yuchen Zhang, Fan Zhou |
| 2023 | Enhancing Minority Classes by Mixing: An Adaptative Optimal Transport Approach for Long-tailed Classification. Jintong Gao, He Zhao, Zhuo Li, Dandan Guo |
| 2023 | Enhancing Motion Deblurring in High-Speed Scenes with Spike Streams. Shiyan Chen, Jiyuan Zhang, Yajing Zheng, Tiejun Huang, Zhaofei Yu |
| 2023 | Enhancing Robot Program Synthesis Through Environmental Context. Tianyi Chen, Qidi Wang, Zhen Dong, Liwei Shen, Xin Peng |
| 2023 | Enhancing Sharpness-Aware Optimization Through Variance Suppression. Bingcong Li, Georgios B. Giannakis |
| 2023 | Enhancing User Intent Capture in Session-Based Recommendation with Attribute Patterns. Xin Liu, Zheng Li, Yifan Gao, Jingfeng Yang, Tianyu Cao, Zhengyang Wang, Bing Yin, Yangqiu Song |
| 2023 | Ensemble-based Deep Reinforcement Learning for Vehicle Routing Problems under Distribution Shift. Yuan Jiang, Zhiguang Cao, Yaoxin Wu, Wen Song, Jie Zhang |
| 2023 | Entropic Neural Optimal Transport via Diffusion Processes. Nikita Gushchin, Alexander Kolesov, Alexander Korotin, Dmitry P. Vetrov, Evgeny Burnaev |
| 2023 | Entropy-based Training Methods for Scalable Neural Implicit Samplers. Weijian Luo, Boya Zhang, Zhihua Zhang |
| 2023 | Entropy-dissipation Informed Neural Network for McKean-Vlasov Type PDEs. Zebang Shen, Zhenfu Wang |
| 2023 | Environment-Aware Dynamic Graph Learning for Out-of-Distribution Generalization. Haonan Yuan, Qingyun Sun, Xingcheng Fu, Ziwei Zhang, Cheng Ji, Hao Peng, Jianxin Li |
| 2023 | Epidemic Learning: Boosting Decentralized Learning with Randomized Communication. Martijn de Vos, Sadegh Farhadkhani, Rachid Guerraoui, Anne-Marie Kermarrec, Rafael Pires, Rishi Sharma |
| 2023 | Episodic Multi-Task Learning with Heterogeneous Neural Processes. Jiayi Shen, Xiantong Zhen, Qi Wang, Marcel Worring |
| 2023 | Epistemic Neural Networks. Ian Osband, Zheng Wen, Seyed Mohammad Asghari, Vikranth Dwaracherla, Morteza Ibrahimi, Xiuyuan Lu, Benjamin Van Roy |
| 2023 | Equal Opportunity of Coverage in Fair Regression. Fangxin Wang, Lu Cheng, Ruocheng Guo, Kay Liu, Philip S. Yu |
| 2023 | Equivariant Adaptation of Large Pretrained Models. Arnab Kumar Mondal, Siba Smarak Panigrahi, Oumar Kaba, Sai Mudumba, Siamak Ravanbakhsh |
| 2023 | Equivariant Flow Matching with Hybrid Probability Transport for 3D Molecule Generation. Yuxuan Song, Jingjing Gong, Minkai Xu, Ziyao Cao, Yanyan Lan, Stefano Ermon, Hao Zhou, Wei-Ying Ma |
| 2023 | Equivariant Neural Operator Learning with Graphon Convolution. Chaoran Cheng, Jian Peng |
| 2023 | Equivariant Neural Simulators for Stochastic Spatiotemporal Dynamics. Koen Minartz, Yoeri Poels, Simon M. Koop, Vlado Menkovski |
| 2023 | Equivariant Single View Pose Prediction Via Induced and Restriction Representations. Owen Howell, David Klee, Ondrej Biza, Linfeng Zhao, Robin Walters |
| 2023 | Equivariant Spatio-Temporal Attentive Graph Networks to Simulate Physical Dynamics. Liming Wu, Zhichao Hou, Jirui Yuan, Yu Rong, Wenbing Huang |
| 2023 | Equivariant flow matching. Leon Klein, Andreas Krämer, Frank Noé |
| 2023 | Error Bounds for Learning with Vector-Valued Random Features. Samuel Lanthaler, Nicholas H. Nelsen |
| 2023 | Error Discovery By Clustering Influence Embeddings. Fulton Wang, Julius Adebayo, Sarah Tan, Diego Garcia-Olano, Narine Kokhlikyan |
| 2023 | Errors-in-variables Fr\'echet Regression with Low-rank Covariate Approximation. Dogyoon Song, Kyunghee Han |
| 2023 | Ess-InfoGAIL: Semi-supervised Imitation Learning from Imbalanced Demonstrations. Huiqiao Fu, Kaiqiang Tang, Yuanyang Lu, Yiming Qi, Guizhou Deng, Flood Sung, Chunlin Chen |
| 2023 | Estimating Causal Effects Identifiable from a Combination of Observations and Experiments. Yonghan Jung, Ivan Diaz, Jin Tian, Elias Bareinboim |
| 2023 | Estimating Generic 3D Room Structures from 2D Annotations. Denys Rozumnyi, Stefan Popov, Kevis-Kokitsi Maninis, Matthias Nießner, Vittorio Ferrari |
| 2023 | Estimating Koopman operators with sketching to provably learn large scale dynamical systems. Giacomo Meanti, Antoine Chatalic, Vladimir Kostic, Pietro Novelli, Massimiliano Pontil, Lorenzo Rosasco |
| 2023 | Estimating Noise Correlations Across Continuous Conditions With Wishart Processes. Amin Nejatbakhsh, Isabel Garon, Alex Williams |
| 2023 | Estimating Propensity for Causality-based Recommendation without Exposure Data. Zhongzhou Liu, Yuan Fang, Min Wu |
| 2023 | Estimating Riemannian Metric with Noise-Contaminated Intrinsic Distance. Jiaming Qiu, Xiongtao Dai |
| 2023 | Estimating and Controlling for Equalized Odds via Sensitive Attribute Predictors. Beepul Bharti, Paul H. Yi, Jeremias Sulam |
| 2023 | Estimating the Rate-Distortion Function by Wasserstein Gradient Descent. Yibo Yang, Stephan Eckstein, Marcel Nutz, Stephan Mandt |
| 2023 | Ethical Considerations for Responsible Data Curation. Jerone Theodore Alexander Andrews, Dora Zhao, William Thong, Apostolos Modas, Orestis Papakyriakopoulos, Alice Xiang |
| 2023 | Evaluating Cognitive Maps and Planning in Large Language Models with CogEval. Ida Momennejad, Hosein Hasanbeig, Felipe Vieira Frujeri, Hiteshi Sharma, Nebojsa Jojic, Hamid Palangi, Robert Osazuwa Ness, Jonathan Larson |
| 2023 | Evaluating Graph Neural Networks for Link Prediction: Current Pitfalls and New Benchmarking. Juanhui Li, Harry Shomer, Haitao Mao, Shenglai Zeng, Yao Ma, Neil Shah, Jiliang Tang, Dawei Yin |
| 2023 | Evaluating Neuron Interpretation Methods of NLP Models. Yimin Fan, Fahim Dalvi, Nadir Durrani, Hassan Sajjad |
| 2023 | Evaluating Open-QA Evaluation. Cunxiang Wang, Sirui Cheng, Qipeng Guo, Yuanhao Yue, Bowen Ding, Zhikun Xu, Yidong Wang, Xiangkun Hu, Zheng Zhang, Yue Zhang |
| 2023 | Evaluating Post-hoc Explanations for Graph Neural Networks via Robustness Analysis. Junfeng Fang, Wei Liu, Yuan Gao, Zemin Liu, An Zhang, Xiang Wang, Xiangnan He |
| 2023 | Evaluating Robustness and Uncertainty of Graph Models Under Structural Distributional Shifts. Gleb Bazhenov, Denis Kuznedelev, Andrey Malinin, Artem Babenko, Liudmila Prokhorenkova |
| 2023 | Evaluating Self-Supervised Learning for Molecular Graph Embeddings. Hanchen Wang, Jean Kaddour, Shengchao Liu, Jian Tang, Joan Lasenby, Qi Liu |
| 2023 | Evaluating and Improving Tool-Augmented Computation-Intensive Math Reasoning. Beichen Zhang, Kun Zhou, Xilin Wei, Xin Zhao, Jing Sha, Shijin Wang, Ji-Rong Wen |
| 2023 | Evaluating and Inducing Personality in Pre-trained Language Models. Guangyuan Jiang, Manjie Xu, Song-Chun Zhu, Wenjuan Han, Chi Zhang, Yixin Zhu |
| 2023 | Evaluating the Moral Beliefs Encoded in LLMs. Nino Scherrer, Claudia Shi, Amir Feder, David M. Blei |
| 2023 | Evaluating the Robustness of Interpretability Methods through Explanation Invariance and Equivariance. Jonathan Crabbé, Mihaela van der Schaar |
| 2023 | Event Stream GPT: A Data Pre-processing and Modeling Library for Generative, Pre-trained Transformers over Continuous-time Sequences of Complex Events. Matthew B. A. McDermott, Bret Nestor, Peniel N. Argaw, Isaac S. Kohane |
| 2023 | Every Parameter Matters: Ensuring the Convergence of Federated Learning with Dynamic Heterogeneous Models Reduction. Hanhan Zhou, Tian Lan, Guru Venkataramani, Wenbo Ding |
| 2023 | EvoFed: Leveraging Evolutionary Strategies for Communication-Efficient Federated Learning. Mohammad Mahdi Rahimi, Hasnain Irshad Bhatti, Younghyun Park, Humaira Kousar, Do-Yeon Kim, Jaekyun Moon |
| 2023 | EvoPrompting: Language Models for Code-Level Neural Architecture Search. Angelica Chen, David Dohan, David R. So |
| 2023 | Evolutionary Neural Architecture Search for Transformer in Knowledge Tracing. Shangshang Yang, Xiaoshan Yu, Ye Tian, Xueming Yan, Haiping Ma, Xingyi Zhang |
| 2023 | Evolving Connectivity for Recurrent Spiking Neural Networks. Guan Wang, Yuhao Sun, Sijie Cheng, Sen Song |
| 2023 | Evolving Standardization for Continual Domain Generalization over Temporal Drift. Mixue Xie, Shuang Li, Longhui Yuan, Chi Harold Liu, Zehui Dai |
| 2023 | ExPT: Synthetic Pretraining for Few-Shot Experimental Design. Tung Nguyen, Sudhanshu Agrawal, Aditya Grover |
| 2023 | Exact Bayesian Inference on Discrete Models via Probability Generating Functions: A Probabilistic Programming Approach. Fabian Zaiser, Andrzej S. Murawski, Chih-Hao Luke Ong |
| 2023 | Exact Generalization Guarantees for (Regularized) Wasserstein Distributionally Robust Models. Waïss Azizian, Franck Iutzeler, Jérôme Malick |
| 2023 | Exact Optimality of Communication-Privacy-Utility Tradeoffs in Distributed Mean Estimation. Berivan Isik, Wei-Ning Chen, Ayfer Özgür, Tsachy Weissman, Albert No |
| 2023 | Exact Representation of Sparse Networks with Symmetric Nonnegative Embeddings. Sudhanshu Chanpuriya, Ryan A. Rossi, Anup B. Rao, Tung Mai, Nedim Lipka, Zhao Song, Cameron Musco |
| 2023 | Exact Verification of ReLU Neural Control Barrier Functions. Hongchao Zhang, Junlin Wu, Yevgeniy Vorobeychik, Andrew Clark |
| 2023 | Exact recovery and Bregman hard clustering of node-attributed Stochastic Block Model. Maximilien Dreveton, Felipe S. Fernandes, Daniel R. Figueiredo |
| 2023 | Expanding Small-Scale Datasets with Guided Imagination. Yifan Zhang, Daquan Zhou, Bryan Hooi, Kai Wang, Jiashi Feng |
| 2023 | Experiment Planning with Function Approximation. Aldo Pacchiano, Jonathan Lee, Emma Brunskill |
| 2023 | Experimental Designs for Heteroskedastic Variance. Justin Weltz, Tanner Fiez, Alexander Volfovsky, Eric Laber, Blake Mason, Houssam Nassif, Lalit Jain |
| 2023 | Expert load matters: operating networks at high accuracy and low manual effort. Sara Sangalli, Ertunc Erdil, Ender Konukoglu |
| 2023 | Explain Any Concept: Segment Anything Meets Concept-Based Explanation. Ao Sun, Pingchuan Ma, Yuanyuan Yuan, Shuai Wang |
| 2023 | Explainable Brain Age Prediction using coVariance Neural Networks. Saurabh Sihag, Gonzalo Mateos, Corey McMillan, Alejandro Ribeiro |
| 2023 | Explainable and Efficient Randomized Voting Rules. Soroush Ebadian, Aris Filos-Ratsikas, Mohamad Latifian, Nisarg Shah |
| 2023 | Explaining Predictive Uncertainty with Information Theoretic Shapley Values. David S. Watson, Joshua O'Hara, Niek Tax, Richard Mudd, Ido Guy |
| 2023 | Explaining V1 Properties with a Biologically Constrained Deep Learning Architecture. Galen Pogoncheff, Jacob Granley, Michael Beyeler |
| 2023 | Explaining the Uncertain: Stochastic Shapley Values for Gaussian Process Models. Siu Lun Chau, Krikamol Muandet, Dino Sejdinovic |
| 2023 | Exploiting Connections between Lipschitz Structures for Certifiably Robust Deep Equilibrium Models. Aaron J. Havens, Alexandre Araujo, Siddharth Garg, Farshad Khorrami, Bin Hu |
| 2023 | Exploiting Contextual Objects and Relations for 3D Visual Grounding. Li Yang, Chunfeng Yuan, Ziqi Zhang, Zhongang Qi, Yan Xu, Wei Liu, Ying Shan, Bing Li, Weiping Yang, Peng Li, Yan Wang, Weiming Hu |
| 2023 | Exploiting Correlated Auxiliary Feedback in Parameterized Bandits. Arun Verma, Zhongxiang Dai, Yao Shu, Bryan Kian Hsiang Low |
| 2023 | Exploiting hidden structures in non-convex games for convergence to Nash equilibrium. Iosif Sakos, Emmanouil V. Vlatakis-Gkaragkounis, Panayotis Mertikopoulos, Georgios Piliouras |
| 2023 | Explore In-Context Learning for 3D Point Cloud Understanding. Zhongbin Fang, Xiangtai Li, Xia Li, Joachim M. Buhmann, Chen Change Loy, Mengyuan Liu |
| 2023 | Explore to Generalize in Zero-Shot RL. Ev Zisselman, Itai Lavie, Daniel Soudry, Aviv Tamar |
| 2023 | Exploring Diverse In-Context Configurations for Image Captioning. Xu Yang, Yongliang Wu, Mingzhuo Yang, Haokun Chen, Xin Geng |
| 2023 | Exploring Geometry of Blind Spots in Vision models. Sriram Balasubramanian, Gaurang Sriramanan, Vinu Sankar Sadasivan, Soheil Feizi |
| 2023 | Exploring Loss Functions for Time-based Training Strategy in Spiking Neural Networks. Yaoyu Zhu, Wei Fang, Xiaodong Xie, Tiejun Huang, Zhaofei Yu |
| 2023 | Exploring Question Decomposition for Zero-Shot VQA. Zaid Khan, Vijay Kumar B. G, Samuel Schulter, Manmohan Chandraker, Yun Fu |
| 2023 | Exploring Why Object Recognition Performance Degrades Across Income Levels and Geographies with Factor Annotations. Laura Gustafson, Megan Richards, Melissa Hall, Caner Hazirbas, Diane Bouchacourt, Mark Ibrahim |
| 2023 | Exploring and Interacting with the Set of Good Sparse Generalized Additive Models. Chudi Zhong, Zhi Chen, Jiachang Liu, Margo I. Seltzer, Cynthia Rudin |
| 2023 | Exploring the Optimal Choice for Generative Processes in Diffusion Models: Ordinary vs Stochastic Differential Equations. Yu Cao, Jingrun Chen, Yixin Luo, Xiang Zhou |
| 2023 | Exponential Lower Bounds for Fictitious Play in Potential Games. Ioannis Panageas, Nikolas Patris, Stratis Skoulakis, Volkan Cevher |
| 2023 | Exponentially Convergent Algorithms for Supervised Matrix Factorization. Joowon Lee, Hanbaek Lyu, Weixin Yao |
| 2023 | Exposing Attention Glitches with Flip-Flop Language Modeling. Bingbin Liu, Jordan T. Ash, Surbhi Goel, Akshay Krishnamurthy, Cyril Zhang |
| 2023 | Exposing flaws of generative model evaluation metrics and their unfair treatment of diffusion models. George Stein, Jesse C. Cresswell, Rasa Hosseinzadeh, Yi Sui, Brendan Leigh Ross, Valentin Villecroze, Zhaoyan Liu, Anthony L. Caterini, J. Eric T. Taylor, Gabriel Loaiza-Ganem |
| 2023 | Expressive Sign Equivariant Networks for Spectral Geometric Learning. Derek Lim, Joshua Robinson, Stefanie Jegelka, Haggai Maron |
| 2023 | Expressive probabilistic sampling in recurrent neural networks. Shirui Chen, Linxing Jiang, Rajesh P. N. Rao, Eric Shea-Brown |
| 2023 | Expressivity-Preserving GNN Simulation. Fabian Jogl, Maximilian Thiessen, Thomas Gärtner |
| 2023 | Extending the Design Space of Graph Neural Networks by Rethinking Folklore Weisfeiler-Lehman. Jiarui Feng, Lecheng Kong, Hao Liu, Dacheng Tao, Fuhai Li, Muhan Zhang, Yixin Chen |
| 2023 | Extensible Prompts for Language Models on Zero-shot Language Style Customization. Tao Ge, Jing Hu, Li Dong, Shaoguang Mao, Yan Xia, Xun Wang, Si-Qing Chen, Furu Wei |
| 2023 | Extracting Reward Functions from Diffusion Models. Felipe Nuti, Tim Franzmeyer, João F. Henriques |
| 2023 | Extraction and Recovery of Spatio-Temporal Structure in Latent Dynamics Alignment with Diffusion Model. Yule Wang, Zijing Wu, Chengrui Li, Anqi Wu |
| 2023 | Extremal Domain Translation with Neural Optimal Transport. Milena Gazdieva, Alexander Korotin, Daniil Selikhanovych, Evgeny Burnaev |
| 2023 | FABind: Fast and Accurate Protein-Ligand Binding. Qizhi Pei, Kaiyuan Gao, Lijun Wu, Jinhua Zhu, Yingce Xia, Shufang Xie, Tao Qin, Kun He, Tie-Yan Liu, Rui Yan |
| 2023 | FACE: Evaluating Natural Language Generation with Fourier Analysis of Cross-Entropy. Zuhao Yang, Yingfang Yuan, Yang Xu, Shuo Zhan, Huajun Bai, Kefan Chen |
| 2023 | FAMO: Fast Adaptive Multitask Optimization. Bo Liu, Yihao Feng, Peter Stone, Qiang Liu |
| 2023 | FAST: a Fused and Accurate Shrinkage Tree for Heterogeneous Treatment Effects Estimation. Jia Gu, Caizhi Tang, Han Yan, Qing Cui, Longfei Li, Jun Zhou |
| 2023 | FD-Align: Feature Discrimination Alignment for Fine-tuning Pre-Trained Models in Few-Shot Learning. Kun Song, Huimin Ma, Bochao Zou, Huishuai Zhang, Weiran Huang |
| 2023 | FELM: Benchmarking Factuality Evaluation of Large Language Models. Shiqi Chen, Yiran Zhao, Jinghan Zhang, I-Chun Chern, Siyang Gao, Pengfei Liu, Junxian He |
| 2023 | FETV: A Benchmark for Fine-Grained Evaluation of Open-Domain Text-to-Video Generation. Yuanxin Liu, Lei Li, Shuhuai Ren, Rundong Gao, Shicheng Li, Sishuo Chen, Xu Sun, Lu Hou |
| 2023 | FGPrompt: Fine-grained Goal Prompting for Image-goal Navigation. Xinyu Sun, Peihao Chen, Jugang Fan, Jian Chen, Thomas H. Li, Mingkui Tan |
| 2023 | FIND: A Function Description Benchmark for Evaluating Interpretability Methods. Sarah Schwettmann, Tamar Rott Shaham, Joanna Materzynska, Neil Chowdhury, Shuang Li, Jacob Andreas, David Bau, Antonio Torralba |
| 2023 | FIRAL: An Active Learning Algorithm for Multinomial Logistic Regression. Youguang Chen, George Biros |
| 2023 | FLAIR : a Country-Scale Land Cover Semantic Segmentation Dataset From Multi-Source Optical Imagery. Anatol Garioud, Nicolas Gonthier, Loïc Landrieu, Apolline De Wit, Marion Valette, Marc Poupée, Sébastien Giordano, Boris Wattrelos |
| 2023 | FLSL: Feature-level Self-supervised Learning. Qing Su, Anton Netchaev, Hai Li, Shihao Ji |
| 2023 | FLuID: Mitigating Stragglers in Federated Learning using Invariant Dropout. Irene Wang, Prashant J. Nair, Divya Mahajan |
| 2023 | FOCAL: Contrastive Learning for Multimodal Time-Series Sensing Signals in Factorized Orthogonal Latent Space. Shengzhong Liu, Tomoyoshi Kimura, Dongxin Liu, Ruijie Wang, Jinyang Li, Suhas N. Diggavi, Mani B. Srivastava, Tarek F. Abdelzaher |
| 2023 | FORB: A Flat Object Retrieval Benchmark for Universal Image Embedding. Pengxiang Wu, Siman Wang, Kevin Dela Rosa, Derek Hao Hu |
| 2023 | Face Reconstruction from Facial Templates by Learning Latent Space of a Generator Network. Hatef Otroshi-Shahreza, Sébastien Marcel |
| 2023 | FaceComposer: A Unified Model for Versatile Facial Content Creation. Jiayu Wang, Kang Zhao, Yifeng Ma, Shiwei Zhang, Yingya Zhang, Yujun Shen, Deli Zhao, Jingren Zhou |
| 2023 | FaceDNeRF: Semantics-Driven Face Reconstruction, Prompt Editing and Relighting with Diffusion Models. Hao Zhang, Tianyuan Dai, Yanbo Xu, Yu-Wing Tai, Chi-Keung Tang |
| 2023 | Facilitating Graph Neural Networks with Random Walk on Simplicial Complexes. Cai Zhou, Xiyuan Wang, Muhan Zhang |
| 2023 | Facing Off World Model Backbones: RNNs, Transformers, and S4. Fei Deng, Junyeong Park, Sungjin Ahn |
| 2023 | Factorized Contrastive Learning: Going Beyond Multi-view Redundancy. Paul Pu Liang, Zihao Deng, Martin Q. Ma, James Y. Zou, Louis-Philippe Morency, Ruslan Salakhutdinov |
| 2023 | Failure-Aware Gaussian Process Optimization with Regret Bounds. Shogo Iwazaki, Shion Takeno, Tomohiko Tanabe, Mitsuru Irie |
| 2023 | Fair Adaptive Experiments. Waverly Wei, Xinwei Ma, Jingshen Wang |
| 2023 | Fair Allocation of Indivisible Chores: Beyond Additive Costs. Bo Li, Fangxiao Wang, Yu Zhou |
| 2023 | Fair Canonical Correlation Analysis. Zhuoping Zhou, Davoud Ataee Tarzanagh, Bojian Hou, Boning Tong, Jia Xu, Yanbo Feng, Qi Long, Li Shen |
| 2023 | Fair Graph Distillation. Qizhang Feng, Zhimeng Stephen Jiang, Ruiquan Li, Yicheng Wang, Na Zou, Jiang Bian, Xia Hu |
| 2023 | Fair Streaming Principal Component Analysis: Statistical and Algorithmic Viewpoint. Junghyun Lee, Hanseul Cho, Se-Young Yun, Chulhee Yun |
| 2023 | Fair, Polylog-Approximate Low-Cost Hierarchical Clustering. Marina Knittel, Max Springer, John P. Dickerson, MohammadTaghi Hajiaghayi |
| 2023 | FairLISA: Fair User Modeling with Limited Sensitive Attributes Information. Zheng Zhang, Qi Liu, Hao Jiang, Fei Wang, Yan Zhuang, Le Wu, Weibo Gao, Enhong Chen |
| 2023 | Fairly Recommending with Social Attributes: A Flexible and Controllable Optimization Approach. Jinqiu Jin, Haoxuan Li, Fuli Feng, Sihao Ding, Peng Wu, Xiangnan He |
| 2023 | Fairness Aware Counterfactuals for Subgroups. Loukas Kavouras, Konstantinos Tsopelas, Giorgos Giannopoulos, Dimitris Sacharidis, Eleni Psaroudaki, Nikolaos Theologitis, Dimitrios Rontogiannis, Dimitris Fotakis, Ioannis Z. Emiris |
| 2023 | Fairness Continual Learning Approach to Semantic Scene Understanding in Open-World Environments. Thanh-Dat Truong, Hoang-Quan Nguyen, Bhiksha Raj, Khoa Luu |
| 2023 | Fairness-guided Few-shot Prompting for Large Language Models. Huan Ma, Changqing Zhang, Yatao Bian, Lemao Liu, Zhirui Zhang, Peilin Zhao, Shu Zhang, Huazhu Fu, Qinghua Hu, Bingzhe Wu |
| 2023 | Faith and Fate: Limits of Transformers on Compositionality. Nouha Dziri, Ximing Lu, Melanie Sclar, Xiang Lorraine Li, Liwei Jiang, Bill Yuchen Lin, Sean Welleck, Peter West, Chandra Bhagavatula, Ronan Le Bras, Jena D. Hwang, Soumya Sanyal, Xiang Ren, Allyson Ettinger, Zaïd Harchaoui, Yejin Choi |
| 2023 | False Discovery Proportion control for aggregated Knockoffs. Alexandre Blain, Bertrand Thirion, Olivier Grisel, Pierre Neuvial |
| 2023 | Fantastic Robustness Measures: The Secrets of Robust Generalization. Hoki Kim, Jinseong Park, Yujin Choi, Jaewook Lee |
| 2023 | Fantastic Weights and How to Find Them: Where to Prune in Dynamic Sparse Training. Aleksandra Nowak, Bram Grooten, Decebal Constantin Mocanu, Jacek Tabor |
| 2023 | Fast Approximation of Similarity Graphs with Kernel Density Estimation. Peter Macgregor, He Sun |
| 2023 | Fast Asymptotically Optimal Algorithms for Non-Parametric Stochastic Bandits. Dorian Baudry, Fabien Pesquerel, Rémy Degenne, Odalric-Ambrym Maillard |
| 2023 | Fast Attention Over Long Sequences With Dynamic Sparse Flash Attention. Matteo Pagliardini, Daniele Paliotta, Martin Jaggi, François Fleuret |
| 2023 | Fast Attention Requires Bounded Entries. Josh Alman, Zhao Song |
| 2023 | Fast Bellman Updates for Wasserstein Distributionally Robust MDPs. Zhuodong Yu, Ling Dai, Shaohang Xu, Siyang Gao, Chin Pang Ho |
| 2023 | Fast Conditional Mixing of MCMC Algorithms for Non-log-concave Distributions. Xiang Cheng, Bohan Wang, Jingzhao Zhang, Yusong Zhu |
| 2023 | Fast Exact Leverage Score Sampling from Khatri-Rao Products with Applications to Tensor Decomposition. Vivek Bharadwaj, Osman Asif Malik, Riley Murray, Laura Grigori, Aydin Buluç, James Demmel |
| 2023 | Fast Model DeBias with Machine Unlearning. Ruizhe Chen, Jianfei Yang, Huimin Xiong, Jianhong Bai, Tianxiang Hu, Jin Hao, Yang Feng, Joey Tianyi Zhou, Jian Wu, Zuozhu Liu |
| 2023 | Fast Optimal Locally Private Mean Estimation via Random Projections. Hilal Asi, Vitaly Feldman, Jelani Nelson, Huy L. Nguyen, Kunal Talwar |
| 2023 | Fast Optimal Transport through Sliced Generalized Wasserstein Geodesics. Guillaume Mahey, Laetitia Chapel, Gilles Gasso, Clément Bonet, Nicolas Courty |
| 2023 | Fast Partitioned Learned Bloom Filter. Atsuki Sato, Yusuke Matsui |
| 2023 | Fast Projected Newton-like Method for Precision Matrix Estimation under Total Positivity. Jianfeng Cai, José Vinícius de Miranda Cardoso, Daniel P. Palomar, Jiaxi Ying |
| 2023 | Fast Rank-1 Lattice Targeted Sampling for Black-box Optimization. Yueming Lyu |
| 2023 | Fast Scalable and Accurate Discovery of DAGs Using the Best Order Score Search and Grow Shrink Trees. Bryan Andrews, Joseph D. Ramsey, Ruben Sanchez-Romero, Jazmin Camchong, Erich Kummerfeld |
| 2023 | Fast Trainable Projection for Robust Fine-tuning. Junjiao Tian, Yen-Cheng Liu, James Seale Smith, Zsolt Kira |
| 2023 | Fast and Regret Optimal Best Arm Identification: Fundamental Limits and Low-Complexity Algorithms. Qining Zhang, Lei Ying |
| 2023 | Fast and Simple Spectral Clustering in Theory and Practice. Peter Macgregor |
| 2023 | Faster Differentially Private Convex Optimization via Second-Order Methods. Arun Ganesh, Mahdi Haghifam, Thomas Steinke, Abhradeep Guha Thakurta |
| 2023 | Faster Discrete Convex Function Minimization with Predictions: The M-Convex Case. Taihei Oki, Shinsaku Sakaue |
| 2023 | Faster Margin Maximization Rates for Generic Optimization Methods. Guanghui Wang, Zihao Hu, Vidya Muthukumar, Jacob D. Abernethy |
| 2023 | Faster Query Times for Fully Dynamic k-Center Clustering with Outliers. Leyla Biabani, Annika Hennes, Morteza Monemizadeh, Melanie Schmidt |
| 2023 | Faster Relative Entropy Coding with Greedy Rejection Coding. Gergely Flamich, Stratis Markou, José Miguel Hernández-Lobato |
| 2023 | Faster approximate subgraph counts with privacy. Dung Nguyen, Mahantesh Halappanavar, Venkatesh Srinivasan, Anil Vullikanti |
| 2023 | FeCAM: Exploiting the Heterogeneity of Class Distributions in Exemplar-Free Continual Learning. Dipam Goswami, Yuyang Liu, Bartlomiej Twardowski, Joost van de Weijer |
| 2023 | Feature Adaptation for Sparse Linear Regression. Jonathan A. Kelner, Frederic Koehler, Raghu Meka, Dhruv Rohatgi |
| 2023 | Feature Dropout: Revisiting the Role of Augmentations in Contrastive Learning. Alex Tamkin, Margalit Glasgow, Xiluo He, Noah D. Goodman |
| 2023 | Feature Learning for Interpretable, Performant Decision Trees. Jack H. Good, Torin Kovach, Kyle Miller, Artur Dubrawski |
| 2023 | Feature Likelihood Score: Evaluating the Generalization of Generative Models Using Samples. Marco Jiralerspong, Avishek Joey Bose, Ian Gemp, Chongli Qin, Yoram Bachrach, Gauthier Gidel |
| 2023 | Feature Selection in the Contrastive Analysis Setting. Ethan Weinberger, Ian Covert, Su-In Lee |
| 2023 | Feature learning via mean-field Langevin dynamics: classifying sparse parities and beyond. Taiji Suzuki, Denny Wu, Kazusato Oko, Atsushi Nitanda |
| 2023 | Feature-Learning Networks Are Consistent Across Widths At Realistic Scales. Nikhil Vyas, Alexander B. Atanasov, Blake Bordelon, Depen Morwani, Sabarish Sainathan, Cengiz Pehlevan |
| 2023 | Fed-CO Zhongyi Cai, Ye Shi, Wei Huang, Jingya Wang |
| 2023 | Fed-FA: Theoretically Modeling Client Data Divergence for Federated Language Backdoor Defense. Zhiyuan Zhang, Deli Chen, Hao Zhou, Fandong Meng, Jie Zhou, Xu Sun |
| 2023 | Fed-GraB: Federated Long-tailed Learning with Self-Adjusting Gradient Balancer. Zikai Xiao, Zihan Chen, Songshang Liu, Hualiang Wang, Yang Feng, Jin Hao, Joey Tianyi Zhou, Jian Wu, Howard H. Yang, Zuozhu Liu |
| 2023 | FedFed: Feature Distillation against Data Heterogeneity in Federated Learning. Zhiqin Yang, Yonggang Zhang, Yu Zheng, Xinmei Tian, Hao Peng, Tongliang Liu, Bo Han |
| 2023 | FedGCN: Convergence-Communication Tradeoffs in Federated Training of Graph Convolutional Networks. Yuhang Yao, Weizhao Jin, Srivatsan Ravi, Carlee Joe-Wong |
| 2023 | FedGame: A Game-Theoretic Defense against Backdoor Attacks in Federated Learning. Jinyuan Jia, Zhuowen Yuan, Dinuka Sahabandu, Luyao Niu, Arezoo Rajabi, Bhaskar Ramasubramanian, Bo Li, Radha Poovendran |
| 2023 | FedL2P: Federated Learning to Personalize. Royson Lee, Minyoung Kim, Da Li, Xinchi Qiu, Timothy M. Hospedales, Ferenc Huszar, Nicholas D. Lane |
| 2023 | FedNAR: Federated Optimization with Normalized Annealing Regularization. Junbo Li, Ang Li, Chong Tian, Qirong Ho, Eric P. Xing, Hongyi Wang |
| 2023 | Federated Compositional Deep AUC Maximization. Xinwen Zhang, Yihan Zhang, Tianbao Yang, Richard Souvenir, Hongchang Gao |
| 2023 | Federated Conditional Stochastic Optimization. Xidong Wu, Jianhui Sun, Zhengmian Hu, Junyi Li, Aidong Zhang, Heng Huang |
| 2023 | Federated Learning via Meta-Variational Dropout. Insu Jeon, Minui Hong, Junhyeog Yun, Gunhee Kim |
| 2023 | Federated Learning with Bilateral Curation for Partially Class-Disjoint Data. Ziqing Fan, Ruipeng Zhang, Jiangchao Yao, Bo Han, Ya Zhang, Yanfeng Wang |
| 2023 | Federated Learning with Client Subsampling, Data Heterogeneity, and Unbounded Smoothness: A New Algorithm and Lower Bounds. Michael Crawshaw, Yajie Bao, Mingrui Liu |
| 2023 | Federated Learning with Manifold Regularization and Normalized Update Reaggregation. Xuming An, Li Shen, Han Hu, Yong Luo |
| 2023 | Federated Linear Bandits with Finite Adversarial Actions. Li Fan, Ruida Zhou, Chao Tian, Cong Shen |
| 2023 | Federated Multi-Objective Learning. Haibo Yang, Zhuqing Liu, Jia Liu, Chaosheng Dong, Michinari Momma |
| 2023 | Federated Spectral Clustering via Secure Similarity Reconstruction. Dong Qiao, Chris Ding, Jicong Fan |
| 2023 | Few-Shot Class-Incremental Learning via Training-Free Prototype Calibration. Qi-Wei Wang, Da-Wei Zhou, Yi-Kai Zhang, De-Chuan Zhan, Han-Jia Ye |
| 2023 | Few-shot Generation via Recalling Brain-Inspired Episodic-Semantic Memory. Zhibin Duan, Zhiyi Lv, Chaojie Wang, Bo Chen, Bo An, Mingyuan Zhou |
| 2023 | FiGURe: Simple and Efficient Unsupervised Node Representations with Filter Augmentations. Chanakya Ekbote, Ajinkya Pankaj Deshpande, Arun Iyer, Sundararajan Sellamanickam, Ramakrishna Bairi |
| 2023 | Find What You Want: Learning Demand-conditioned Object Attribute Space for Demand-driven Navigation. Hongcheng Wang, Andy Guan Hong Chen, Xiaoqi Li, Mingdong Wu, Hao Dong |
| 2023 | Finding Counterfactually Optimal Action Sequences in Continuous State Spaces. Stratis Tsirtsis, Manuel Gomez Rodriguez |
| 2023 | Finding Local Minima Efficiently in Decentralized Optimization. Wenhan Xian, Heng Huang |
| 2023 | Finding Order in Chaos: A Novel Data Augmentation Method for Time Series in Contrastive Learning. Berken Utku Demirel, Christian Holz |
| 2023 | Finding Safe Zones of Markov Decision Processes Policies. Lee Cohen, Yishay Mansour, Michal Moshkovitz |
| 2023 | Fine-Grained Cross-View Geo-Localization Using a Correlation-Aware Homography Estimator. Xiaolong Wang, Runsen Xu, Zhuofan Cui, Zeyu Wan, Yu Zhang |
| 2023 | Fine-Grained Human Feedback Gives Better Rewards for Language Model Training. Zeqiu Wu, Yushi Hu, Weijia Shi, Nouha Dziri, Alane Suhr, Prithviraj Ammanabrolu, Noah A. Smith, Mari Ostendorf, Hannaneh Hajishirzi |
| 2023 | Fine-Grained Theoretical Analysis of Federated Zeroth-Order Optimization. Jun Chen, Hong Chen, Bin Gu, Hao Deng |
| 2023 | Fine-Grained Visual Prompting. Lingfeng Yang, Yueze Wang, Xiang Li, Xinlong Wang, Jian Yang |
| 2023 | Fine-Tuning Language Models with Just Forward Passes. Sadhika Malladi, Tianyu Gao, Eshaan Nichani, Alex Damian, Jason D. Lee, Danqi Chen, Sanjeev Arora |
| 2023 | Fine-grained Expressivity of Graph Neural Networks. Jan Böker, Ron Levie, Ningyuan Huang, Soledad Villar, Christopher Morris |
| 2023 | Fine-grained Late-interaction Multi-modal Retrieval for Retrieval Augmented Visual Question Answering. Weizhe Lin, Jinghong Chen, Jingbiao Mei, Alexandru Coca, Bill Byrne |
| 2023 | FineMoGen: Fine-Grained Spatio-Temporal Motion Generation and Editing. Mingyuan Zhang, Huirong Li, Zhongang Cai, Jiawei Ren, Lei Yang, Ziwei Liu |
| 2023 | Finite Population Regression Adjustment and Non-asymptotic Guarantees for Treatment Effect Estimation. Mehrdad Ghadiri, David Arbour, Tung Mai, Cameron Musco, Anup B. Rao |
| 2023 | Finite-Time Analysis of Single-Timescale Actor-Critic. Xuyang Chen, Lin Zhao |
| 2023 | Finite-Time Analysis of Whittle Index based Q-Learning for Restless Multi-Armed Bandits with Neural Network Function Approximation. Guojun Xiong, Jian Li |
| 2023 | First Order Methods with Markovian Noise: from Acceleration to Variational Inequalities. Aleksandr Beznosikov, Sergey Samsonov, Marina Sheshukova, Alexander V. Gasnikov, Alexey Naumov, Eric Moulines |
| 2023 | First Order Stochastic Optimization with Oblivious Noise. Ilias Diakonikolas, Sushrut Karmalkar, Jongho Park, Christos Tzamos |
| 2023 | First- and Second-Order Bounds for Adversarial Linear Contextual Bandits. Julia Olkhovskaya, Jack J. Mayo, Tim van Erven, Gergely Neu, Chen-Yu Wei |
| 2023 | Fitting trees to 𝓁 Joon-Hyeok Yim, Anna C. Gilbert |
| 2023 | Fixing the NTK: From Neural Network Linearizations to Exact Convex Programs. Rajat Vadiraj Dwaraknath, Tolga Ergen, Mert Pilanci |
| 2023 | Flat Seeking Bayesian Neural Networks. Van-Anh Nguyen, Tung-Long Vuong, Hoang Phan, Thanh-Toan Do, Dinh Q. Phung, Trung Le |
| 2023 | FlatMatch: Bridging Labeled Data and Unlabeled Data with Cross-Sharpness for Semi-Supervised Learning. Zhuo Huang, Li Shen, Jun Yu, Bo Han, Tongliang Liu |
| 2023 | Flexible Attention-Based Multi-Policy Fusion for Efficient Deep Reinforcement Learning. Zih-Yun Chiu, Yi-Lin Tuan, William Yang Wang, Michael C. Yip |
| 2023 | Flocks of Stochastic Parrots: Differentially Private Prompt Learning for Large Language Models. Haonan Duan, Adam Dziedzic, Nicolas Papernot, Franziska Boenisch |
| 2023 | Flow Factorized Representation Learning. Yue Song, Andy Keller, Nicu Sebe, Max Welling |
| 2023 | Flow Matching for Scalable Simulation-Based Inference. Jonas Wildberger, Maximilian Dax, Simon Buchholz, Stephen R. Green, Jakob H. Macke, Bernhard Schölkopf |
| 2023 | Flow-Attention-based Spatio-Temporal Aggregation Network for 3D Mask Detection. Yuxin Cao, Yian Li, Yumeng Zhu, Derui Wang, Minhui Xue |
| 2023 | Flow-Based Feature Fusion for Vehicle-Infrastructure Cooperative 3D Object Detection. Haibao Yu, Yingjuan Tang, Enze Xie, Jilei Mao, Ping Luo, Zaiqing Nie |
| 2023 | Flow: Per-instance Personalized Federated Learning. Kunjal Panchal, Sunav Choudhary, Nisarg Parikh, Lijun Zhang, Hui Guan |
| 2023 | FlowCam: Training Generalizable 3D Radiance Fields without Camera Poses via Pixel-Aligned Scene Flow. Cameron Smith, Yilun Du, Ayush Tewari, Vincent Sitzmann |
| 2023 | FlowPG: Action-constrained Policy Gradient with Normalizing Flows. Janaka Chathuranga Brahmanage, Jiajing Ling, Akshat Kumar |
| 2023 | Focus Your Attention when Few-Shot Classification. Haoqing Wang, Shibo Jie, Zhihong Deng |
| 2023 | Focus on Query: Adversarial Mining Transformer for Few-Shot Segmentation. Yuan Wang, Naisong Luo, Tianzhu Zhang |
| 2023 | Focused Transformer: Contrastive Training for Context Scaling. Szymon Tworkowski, Konrad Staniszewski, Mikolaj Pacek, Yuhuai Wu, Henryk Michalewski, Piotr Milos |
| 2023 | Follow-ups Also Matter: Improving Contextual Bandits via Post-serving Contexts. Chaoqi Wang, Ziyu Ye, Zhe Feng, Ashwinkumar Badanidiyuru Varadaraja, Haifeng Xu |
| 2023 | For SALE: State-Action Representation Learning for Deep Reinforcement Learning. Scott Fujimoto, Wei-Di Chang, Edward J. Smith, Shixiang Gu, Doina Precup, David Meger |
| 2023 | ForecastPFN: Synthetically-Trained Zero-Shot Forecasting. Samuel Dooley, Gurnoor Singh Khurana, Chirag Mohapatra, Siddartha V. Naidu, Colin White |
| 2023 | ForkMerge: Mitigating Negative Transfer in Auxiliary-Task Learning. Junguang Jiang, Baixu Chen, Junwei Pan, Ximei Wang, Dapeng Liu, Jie Jiang, Mingsheng Long |
| 2023 | Formalizing locality for normative synaptic plasticity models. Colin Bredenberg, Ezekiel Williams, Cristina Savin, Blake A. Richards, Guillaume Lajoie |
| 2023 | Formulating Discrete Probability Flow Through Optimal Transport. Pengze Zhang, Hubery Yin, Chen Li, Xiaohua Xie |
| 2023 | Foundation Model is Efficient Multimodal Multitask Model Selector. Fanqing Meng, Wenqi Shao, Zhanglin Peng, Chonghe Jiang, Kaipeng Zhang, Yu Qiao, Ping Luo |
| 2023 | FouriDown: Factoring Down-Sampling into Shuffling and Superposing. Qi Zhu, Man Zhou, Jie Huang, Naishan Zheng, Hongzhi Gao, Chongyi Li, Yuan Xu, Feng Zhao |
| 2023 | FourierGNN: Rethinking Multivariate Time Series Forecasting from a Pure Graph Perspective. Kun Yi, Qi Zhang, Wei Fan, Hui He, Liang Hu, Pengyang Wang, Ning An, Longbing Cao, Zhendong Niu |
| 2023 | FourierHandFlow: Neural 4D Hand Representation Using Fourier Query Flow. Jihyun Lee, Junbong Jang, Donghwan Kim, Minhyuk Sung, Tae-Kyun Kim |
| 2023 | Fractal Landscapes in Policy Optimization. Tao Wang, Sylvia L. Herbert, Sicun Gao |
| 2023 | Fragment-based Pretraining and Finetuning on Molecular Graphs. Kha-Dinh Luong, Ambuj K. Singh |
| 2023 | Framework and Benchmarks for Combinatorial and Mixed-variable Bayesian Optimization. Kamil Dreczkowski, Antoine Grosnit, Haitham Bou-Ammar |
| 2023 | Free-Bloom: Zero-Shot Text-to-Video Generator with LLM Director and LDM Animator. Hanzhuo Huang, Yufan Feng, Cheng Shi, Lan Xu, Jingyi Yu, Sibei Yang |
| 2023 | FreeMask: Synthetic Images with Dense Annotations Make Stronger Segmentation Models. Lihe Yang, Xiaogang Xu, Bingyi Kang, Yinghuan Shi, Hengshuang Zhao |
| 2023 | Frequency Domain-Based Dataset Distillation. DongHyeok Shin, Seungjae Shin, Il-Chul Moon |
| 2023 | Frequency-Enhanced Data Augmentation for Vision-and-Language Navigation. Keji He, Chenyang Si, Zhihe Lu, Yan Huang, Liang Wang, Xinchao Wang |
| 2023 | Frequency-domain MLPs are More Effective Learners in Time Series Forecasting. Kun Yi, Qi Zhang, Wei Fan, Shoujin Wang, Pengyang Wang, Hui He, Ning An, Defu Lian, Longbing Cao, Zhendong Niu |
| 2023 | From Cloze to Comprehension: Retrofitting Pre-trained Masked Language Models to Pre-trained Machine Reader. Weiwen Xu, Xin Li, Wenxuan Zhang, Meng Zhou, Wai Lam, Luo Si, Lidong Bing |
| 2023 | From Discrete Tokens to High-Fidelity Audio Using Multi-Band Diffusion. Robin San Roman, Yossi Adi, Antoine Deleforge, Romain Serizel, Gabriel Synnaeve, Alexandre Défossez |
| 2023 | From Distribution Learning in Training to Gradient Search in Testing for Combinatorial Optimization. Yang Li, Jinpei Guo, Runzhong Wang, Junchi Yan |
| 2023 | From Pixels to UI Actions: Learning to Follow Instructions via Graphical User Interfaces. Peter Shaw, Mandar Joshi, James Cohan, Jonathan Berant, Panupong Pasupat, Hexiang Hu, Urvashi Khandelwal, Kenton Lee, Kristina Toutanova |
| 2023 | From Tempered to Benign Overfitting in ReLU Neural Networks. Guy Kornowski, Gilad Yehudai, Ohad Shamir |
| 2023 | From Trainable Negative Depth to Edge Heterophily in Graphs. Yuchen Yan, Yuzhong Chen, Huiyuan Chen, Minghua Xu, Mahashweta Das, Hao Yang, Hanghang Tong |
| 2023 | From ViT Features to Training-free Video Object Segmentation via Streaming-data Mixture Models. Roy Uziel, Or Dinari, Oren Freifeld |
| 2023 | Front-door Adjustment Beyond Markov Equivalence with Limited Graph Knowledge. Abhin Shah, Karthikeyan Shanmugam, Murat Kocaoglu |
| 2023 | Full-Atom Protein Pocket Design via Iterative Refinement. Zaixi Zhang, Zepu Lu, Zhongkai Hao, Marinka Zitnik, Qi Liu |
| 2023 | Fully Dynamic k-Clustering in Õ(k) Update Time. Sayan Bhattacharya, Martín Costa, Silvio Lattanzi, Nikos Parotsidis |
| 2023 | Function Space Bayesian Pseudocoreset for Bayesian Neural Networks. Balhae Kim, Hyungi Lee, Juho Lee |
| 2023 | Functional Equivalence and Path Connectivity of Reducible Hyperbolic Tangent Networks. Matthew Farrugia-Roberts |
| 2023 | Functional Renyi Differential Privacy for Generative Modeling. Dihong Jiang, Sun Sun, Yaoliang Yu |
| 2023 | Functional-Group-Based Diffusion for Pocket-Specific Molecule Generation and Elaboration. Haitao Lin, Yufei Huang, Odin Zhang, Yunfan Liu, Lirong Wu, Siyuan Li, Zhiyuan Chen, Stan Z. Li |
| 2023 | Fused Gromov-Wasserstein Graph Mixup for Graph-level Classifications. Xinyu Ma, Xu Chu, Yasha Wang, Yang Lin, Junfeng Zhao, Liantao Ma, Wenwu Zhu |
| 2023 | Future-Dependent Value-Based Off-Policy Evaluation in POMDPs. Masatoshi Uehara, Haruka Kiyohara, Andrew Bennett, Victor Chernozhukov, Nan Jiang, Nathan Kallus, Chengchun Shi, Wen Sun |
| 2023 | GADBench: Revisiting and Benchmarking Supervised Graph Anomaly Detection. Jianheng Tang, Fengrui Hua, Ziqi Gao, Peilin Zhao, Jia Li |
| 2023 | GAIA: Delving into Gradient-based Attribution Abnormality for Out-of-distribution Detection. Jinggang Chen, Junjie Li, Xiaoyang Qu, Jianzong Wang, Jiguang Wan, Jing Xiao |
| 2023 | GALOPA: Graph Transport Learning with Optimal Plan Alignment. Yejiang Wang, Yuhai Zhao, Daniel Zhengkui Wang, Ling Li |
| 2023 | GAN You See Me? Enhanced Data Reconstruction Attacks against Split Inference. Ziang Li, Mengda Yang, Yaxin Liu, Juan Wang, Hongxin Hu, Wenzhe Yi, Xiaoyang Xu |
| 2023 | GAUCHE: A Library for Gaussian Processes in Chemistry. Ryan-Rhys Griffiths, Leo Klarner, Henry B. Moss, Aditya Ravuri, Sang Truong, Yuanqi Du, Samuel Stanton, Gary Tom, Bojana Rankovic, Arian Rokkum Jamasb, Aryan Deshwal, Julius Schwartz, Austin Tripp, Gregory Kell, Simon Frieder, Anthony Bourached, Alex Chan, Jacob Moss, Chengzhi Guo, Johannes Peter Dürholt, Saudamini Chaurasia, Ji Won Park, Felix Strieth-Kalthoff, Alpha A. Lee, Bingqing Cheng, Alán Aspuru-Guzik, Philippe Schwaller, Jian Tang |
| 2023 | GEO-Bench: Toward Foundation Models for Earth Monitoring. Alexandre Lacoste, Nils Lehmann, Pau Rodríguez, Evan D. Sherwin, Hannah Kerner, Björn Lütjens, Jeremy Irvin, David Dao, Hamed Alemohammad, Alexandre Drouin, Mehmet Gunturkun, Gabriel Huang, David Vázquez, Dava J. Newman, Yoshua Bengio, Stefano Ermon, Xiaoxiang Zhu |
| 2023 | GEQ: Gaussian Kernel Inspired Equilibrium Models. Mingjie Li, Yisen Wang, Zhouchen Lin |
| 2023 | GEX: A flexible method for approximating influence via Geometric Ensemble. Sungyub Kim, Kyungsu Kim, Eunho Yang |
| 2023 | GIMLET: A Unified Graph-Text Model for Instruction-Based Molecule Zero-Shot Learning. Haiteng Zhao, Shengchao Liu, Chang Ma, Hannan Xu, Jie Fu, Zhihong Deng, Lingpeng Kong, Qi Liu |
| 2023 | GLEMOS: Benchmark for Instantaneous Graph Learning Model Selection. Namyong Park, Ryan A. Rossi, Xing Wang, Antoine Simoulin, Nesreen K. Ahmed, Christos Faloutsos |
| 2023 | GLIME: General, Stable and Local LIME Explanation. Zeren Tan, Yang Tian, Jian Li |
| 2023 | GLOBER: Coherent Non-autoregressive Video Generation via GLOBal Guided Video DecodER. Mingzhen Sun, Weining Wang, Zihan Qin, Jiahui Sun, Sihan Chen, Jing Liu |
| 2023 | GMSF: Global Matching Scene Flow. Yushan Zhang, Johan Edstedt, Bastian Wandt, Per-Erik Forssén, Maria Magnusson, Michael Felsberg |
| 2023 | GNNEvaluator: Evaluating GNN Performance On Unseen Graphs Without Labels. Xin Zheng, Miao Zhang, Chunyang Chen, Soheila Molaei, Chuan Zhou, Shirui Pan |
| 2023 | GNeSF: Generalizable Neural Semantic Fields. Hanlin Chen, Chen Li, Mengqi Guo, Zhiwen Yan, Gim Hee Lee |
| 2023 | GPEX, A Framework For Interpreting Artificial Neural Networks. Amir Akbarnejad, Gilbert Bigras, Nilanjan Ray |
| 2023 | GPT-ST: Generative Pre-Training of Spatio-Temporal Graph Neural Networks. Zhonghang Li, Lianghao Xia, Yong Xu, Chao Huang |
| 2023 | GPT4Tools: Teaching Large Language Model to Use Tools via Self-instruction. Rui Yang, Lin Song, Yanwei Li, Sijie Zhao, Yixiao Ge, Xiu Li, Ying Shan |
| 2023 | GRAND-SLAMIN' Interpretable Additive Modeling with Structural Constraints. Shibal Ibrahim, Gabriel Afriat, Kayhan Behdin, Rahul Mazumder |
| 2023 | GSLB: The Graph Structure Learning Benchmark. Zhixun Li, Xin Sun, Yifan Luo, Yanqiao Zhu, Dingshuo Chen, Yingtao Luo, Xiangxin Zhou, Qiang Liu, Shu Wu, Liang Wang, Jeffrey Xu Yu |
| 2023 | GUST: Combinatorial Generalization by Unsupervised Grouping with Neuronal Coherence. Hao Zheng, Hui Lin, Rong Zhao |
| 2023 | Gacs-Korner Common Information Variational Autoencoder. Michael Kleinman, Alessandro Achille, Stefano Soatto, Jonathan C. Kao |
| 2023 | Game Solving with Online Fine-Tuning. Ti-Rong Wu, Hung Guei, Ting-Han Wei, Chung-Chin Shih, Jui-Te Chin, I-Chen Wu |
| 2023 | Gaussian Differential Privacy on Riemannian Manifolds. Yangdi Jiang, Xiaotian Chang, Yi Liu, Lei Ding, Linglong Kong, Bei Jiang |
| 2023 | Gaussian Membership Inference Privacy. Tobias Leemann, Martin Pawelczyk, Gjergji Kasneci |
| 2023 | Gaussian Mixture Solvers for Diffusion Models. Hanzhong Guo, Cheng Lu, Fan Bao, Tianyu Pang, Shuicheng Yan, Chao Du, Chongxuan Li |
| 2023 | Gaussian Partial Information Decomposition: Bias Correction and Application to High-dimensional Data. Praveen Venkatesh, Corbett Bennett, Sam Gale, Tamina K. Ramirez, Greggory Heller, Severine Durand, Shawn R. Olsen, Stefan Mihalas |
| 2023 | Gaussian Process Probes (GPP) for Uncertainty-Aware Probing. Zi Wang, Alexander Ku, Jason Baldridge, Tom Griffiths, Been Kim |
| 2023 | GenEval: An object-focused framework for evaluating text-to-image alignment. Dhruba Ghosh, Hannaneh Hajishirzi, Ludwig Schmidt |
| 2023 | GenImage: A Million-Scale Benchmark for Detecting AI-Generated Image. Mingjian Zhu, Hanting Chen, Qiangyu Yan, Xudong Huang, Guanyu Lin, Wei Li, Zhijun Tu, Hailin Hu, Jie Hu, Yunhe Wang |
| 2023 | GenS: Generalizable Neural Surface Reconstruction from Multi-View Images. Rui Peng, Xiaodong Gu, Luyang Tang, Shihe Shen, Fanqi Yu, Ronggang Wang |
| 2023 | General Munchausen Reinforcement Learning with Tsallis Kullback-Leibler Divergence. Lingwei Zhu, Zheng Chen, Matthew Schlegel, Martha White |
| 2023 | Generalised f-Mean Aggregation for Graph Neural Networks. Ryan Kortvelesy, Steven D. Morad, Amanda Prorok |
| 2023 | Generalizable Lightweight Proxy for Robust NAS against Diverse Perturbations. Hyeonjeong Ha, Minseon Kim, Sung Ju Hwang |
| 2023 | Generalizable One-shot 3D Neural Head Avatar. Xueting Li, Shalini De Mello, Sifei Liu, Koki Nagano, Umar Iqbal, Jan Kautz |
| 2023 | Generalization bounds for neural ordinary differential equations and deep residual networks. Pierre Marion |
| 2023 | Generalization in the Face of Adaptivity: A Bayesian Perspective. Moshe Shenfeld, Katrina Ligett |
| 2023 | Generalized Bayesian Inference for Scientific Simulators via Amortized Cost Estimation. Richard Gao, Michael Deistler, Jakob H. Macke |
| 2023 | Generalized Belief Transport. Junqi Wang, Pei Wang, Patrick Shafto |
| 2023 | Generalized Information-theoretic Multi-view Clustering. Weitian Huang, Sirui Yang, Hongmin Cai |
| 2023 | Generalized Logit Adjustment: Calibrating Fine-tuned Models by Removing Label Bias in Foundation Models. Beier Zhu, Kaihua Tang, Qianru Sun, Hanwang Zhang |
| 2023 | Generalized Semi-Supervised Learning via Self-Supervised Feature Adaptation. Jiachen Liang, Ruibing Hou, Hong Chang, Bingpeng Ma, Shiguang Shan, Xilin Chen |
| 2023 | Generalized Weighted Path Consistency for Mastering Atari Games. Dengwei Zhao, Shikui Tu, Lei Xu |
| 2023 | Generalized equivalences between subsampling and ridge regularization. Pratik Patil, Jin-Hong Du |
| 2023 | Generalized test utilities for long-tail performance in extreme multi-label classification. Erik Schultheis, Marek Wydmuch, Wojciech Kotlowski, Rohit Babbar, Krzysztof Dembczynski |
| 2023 | Generalizing Importance Weighting to A Universal Solver for Distribution Shift Problems. Tongtong Fang, Nan Lu, Gang Niu, Masashi Sugiyama |
| 2023 | Generalizing Nonlinear ICA Beyond Structural Sparsity. Yujia Zheng, Kun Zhang |
| 2023 | Generate What You Prefer: Reshaping Sequential Recommendation via Guided Diffusion. Zhengyi Yang, Jiancan Wu, Zhicai Wang, Xiang Wang, Yancheng Yuan, Xiangnan He |
| 2023 | Generating Behaviorally Diverse Policies with Latent Diffusion Models. Shashank Hegde, Sumeet Batra, K. R. Zentner, Gaurav S. Sukhatme |
| 2023 | Generating Images with Multimodal Language Models. Jing Yu Koh, Daniel Fried, Russ Salakhutdinov |
| 2023 | Generating QM1B with PySCF Alexander Mathiasen, Hatem Helal, Kerstin Klaser, Paul Balanca, Josef Dean, Carlo Luschi, Dominique Beaini, Andrew W. Fitzgibbon, Dominic Masters |
| 2023 | Generative Category-level Object Pose Estimation via Diffusion Models. Jiyao Zhang, Mingdong Wu, Hao Dong |
| 2023 | Generative Modeling through the Semi-dual Formulation of Unbalanced Optimal Transport. Jaemoo Choi, Jaewoong Choi, Myungjoo Kang |
| 2023 | Generative Modelling of Stochastic Actions with Arbitrary Constraints in Reinforcement Learning. Changyu Chen, Ramesha Karunasena, Thanh Hong Nguyen, Arunesh Sinha, Pradeep Varakantham |
| 2023 | Generative Neural Fields by Mixtures of Neural Implicit Functions. Tackgeun You, Mijeong Kim, Jungtaek Kim, Bohyung Han |
| 2023 | Generator Born from Classifier. Runpeng Yu, Xinchao Wang |
| 2023 | Generator Identification for Linear SDEs with Additive and Multiplicative Noise. Yuanyuan Wang, Xi Geng, Wei Huang, Biwei Huang, Mingming Gong |
| 2023 | GeoCLIP: Clip-Inspired Alignment between Locations and Images for Effective Worldwide Geo-localization. Vicente Vivanco Cepeda, Gaurav Kumar Nayak, Mubarak Shah |
| 2023 | GeoDE: a Geographically Diverse Evaluation Dataset for Object Recognition. Vikram V. Ramaswamy, Sing Yu Lin, Dora Zhao, Aaron Adcock, Laurens van der Maaten, Deepti Ghadiyaram, Olga Russakovsky |
| 2023 | GeoPhy: Differentiable Phylogenetic Inference via Geometric Gradients of Tree Topologies. Takahiro Mimori, Michiaki Hamada |
| 2023 | GeoTMI: Predicting Quantum Chemical Property with Easy-to-Obtain Geometry via Positional Denoising. Hyeonsu Kim, Jeheon Woo, Seonghwan Kim, Seokhyun Moon, Jun Hyeong Kim, Woo Youn Kim |
| 2023 | Geodesic Multi-Modal Mixup for Robust Fine-Tuning. Changdae Oh, Junhyuk So, Hoyoon Byun, YongTaek Lim, Minchul Shin, Jong-June Jeon, Kyungwoo Song |
| 2023 | Geometric Algebra Transformer. Johann Brehmer, Pim de Haan, Sönke Behrends, Taco S. Cohen |
| 2023 | Geometric Analysis of Matrix Sensing over Graphs. Haixiang Zhang, Ying Chen, Javad Lavaei |
| 2023 | Geometric Neural Diffusion Processes. Emile Mathieu, Vincent Dutordoir, Michael J. Hutchinson, Valentin De Bortoli, Yee Whye Teh, Richard E. Turner |
| 2023 | Geometric Transformer with Interatomic Positional Encoding. Yusong Wang, Shaoning Li, Tong Wang, Bin Shao, Nanning Zheng, Tie-Yan Liu |
| 2023 | Geometry-Aware Adaptation for Pretrained Models. Nicholas Carl Roberts, Xintong Li, Dyah Adila, Sonia Cromp, Tzu-Heng Huang, Jitian Zhao, Frederic Sala |
| 2023 | Geometry-Informed Neural Operator for Large-Scale 3D PDEs. Zongyi Li, Nikola B. Kovachki, Christopher B. Choy, Boyi Li, Jean Kossaifi, Shourya Prakash Otta, Mohammad Amin Nabian, Maximilian Stadler, Christian Hundt, Kamyar Azizzadenesheli, Animashree Anandkumar |
| 2023 | Getting ViT in Shape: Scaling Laws for Compute-Optimal Model Design. Ibrahim M. Alabdulmohsin, Xiaohua Zhai, Alexander Kolesnikov, Lucas Beyer |
| 2023 | Gigastep - One Billion Steps per Second Multi-agent Reinforcement Learning. Mathias Lechner, Lianhao Yin, Tim Seyde, Tsun-Hsuan Johnson Wang, Wei Xiao, Ramin M. Hasani, Joshua Rountree, Daniela Rus |
| 2023 | Glance and Focus: Memory Prompting for Multi-Event Video Question Answering. Ziyi Bai, Ruiping Wang, Xilin Chen |
| 2023 | Global Convergence Analysis of Local SGD for Two-layer Neural Network without Overparameterization. Yajie Bao, Amarda Shehu, Mingrui Liu |
| 2023 | Global Identifiability of 𝓁 Jingzhou Hu, Kejun Huang |
| 2023 | Global Optimality in Bivariate Gradient-based DAG Learning. Chang Deng, Kevin Bello, Pradeep Ravikumar, Bryon Aragam |
| 2023 | Global Structure-Aware Diffusion Process for Low-light Image Enhancement. Jinhui Hou, Zhiyu Zhu, Junhui Hou, Hui Liu, Huanqiang Zeng, Hui Yuan |
| 2023 | Global Update Tracking: A Decentralized Learning Algorithm for Heterogeneous Data. Sai Aparna Aketi, Abolfazl Hashemi, Kaushik Roy |
| 2023 | Global-correlated 3D-decoupling Transformer for Clothed Avatar Reconstruction. Zechuan Zhang, Li Sun, Zongxin Yang, Ling Chen, Yi Yang |
| 2023 | Globally injective and bijective neural operators. Takashi Furuya, Michael Puthawala, Matti Lassas, Maarten V. de Hoop |
| 2023 | Globally solving the Gromov-Wasserstein problem for point clouds in low dimensional Euclidean spaces. Martin Ryner, Jan Kronqvist, Johan Karlsson |
| 2023 | GloptiNets: Scalable Non-Convex Optimization with Certificates. Gaspard Beugnot, Julien Mairal, Alessandro Rudi |
| 2023 | GlucoSynth: Generating Differentially-Private Synthetic Glucose Traces. Josephine Lamp, Mark Derdzinski, Christopher Hannemann, Joost van der Linden, Lu Feng, Tianhao Wang, David E. Evans |
| 2023 | GlyphControl: Glyph Conditional Control for Visual Text Generation. Yukang Yang, Dongnan Gui, Yuhui Yuan, Weicong Liang, Haisong Ding, Han Hu, Kai Chen |
| 2023 | Goal Driven Discovery of Distributional Differences via Language Descriptions. Ruiqi Zhong, Peter Zhang, Steve Li, Jinwoo Ahn, Dan Klein, Jacob Steinhardt |
| 2023 | Goal-Conditioned Predictive Coding for Offline Reinforcement Learning. Zilai Zeng, Ce Zhang, Shijie Wang, Chen Sun |
| 2023 | Goal-conditioned Offline Planning from Curious Exploration. Marco Bagatella, Georg Martius |
| 2023 | Going Beyond Linear Mode Connectivity: The Layerwise Linear Feature Connectivity. Zhanpeng Zhou, Yongyi Yang, Xiaojiang Yang, Junchi Yan, Wei Hu |
| 2023 | Going beyond persistent homology using persistent homology. Johanna Immonen, Amauri H. Souza, Vikas Garg |
| 2023 | Gold-YOLO: Efficient Object Detector via Gather-and-Distribute Mechanism. Chengcheng Wang, Wei He, Ying Nie, Jianyuan Guo, Chuanjian Liu, Yunhe Wang, Kai Han |
| 2023 | GradOrth: A Simple yet Efficient Out-of-Distribution Detection with Orthogonal Projection of Gradients. Sima Behpour, Thang Long Doan, Xin Li, Wenbin He, Liang Gou, Liu Ren |
| 2023 | Gradient Descent with Linearly Correlated Noise: Theory and Applications to Differential Privacy. Anastasia Koloskova, Ryan McKenna, Zachary Charles, John Keith Rush, H. Brendan McMahan |
| 2023 | Gradient Flossing: Improving Gradient Descent through Dynamic Control of Jacobians. Rainer Engelken |
| 2023 | Gradient Informed Proximal Policy Optimization. Sanghyun Son, Laura Yu Zheng, Ryan Sullivan, Yi-Ling Qiao, Ming C. Lin |
| 2023 | Gradient-Based Feature Learning under Structured Data. Alireza Mousavi Hosseini, Denny Wu, Taiji Suzuki, Murat A. Erdogdu |
| 2023 | Gradient-Free Kernel Stein Discrepancy. Matthew Fisher, Chris J. Oates |
| 2023 | Grammar Prompting for Domain-Specific Language Generation with Large Language Models. Bailin Wang, Zi Wang, Xuezhi Wang, Yuan Cao, Rif A. Saurous, Yoon Kim |
| 2023 | Granger Components Analysis: Unsupervised learning of latent temporal dependencies. Jacek Dmochowski |
| 2023 | Graph Contrastive Learning with Stable and Scalable Spectral Encoding. Deyu Bo, Yuan Fang, Yang Liu, Chuan Shi |
| 2023 | Graph Convolutional Kernel Machine versus Graph Convolutional Networks. Zhihao Wu, Zhao Zhang, Jicong Fan |
| 2023 | Graph Denoising Diffusion for Inverse Protein Folding. Kai Yi, Bingxin Zhou, Yiqing Shen, Pietro Lió, Yuguang Wang |
| 2023 | Graph Mixture of Experts: Learning on Large-Scale Graphs with Explicit Diversity Modeling. Haotao Wang, Ziyu Jiang, Yuning You, Yan Han, Gaowen Liu, Jayanth Srinivasa, Ramana Kompella, Zhangyang Wang |
| 2023 | Graph Neural Networks for Road Safety Modeling: Datasets and Evaluations for Accident Analysis. Abhinav Nippani, Dongyue Li, Haotian Ju, Haris K. Koutsopoulos, Hongyang R. Zhang |
| 2023 | Graph of Circuits with GNN for Exploring the Optimal Design Space. Aditya Hemant Shahane, Saripilli Swapna Manjiri, Ankesh Jain, Sandeep Kumar |
| 2023 | Graph-Structured Gaussian Processes for Transferable Graph Learning. Jun Wu, Lisa Ainsworth, Andrew Leakey, Haixun Wang, Jingrui He |
| 2023 | GraphAdapter: Tuning Vision-Language Models With Dual Knowledge Graph. Xin Li, Dongze Lian, Zhihe Lu, Jiawang Bai, Zhibo Chen, Xinchao Wang |
| 2023 | GraphMP: Graph Neural Network-based Motion Planning with Efficient Graph Search. Xiao Zang, Miao Yin, Jinqi Xiao, Saman A. Zonouz, Bo Yuan |
| 2023 | GraphPatcher: Mitigating Degree Bias for Graph Neural Networks via Test-time Augmentation. Mingxuan Ju, Tong Zhao, Wenhao Yu, Neil Shah, Yanfang Ye |
| 2023 | Grassmann Manifold Flows for Stable Shape Generation. Ryoma Yataka, Kazuki Hirashima, Masashi Shiraishi |
| 2023 | Greatness in Simplicity: Unified Self-Cycle Consistency for Parser-Free Virtual Try-On. Chenghu Du, Junyin Wang, Shuqing Liu, Shengwu Xiong |
| 2023 | Greedy Poisson Rejection Sampling. Gergely Flamich |
| 2023 | Greedy Pruning with Group Lasso Provably Generalizes for Matrix Sensing. Nived Rajaraman, Devvrit, Aryan Mokhtari, Kannan Ramchandran |
| 2023 | Grounded Decoding: Guiding Text Generation with Grounded Models for Embodied Agents. Wenlong Huang, Fei Xia, Dhruv Shah, Danny Driess, Andy Zeng, Yao Lu, Pete Florence, Igor Mordatch, Sergey Levine, Karol Hausman, Brian Ichter |
| 2023 | Grounding Neural Inference with Satisfiability Modulo Theories. Zifan Wang, Saranya Vijayakumar, Kaiji Lu, Vijay Ganesh, Somesh Jha, Matt Fredrikson |
| 2023 | Group Fairness in Peer Review. Haris Aziz, Evi Micha, Nisarg Shah |
| 2023 | Group Robust Classification Without Any Group Information. Christos Tsirigotis, João Monteiro, Pau Rodríguez, David Vázquez, Aaron C. Courville |
| 2023 | Guarantees for Self-Play in Multiplayer Games via Polymatrix Decomposability. Revan MacQueen, James R. Wright |
| 2023 | Guide Your Agent with Adaptive Multimodal Rewards. Changyeon Kim, Younggyo Seo, Hao Liu, Lisa Lee, Jinwoo Shin, Honglak Lee, Kimin Lee |
| 2023 | Guiding Large Language Models via Directional Stimulus Prompting. Zekun Li, Baolin Peng, Pengcheng He, Michel Galley, Jianfeng Gao, Xifeng Yan |
| 2023 | Guiding The Last Layer in Federated Learning with Pre-Trained Models. Gwen Legate, Nicolas Bernier, Lucas Page-Caccia, Edouard Oyallon, Eugene Belilovsky |
| 2023 | H-Consistency Bounds: Characterization and Extensions. Anqi Mao, Mehryar Mohri, Yutao Zhong |
| 2023 | H-InDex: Visual Reinforcement Learning with Hand-Informed Representations for Dexterous Manipulation. Yanjie Ze, Yuyao Liu, Ruizhe Shi, Jiaxin Qin, Zhecheng Yuan, Jiashun Wang, Huazhe Xu |
| 2023 | H-nobs: Achieving Certified Fairness and Robustness in Distributed Learning on Heterogeneous Datasets. Guanqiang Zhou, Ping Xu, Yue Wang, Zhi Tian |
| 2023 | H2O: Heavy-Hitter Oracle for Efficient Generative Inference of Large Language Models. Zhenyu Zhang, Ying Sheng, Tianyi Zhou, Tianlong Chen, Lianmin Zheng, Ruisi Cai, Zhao Song, Yuandong Tian, Christopher Ré, Clark W. Barrett, Zhangyang Wang, Beidi Chen |
| 2023 | H2RBox-v2: Incorporating Symmetry for Boosting Horizontal Box Supervised Oriented Object Detection. Yi Yu, Xue Yang, Qingyun Li, Yue Zhou, Feipeng Da, Junchi Yan |
| 2023 | H3T: Efficient Integration of Memory Optimization and Parallelism for Large-scale Transformer Training. Yuzhong Wang, Xu Han, Weilin Zhao, Guoyang Zeng, Zhiyuan Liu, Maosong Sun |
| 2023 | HA-ViD: A Human Assembly Video Dataset for Comprehensive Assembly Knowledge Understanding. Hao Zheng, Regina Lee, Yuqian Lu |
| 2023 | HAP: Structure-Aware Masked Image Modeling for Human-Centric Perception. Junkun Yuan, Xinyu Zhang, Hao Zhou, Jian Wang, Zhongwei Qiu, Zhiyin Shao, Shaofeng Zhang, Sifan Long, Kun Kuang, Kun Yao, Junyu Han, Errui Ding, Lanfen Lin, Fei Wu, Jingdong Wang |
| 2023 | HASSOD: Hierarchical Adaptive Self-Supervised Object Detection. Shengcao Cao, Dhiraj Joshi, Liangyan Gui, Yu-Xiong Wang |
| 2023 | HEDNet: A Hierarchical Encoder-Decoder Network for 3D Object Detection in Point Clouds. Gang Zhang, Junnan Chen, Guohuan Gao, Jianmin Li, Xiaolin Hu |
| 2023 | HIQL: Offline Goal-Conditioned RL with Latent States as Actions. Seohong Park, Dibya Ghosh, Benjamin Eysenbach, Sergey Levine |
| 2023 | HOH: Markerless Multimodal Human-Object-Human Handover Dataset with Large Object Count. Noah Wiederhold, Ava Megyeri, DiMaggio Paris, Sean Banerjee, Natasha Banerjee |
| 2023 | HQA-Attack: Toward High Quality Black-Box Hard-Label Adversarial Attack on Text. Han Liu, Zhi Xu, Xiaotong Zhang, Feng Zhang, Fenglong Ma, Hongyang Chen, Hong Yu, Xianchao Zhang |
| 2023 | HT-Step: Aligning Instructional Articles with How-To Videos. Triantafyllos Afouras, Effrosyni Mavroudi, Tushar Nagarajan, Huiyu Wang, Lorenzo Torresani |
| 2023 | Handling Data Heterogeneity via Architectural Design for Federated Visual Recognition. Sara Pieri, Jose Renato Restom, Samuel Horváth, Hisham Cholakkal |
| 2023 | Hard Prompts Made Easy: Gradient-Based Discrete Optimization for Prompt Tuning and Discovery. Yuxin Wen, Neel Jain, John Kirchenbauer, Micah Goldblum, Jonas Geiping, Tom Goldstein |
| 2023 | Hardness of Low Rank Approximation of Entrywise Transformed Matrix Products. Tamás Sarlós, Xingyou Song, David P. Woodruff, Richard Zhang |
| 2023 | Hardware Resilience Properties of Text-Guided Image Classifiers. Syed Talal Wasim, Kabila Haile Soboka, Abdulrahman Mahmoud, Salman H. Khan, David Brooks, Gu-Yeon Wei |
| 2023 | Harnessing Hard Mixed Samples with Decoupled Regularizer. Zicheng Liu, Siyuan Li, Ge Wang, Lirong Wu, Cheng Tan, Stan Z. Li |
| 2023 | Harnessing the power of choices in decision tree learning. Guy Blanc, Jane Lange, Chirag Pabbaraju, Colin Sullivan, Li-Yang Tan, Mo Tiwari |
| 2023 | Have it your way: Individualized Privacy Assignment for DP-SGD. Franziska Boenisch, Christopher Mühl, Adam Dziedzic, Roy Rinberg, Nicolas Papernot |
| 2023 | HeadSculpt: Crafting 3D Head Avatars with Text. Xiao Han, Yukang Cao, Kai Han, Xiatian Zhu, Jiankang Deng, Yi-Zhe Song, Tao Xiang, Kwan-Yee K. Wong |
| 2023 | HiBug: On Human-Interpretable Model Debug. Muxi Chen, Yu Li, Qiang Xu |
| 2023 | HiNeRV: Video Compression with Hierarchical Encoding-based Neural Representation. Ho Man Kwan, Ge Gao, Fan Zhang, Andrew Gower, David Bull |
| 2023 | Hidden Poison: Machine Unlearning Enables Camouflaged Poisoning Attacks. Jimmy Z. Di, Jack Douglas, Jayadev Acharya, Gautam Kamath, Ayush Sekhari |
| 2023 | Hierarchical Adaptive Value Estimation for Multi-modal Visual Reinforcement Learning. Yangru Huang, Peixi Peng, Yifan Zhao, Haoran Xu, Mengyue Geng, Yonghong Tian |
| 2023 | Hierarchical Decomposition of Prompt-Based Continual Learning: Rethinking Obscured Sub-optimality. Liyuan Wang, Jingyi Xie, Xingxing Zhang, Mingyi Huang, Hang Su, Jun Zhu |
| 2023 | Hierarchical Gaussian Mixture based Task Generative Model for Robust Meta-Learning. Yizhou Zhang, Jingchao Ni, Wei Cheng, Zhengzhang Chen, Liang Tong, Haifeng Chen, Yan Liu |
| 2023 | Hierarchical Integration Diffusion Model for Realistic Image Deblurring. Zheng Chen, Yulun Zhang, Ding Liu, Bin Xia, Jinjin Gu, Linghe Kong, Xin Yuan |
| 2023 | Hierarchical Multi-Agent Skill Discovery. Mingyu Yang, Yaodong Yang, Zhenbo Lu, Wengang Zhou, Houqiang Li |
| 2023 | Hierarchical Open-vocabulary Universal Image Segmentation. Xudong Wang, Shufan Li, Konstantinos Kallidromitis, Yusuke Kato, Kazuki Kozuka, Trevor Darrell |
| 2023 | Hierarchical Randomized Smoothing. Yan Scholten, Jan Schuchardt, Aleksandar Bojchevski, Stephan Günnemann |
| 2023 | Hierarchical Semi-Implicit Variational Inference with Application to Diffusion Model Acceleration. Longlin Yu, Tianyu Xie, Yu Zhu, Tong Yang, Xiangyu Zhang, Cheng Zhang |
| 2023 | Hierarchical VAEs provide a normative account of motion processing in the primate brain. Hadi Vafaii, Jacob L. Yates, Daniel Butts |
| 2023 | Hierarchical Vector Quantized Transformer for Multi-class Unsupervised Anomaly Detection. Ruiying Lu, Yujie Wu, Long Tian, Dongsheng Wang, Bo Chen, Xiyang Liu, Ruimin Hu |
| 2023 | Hierarchical clustering with dot products recovers hidden tree structure. Annie Gray, Alexander Modell, Patrick Rubin-Delanchy, Nick Whiteley |
| 2023 | Hierarchically Gated Recurrent Neural Network for Sequence Modeling. Zhen Qin, Songlin Yang, Yiran Zhong |
| 2023 | High Precision Causal Model Evaluation with Conditional Randomization. Chao Ma, Cheng Zhang |
| 2023 | High dimensional, tabular deep learning with an auxiliary knowledge graph. Camilo Ruiz, Hongyu Ren, Kexin Huang, Jure Leskovec |
| 2023 | High-Fidelity Audio Compression with Improved RVQGAN. Rithesh Kumar, Prem Seetharaman, Alejandro Luebs, Ishaan Kumar, Kundan Kumar |
| 2023 | High-dimensional Asymptotics of Denoising Autoencoders. Hugo Cui, Lenka Zdeborová |
| 2023 | High-dimensional Contextual Bandit Problem without Sparsity. Junpei Komiyama, Masaaki Imaizumi |
| 2023 | Higher-Order Uncoupled Dynamics Do Not Lead to Nash Equilibrium - Except When They Do. Sarah Toonsi, Jeff S. Shamma |
| 2023 | History Filtering in Imperfect Information Games: Algorithms and Complexity. Christopher Solinas, Douglas Rebstock, Nathan R. Sturtevant, Michael Buro |
| 2023 | Hokoff: Real Game Dataset from Honor of Kings and its Offline Reinforcement Learning Benchmarks. Yun Qu, Boyuan Wang, Jianzhun Shao, Yuhang Jiang, Chen Chen, Zhenbin Ye, Lin Liu, Yang Feng, Lin Lai, Hongyang Qin, Minwen Deng, Juchao Zhuo, Deheng Ye, Qiang Fu, Yang Guang, Wei Yang, Lanxiao Huang, Xiangyang Ji |
| 2023 | Holistic Evaluation of Text-to-Image Models. Tony Lee, Michihiro Yasunaga, Chenlin Meng, Yifan Mai, Joon Sung Park, Agrim Gupta, Yunzhi Zhang, Deepak Narayanan, Hannah Teufel, Marco Bellagente, Minguk Kang, Taesung Park, Jure Leskovec, Jun-Yan Zhu, Fei-Fei Li, Jiajun Wu, Stefano Ermon, Percy Liang |
| 2023 | Holistic Transfer: Towards Non-Disruptive Fine-Tuning with Partial Target Data. Cheng-Hao Tu, Hong-You Chen, Zheda Mai, Jike Zhong, Vardaan Pahuja, Tanya Y. Berger-Wolf, Song Gao, Charles V. Stewart, Yu Su, Wei-Lun Chao |
| 2023 | Homotopy-based training of NeuralODEs for accurate dynamics discovery. Joon-Hyuk Ko, Hankyul Koh, Nojun Park, Wonho Jhe |
| 2023 | Honesty Is the Best Policy: Defining and Mitigating AI Deception. Francis Ward, Francesca Toni, Francesco Belardinelli, Tom Everitt |
| 2023 | Horospherical Decision Boundaries for Large Margin Classification in Hyperbolic Space. Xiran Fan, Chun-Hao Yang, Baba C. Vemuri |
| 2023 | HotBEV: Hardware-oriented Transformer-based Multi-View 3D Detector for BEV Perception. Peiyan Dong, Zhenglun Kong, Xin Meng, Pinrui Yu, Yifan Gong, Geng Yuan, Hao Tang, Yanzhi Wang |
| 2023 | How Does Adaptive Optimization Impact Local Neural Network Geometry? Kaiqi Jiang, Dhruv Malik, Yuanzhi Li |
| 2023 | How Far Can Camels Go? Exploring the State of Instruction Tuning on Open Resources. Yizhong Wang, Hamish Ivison, Pradeep Dasigi, Jack Hessel, Tushar Khot, Khyathi Raghavi Chandu, David Wadden, Kelsey MacMillan, Noah A. Smith, Iz Beltagy, Hannaneh Hajishirzi |
| 2023 | How Re-sampling Helps for Long-Tail Learning? Jiang-Xin Shi, Tong Wei, Yuke Xiang, Yufeng Li |
| 2023 | How a Student becomes a Teacher: learning and forgetting through Spectral methods. Lorenzo Giambagli, Lorenzo Buffoni, Lorenzo Chicchi, Duccio Fanelli |
| 2023 | How do Minimum-Norm Shallow Denoisers Look in Function Space? Chen Zeno, Greg Ongie, Yaniv Blumenfeld, Nir Weinberger, Daniel Soudry |
| 2023 | How does GPT-2 compute greater-than?: Interpreting mathematical abilities in a pre-trained language model. Michael Hanna, Ollie Liu, Alexandre Variengien |
| 2023 | How hard are computer vision datasets? Calibrating dataset difficulty to viewing time. David Mayo, Jesse Cummings, Xinyu Lin, Dan Gutfreund, Boris Katz, Andrei Barbu |
| 2023 | How many samples are needed to leverage smoothness? Vivien Cabannes, Stefano Vigogna |
| 2023 | How to Data in Datathons. Carlos Mougan, Richard Plant, Clare Teng, Marya Bazzi, Alvaro Cabrejas Egea, Ryan Sze-Yin Chan, David Salvador Jasin, Martin Stoffel, Kirstie J. Whitaker, Jules Manser |
| 2023 | How to Fine-tune the Model: Unified Model Shift and Model Bias Policy Optimization. Hai Zhang, Hang Yu, Junqiao Zhao, Di Zhang, Xiao Zhang, Hongtu Zhou, Chang Huang, Chen Ye |
| 2023 | How to Scale Your EMA. Dan Busbridge, Jason Ramapuram, Pierre Ablin, Tatiana Likhomanenko, Eeshan Gunesh Dhekane, Xavier Suau Cuadros, Russell Webb |
| 2023 | How to Select Which Active Learning Strategy is Best Suited for Your Specific Problem and Budget. Guy Hacohen, Daphna Weinshall |
| 2023 | How to Turn Your Knowledge Graph Embeddings into Generative Models. Lorenzo Loconte, Nicola Di Mauro, Robert Peharz, Antonio Vergari |
| 2023 | How2comm: Communication-Efficient and Collaboration-Pragmatic Multi-Agent Perception. Dingkang Yang, Kun Yang, Yuzheng Wang, Jing Liu, Zhi Xu, Rongbin Yin, Peng Zhai, Lihua Zhang |
| 2023 | HubRouter: Learning Global Routing via Hub Generation and Pin-hub Connection. Xingbo Du, Chonghua Wang, Ruizhe Zhong, Junchi Yan |
| 2023 | HuggingGPT: Solving AI Tasks with ChatGPT and its Friends in Hugging Face. Yongliang Shen, Kaitao Song, Xu Tan, Dongsheng Li, Weiming Lu, Yueting Zhuang |
| 2023 | Human spatiotemporal pattern learning as probabilistic program synthesis. Tracey Mills, Josh Tenenbaum, Samuel J. Cheyette |
| 2023 | Human-Aligned Calibration for AI-Assisted Decision Making. Nina Corvelo Benz, Manuel Gomez Rodriguez |
| 2023 | Human-Guided Complexity-Controlled Abstractions. Andi Peng, Mycal Tucker, Eoin M. Kenny, Noga Zaslavsky, Pulkit Agrawal, Julie A. Shah |
| 2023 | Human-in-the-Loop Optimization for Deep Stimulus Encoding in Visual Prostheses. Jacob Granley, Tristan Fauvel, Matthew Chalk, Michael Beyeler |
| 2023 | Human-like Few-Shot Learning via Bayesian Reasoning over Natural Language. Kevin Ellis |
| 2023 | Humans in Kitchens: A Dataset for Multi-Person Human Motion Forecasting with Scene Context. Julian Tanke, Oh-Hun Kwon, Felix B. Mueller, Andreas Doering, Jürgen Gall |
| 2023 | HyP-NeRF: Learning Improved NeRF Priors using a HyperNetwork. Bipasha Sen, Gaurav Singh, Aditya Agarwal, Rohith Agaram, K. Madhava Krishna, Srinath Sridhar |
| 2023 | HyPoradise: An Open Baseline for Generative Speech Recognition with Large Language Models. Chen Chen, Yuchen Hu, Chao-Han Huck Yang, Sabato Marco Siniscalchi, Pin-Yu Chen, Chng Eng Siong |
| 2023 | HyTrel: Hypergraph-enhanced Tabular Data Representation Learning. Pei Chen, Soumajyoti Sarkar, Leonard Lausen, Balasubramaniam Srinivasan, Sheng Zha, Ruihong Huang, George Karypis |
| 2023 | Hybrid Policy Optimization from Imperfect Demonstrations. Hanlin Yang, Chao Yu, Peng Sun, Siji Chen |
| 2023 | Hybrid Search for Efficient Planning with Completeness Guarantees. Kalle Kujanpää, Joni Pajarinen, Alexander Ilin |
| 2023 | HyenaDNA: Long-Range Genomic Sequence Modeling at Single Nucleotide Resolution. Eric Nguyen, Michael Poli, Marjan Faizi, Armin W. Thomas, Michael Wornow, Callum Birch-Sykes, Stefano Massaroli, Aman Patel, Clayton M. Rabideau, Yoshua Bengio, Stefano Ermon, Christopher Ré, Stephen Baccus |
| 2023 | Hyper-HMM: aligning human brains and semantic features in a common latent event space. Caroline Lee, Jane Han, Feilong Ma, Jiahui Guo, James V. Haxby, Christopher Baldassano |
| 2023 | Hyper-Skin: A Hyperspectral Dataset for Reconstructing Facial Skin-Spectra from RGB Images. Pai Chet Ng, Zhixiang Chi, Yannick Verdie, Juwei Lu, Konstantinos N. Plataniotis |
| 2023 | Hyperbolic Graph Neural Networks at Scale: A Meta Learning Approach. Nurendra Choudhary, Nikhil Rao, Chandan K. Reddy |
| 2023 | Hyperbolic Space with Hierarchical Margin Boosts Fine-Grained Learning from Coarse Labels. Shu-Lin Xu, Yifan Sun, Faen Zhang, Anqi Xu, Xiu-Shen Wei, Yi Yang |
| 2023 | Hyperbolic VAE via Latent Gaussian Distributions. Seunghyuk Cho, Juyong Lee, Dongwoo Kim |
| 2023 | Hypernetwork-based Meta-Learning for Low-Rank Physics-Informed Neural Networks. Woojin Cho, Kookjin Lee, Donsub Rim, Noseong Park |
| 2023 | Hypervolume Maximization: A Geometric View of Pareto Set Learning. Xiaoyuan Zhang, Xi Lin, Bo Xue, Yifan Chen, Qingfu Zhang |
| 2023 | Hypothesis Selection with Memory Constraints. Maryam Aliakbarpour, Mark Bun, Adam Smith |
| 2023 | IBA: Towards Irreversible Backdoor Attacks in Federated Learning. Thuy Dung Nguyen, Tuan Nguyen, Anh Tran, Khoa D. Doan, Kok-Seng Wong |
| 2023 | ID and OOD Performance Are Sometimes Inversely Correlated on Real-world Datasets. Damien Teney, Yong Lin, Seong Joon Oh, Ehsan Abbasnejad |
| 2023 | IDEA: An Invariant Perspective for Efficient Domain Adaptive Image Retrieval. Haixin Wang, Hao Wu, Jinan Sun, Shikun Zhang, Chong Chen, Xian-Sheng Hua, Xiao Luo |
| 2023 | IDRNet: Intervention-Driven Relation Network for Semantic Segmentation. Zhenchao Jin, Xiaowei Hu, Lingting Zhu, Luchuan Song, Li Yuan, Lequan Yu |
| 2023 | IEBins: Iterative Elastic Bins for Monocular Depth Estimation. Shuwei Shao, Zhongcai Pei, Xingming Wu, Zhong Liu, Weihai Chen, Zhengguo Li |
| 2023 | IMP-MARL: a Suite of Environments for Large-scale Infrastructure Management Planning via MARL. Pascal Leroy, Pablo G. Morato, Jonathan Pisane, Athanasios Kolios, Damien Ernst |
| 2023 | IMPRESS: Evaluating the Resilience of Imperceptible Perturbations Against Unauthorized Data Usage in Diffusion-Based Generative AI. Bochuan Cao, Changjiang Li, Ting Wang, Jinyuan Jia, Bo Li, Jinghui Chen |
| 2023 | INSPECT: A Multimodal Dataset for Patient Outcome Prediction of Pulmonary Embolisms. Shih-Cheng Huang, Zepeng Huo, Ethan Steinberg, Chia-Chun Chiang, Curtis P. Langlotz, Matthew P. Lungren, Serena Yeung, Nigam Shah, Jason Alan Fries |
| 2023 | IPMix: Label-Preserving Data Augmentation Method for Training Robust Classifiers. Zhenglin Huang, Xiaoan Bao, Na Zhang, Qingqi Zhang, Xiao Tu, Biao Wu, Xi Yang |
| 2023 | ISP: Multi-Layered Garment Draping with Implicit Sewing Patterns. Ren Li, Benoît Guillard, Pascal Fua |
| 2023 | Idempotent Learned Image Compression with Right-Inverse. Yanghao Li, Tongda Xu, Yan Wang, Jingjing Liu, Ya-Qin Zhang |
| 2023 | Identifiability Guarantees for Causal Disentanglement from Soft Interventions. Jiaqi Zhang, Kristjan H. Greenewald, Chandler Squires, Akash Srivastava, Karthikeyan Shanmugam, Caroline Uhler |
| 2023 | Identifiable Contrastive Learning with Automatic Feature Importance Discovery. Qi Zhang, Yifei Wang, Yisen Wang |
| 2023 | Identification of Nonlinear Latent Hierarchical Models. Lingjing Kong, Biwei Huang, Feng Xie, Eric P. Xing, Yuejie Chi, Kun Zhang |
| 2023 | Ignorance is Bliss: Robust Control via Information Gating. Manan Tomar, Riashat Islam, Matthew E. Taylor, Sergey Levine, Philip Bachman |
| 2023 | Im-Promptu: In-Context Composition from Image Prompts. Bhishma Dedhia, Michael Chang, Jake Snell, Tom Griffiths, Niraj K. Jha |
| 2023 | Image Captioners Are Scalable Vision Learners Too. Michael Tschannen, Manoj Kumar, Andreas Steiner, Xiaohua Zhai, Neil Houlsby, Lucas Beyer |
| 2023 | ImageBrush: Learning Visual In-Context Instructions for Exemplar-Based Image Manipulation. Yasheng Sun, Yifan Yang, Houwen Peng, Yifei Shen, Yuqing Yang, Han Hu, Lili Qiu, Hideki Koike |
| 2023 | ImageNet-Hard: The Hardest Images Remaining from a Study of the Power of Zoom and Spatial Biases in Image Classification. Mohammad Reza Taesiri, Giang Nguyen, Sarra Habchi, Cor-Paul Bezemer, Anh Nguyen |
| 2023 | ImageReward: Learning and Evaluating Human Preferences for Text-to-Image Generation. Jiazheng Xu, Xiao Liu, Yuchen Wu, Yuxuan Tong, Qinkai Li, Ming Ding, Jie Tang, Yuxiao Dong |
| 2023 | Imagine That! Abstract-to-Intricate Text-to-Image Synthesis with Scene Graph Hallucination Diffusion. Shengqiong Wu, Hao Fei, Hanwang Zhang, Tat-Seng Chua |
| 2023 | Imagine the Unseen World: A Benchmark for Systematic Generalization in Visual World Models. Yeongbin Kim, Gautam Singh, Junyeong Park, Çaglar Gülçehre, Sungjin Ahn |
| 2023 | Imbalanced Mixed Linear Regression. Pini Zilber, Boaz Nadler |
| 2023 | Imitation Learning from Imperfection: Theoretical Justifications and Algorithms. Ziniu Li, Tian Xu, Zeyu Qin, Yang Yu, Zhi-Quan Luo |
| 2023 | Imitation Learning from Vague Feedback. Xin-Qiang Cai, Yu-Jie Zhang, Chao-Kai Chiang, Masashi Sugiyama |
| 2023 | Implicit Bias of (Stochastic) Gradient Descent for Rank-1 Linear Neural Network. Bochen Lyu, Zhanxing Zhu |
| 2023 | Implicit Bias of Gradient Descent for Logistic Regression at the Edge of Stability. Jingfeng Wu, Vladimir Braverman, Jason D. Lee |
| 2023 | Implicit Bias of Gradient Descent for Two-layer ReLU and Leaky ReLU Networks on Nearly-orthogonal Data. Yiwen Kou, Zixiang Chen, Quanquan Gu |
| 2023 | Implicit Contrastive Representation Learning with Guided Stop-gradient. Byeongchan Lee, Sehyun Lee |
| 2023 | Implicit Convolutional Kernels for Steerable CNNs. Maksim Zhdanov, Nico Hoffmann, Gabriele Cesa |
| 2023 | Implicit Differentiable Outlier Detection Enable Robust Deep Multimodal Analysis. Zhu Wang, Sourav Medya, Sathya N. Ravi |
| 2023 | Implicit Manifold Gaussian Process Regression. Bernardo Fichera, Slava Borovitskiy, Andreas Krause, Aude Gemma Billard |
| 2023 | Implicit Regularization in Over-Parameterized Support Vector Machine. Yang Sui, Xin He, Yang Bai |
| 2023 | Implicit Transfer Operator Learning: Multiple Time-Resolution Models for Molecular Dynamics. Mathias Schreiner, Ole Winther, Simon Olsson |
| 2023 | Implicit Variational Inference for High-Dimensional Posteriors. Anshuk Uppal, Kristoffer Stensbo-Smidt, Wouter Boomsma, Jes Frellsen |
| 2023 | Implicit variance regularization in non-contrastive SSL. Manu Srinath Halvagal, Axel Laborieux, Friedemann Zenke |
| 2023 | Importance Weighted Actor-Critic for Optimal Conservative Offline Reinforcement Learning. Hanlin Zhu, Paria Rashidinejad, Jiantao Jiao |
| 2023 | Importance-aware Co-teaching for Offline Model-based Optimization. Ye Yuan, Can Chen, Zixuan Liu, Willie Neiswanger, Xue (Steve) Liu |
| 2023 | Improved Algorithms for Stochastic Linear Bandits Using Tail Bounds for Martingale Mixtures. Hamish Flynn, David Reeb, Melih Kandemir, Jan R. Peters |
| 2023 | Improved Bayes Risk Can Yield Reduced Social Welfare Under Competition. Meena Jagadeesan, Michael I. Jordan, Jacob Steinhardt, Nika Haghtalab |
| 2023 | Improved Bayesian Regret Bounds for Thompson Sampling in Reinforcement Learning. Ahmadreza Moradipari, Mohammad Pedramfar, Modjtaba Shokrian Zini, Vaneet Aggarwal |
| 2023 | Improved Best-of-Both-Worlds Guarantees for Multi-Armed Bandits: FTRL with General Regularizers and Multiple Optimal Arms. Tiancheng Jin, Junyan Liu, Haipeng Luo |
| 2023 | Improved Communication Efficiency in Federated Natural Policy Gradient via ADMM-based Gradient Updates. Guangchen Lan, Han Wang, James Anderson, Christopher G. Brinton, Vaneet Aggarwal |
| 2023 | Improved Convergence in High Probability of Clipped Gradient Methods with Heavy Tailed Noise. Ta Duy Nguyen, Thien Hang Nguyen, Alina Ene, Huy L. Nguyen |
| 2023 | Improved Frequency Estimation Algorithms with and without Predictions. Anders Aamand, Justin Y. Chen, Huy Lê Nguyen, Sandeep Silwal, Ali Vakilian |
| 2023 | Improvements on Uncertainty Quantification for Node Classification via Distance Based Regularization. Russell Hart, Linlin Yu, Yifei Lou, Feng Chen |
| 2023 | Improving *day-ahead* Solar Irradiance Time Series Forecasting by Leveraging Spatio-Temporal Context. Oussama Boussif, Ghait Boukachab, Dan Assouline, Stefano Massaroli, Tianle Yuan, Loubna Benabbou, Yoshua Bengio |
| 2023 | Improving Adversarial Robustness via Information Bottleneck Distillation. Huafeng Kuang, Hong Liu, Yongjian Wu, Shin'ichi Satoh, Rongrong Ji |
| 2023 | Improving Adversarial Transferability via Intermediate-level Perturbation Decay. Qizhang Li, Yiwen Guo, Wangmeng Zuo, Hao Chen |
| 2023 | Improving CLIP Training with Language Rewrites. Lijie Fan, Dilip Krishnan, Phillip Isola, Dina Katabi, Yonglong Tian |
| 2023 | Improving Compositional Generalization using Iterated Learning and Simplicial Embeddings. Yi Ren, Samuel Lavoie, Michael Galkin, Danica J. Sutherland, Aaron C. Courville |
| 2023 | Improving Diffusion-Based Image Synthesis with Context Prediction. Ling Yang, Jingwei Liu, Shenda Hong, Zhilong Zhang, Zhilin Huang, Zheming Cai, Wentao Zhang, Bin Cui |
| 2023 | Improving Few-Shot Generalization by Exploring and Exploiting Auxiliary Data. Alon Albalak, Colin A. Raffel, William Yang Wang |
| 2023 | Improving Graph Matching with Positional Reconstruction Encoder-Decoder Network. Yixiao Zhou, Ruiqi Jia, Hongxiang Lin, Hefeng Quan, Yumeng Zhao, Xiaoqing Lyu |
| 2023 | Improving Language Plasticity via Pretraining with Active Forgetting. Yihong Chen, Kelly Marchisio, Roberta Raileanu, David Ifeoluwa Adelani, Pontus Lars Erik Saito Stenetorp, Sebastian Riedel, Mikel Artetxe |
| 2023 | Improving Robustness with Adaptive Weight Decay. Amin Ghiasi, Ali Shafahi, Reza Ardekani |
| 2023 | Improving Self-supervised Molecular Representation Learning using Persistent Homology. Yuankai Luo, Lei Shi, Veronika Thost |
| 2023 | Improving multimodal datasets with image captioning. Thao Nguyen, Samir Yitzhak Gadre, Gabriel Ilharco, Sewoong Oh, Ludwig Schmidt |
| 2023 | Improving neural network representations using human similarity judgments. Lukas Muttenthaler, Lorenz Linhardt, Jonas Dippel, Robert A. Vandermeulen, Katherine L. Hermann, Andrew K. Lampinen, Simon Kornblith |
| 2023 | Improving the Knowledge Gradient Algorithm. Le Yang, Siyang Gao, Chin Pang Ho |
| 2023 | Improving the Privacy and Practicality of Objective Perturbation for Differentially Private Linear Learners. Rachel Redberg, Antti Koskela, Yu-Xiang Wang |
| 2023 | In Defense of Softmax Parametrization for Calibrated and Consistent Learning to Defer. Yuzhou Cao, Hussein Mozannar, Lei Feng, Hongxin Wei, Bo An |
| 2023 | In-Context Impersonation Reveals Large Language Models' Strengths and Biases. Leonard Salewski, Stephan Alaniz, Isabel Rio-Torto, Eric Schulz, Zeynep Akata |
| 2023 | In-Context Learning Unlocked for Diffusion Models. Zhendong Wang, Yifan Jiang, Yadong Lu, Yelong Shen, Pengcheng He, Weizhu Chen, Zhangyang (Atlas) Wang, Mingyuan Zhou |
| 2023 | Incentives in Federated Learning: Equilibria, Dynamics, and Mechanisms for Welfare Maximization. Aniket Murhekar, Zhuowen Yuan, Bhaskar Ray Chaudhury, Bo Li, Ruta Mehta |
| 2023 | Incentives in Private Collaborative Machine Learning. Rachael Hwee Ling Sim, Yehong Zhang, Nghia Hoang, Xinyi Xu, Bryan Kian Hsiang Low, Patrick Jaillet |
| 2023 | Incentivized Communication for Federated Bandits. Zhepei Wei, Chuanhao Li, Haifeng Xu, Hongning Wang |
| 2023 | Incentivizing Honesty among Competitors in Collaborative Learning and Optimization. Florian E. Dorner, Nikola Konstantinov, Georgi Pashaliev, Martin T. Vechev |
| 2023 | Incomplete Multimodality-Diffused Emotion Recognition. Yuanzhi Wang, Yong Li, Zhen Cui |
| 2023 | Inconsistency, Instability, and Generalization Gap of Deep Neural Network Training. Rie Johnson, Tong Zhang |
| 2023 | Individual Arbitrariness and Group Fairness. Carol Xuan Long, Hsiang Hsu, Wael Alghamdi, Flávio P. Calmon |
| 2023 | Individualized Dosing Dynamics via Neural Eigen Decomposition. Stav Belogolovsky, Ido Greenberg, Danny Eytan, Shie Mannor |
| 2023 | Inference-Time Intervention: Eliciting Truthful Answers from a Language Model. Kenneth Li, Oam Patel, Fernanda B. Viégas, Hanspeter Pfister, Martin Wattenberg |
| 2023 | Inferring Hybrid Neural Fluid Fields from Videos. Hong-Xing Yu, Yang Zheng, Yuan Gao, Yitong Deng, Bo Zhu, Jiajun Wu |
| 2023 | Inferring the Future by Imagining the Past. Kartik Chandra, Tony Chen, Tzu-Mao Li, Jonathan Ragan-Kelley, Josh Tenenbaum |
| 2023 | InfoCD: A Contrastive Chamfer Distance Loss for Point Cloud Completion. Fangzhou Lin, Yun Yue, Ziming Zhang, Songlin Hou, Kazunori D. Yamada, Vijaya B. Kolachalama, Venkatesh Saligrama |
| 2023 | InfoPrompt: Information-Theoretic Soft Prompt Tuning for Natural Language Understanding. Junda Wu, Tong Yu, Rui Wang, Zhao Song, Ruiyi Zhang, Handong Zhao, Chaochao Lu, Shuai Li, Ricardo Henao |
| 2023 | Information Design in Multi-Agent Reinforcement Learning. Yue Lin, Wenhao Li, Hongyuan Zha, Baoxiang Wang |
| 2023 | Information Geometry of the Retinal Representation Manifold. Xuehao Ding, Dongsoo Lee, Joshua Melander, George Sivulka, Surya Ganguli, Stephen Baccus |
| 2023 | Information Maximization Perspective of Orthogonal Matching Pursuit with Applications to Explainable AI. Aditya Chattopadhyay, Ryan Pilgrim, René Vidal |
| 2023 | Information Maximizing Curriculum: A Curriculum-Based Approach for Learning Versatile Skills. Denis Blessing, Onur Celik, Xiaogang Jia, Moritz Reuss, Maximilian Xiling Li, Rudolf Lioutikov, Gerhard Neumann |
| 2023 | Information Theoretic Lower Bounds for Information Theoretic Upper Bounds. Roi Livni |
| 2023 | Information-guided Planning: An Online Approach for Partially Observable Problems. Matheus Aparecido do Carmo Alves, Amokh Varma, Yehia Elkhatib, Leandro Soriano Marcolino |
| 2023 | Initialization Matters: Privacy-Utility Analysis of Overparameterized Neural Networks. Jiayuan Ye, Zhenyu Zhu, Fanghui Liu, Reza Shokri, Volkan Cevher |
| 2023 | Initialization-Dependent Sample Complexity of Linear Predictors and Neural Networks. Roey Magen, Ohad Shamir |
| 2023 | Injecting Multimodal Information into Rigid Protein Docking via Bi-level Optimization. Ruijia Wang, YiWu Sun, Yujie Luo, Shaochuan Li, Cheng Yang, Xingyi Cheng, Hui Li, Chuan Shi, Le Song |
| 2023 | Inner Product-based Neural Network Similarity. Wei Chen, Zichen Miao, Qiang Qiu |
| 2023 | Inner-Outer Aware Reconstruction Model for Monocular 3D Scene Reconstruction. Yukun Qiu, Guo-Hao Xu, Wei-Shi Zheng |
| 2023 | InsActor: Instruction-driven Physics-based Characters. Jiawei Ren, Mingyuan Zhang, Cunjun Yu, Xiao Ma, Liang Pan, Ziwei Liu |
| 2023 | Inserting Anybody in Diffusion Models via Celeb Basis. Ge Yuan, Xiaodong Cun, Yong Zhang, Maomao Li, Chenyang Qi, Xintao Wang, Ying Shan, Huicheng Zheng |
| 2023 | InstanT: Semi-supervised Learning with Instance-dependent Thresholds. Muyang Li, Runze Wu, Haoyu Liu, Jun Yu, Xun Yang, Bo Han, Tongliang Liu |
| 2023 | InstructBLIP: Towards General-purpose Vision-Language Models with Instruction Tuning. Wenliang Dai, Junnan Li, Dongxu Li, Anthony Meng Huat Tiong, Junqi Zhao, Weisheng Wang, Boyang Li, Pascale Fung, Steven C. H. Hoi |
| 2023 | Instructing Goal-Conditioned Reinforcement Learning Agents with Temporal Logic Objectives. Wenjie Qiu, Wensen Mao, He Zhu |
| 2023 | Integration-free Training for Spatio-temporal Multimodal Covariate Deep Kernel Point Processes. Yixuan Zhang, Quyu Kong, Feng Zhou |
| 2023 | Intelligent Knee Sleeves: A Real-time Multimodal Dataset for 3D Lower Body Motion Estimation Using Smart Textile. Wenwen Zhang, Arvin Tashakori, Zenan Jiang, Amir Servati, Harishkumar Narayana, Saeid Soltanian, Rou Yi Yeap, Meng Han Ma, Lauren Toy, Peyman Servati |
| 2023 | Intensity Profile Projection: A Framework for Continuous-Time Representation Learning for Dynamic Networks. Alexander Modell, Ian Gallagher, Emma Ceccherini, Nick Whiteley, Patrick Rubin-Delanchy |
| 2023 | InterCode: Standardizing and Benchmarking Interactive Coding with Execution Feedback. John Yang, Akshara Prabhakar, Karthik Narasimhan, Shunyu Yao |
| 2023 | Interaction Measures, Partition Lattices and Kernel Tests for High-Order Interactions. Zhaolu Liu, Robert L. Peach, Pedro A. M. Mediano, Mauricio Barahona |
| 2023 | Interactive Multi-fidelity Learning for Cost-effective Adaptation of Language Model with Sparse Human Supervision. Jiaxin Zhang, Zhuohang Li, Kamalika Das, Kumar Sricharan |
| 2023 | Interactive Visual Reasoning under Uncertainty. Manjie Xu, Guangyuan Jiang, Wei Liang, Chi Zhang, Yixin Zhu |
| 2023 | Interpretability at Scale: Identifying Causal Mechanisms in Alpaca. Zhengxuan Wu, Atticus Geiger, Thomas Icard, Christopher Potts, Noah D. Goodman |
| 2023 | Interpretable Graph Networks Formulate Universal Algebra Conjectures. Francesco Giannini, Stefano Fioravanti, Oguzhan Keskin, Alisia Maria Lupidi, Lucie Charlotte Magister, Pietro Lió, Pietro Barbiero |
| 2023 | Interpretable Prototype-based Graph Information Bottleneck. Sangwoo Seo, Sungwon Kim, Chanyoung Park |
| 2023 | Interpretable Reward Redistribution in Reinforcement Learning: A Causal Approach. Yudi Zhang, Yali Du, Biwei Huang, Ziyan Wang, Jun Wang, Meng Fang, Mykola Pechenizkiy |
| 2023 | Interpretable and Explainable Logical Policies via Neurally Guided Symbolic Abstraction. Quentin Delfosse, Hikaru Shindo, Devendra Singh Dhami, Kristian Kersting |
| 2023 | Interpreting Unsupervised Anomaly Detection in Security via Rule Extraction. Ruoyu Li, Qing Li, Yu Zhang, Dan Zhao, Yong Jiang, Yong Yang |
| 2023 | Intervention Generalization: A View from Factor Graph Models. Gecia Bravo Hermsdorff, David S. Watson, Jialin Yu, Jakob Zeitler, Ricardo Silva |
| 2023 | Into the LAION's Den: Investigating Hate in Multimodal Datasets. Abeba Birhane, Vinay Uday Prabhu, Sanghyun Han, Vishnu Boddeti, Sasha Luccioni |
| 2023 | Into the Single Cell Multiverse: an End-to-End Dataset for Procedural Knowledge Extraction in Biomedical Texts. Ruth Dannenfelser, Jeffrey Zhong, Ran Zhang, Vicky Yao |
| 2023 | Intra-Modal Proxy Learning for Zero-Shot Visual Categorization with CLIP. Qi Qian, Yuanhong Xu, Juhua Hu |
| 2023 | Intriguing Properties of Quantization at Scale. Arash Ahmadian, Saurabh Dash, Hongyu Chen, Bharat Venkitesh, Stephen Zhen Gou, Phil Blunsom, Ahmet Üstün, Sara Hooker |
| 2023 | Intrinsic Dimension Estimation for Robust Detection of AI-Generated Texts. Eduard Tulchinskii, Kristian Kuznetsov, Laida Kushnareva, Daniil Cherniavskii, Sergey I. Nikolenko, Evgeny Burnaev, Serguei Barannikov, Irina Piontkovskaya |
| 2023 | Invariant Anomaly Detection under Distribution Shifts: A Causal Perspective. João B. S. Carvalho, Mengtao Zhang, Robin Geyer, Carlos Cotrini, Joachim M. Buhmann |
| 2023 | Invariant Learning via Probability of Sufficient and Necessary Causes. Mengyue Yang, Yonggang Zhang, Zhen Fang, Yali Du, Furui Liu, Jean-Francois Ton, Jianhong Wang, Jun Wang |
| 2023 | Inverse Dynamics Pretraining Learns Good Representations for Multitask Imitation. David Brandfonbrener, Ofir Nachum, Joan Bruna |
| 2023 | Inverse Preference Learning: Preference-based RL without a Reward Function. Joey Hejna, Dorsa Sadigh |
| 2023 | Inverse Reinforcement Learning with the Average Reward Criterion. Feiyang Wu, Jingyang Ke, Anqi Wu |
| 2023 | Investigating how ReLU-networks encode symmetries. Georg Bökman, Fredrik Kahl |
| 2023 | Is Distance Matrix Enough for Geometric Deep Learning? Zian Li, Xiyuan Wang, Yinan Huang, Muhan Zhang |
| 2023 | Is Heterogeneity Notorious? Taming Heterogeneity to Handle Test-Time Shift in Federated Learning. Yue Tan, Chen Chen, Weiming Zhuang, Xin Dong, Lingjuan Lyu, Guodong Long |
| 2023 | Is Learning in Games Good for the Learners? William Brown, Jon Schneider, Kiran Vodrahalli |
| 2023 | Is RLHF More Difficult than Standard RL? A Theoretical Perspective. Yuanhao Wang, Qinghua Liu, Chi Jin |
| 2023 | Is This Loss Informative? Faster Text-to-Image Customization by Tracking Objective Dynamics. Anton Voronov, Mikhail Khoroshikh, Artem Babenko, Max Ryabinin |
| 2023 | Is Your Code Generated by ChatGPT Really Correct? Rigorous Evaluation of Large Language Models for Code Generation. Jiawei Liu, Chunqiu Steven Xia, Yuyao Wang, Lingming Zhang |
| 2023 | Isometric Quotient Variational Auto-Encoders for Structure-Preserving Representation Learning. In Huh, Changwook Jeong, Jae Myung Choe, Younggu Kim, Daesin Kim |
| 2023 | Iterative Reachability Estimation for Safe Reinforcement Learning. Milan Ganai, Zheng Gong, Chenning Yu, Sylvia L. Herbert, Sicun Gao |
| 2023 | Iteratively Learn Diverse Strategies with State Distance Information. Wei Fu, Weihua Du, Jingwei Li, Sunli Chen, Jingzhao Zhang, Yi Wu |
| 2023 | Jaccard Metric Losses: Optimizing the Jaccard Index with Soft Labels. Zifu Wang, Xuefei Ning, Matthew B. Blaschko |
| 2023 | Jailbroken: How Does LLM Safety Training Fail? Alexander Wei, Nika Haghtalab, Jacob Steinhardt |
| 2023 | Jigsaw: Learning to Assemble Multiple Fractured Objects. Jiaxin Lu, Yifan Sun, Qixing Huang |
| 2023 | Joint Attribute and Model Generalization Learning for Privacy-Preserving Action Recognition. Duo Peng, Li Xu, Qiuhong Ke, Ping Hu, Jun Liu |
| 2023 | Joint Bayesian Inference of Graphical Structure and Parameters with a Single Generative Flow Network. Tristan Deleu, Mizu Nishikawa-Toomey, Jithendaraa Subramanian, Nikolay Malkin, Laurent Charlin, Yoshua Bengio |
| 2023 | Joint Data-Task Generation for Auxiliary Learning. Hong Chen, Xin Wang, Yuwei Zhou, Yijian Qin, Chaoyu Guan, Wenwu Zhu |
| 2023 | Joint Feature and Differentiable k-NN Graph Learning using Dirichlet Energy. Lei Xu, Lei Chen, Rong Wang, Feiping Nie, Xuelong Li |
| 2023 | Joint Learning of Label and Environment Causal Independence for Graph Out-of-Distribution Generalization. Shurui Gui, Meng Liu, Xiner Li, Youzhi Luo, Shuiwang Ji |
| 2023 | Joint Prompt Optimization of Stacked LLMs using Variational Inference. Alessandro Sordoni, Eric Yuan, Marc-Alexandre Côté, Matheus Pereira, Adam Trischler, Ziang Xiao, Arian Hosseini, Friederike Niedtner, Nicolas Le Roux |
| 2023 | Joint Training of Deep Ensembles Fails Due to Learner Collusion. Alan Jeffares, Tennison Liu, Jonathan Crabbé, Mihaela van der Schaar |
| 2023 | Joint processing of linguistic properties in brains and language models. Subba Reddy Oota, Manish Gupta, Mariya Toneva |
| 2023 | JourneyDB: A Benchmark for Generative Image Understanding. Keqiang Sun, Junting Pan, Yuying Ge, Hao Li, Haodong Duan, Xiaoshi Wu, Renrui Zhang, Aojun Zhou, Zipeng Qin, Yi Wang, Jifeng Dai, Yu Qiao, Limin Wang, Hongsheng Li |
| 2023 | Judging LLM-as-a-Judge with MT-Bench and Chatbot Arena. Lianmin Zheng, Wei-Lin Chiang, Ying Sheng, Siyuan Zhuang, Zhanghao Wu, Yonghao Zhuang, Zi Lin, Zhuohan Li, Dacheng Li, Eric P. Xing, Hao Zhang, Joseph E. Gonzalez, Ion Stoica |
| 2023 | K-Nearest-Neighbor Local Sampling Based Conditional Independence Testing. Shuai Li, Yingjie Zhang, Hongtu Zhu, Christina Dan Wang, Hai Shu, Ziqi Chen, Zhuoran Sun, Yanfeng Yang |
| 2023 | KAKURENBO: Adaptively Hiding Samples in Deep Neural Network Training. Truong Thao Nguyen, Balazs Gerofi, Edgar Josafat Martinez-Noriega, François Trahay, Mohamed Wahib |
| 2023 | KD-Zero: Evolving Knowledge Distiller for Any Teacher-Student Pairs. Lujun Li, Peijie Dong, Anggeng Li, Zimian Wei, Ya Yang |
| 2023 | Katakomba: Tools and Benchmarks for Data-Driven NetHack. Vladislav Kurenkov, Alexander Nikulin, Denis Tarasov, Sergey Kolesnikov |
| 2023 | Keep Various Trajectories: Promoting Exploration of Ensemble Policies in Continuous Control. Chao Li, Chen Gong, Qiang He, Xinwen Hou |
| 2023 | Kernel Quadrature with Randomly Pivoted Cholesky. Ethan Epperly, Elvira Moreno |
| 2023 | Kernel Stein Discrepancy thinning: a theoretical perspective of pathologies and a practical fix with regularization. Clément Bénard, Brian Staber, Sébastien Da Veiga |
| 2023 | Kernel-Based Tests for Likelihood-Free Hypothesis Testing. Patrik Róbert Gerber, Tianze Jiang, Yury Polyanskiy, Rui Sun |
| 2023 | Kernelized Cumulants: Beyond Kernel Mean Embeddings. Patric Bonnier, Harald Oberhauser, Zoltán Szabó |
| 2023 | Kernelized Reinforcement Learning with Order Optimal Regret Bounds. Sattar Vakili, Julia Olkhovskaya |
| 2023 | Keypoint-Augmented Self-Supervised Learning for Medical Image Segmentation with Limited Annotation. Zhangsihao Yang, Mengwei Ren, Kaize Ding, Guido Gerig, Yalin Wang |
| 2023 | Kiki or Bouba? Sound Symbolism in Vision-and-Language Models. Morris Alper, Hadar Averbuch-Elor |
| 2023 | Kissing to Find a Match: Efficient Low-Rank Permutation Representation. Hannah Dröge, Zorah Lähner, Yuval Bahat, Onofre Martorell Nadal, Felix Heide, Michael Moeller |
| 2023 | Knowledge Diffusion for Distillation. Tao Huang, Yuan Zhang, Mingkai Zheng, Shan You, Fei Wang, Chen Qian, Chang Xu |
| 2023 | Knowledge Distillation Performs Partial Variance Reduction. Mher Safaryan, Alexandra Peste, Dan Alistarh |
| 2023 | Knowledge Distillation for High Dimensional Search Index. Zepu Lu, Jin Chen, Defu Lian, Zaixi Zhang, Yong Ge, Enhong Chen |
| 2023 | Knowledge-Augmented Reasoning Distillation for Small Language Models in Knowledge-Intensive Tasks. Minki Kang, Seanie Lee, Jinheon Baek, Kenji Kawaguchi, Sung Ju Hwang |
| 2023 | Knowledge-based in silico models and dataset for the comparative evaluation of mammography AI for a range of breast characteristics, lesion conspicuities and doses. Elena Sizikova, Niloufar Saharkhiz, Diksha Sharma, Miguel A. Lago, Berkman Sahiner, Jana G. Delfino, Aldo Badano |
| 2023 | Koopa: Learning Non-stationary Time Series Dynamics with Koopman Predictors. Yong Liu, Chenyu Li, Jianmin Wang, Mingsheng Long |
| 2023 | Koopman Kernel Regression. Petar Bevanda, Max Beier, Armin Lederer, Stefan Sosnowski, Eyke Hüllermeier, Sandra Hirche |
| 2023 | Kronecker-Factored Approximate Curvature for Modern Neural Network Architectures. Runa Eschenhagen, Alexander Immer, Richard E. Turner, Frank Schneider, Philipp Hennig |
| 2023 | KuaiSim: A Comprehensive Simulator for Recommender Systems. Kesen Zhao, Shuchang Liu, Qingpeng Cai, Xiangyu Zhao, Ziru Liu, Dong Zheng, Peng Jiang, Kun Gai |
| 2023 | Kullback-Leibler Maillard Sampling for Multi-armed Bandits with Bounded Rewards. Hao Qin, Kwang-Sung Jun, Chicheng Zhang |
| 2023 | L Xiaotong Yuan, Ping Li |
| 2023 | L-C2ST: Local Diagnostics for Posterior Approximations in Simulation-Based Inference. Julia Linhart, Alexandre Gramfort, Pedro Rodrigues |
| 2023 | L-CAD: Language-based Colorization with Any-level Descriptions using Diffusion Priors. Zheng Chang, Shuchen Weng, Peixuan Zhang, Yu Li, Si Li, Boxin Shi |
| 2023 | L2T-DLN: Learning to Teach with Dynamic Loss Network. Zhaoyang Hai, Liyuan Pan, Xiabi Liu, Zhengzheng Liu, Mirna Yunita |
| 2023 | LAMM: Language-Assisted Multi-Modal Instruction-Tuning Dataset, Framework, and Benchmark. Zhenfei Yin, Jiong Wang, Jianjian Cao, Zhelun Shi, Dingning Liu, Mukai Li, Xiaoshui Huang, Zhiyong Wang, Lu Sheng, Lei Bai, Jing Shao, Wanli Ouyang |
| 2023 | LANCE: Stress-testing Visual Models by Generating Language-guided Counterfactual Images. Viraj Prabhu, Sriram Yenamandra, Prithvijit Chattopadhyay, Judy Hoffman |
| 2023 | LART: Neural Correspondence Learning with Latent Regularization Transformer for 3D Motion Transfer. Haoyu Chen, Hao Tang, Radu Timofte, Luc Van Gool, Guoying Zhao |
| 2023 | LD2: Scalable Heterophilous Graph Neural Network with Decoupled Embeddings. Ningyi Liao, Siqiang Luo, Xiang Li, Jieming Shi |
| 2023 | LEACE: Perfect linear concept erasure in closed form. Nora Belrose, David Schneider-Joseph, Shauli Ravfogel, Ryan Cotterell, Edward Raff, Stella Biderman |
| 2023 | LEPARD: Learning Explicit Part Discovery for 3D Articulated Shape Reconstruction. Di Liu, Anastasis Stathopoulos, Qilong Zhangli, Yunhe Gao, Dimitris N. Metaxas |
| 2023 | LIBERO: Benchmarking Knowledge Transfer for Lifelong Robot Learning. Bo Liu, Yifeng Zhu, Chongkai Gao, Yihao Feng, Qiang Liu, Yuke Zhu, Peter Stone |
| 2023 | LICO: Explainable Models with Language-Image COnsistency. Yiming Lei, Zilong Li, Yangyang Li, Junping Zhang, Hongming Shan |
| 2023 | LIMA: Less Is More for Alignment. Chunting Zhou, Pengfei Liu, Puxin Xu, Srinivasan Iyer, Jiao Sun, Yuning Mao, Xuezhe Ma, Avia Efrat, Ping Yu, Lili Yu, Susan Zhang, Gargi Ghosh, Mike Lewis, Luke Zettlemoyer, Omer Levy |
| 2023 | LLM-Pruner: On the Structural Pruning of Large Language Models. Xinyin Ma, Gongfan Fang, Xinchao Wang |
| 2023 | LLMScore: Unveiling the Power of Large Language Models in Text-to-Image Synthesis Evaluation. Yujie Lu, Xianjun Yang, Xiujun Li, Xin Eric Wang, William Yang Wang |
| 2023 | LLaVA-Med: Training a Large Language-and-Vision Assistant for Biomedicine in One Day. Chunyuan Li, Cliff Wong, Sheng Zhang, Naoto Usuyama, Haotian Liu, Jianwei Yang, Tristan Naumann, Hoifung Poon, Jianfeng Gao |
| 2023 | LMC: Large Model Collaboration with Cross-assessment for Training-Free Open-Set Object Recognition. Haoxuan Qu, Xiaofei Hui, Yujun Cai, Jun Liu |
| 2023 | LOVM: Language-Only Vision Model Selection. Orr Zohar, Shih-Cheng Huang, Kuan-Chieh Wang, Serena Yeung |
| 2023 | LVM-Med: Learning Large-Scale Self-Supervised Vision Models for Medical Imaging via Second-order Graph Matching. Duy M. H. Nguyen, Hoang Nguyen, Nghiem Tuong Diep, Tan Ngoc Pham, Tri Cao, Binh T. Nguyen, Paul Swoboda, Nhat Ho, Shadi Albarqouni, Pengtao Xie, Daniel Sonntag, Mathias Niepert |
| 2023 | LaFTer: Label-Free Tuning of Zero-shot Classifier using Language and Unlabeled Image Collections. Muhammad Jehanzeb Mirza, Leonid Karlinsky, Wei Lin, Horst Possegger, Mateusz Kozinski, Rogério Feris, Horst Bischof |
| 2023 | Label Correction of Crowdsourced Noisy Annotations with an Instance-Dependent Noise Transition Model. Hui Guo, Boyu Wang, Grace Yi |
| 2023 | Label Poisoning is All You Need. Rishi D. Jha, Jonathan Hayase, Sewoong Oh |
| 2023 | Label Robust and Differentially Private Linear Regression: Computational and Statistical Efficiency. Xiyang Liu, Prateek Jain, Weihao Kong, Sewoong Oh, Arun Sai Suggala |
| 2023 | Label-Only Model Inversion Attacks via Knowledge Transfer. Ngoc-Bao Nguyen, Keshigeyan Chandrasegaran, Milad Abdollahzadeh, Ngai-Man Cheung |
| 2023 | Label-Retrieval-Augmented Diffusion Models for Learning from Noisy Labels. Jian Chen, Ruiyi Zhang, Tong Yu, Rohan Sharma, Zhiqiang Xu, Tong Sun, Changyou Chen |
| 2023 | Label-efficient Segmentation via Affinity Propagation. Wentong Li, Yuqian Yuan, Song Wang, Wenyu Liu, Dongqi Tang, Jian Liu, Jianke Zhu, Lei Zhang |
| 2023 | Labeling Neural Representations with Inverse Recognition. Kirill Bykov, Laura Kopf, Shinichi Nakajima, Marius Kloft, Marina M.-C. Höhne |
| 2023 | LagrangeBench: A Lagrangian Fluid Mechanics Benchmarking Suite. Artur P. Toshev, Gianluca Galletti, Fabian Fritz, Stefan Adami, Nikolaus A. Adams |
| 2023 | LambdaBeam: Neural Program Search with Higher-Order Functions and Lambdas. Kensen Shi, Hanjun Dai, Wen-Ding Li, Kevin Ellis, Charles Sutton |
| 2023 | Landscape Surrogate: Learning Decision Losses for Mathematical Optimization Under Partial Information. Arman Zharmagambetov, Brandon Amos, Aaron M. Ferber, Taoan Huang, Bistra Dilkina, Yuandong Tian |
| 2023 | Langevin Quasi-Monte Carlo. Sifan Liu |
| 2023 | Language Is Not All You Need: Aligning Perception with Language Models. Shaohan Huang, Li Dong, Wenhui Wang, Yaru Hao, Saksham Singhal, Shuming Ma, Tengchao Lv, Lei Cui, Owais Khan Mohammed, Barun Patra, Qiang Liu, Kriti Aggarwal, Zewen Chi, Nils Johan Bertil Bjorck, Vishrav Chaudhary, Subhojit Som, Xia Song, Furu Wei |
| 2023 | Language Model Alignment with Elastic Reset. Michael Noukhovitch, Samuel Lavoie, Florian Strub, Aaron C. Courville |
| 2023 | Language Model Tokenizers Introduce Unfairness Between Languages. Aleksandar Petrov, Emanuele La Malfa, Philip H. S. Torr, Adel Bibi |
| 2023 | Language Models Can Improve Event Prediction by Few-Shot Abductive Reasoning. Xiaoming Shi, Siqiao Xue, Kangrui Wang, Fan Zhou, James Y. Zhang, Jun Zhou, Chenhao Tan, Hongyuan Mei |
| 2023 | Language Models Don't Always Say What They Think: Unfaithful Explanations in Chain-of-Thought Prompting. Miles Turpin, Julian Michael, Ethan Perez, Samuel R. Bowman |
| 2023 | Language Models Meet World Models: Embodied Experiences Enhance Language Models. Jiannan Xiang, Tianhua Tao, Yi Gu, Tianmin Shu, Zirui Wang, Zichao Yang, Zhiting Hu |
| 2023 | Language Models are Weak Learners. Hariharan Manikandan, Yiding Jiang, J. Zico Kolter |
| 2023 | Language Models can Solve Computer Tasks. Geunwoo Kim, Pierre Baldi, Stephen McAleer |
| 2023 | Language Quantized AutoEncoders: Towards Unsupervised Text-Image Alignment. Hao Liu, Wilson Yan, Pieter Abbeel |
| 2023 | Language Semantic Graph Guided Data-Efficient Learning. Wenxuan Ma, Shuang Li, Lincan Cai, Jingxuan Kang |
| 2023 | Language-based Action Concept Spaces Improve Video Self-Supervised Learning. Kanchana Ranasinghe, Michael S. Ryoo |
| 2023 | Language-driven Scene Synthesis using Multi-conditional Diffusion Model. Vuong Dinh An, Minh Nhat Vu, Toan Nguyen, Baoru Huang, Dzung Nguyen, Thieu Vo, Anh Nguyen |
| 2023 | Laplacian Canonization: A Minimalist Approach to Sign and Basis Invariant Spectral Embedding. George Ma, Yifei Wang, Yisen Wang |
| 2023 | Large Language Model as Attributed Training Data Generator: A Tale of Diversity and Bias. Yue Yu, Yuchen Zhuang, Jieyu Zhang, Yu Meng, Alexander J. Ratner, Ranjay Krishna, Jiaming Shen, Chao Zhang |
| 2023 | Large Language Models Are Latent Variable Models: Explaining and Finding Good Demonstrations for In-Context Learning. Xinyi Wang, Wanrong Zhu, Michael Saxon, Mark Steyvers, William Yang Wang |
| 2023 | Large Language Models Are Semi-Parametric Reinforcement Learning Agents. Danyang Zhang, Lu Chen, Situo Zhang, Hongshen Xu, Zihan Zhao, Kai Yu |
| 2023 | Large Language Models Are Zero-Shot Time Series Forecasters. Nate Gruver, Marc Finzi, Shikai Qiu, Andrew Gordon Wilson |
| 2023 | Large Language Models are Fixated by Red Herrings: Exploring Creative Problem Solving and Einstellung Effect using the Only Connect Wall Dataset. Saeid Alavi Naeini, Raeid Saqur, Mozhgan Saeidi, John M. Giorgi, Babak Taati |
| 2023 | Large Language Models are Visual Reasoning Coordinators. Liangyu Chen, Bo Li, Sheng Shen, Jingkang Yang, Chunyuan Li, Kurt Keutzer, Trevor Darrell, Ziwei Liu |
| 2023 | Large Language Models as Commonsense Knowledge for Large-Scale Task Planning. Zirui Zhao, Wee Sun Lee, David Hsu |
| 2023 | Large Language Models can Implement Policy Iteration. Ethan Brooks, Logan Walls, Richard L. Lewis, Satinder Singh |
| 2023 | Large Language Models for Automated Data Science: Introducing CAAFE for Context-Aware Automated Feature Engineering. Noah Hollmann, Samuel Müller, Frank Hutter |
| 2023 | Large Language Models of Code Fail at Completing Code with Potential Bugs. Tuan Dinh, Jinman Zhao, Samson Tan, Renato Negrinho, Leonard Lausen, Sheng Zha, George Karypis |
| 2023 | Large language models implicitly learn to straighten neural sentence trajectories to construct a predictive representation of natural language. Eghbal A. Hosseini, Evelina Fedorenko |
| 2023 | Large language models transition from integrating across position-yoked, exponential windows to structure-yoked, power-law windows. David Skrill, Samuel Norman-Haignere |
| 2023 | Large-Scale Distributed Learning via Private On-Device LSH. Tahseen Rabbani, Marco Bornstein, Furong Huang |
| 2023 | LargeST: A Benchmark Dataset for Large-Scale Traffic Forecasting. Xu Liu, Yutong Xia, Yuxuan Liang, Junfeng Hu, Yiwei Wang, Lei Bai, Chao Huang, Zhenguang Liu, Bryan Hooi, Roger Zimmermann |
| 2023 | Last-Iterate Convergent Policy Gradient Primal-Dual Methods for Constrained MDPs. Dongsheng Ding, Chen-Yu Wei, Kaiqing Zhang, Alejandro Ribeiro |
| 2023 | Latent Diffusion for Language Generation. Justin Lovelace, Varsha Kishore, Chao Wan, Eliot Shekhtman, Kilian Q. Weinberger |
| 2023 | Latent Field Discovery in Interacting Dynamical Systems with Neural Fields. Miltiadis Kofinas, Erik J. Bekkers, Naveen Shankar Nagaraja, Efstratios Gavves |
| 2023 | Latent Graph Inference with Limited Supervision. Jianglin Lu, Yi Xu, Huan Wang, Yue Bai, Yun Fu |
| 2023 | Latent SDEs on Homogeneous Spaces. Sebastian Zeng, Florian Graf, Roland Kwitt |
| 2023 | Latent Space Translation via Semantic Alignment. Valentino Maiorca, Luca Moschella, Antonio Norelli, Marco Fumero, Francesco Locatello, Emanuele Rodolà |
| 2023 | Latent exploration for Reinforcement Learning. Alberto Silvio Chiappa, Alessandro Marin Vargas, Ann Zixiang Huang, Alexander Mathis |
| 2023 | Laughing Hyena Distillery: Extracting Compact Recurrences From Convolutions. Stefano Massaroli, Michael Poli, Daniel Y. Fu, Hermann Kumbong, Rom N. Parnichkun, David W. Romero, Aman Timalsina, Quinn McIntyre, Beidi Chen, Atri Rudra, Ce Zhang, Christopher Ré, Stefano Ermon, Yoshua Bengio |
| 2023 | Layer-Neighbor Sampling - Defusing Neighborhood Explosion in GNNs. Muhammed Fatih Balin, Ümit V. Çatalyürek |
| 2023 | LayoutGPT: Compositional Visual Planning and Generation with Large Language Models. Weixi Feng, Wanrong Zhu, Tsu-Jui Fu, Varun Jampani, Arjun R. Akula, Xuehai He, Sugato Basu, Xin Eric Wang, William Yang Wang |
| 2023 | LayoutPrompter: Awaken the Design Ability of Large Language Models. Jiawei Lin, Jiaqi Guo, Shizhao Sun, Zijiang Yang, Jian-Guang Lou, Dongmei Zhang |
| 2023 | LeanDojo: Theorem Proving with Retrieval-Augmented Language Models. Kaiyu Yang, Aidan M. Swope, Alex Gu, Rahul Chalamala, Peiyang Song, Shixing Yu, Saad Godil, Ryan J. Prenger, Animashree Anandkumar |
| 2023 | Learn to Categorize or Categorize to Learn? Self-Coding for Generalized Category Discovery. Sarah Rastegar, Hazel Doughty, Cees Snoek |
| 2023 | Learning Adaptive Tensorial Density Fields for Clean Cryo-ET Reconstruction. Yuanhao Wang, Ramzi Idoughi, Wolfgang Heidrich |
| 2023 | Learning Adversarial Low-rank Markov Decision Processes with Unknown Transition and Full-information Feedback. Canzhe Zhao, Ruofeng Yang, Baoxiang Wang, Xuezhou Zhang, Shuai Li |
| 2023 | Learning Better with Less: Effective Augmentation for Sample-Efficient Visual Reinforcement Learning. Guozheng Ma, Linrui Zhang, Haoyu Wang, Lu Li, Zilin Wang, Zhen Wang, Li Shen, Xueqian Wang, Dacheng Tao |
| 2023 | Learning Causal Models under Independent Changes. Sarah Mameche, David Kaltenpoth, Jilles Vreeken |
| 2023 | Learning Curves for Deep Structured Gaussian Feature Models. Jacob A. Zavatone-Veth, Cengiz Pehlevan |
| 2023 | Learning Curves for Noisy Heterogeneous Feature-Subsampled Ridge Ensembles. Benjamin S. Ruben, Cengiz Pehlevan |
| 2023 | Learning Cuts via Enumeration Oracles. Daniel Thuerck, Boro Sofranac, Marc E. Pfetsch, Sebastian Pokutta |
| 2023 | Learning DAGs from Data with Few Root Causes. Panagiotis Misiakos, Chris Wendler, Markus Püschel |
| 2023 | Learning Dense Flow Field for Highly-accurate Cross-view Camera Localization. Zhenbo Song, Xianghui Ze, Jianfeng Lu, Yujiao Shi |
| 2023 | Learning Descriptive Image Captioning via Semipermeable Maximum Likelihood Estimation. Zihao Yue, Anwen Hu, Liang Zhang, Qin Jin |
| 2023 | Learning Dictionary for Visual Attention. Yingjie Liu, Xuan Liu, Hui Yu, Xuan Tang, Xian Wei |
| 2023 | Learning Domain-Aware Detection Head with Prompt Tuning. Haochen Li, Rui Zhang, Hantao Yao, Xinkai Song, Yifan Hao, Yongwei Zhao, Ling Li, Yunji Chen |
| 2023 | Learning Dynamic Attribute-factored World Models for Efficient Multi-object Reinforcement Learning. Fan Feng, Sara Magliacane |
| 2023 | Learning Efficient Coding of Natural Images with Maximum Manifold Capacity Representations. Thomas E. Yerxa, Yilun Kuang, Eero P. Simoncelli, SueYeon Chung |
| 2023 | Learning Efficient Surrogate Dynamic Models with Graph Spline Networks. Chuanbo Hua, Federico Berto, Michael Poli, Stefano Massaroli, Jinkyoo Park |
| 2023 | Learning Energy-Based Prior Model with Diffusion-Amortized MCMC. Peiyu Yu, Yaxuan Zhu, Sirui Xie, Xiaojian Ma, Ruiqi Gao, Song-Chun Zhu, Ying Nian Wu |
| 2023 | Learning Energy-based Model via Dual-MCMC Teaching. Jiali Cui, Tian Han |
| 2023 | Learning Environment-Aware Affordance for 3D Articulated Object Manipulation under Occlusions. Ruihai Wu, Kai Cheng, Yan Zhao, Chuanruo Ning, Guanqi Zhan, Hao Dong |
| 2023 | Learning Exponential Families from Truncated Samples. Jane H. Lee, Andre Wibisono, Emmanouil Zampetakis |
| 2023 | Learning Fine-grained View-Invariant Representations from Unpaired Ego-Exo Videos via Temporal Alignment. Zihui Xue, Kristen Grauman |
| 2023 | Learning From Biased Soft Labels. Hua Yuan, Yu Shi, Ning Xu, Xu Yang, Xin Geng, Yong Rui |
| 2023 | Learning Functional Transduction. Mathieu Chalvidal, Thomas Serre, Rufin VanRullen |
| 2023 | Learning Generalizable Agents via Saliency-guided Features Decorrelation. Sili Huang, Yanchao Sun, Jifeng Hu, Siyuan Guo, Hechang Chen, Yi Chang, Lichao Sun, Bo Yang |
| 2023 | Learning Human Action Recognition Representations Without Real Humans. Howard Zhong, Samarth Mishra, Donghyun Kim, SouYoung Jin, Rameswar Panda, Hilde Kuehne, Leonid Karlinsky, Venkatesh Saligrama, Aude Oliva, Rogério Feris |
| 2023 | Learning Interpretable Low-dimensional Representation via Physical Symmetry. Xuanjie Liu, Daniel Chin, Yichen Huang, Gus Xia |
| 2023 | Learning Invariant Molecular Representation in Latent Discrete Space. Xiang Zhuang, Qiang Zhang, Keyan Ding, Yatao Bian, Xiao Wang, Jingsong Lv, Hongyang Chen, Huajun Chen |
| 2023 | Learning Invariant Representations of Graph Neural Networks via Cluster Generalization. Donglin Xia, Xiao Wang, Nian Liu, Chuan Shi |
| 2023 | Learning Invariant Representations with a Nonparametric Nadaraya-Watson Head. Alan Q. Wang, Minh Nguyen, Mert R. Sabuncu |
| 2023 | Learning Large Graph Property Prediction via Graph Segment Training. Kaidi Cao, Phitchaya Mangpo Phothilimthana, Sami Abu-El-Haija, Dustin Zelle, Yanqi Zhou, Charith Mendis, Jure Leskovec, Bryan Perozzi |
| 2023 | Learning Large-Scale MTP Xiwen Wang, Jiaxi Ying, Daniel P. Palomar |
| 2023 | Learning Large-scale Neural Fields via Context Pruned Meta-Learning. Jihoon Tack, Subin Kim, Sihyun Yu, Jaeho Lee, Jinwoo Shin, Jonathan Richard Schwarz |
| 2023 | Learning Layer-wise Equivariances Automatically using Gradients. Tycho F. A. van der Ouderaa, Alexander Immer, Mark van der Wilk |
| 2023 | Learning Linear Causal Representations from Interventions under General Nonlinear Mixing. Simon Buchholz, Goutham Rajendran, Elan Rosenfeld, Bryon Aragam, Bernhard Schölkopf, Pradeep Ravikumar |
| 2023 | Learning List-Level Domain-Invariant Representations for Ranking. Ruicheng Xian, Honglei Zhuang, Zhen Qin, Hamed Zamani, Jing Lu, Ji Ma, Kai Hui, Han Zhao, Xuanhui Wang, Michael Bendersky |
| 2023 | Learning Mask-aware CLIP Representations for Zero-Shot Segmentation. Siyu Jiao, Yunchao Wei, Yaowei Wang, Yao Zhao, Humphrey Shi |
| 2023 | Learning Mixtures of Gaussians Using the DDPM Objective. Kulin Shah, Sitan Chen, Adam R. Klivans |
| 2023 | Learning Modulated Transformation in GANs. Ceyuan Yang, Qihang Zhang, Yinghao Xu, Jiapeng Zhu, Yujun Shen, Bo Dai |
| 2023 | Learning Motion Refinement for Unsupervised Face Animation. Jiale Tao, Shuhang Gu, Wen Li, Lixin Duan |
| 2023 | Learning Multi-agent Behaviors from Distributed and Streaming Demonstrations. Shicheng Liu, Minghui Zhu |
| 2023 | Learning Neural Implicit through Volume Rendering with Attentive Depth Fusion Priors. Pengchong Hu, Zhizhong Han |
| 2023 | Learning Nonparametric Latent Causal Graphs with Unknown Interventions. Yibo Jiang, Bryon Aragam |
| 2023 | Learning Probabilistic Symmetrization for Architecture Agnostic Equivariance. Jinwoo Kim, Dat Nguyen, Ayhan Suleymanzade, Hyeokjun An, Seunghoon Hong |
| 2023 | Learning Provably Robust Estimators for Inverse Problems via Jittering. Anselm Krainovic, Mahdi Soltanolkotabi, Reinhard Heckel |
| 2023 | Learning Rate Free Bayesian Inference in Constrained Domains. Louis Sharrock, Lester Mackey, Christopher Nemeth |
| 2023 | Learning Re-sampling Methods with Parameter Attribution for Image Super-resolution. Xiaotong Luo, Yuan Xie, Yanyun Qu |
| 2023 | Learning Regularized Monotone Graphon Mean-Field Games. Fengzhuo Zhang, Vincent Y. F. Tan, Zhaoran Wang, Zhuoran Yang |
| 2023 | Learning Reliable Logical Rules with SATNet. Zhaoyu Li, Jinpei Guo, Yuhe Jiang, Xujie Si |
| 2023 | Learning Repeatable Speech Embeddings Using An Intra-class Correlation Regularizer. Jianwei Zhang, Suren Jayasuriya, Visar Berisha |
| 2023 | Learning Robust Statistics for Simulation-based Inference under Model Misspecification. Daolang Huang, Ayush Bharti, Amauri H. Souza, Luigi Acerbi, Samuel Kaski |
| 2023 | Learning Rule-Induced Subgraph Representations for Inductive Relation Prediction. Tianyu Liu, Qitan Lv, Jie Wang, Shuling Yang, Hanzhu Chen |
| 2023 | Learning Sample Difficulty from Pre-trained Models for Reliable Prediction. Peng Cui, Dan Zhang, Zhijie Deng, Yinpeng Dong, Jun Zhu |
| 2023 | Learning Score-based Grasping Primitive for Human-assisting Dexterous Grasping. Tianhao Wu, Mingdong Wu, Jiyao Zhang, Yunchong Gan, Hao Dong |
| 2023 | Learning Shared Safety Constraints from Multi-task Demonstrations. Konwoo Kim, Gokul Swamy, Zuxin Liu, Ding Zhao, Sanjiban Choudhury, Zhiwei Steven Wu |
| 2023 | Learning Space-Time Continuous Latent Neural PDEs from Partially Observed States. Valerii Iakovlev, Markus Heinonen, Harri Lähdesmäki |
| 2023 | Learning Time-Invariant Representations for Individual Neurons from Population Dynamics. Lu Mi, Trung Le, Tianxing He, Eli Shlizerman, Uygar Sümbül |
| 2023 | Learning To Dive In Branch And Bound. Max B. Paulus, Andreas Krause |
| 2023 | Learning Topology-Agnostic EEG Representations with Geometry-Aware Modeling. Ke Yi, Yansen Wang, Kan Ren, Dongsheng Li |
| 2023 | Learning Trajectories are Generalization Indicators. Jingwen Fu, Zhizheng Zhang, Dacheng Yin, Yan Lu, Nanning Zheng |
| 2023 | Learning Transformer Programs. Dan Friedman, Alexander Wettig, Danqi Chen |
| 2023 | Learning Universal Policies via Text-Guided Video Generation. Yilun Du, Sherry Yang, Bo Dai, Hanjun Dai, Ofir Nachum, Josh Tenenbaum, Dale Schuurmans, Pieter Abbeel |
| 2023 | Learning Unseen Modality Interaction. Yunhua Zhang, Hazel Doughty, Cees Snoek |
| 2023 | Learning Visual Prior via Generative Pre-Training. Jinheng Xie, Kai Ye, Yudong Li, Yuexiang Li, Kevin Qinghong Lin, Yefeng Zheng, Linlin Shen, Mike Zheng Shou |
| 2023 | Learning World Models with Identifiable Factorization. Yuren Liu, Biwei Huang, Zhengmao Zhu, Hong-Long Tian, Mingming Gong, Yang Yu, Kun Zhang |
| 2023 | Learning a 1-layer conditional generative model in total variation. Ajil Jalal, Justin Singh Kang, Ananya Uppal, Kannan Ramchandran, Eric Price |
| 2023 | Learning a Neuron by a Shallow ReLU Network: Dynamics and Implicit Bias for Correlated Inputs. Dmitry Chistikov, Matthias Englert, Ranko Lazic |
| 2023 | Learning and Collusion in Multi-unit Auctions. Simina Brânzei, Mahsa Derakhshan, Negin Golrezaei, Yanjun Han |
| 2023 | Learning and processing the ordinal information of temporal sequences in recurrent neural circuits. Xiaolong Zou, Zhikun Chu, Qinghai Guo, Jie Cheng, Bo Ho, Si Wu, Yuanyuan Mi |
| 2023 | Learning better with Dale's Law: A Spectral Perspective. Pingsheng Li, Jonathan Cornford, Arna Ghosh, Blake A. Richards |
| 2023 | Learning from Active Human Involvement through Proxy Value Propagation. Zhenghao Mark Peng, Wenjie Mo, Chenda Duan, Quanyi Li, Bolei Zhou |
| 2023 | Learning from Both Structural and Textual Knowledge for Inductive Knowledge Graph Completion. Kunxun Qi, Jianfeng Du, Hai Wan |
| 2023 | Learning from Rich Semantics and Coarse Locations for Long-tailed Object Detection. Lingchen Meng, Xiyang Dai, Jianwei Yang, Dongdong Chen, Yinpeng Chen, Mengchen Liu, Yi-ling Chen, Zuxuan Wu, Lu Yuan, Yu-Gang Jiang |
| 2023 | Learning from Visual Observation via Offline Pretrained State-to-Go Transformer. Bohan Zhou, Ke Li, Jiechuan Jiang, Zongqing Lu |
| 2023 | Learning in the Presence of Low-dimensional Structure: A Spiked Random Matrix Perspective. Jimmy Ba, Murat A. Erdogdu, Taiji Suzuki, Zhichao Wang, Denny Wu |
| 2023 | Learning non-Markovian Decision-Making from State-only Sequences. Aoyang Qin, Feng Gao, Qing Li, Song-Chun Zhu, Sirui Xie |
| 2023 | Learning the Efficient Frontier. Philippe Chatigny, Ivan Sergienko, Ryan Ferguson, Jordan Weir, Maxime Bergeron |
| 2023 | Learning threshold neurons via edge of stability. Kwangjun Ahn, Sébastien Bubeck, Sinho Chewi, Yin Tat Lee, Felipe Suarez, Yi Zhang |
| 2023 | Learning to Augment Distributions for Out-of-distribution Detection. Qizhou Wang, Zhen Fang, Yonggang Zhang, Feng Liu, Yixuan Li, Bo Han |
| 2023 | Learning to Compress Prompts with Gist Tokens. Jesse Mu, Xiang Li, Noah D. Goodman |
| 2023 | Learning to Configure Separators in Branch-and-Cut. Sirui Li, Wenbin Ouyang, Max B. Paulus, Cathy Wu |
| 2023 | Learning to Discover Skills through Guidance. Hyunseung Kim, Byungkun Lee, Hojoon Lee, Dongyoon Hwang, Sejik Park, Kyushik Min, Jaegul Choo |
| 2023 | Learning to Group Auxiliary Datasets for Molecule. Tinglin Huang, Ziniu Hu, Rex Ying |
| 2023 | Learning to Influence Human Behavior with Offline Reinforcement Learning. Joey Hong, Sergey Levine, Anca D. Dragan |
| 2023 | Learning to Modulate pre-trained Models in RL. Thomas Schmied, Markus Hofmarcher, Fabian Paischer, Razvan Pascanu, Sepp Hochreiter |
| 2023 | Learning to Parameterize Visual Attributes for Open-set Fine-grained Retrieval. Shijie Wang, Jianlong Chang, Haojie Li, Zhihui Wang, Wanli Ouyang, Qi Tian |
| 2023 | Learning to Reason and Memorize with Self-Notes. Jack Lanchantin, Shubham Toshniwal, Jason Weston, Arthur Szlam, Sainbayar Sukhbaatar |
| 2023 | Learning to Receive Help: Intervention-Aware Concept Embedding Models. Mateo Espinosa Zarlenga, Katie Collins, Krishnamurthy Dvijotham, Adrian Weller, Zohreh Shams, Mateja Jamnik |
| 2023 | Learning to Search Feasible and Infeasible Regions of Routing Problems with Flexible Neural k-Opt. Yining Ma, Zhiguang Cao, Yeow Meng Chee |
| 2023 | Learning to Taste: A Multimodal Wine Dataset. Thoranna Bender, Simon Møe Sørensen, Alireza Kashani, Kristjan Eldjarn Hjorleifsson, Grethe Hyldig, Søren Hauberg, Serge J. Belongie, Frederik Warburg |
| 2023 | Learning to Tokenize for Generative Retrieval. Weiwei Sun, Lingyong Yan, Zheng Chen, Shuaiqiang Wang, Haichao Zhu, Pengjie Ren, Zhumin Chen, Dawei Yin, Maarten de Rijke, Zhaochun Ren |
| 2023 | Learning via Wasserstein-Based High Probability Generalisation Bounds. Paul Viallard, Maxime Haddouche, Umut Simsekli, Benjamin Guedj |
| 2023 | Learning with Explanation Constraints. Rattana Pukdee, Dylan Sam, J. Zico Kolter, Maria-Florina Balcan, Pradeep Ravikumar |
| 2023 | Learning-to-Rank Meets Language: Boosting Language-Driven Ordering Alignment for Ordinal Classification. Rui Wang, Peipei Li, Huaibo Huang, Chunshui Cao, Ran He, Zhaofeng He |
| 2023 | Leave No Stone Unturned: Mine Extra Knowledge for Imbalanced Facial Expression Recognition. Yuhang Zhang, Yaqi Li, Lixiong Qin, Xuannan Liu, Weihong Deng |
| 2023 | LegalBench: A Collaboratively Built Benchmark for Measuring Legal Reasoning in Large Language Models. Neel Guha, Julian Nyarko, Daniel E. Ho, Christopher Ré, Adam Chilton, K. Aditya, Alex Chohlas-Wood, Austin Peters, Brandon Waldon, Daniel N. Rockmore, Diego Zambrano, Dmitry Talisman, Enam Hoque, Faiz Surani, Frank Fagan, Galit Sarfaty, Gregory M. Dickinson, Haggai Porat, Jason Hegland, Jessica Wu, Joe Nudell, Joel Niklaus, John J. Nay, Jonathan H. Choi, Kevin Tobia, Margaret Hagan, Megan Ma, Michael A. Livermore, Nikon Rasumov-Rahe, Nils Holzenberger, Noam Kolt, Peter Henderson, Sean Rehaag, Sharad Goel, Shang Gao, Spencer Williams, Sunny Gandhi, Tom Zur, Varun Iyer, Zehua Li |
| 2023 | Lending Interaction Wings to Recommender Systems with Conversational Agents. Jiarui Jin, Xianyu Chen, Fanghua Ye, Mengyue Yang, Yue Feng, Weinan Zhang, Yong Yu, Jun Wang |
| 2023 | Let the Flows Tell: Solving Graph Combinatorial Problems with GFlowNets. Dinghuai Zhang, Hanjun Dai, Nikolay Malkin, Aaron C. Courville, Yoshua Bengio, Ling Pan |
| 2023 | Leveraging Early-Stage Robustness in Diffusion Models for Efficient and High-Quality Image Synthesis. Yulhwa Kim, Dongwon Jo, Hyesung Jeon, Taesu Kim, Daehyun Ahn, Hyungjun Kim, Jae-Joon Kim |
| 2023 | Leveraging Locality and Robustness to Achieve Massively Scalable Gaussian Process Regression. Robert Allison, Anthony Stephenson, Samuel F, Edward O. Pyzer-Knapp |
| 2023 | Leveraging Pre-trained Large Language Models to Construct and Utilize World Models for Model-based Task Planning. Lin Guan, Karthik Valmeekam, Sarath Sreedharan, Subbarao Kambhampati |
| 2023 | Leveraging Vision-Centric Multi-Modal Expertise for 3D Object Detection. Linyan Huang, Zhiqi Li, Chonghao Sima, Wenhai Wang, Jingdong Wang, Yu Qiao, Hongyang Li |
| 2023 | Leveraging sparse and shared feature activations for disentangled representation learning. Marco Fumero, Florian Wenzel, Luca Zancato, Alessandro Achille, Emanuele Rodolà, Stefano Soatto, Bernhard Schölkopf, Francesco Locatello |
| 2023 | Leveraging the two-timescale regime to demonstrate convergence of neural networks. Pierre Marion, Raphaël Berthier |
| 2023 | Lexinvariant Language Models. Qian Huang, Eric Zelikman, Sarah Li Chen, Yuhuai Wu, Gregory Valiant, Percy Liang |
| 2023 | Lie Point Symmetry and Physics-Informed Networks. Tara Akhound-Sadegh, Laurence Perreault Levasseur, Johannes Brandstetter, Max Welling, Siamak Ravanbakhsh |
| 2023 | Lift Yourself Up: Retrieval-augmented Text Generation with Self-Memory. Xin Cheng, Di Luo, Xiuying Chen, Lemao Liu, Dongyan Zhao, Rui Yan |
| 2023 | LightSpeed: Light and Fast Neural Light Fields on Mobile Devices. Aarush Gupta, Junli Cao, Chaoyang Wang, Ju Hu, Sergey Tulyakov, Jian Ren, László A. Jeni |
| 2023 | LightZero: A Unified Benchmark for Monte Carlo Tree Search in General Sequential Decision Scenarios. Yazhe Niu, Yuan Pu, Zhenjie Yang, Xueyan Li, Tong Zhou, Jiyuan Ren, Shuai Hu, Hongsheng Li, Yu Liu |
| 2023 | Lightweight Vision Transformer with Bidirectional Interaction. Qihang Fan, Huaibo Huang, Xiaoqiang Zhou, Ran He |
| 2023 | Likelihood Ratio Confidence Sets for Sequential Decision Making. Nicolas Emmenegger, Mojmir Mutny, Andreas Krause |
| 2023 | Likelihood-Based Diffusion Language Models. Ishaan Gulrajani, Tatsunori B. Hashimoto |
| 2023 | Limits, approximation and size transferability for GNNs on sparse graphs via graphops. Thien Le, Stefanie Jegelka |
| 2023 | LinGCN: Structural Linearized Graph Convolutional Network for Homomorphically Encrypted Inference. Hongwu Peng, Ran Ran, Yukui Luo, Jiahui Zhao, Shaoyi Huang, Kiran Thorat, Tong Geng, Chenghong Wang, Xiaolin Xu, Wujie Wen, Caiwen Ding |
| 2023 | Linear Time Algorithms for k-means with Multi-Swap Local Search. Junyu Huang, Qilong Feng, Ziyun Huang, Jinhui Xu, Jianxin Wang |
| 2023 | Linguistic Binding in Diffusion Models: Enhancing Attribute Correspondence through Attention Map Alignment. Royi Rassin, Eran Hirsch, Daniel Glickman, Shauli Ravfogel, Yoav Goldberg, Gal Chechik |
| 2023 | LinkerNet: Fragment Poses and Linker Co-Design with 3D Equivariant Diffusion. Jiaqi Guan, Xingang Peng, Peiqi Jiang, Yunan Luo, Jian Peng, Jianzhu Ma |
| 2023 | List and Certificate Complexities in Replicable Learning. Peter Dixon, Aduri Pavan, Jason Vander Woude, N. V. Vinodchandran |
| 2023 | LithoBench: Benchmarking AI Computational Lithography for Semiconductor Manufacturing. Su Zheng, Haoyu Yang, Binwu Zhu, Bei Yu, Martin D. F. Wong |
| 2023 | Live Graph Lab: Towards Open, Dynamic and Real Transaction Graphs with NFT. Zhen Zhang, Bingqiao Luo, Shengliang Lu, Bingsheng He |
| 2023 | Lo-Hi: Practical ML Drug Discovery Benchmark. Simon Steshin |
| 2023 | LoCoOp: Few-Shot Out-of-Distribution Detection via Prompt Learning. Atsuyuki Miyai, Qing Yu, Go Irie, Kiyoharu Aizawa |
| 2023 | LoRA: A Logical Reasoning Augmented Dataset for Visual Question Answering. JingYing Gao, Qi Wu, Alan Blair, Maurice Pagnucco |
| 2023 | Local Convergence of Gradient Methods for Min-Max Games: Partial Curvature Generically Suffices. Guillaume Wang, Lénaïc Chizat |
| 2023 | Locality Sensitive Hashing in Fourier Frequency Domain For Soft Set Containment Search. Indradyumna Roy, Rishi Agarwal, Soumen Chakrabarti, Anirban Dasgupta, Abir De |
| 2023 | Locality-Aware Generalizable Implicit Neural Representation. Doyup Lee, Chiheon Kim, Minsu Cho, Wook-Shin Han |
| 2023 | Localized Symbolic Knowledge Distillation for Visual Commonsense Models. Jae Sung Park, Jack Hessel, Khyathi Raghavi Chandu, Paul Pu Liang, Ximing Lu, Peter West, Youngjae Yu, Qiuyuan Huang, Jianfeng Gao, Ali Farhadi, Yejin Choi |
| 2023 | Locally Invariant Explanations: Towards Stable and Unidirectional Explanations through Local Invariant Learning. Amit Dhurandhar, Karthikeyan Natesan Ramamurthy, Kartik Ahuja, Vijay Arya |
| 2023 | Lockdown: Backdoor Defense for Federated Learning with Isolated Subspace Training. Tiansheng Huang, Sihao Hu, Ka Ho Chow, Fatih Ilhan, Selim F. Tekin, Ling Liu |
| 2023 | LogSpecT: Feasible Graph Learning Model from Stationary Signals with Recovery Guarantees. Shangyuan Liu, Linglingzhi Zhu, Anthony Man-Cho So |
| 2023 | Logarithmic Bayes Regret Bounds. Alexia Atsidakou, Branislav Kveton, Sumeet Katariya, Constantine Caramanis, Sujay Sanghavi |
| 2023 | Logarithmic-Regret Quantum Learning Algorithms for Zero-Sum Games. Minbo Gao, Zhengfeng Ji, Tongyang Li, Qisheng Wang |
| 2023 | Long Sequence Hopfield Memory. Hamza Tahir Chaudhry, Jacob A. Zavatone-Veth, Dmitry Krotov, Cengiz Pehlevan |
| 2023 | Long-Term Fairness with Unknown Dynamics. Tongxin Yin, Reilly Raab, Mingyan Liu, Yang Liu |
| 2023 | Look Beneath the Surface: Exploiting Fundamental Symmetry for Sample-Efficient Offline RL. Peng Cheng, Xianyuan Zhan, Zhi-Hao Wu, Wenjia Zhang, Youfang Lin, Shoucheng Song, Han Wang, Li Jiang |
| 2023 | Look Ma, No Hands! Agent-Environment Factorization of Egocentric Videos. Matthew Chang, Aditya Prakash, Saurabh Gupta |
| 2023 | Lookaround Optimizer: k steps around, 1 step average. Jiangtao Zhang, Shunyu Liu, Jie Song, Tongtian Zhu, Zhengqi Xu, Mingli Song |
| 2023 | Lookup Table meets Local Laplacian Filter: Pyramid Reconstruction Network for Tone Mapping. Feng Zhang, Ming Tian, Zhiqiang Li, Bin Xu, Qingbo Lu, Changxin Gao, Nong Sang |
| 2023 | Loss Decoupling for Task-Agnostic Continual Learning. Yan-Shuo Liang, Wu-Jun Li |
| 2023 | Loss Dynamics of Temporal Difference Reinforcement Learning. Blake Bordelon, Paul Masset, Henry Kuo, Cengiz Pehlevan |
| 2023 | Lossy Image Compression with Conditional Diffusion Models. Ruihan Yang, Stephan Mandt |
| 2023 | Lovász Principle for Unsupervised Graph Representation Learning. Ziheng Sun, Chris Ding, Jicong Fan |
| 2023 | Low Tensor Rank Learning of Neural Dynamics. Arthur Pellegrino, N. Alex Cayco-Gajic, Angus Chadwick |
| 2023 | Low-shot Object Learning with Mutual Exclusivity Bias. Anh Thai, Ahmad Humayun, Stefan Stojanov, Zixuan Huang, Bikram Boote, James M. Rehg |
| 2023 | Lower Bounds on Adaptive Sensing for Matrix Recovery. Praneeth Kacham, David P. Woodruff |
| 2023 | LuminAIRe: Illumination-Aware Conditional Image Repainting for Lighting-Realistic Generation. Jiajun Tang, Haofeng Zhong, Shuchen Weng, Boxin Shi |
| 2023 | Lung250M-4B: A Combined 3D Dataset for CT- and Point Cloud-Based Intra-Patient Lung Registration. Fenja Falta, Christoph Großbröhmer, Alessa Hering, Alexander Bigalke, Mattias P. Heinrich |
| 2023 | M Yuanqi Du, Yingheng Wang, Yining Huang, Jianan Canal Li, Yanqiao Zhu, Tian Xie, Chenru Duan, John M. Gregoire, Carla Pedro Gomes |
| 2023 | M Jonggyu Jang, Sangwoo Oh, Youjin Kim, Dongmin Seo, Youngchol Choi, Hyun Jong Yang |
| 2023 | M Xuhong Li, Mengnan Du, Jiamin Chen, Yekun Chai, Himabindu Lakkaraju, Haoyi Xiong |
| 2023 | M3Exam: A Multilingual, Multimodal, Multilevel Benchmark for Examining Large Language Models. Wenxuan Zhang, Mahani Aljunied, Chang Gao, Yew Ken Chia, Lidong Bing |
| 2023 | M5HisDoc: A Large-scale Multi-style Chinese Historical Document Analysis Benchmark. Yongxin Shi, Chongyu Liu, Dezhi Peng, Cheng Jian, Jiarong Huang, Lianwen Jin |
| 2023 | MADG: Margin-based Adversarial Learning for Domain Generalization. Aveen Dayal, Vimal K. B., Linga Reddy Cenkeramaddi, C. Krishna Mohan, Abhinav Kumar, Vineeth N. Balasubramanian |
| 2023 | MADLAD-400: A Multilingual And Document-Level Large Audited Dataset. Sneha Kudugunta, Isaac Caswell, Biao Zhang, Xavier Garcia, Derrick Xin, Aditya Kusupati, Romi Stella, Ankur Bapna, Orhan Firat |
| 2023 | MAG-GNN: Reinforcement Learning Boosted Graph Neural Network. Lecheng Kong, Jiarui Feng, Hao Liu, Dacheng Tao, Yixin Chen, Muhan Zhang |
| 2023 | MARBLE: Music Audio Representation Benchmark for Universal Evaluation. Ruibin Yuan, Yinghao Ma, Yizhi Li, Ge Zhang, Xingran Chen, Hanzhi Yin, Le Zhuo, Yiqi Liu, Jiawen Huang, Zeyue Tian, Binyue Deng, Ningzhi Wang, Chenghua Lin, Emmanouil Benetos, Anton Ragni, Norbert Gyenge, Roger B. Dannenberg, Wenhu Chen, Gus Xia, Wei Xue, Si Liu, Shi Wang, Ruibo Liu, Yike Guo, Jie Fu |
| 2023 | MAViL: Masked Audio-Video Learners. Po-Yao Huang, Vasu Sharma, Hu Xu, Chaitanya Ryali, Haoqi Fan, Yanghao Li, Shang-wen Li, Gargi Ghosh, Jitendra Malik, Christoph Feichtenhofer |
| 2023 | MCUFormer: Deploying Vision Tranformers on Microcontrollers with Limited Memory. Yinan Liang, Ziwei Wang, Xiuwei Xu, Yansong Tang, Jie Zhou, Jiwen Lu |
| 2023 | MEGABYTE: Predicting Million-byte Sequences with Multiscale Transformers. Lili Yu, Daniel Simig, Colin Flaherty, Armen Aghajanyan, Luke Zettlemoyer, Mike Lewis |
| 2023 | MEMTO: Memory-guided Transformer for Multivariate Time Series Anomaly Detection. Junho Song, Keonwoo Kim, Jeonglyul Oh, Sungzoon Cho |
| 2023 | MG-ViT: A Multi-Granularity Method for Compact and Efficient Vision Transformers. Yu Zhang, Yepeng Liu, Duoqian Miao, Qi Zhang, Yiwei Shi, Liang Hu |
| 2023 | MGDD: A Meta Generator for Fast Dataset Distillation. Songhua Liu, Xinchao Wang |
| 2023 | MIM4DD: Mutual Information Maximization for Dataset Distillation. Yuzhang Shang, Zhihang Yuan, Yan Yan |
| 2023 | MIMEx: Intrinsic Rewards from Masked Input Modeling. Toru Lin, Allan Jabri |
| 2023 | MIMONets: Multiple-Input-Multiple-Output Neural Networks Exploiting Computation in Superposition. Nicolas Menet, Michael Hersche, Geethan Karunaratne, Luca Benini, Abu Sebastian, Abbas Rahimi |
| 2023 | MKOR: Momentum-Enabled Kronecker-Factor-Based Optimizer Using Rank-1 Updates. Mohammad Mozaffari, Sikan Li, Zhao Zhang, Maryam Mehri Dehnavi |
| 2023 | MLFMF: Data Sets for Machine Learning for Mathematical Formalization. Andrej Bauer, Matej Petkovic, Ljupco Todorovski |
| 2023 | MM-Fi: Multi-Modal Non-Intrusive 4D Human Dataset for Versatile Wireless Sensing. Jianfei Yang, He Huang, Yunjiao Zhou, Xinyan Chen, Yuecong Xu, Shenghai Yuan, Han Zou, Chris Xiaoxuan Lu, Lihua Xie |
| 2023 | MMD-Fuse: Learning and Combining Kernels for Two-Sample Testing Without Data Splitting. Felix Biggs, Antonin Schrab, Arthur Gretton |
| 2023 | MMGP: a Mesh Morphing Gaussian Process-based machine learning method for regression of physical problems under nonparametrized geometrical variability. Fabien Casenave, Brian Staber, Xavier Roynard |
| 2023 | MVDiffusion: Enabling Holistic Multi-view Image Generation with Correspondence-Aware Diffusion. Shitao Tang, Fuyang Zhang, Jiacheng Chen, Peng Wang, Yasutaka Furukawa |
| 2023 | MVDoppler: Unleashing the Power of Multi-View Doppler for MicroMotion-based Gait Classification. Soheil Hor, Shubo Yang, Jaeho Choi, Amin Arbabian |
| 2023 | Machine learning detects terminal singularities. Tom Coates, Alexander M. Kasprzyk, Sara Veneziale |
| 2023 | Macro Placement by Wire-Mask-Guided Black-Box Optimization. Yunqi Shi, Ke Xue, Song Lei, Chao Qian |
| 2023 | MagicBrush: A Manually Annotated Dataset for Instruction-Guided Image Editing. Kai Zhang, Lingbo Mo, Wenhu Chen, Huan Sun, Yu Su |
| 2023 | Make Pre-trained Model Reversible: From Parameter to Memory Efficient Fine-Tuning. Baohao Liao, Shaomu Tan, Christof Monz |
| 2023 | Make the U in UDA Matter: Invariant Consistency Learning for Unsupervised Domain Adaptation. Zhongqi Yue, Qianru Sun, Hanwang Zhang |
| 2023 | Making Scalable Meta Learning Practical. Sang Keun Choe, Sanket Vaibhav Mehta, Hwijeen Ahn, Willie Neiswanger, Pengtao Xie, Emma Strubell, Eric P. Xing |
| 2023 | Managing Temporal Resolution in Continuous Value Estimation: A Fundamental Trade-off. Zichen Vincent Zhang, Johannes Kirschner, Junxi Zhang, Francesco Zanini, Alex Ayoub, Masood Dehghan, Dale Schuurmans |
| 2023 | Many-body Approximation for Non-negative Tensors. Kazu Ghalamkari, Mahito Sugiyama, Yoshinobu Kawahara |
| 2023 | Marginal Density Ratio for Off-Policy Evaluation in Contextual Bandits. Muhammad Faaiz Taufiq, Arnaud Doucet, Rob Cornish, Jean-Francois Ton |
| 2023 | Marich: A Query-efficient Distributionally Equivalent Model Extraction Attack. Pratik Karmakar, Debabrota Basu |
| 2023 | MarioGPT: Open-Ended Text2Level Generation through Large Language Models. Shyam Sudhakaran, Miguel González Duque, Matthias Freiberger, Claire Glanois, Elias Najarro, Sebastian Risi |
| 2023 | Markovian Sliced Wasserstein Distances: Beyond Independent Projections. Khai Nguyen, Tongzheng Ren, Nhat Ho |
| 2023 | Mask Propagation for Efficient Video Semantic Segmentation. Yuetian Weng, Mingfei Han, Haoyu He, Mingjie Li, Lina Yao, Xiaojun Chang, Bohan Zhuang |
| 2023 | Masked Image Residual Learning for Scaling Deeper Vision Transformers. Guoxi Huang, Hongtao Fu, Adrian G. Bors |
| 2023 | Masked Space-Time Hash Encoding for Efficient Dynamic Scene Reconstruction. Feng Wang, Zilong Chen, Guokang Wang, Yafei Song, Huaping Liu |
| 2023 | Masked Two-channel Decoupling Framework for Incomplete Multi-view Weak Multi-label Learning. Chengliang Liu, Jie Wen, Yabo Liu, Chao Huang, Zhihao Wu, Xiaoling Luo, Yong Xu |
| 2023 | Mass-Producing Failures of Multimodal Systems with Language Models. Shengbang Tong, Erik Jones, Jacob Steinhardt |
| 2023 | Massively Multilingual Corpus of Sentiment Datasets and Multi-faceted Sentiment Classification Benchmark. Lukasz Augustyniak, Szymon Wozniak, Marcin Gruza, Piotr Gramacki, Krzysztof Rajda, Mikolaj Morzy, Tomasz Kajdanowicz |
| 2023 | MathNAS: If Blocks Have a Role in Mathematical Architecture Design. Qinsi Wang, Jinghan Ke, Zhi Liang, Sihai Zhang |
| 2023 | Mathematical Capabilities of ChatGPT. Simon Frieder, Luca Pinchetti, Alexis Chevalier, Ryan-Rhys Griffiths, Tommaso Salvatori, Thomas Lukasiewicz, Philipp Petersen, Julius Berner |
| 2023 | Matrix Compression via Randomized Low Rank and Low Precision Factorization. Rajarshi Saha, Varun Srivastava, Mert Pilanci |
| 2023 | Max-Margin Token Selection in Attention Mechanism. Davoud Ataee Tarzanagh, Yingcong Li, Xuechen Zhang, Samet Oymak |
| 2023 | Max-Sliced Mutual Information. Dor Tsur, Ziv Goldfeld, Kristjan H. Greenewald |
| 2023 | Maximization of Average Precision for Deep Learning with Adversarial Ranking Robustness. Gang Li, Wei Tong, Tianbao Yang |
| 2023 | Maximize to Explore: One Objective Function Fusing Estimation, Planning, and Exploration. Zhihan Liu, Miao Lu, Wei Xiong, Han Zhong, Hao Hu, Shenao Zhang, Sirui Zheng, Zhuoran Yang, Zhaoran Wang |
| 2023 | Maximum Average Randomly Sampled: A Scale Free and Non-parametric Algorithm for Stochastic Bandits. Masoud Moravej Khorasani, Erik Weyer |
| 2023 | Maximum Independent Set: Self-Training through Dynamic Programming. Lorenzo Brusca, Lars C. P. M. Quaedvlieg, Stratis Skoulakis, Grigorios Chrysos, Volkan Cevher |
| 2023 | Maximum State Entropy Exploration using Predecessor and Successor Representations. Arnav Kumar Jain, Lucas Lehnert, Irina Rish, Glen Berseth |
| 2023 | May the Force be with You: Unified Force-Centric Pre-Training for 3D Molecular Conformations. Rui Feng, Qi Zhu, Huan Tran, Binghong Chen, Aubrey Toland, Rampi Ramprasad, Chao Zhang |
| 2023 | MeCo: Zero-Shot NAS with One Data and Single Forward Pass via Minimum Eigenvalue of Correlation. Tangyu Jiang, Haodi Wang, Rongfang Bie |
| 2023 | MeGraph: Capturing Long-Range Interactions by Alternating Local and Hierarchical Aggregation on Multi-Scaled Graph Hierarchy. Honghua Dong, Jiawei Xu, Yu Yang, Rui Zhao, Shiwen Wu, Chun Yuan, Xiu Li, Chris J. Maddison, Lei Han |
| 2023 | Mean-field Langevin dynamics: Time-space discretization, stochastic gradient, and variance reduction. Taiji Suzuki, Denny Wu, Atsushi Nitanda |
| 2023 | Mechanic: A Learning Rate Tuner. Ashok Cutkosky, Aaron Defazio, Harsh Mehta |
| 2023 | Mechanism Design for Collaborative Normal Mean Estimation. Yiding Chen, Jerry Zhu, Kirthevasan Kandasamy |
| 2023 | Med-UniC: Unifying Cross-Lingual Medical Vision-Language Pre-Training by Diminishing Bias. Zhongwei Wan, Che Liu, Mi Zhang, Jie Fu, Benyou Wang, Sibo Cheng, Lei Ma, César Quilodrán Casas, Rossella Arcucci |
| 2023 | MedSat: A Public Health Dataset for England Featuring Medical Prescriptions and Satellite Imagery. Sanja Scepanovic, Ivica Obadic, Sagar Joglekar, Laura Giustarini, Cristiano Nattero, Daniele Quercia, Xiaoxiang Zhu |
| 2023 | Meek Separators and Their Applications in Targeted Causal Discovery. Kirankumar Shiragur, Jiaqi Zhang, Caroline Uhler |
| 2023 | Meet in the Middle: A New Pre-training Paradigm. Anh Nguyen, Nikos Karampatziakis, Weizhu Chen |
| 2023 | Memory Efficient Optimizers with 4-bit States. Bingrui Li, Jianfei Chen, Jun Zhu |
| 2023 | Memory-Constrained Algorithms for Convex Optimization. Moïse Blanchard, Junhui Zhang, Patrick Jaillet |
| 2023 | Memory-Efficient Fine-Tuning of Compressed Large Language Models via sub-4-bit Integer Quantization. Jeonghoon Kim, Jung Hyun Lee, Sungdong Kim, Joonsuk Park, Kang Min Yoo, Se Jung Kwon, Dongsoo Lee |
| 2023 | Mesogeos: A multi-purpose dataset for data-driven wildfire modeling in the Mediterranean. Spyridon Kondylatos, Ioannis Prapas, Gustau Camps-Valls, Ioannis Papoutsis |
| 2023 | Meta-AdaM: An Meta-Learned Adaptive Optimizer with Momentum for Few-Shot Learning. Siyuan Sun, Hongyang Gao |
| 2023 | Meta-Adapter: An Online Few-shot Learner for Vision-Language Model. Cheng Cheng, Lin Song, Ruoyi Xue, Hang Wang, Hongbin Sun, Yixiao Ge, Ying Shan |
| 2023 | Meta-Learning Adversarial Bandit Algorithms. Misha Khodak, Ilya Osadchiy, Keegan Harris, Maria-Florina Balcan, Kfir Y. Levy, Ron Meir, Zhiwei Steven Wu |
| 2023 | Meta-Learning with Neural Bandit Scheduler. Yunzhe Qi, Yikun Ban, Tianxin Wei, Jiaru Zou, Huaxiu Yao, Jingrui He |
| 2023 | Meta-in-context learning in large language models. Julian Coda-Forno, Marcel Binz, Zeynep Akata, Matt M. Botvinick, Jane X. Wang, Eric Schulz |
| 2023 | Meta-learning families of plasticity rules in recurrent spiking networks using simulation-based inference. Basile Confavreux, Poornima Ramesh, Pedro J. Gonçalves, Jakob H. Macke, Tim P. Vogels |
| 2023 | MetaBox: A Benchmark Platform for Meta-Black-Box Optimization with Reinforcement Learning. Zeyuan Ma, Hongshu Guo, Jiacheng Chen, Zhenrui Li, Guojun Peng, Yue-Jiao Gong, Yining Ma, Zhiguang Cao |
| 2023 | Metis: Understanding and Enhancing In-Network Regular Expressions. Zhengxin Zhang, Yucheng Huang, Guanglin Duan, Qing Li, Dan Zhao, Yong Jiang, Lianbo Ma, Xi Xiao, Hengyang Xu |
| 2023 | Metropolis Sampling for Constrained Diffusion Models. Nic Fishman, Leo Klarner, Emile Mathieu, Michael J. Hutchinson, Valentin De Bortoli |
| 2023 | Michelangelo: Conditional 3D Shape Generation based on Shape-Image-Text Aligned Latent Representation. Zibo Zhao, Wen Liu, Xin Chen, Xianfang Zeng, Rui Wang, Pei Cheng, Bin Fu, Tao Chen, Gang Yu, Shenghua Gao |
| 2023 | MiliPoint: A Point Cloud Dataset for mmWave Radar. Han Cui, Shu Zhong, Jiacheng Wu, Zichao Shen, Naim Dahnoun, Yiren Zhao |
| 2023 | Mind the spikes: Benign overfitting of kernels and neural networks in fixed dimension. Moritz Haas, David Holzmüller, Ulrike von Luxburg, Ingo Steinwart |
| 2023 | Mind2Web: Towards a Generalist Agent for the Web. Xiang Deng, Yu Gu, Boyuan Zheng, Shijie Chen, Samual Stevens, Boshi Wang, Huan Sun, Yu Su |
| 2023 | Minigrid & Miniworld: Modular & Customizable Reinforcement Learning Environments for Goal-Oriented Tasks. Maxime Chevalier-Boisvert, Bolun Dai, Mark Towers, Rodrigo Perez-Vicente, Lucas Willems, Salem Lahlou, Suman Pal, Pablo Samuel Castro, Jordan K. Terry |
| 2023 | Minimax Forward and Backward Learning of Evolving Tasks with Performance Guarantees. Verónica Álvarez, Santiago Mazuelas, José Antonio Lozano |
| 2023 | Minimax Optimal Rate for Parameter Estimation in Multivariate Deviated Models. Dat Do, Huy Nguyen, Khai Nguyen, Nhat Ho |
| 2023 | Minimax Risks and Optimal Procedures for Estimation under Functional Local Differential Privacy. Bonwoo Lee, Jeongyoun Ahn, Cheolwoo Park |
| 2023 | Minimax-Optimal Location Estimation. Shivam Gupta, Jasper C. H. Lee, Eric Price, Paul Valiant |
| 2023 | Minimum Description Length and Generalization Guarantees for Representation Learning. Milad Sefidgaran, Abdellatif Zaidi, Piotr Krasnowski |
| 2023 | Minimum norm interpolation by perceptra: Explicit regularization and implicit bias. Jiyoung Park, Ian Pelakh, Stephan Wojtowytsch |
| 2023 | Minimum-Risk Recalibration of Classifiers. Zeyu Sun, Dogyoon Song, Alfred O. Hero III |
| 2023 | Mip-Grid: Anti-aliased Grid Representations for Neural Radiance Fields. Seungtae Nam, Daniel Rho, Jong Hwan Ko, Eunbyung Park |
| 2023 | Mirror Diffusion Models for Constrained and Watermarked Generation. Guan-Horng Liu, Tianrong Chen, Evangelos A. Theodorou, Molei Tao |
| 2023 | Mitigating Over-smoothing in Transformers via Regularized Nonlocal Functionals. Tam Nguyen, Tan Nguyen, Richard G. Baraniuk |
| 2023 | Mitigating Source Bias for Fairer Weak Supervision. Changho Shin, Sonia Cromp, Dyah Adila, Frederic Sala |
| 2023 | Mitigating Test-Time Bias for Fair Image Retrieval. Fanjie Kong, Shuai Yuan, Weituo Hao, Ricardo Henao |
| 2023 | Mitigating the Effect of Incidental Correlations on Part-based Learning. Gaurav Bhatt, Deepayan Das, Leonid Sigal, Vineeth N. Balasubramanian |
| 2023 | Mitigating the Popularity Bias of Graph Collaborative Filtering: A Dimensional Collapse Perspective. Yifei Zhang, Hao Zhu, Yankai Chen, Zixing Song, Piotr Koniusz, Irwin King |
| 2023 | Mix-of-Show: Decentralized Low-Rank Adaptation for Multi-Concept Customization of Diffusion Models. Yuchao Gu, Xintao Wang, Jay Zhangjie Wu, Yujun Shi, Yunpeng Chen, Zihan Fan, Wuyou Xiao, Rui Zhao, Shuning Chang, Weijia Wu, Yixiao Ge, Ying Shan, Mike Zheng Shou |
| 2023 | MixFormerV2: Efficient Fully Transformer Tracking. Yutao Cui, Tianhui Song, Gangshan Wu, Limin Wang |
| 2023 | Mixed Samples as Probes for Unsupervised Model Selection in Domain Adaptation. Dapeng Hu, Jian Liang, Jun Hao Liew, Chuhui Xue, Song Bai, Xinchao Wang |
| 2023 | Mixed-Initiative Multiagent Apprenticeship Learning for Human Training of Robot Teams. Esmaeil Seraj, Jerry Xiong, Mariah Schrum, Matthew C. Gombolay |
| 2023 | Mixture Weight Estimation and Model Prediction in Multi-source Multi-target Domain Adaptation. Yuyang Deng, Ilja Kuzborskij, Mehrdad Mahdavi |
| 2023 | Mnemosyne: Learning to Train Transformers with Transformers. Deepali Jain, Krzysztof Marcin Choromanski, Kumar Avinava Dubey, Sumeet Singh, Vikas Sindhwani, Tingnan Zhang, Jie Tan |
| 2023 | MoCa: Measuring Human-Language Model Alignment on Causal and Moral Judgment Tasks. Allen Nie, Yuhui Zhang, Atharva Amdekar, Chris Piech, Tatsunori B. Hashimoto, Tobias Gerstenberg |
| 2023 | MoVie: Visual Model-Based Policy Adaptation for View Generalization. Sizhe Yang, Yanjie Ze, Huazhe Xu |
| 2023 | Mobilizing Personalized Federated Learning in Infrastructure-Less and Heterogeneous Environments via Random Walk Stochastic ADMM. Ziba Parsons, Fei Dou, Houyi Du, Zheng Song, Jin Lu |
| 2023 | Modality-Agnostic Self-Supervised Learning with Meta-Learned Masked Auto-Encoder. Huiwon Jang, Jihoon Tack, Daewon Choi, Jongheon Jeong, Jinwoo Shin |
| 2023 | Modality-Independent Teachers Meet Weakly-Supervised Audio-Visual Event Parser. Yung-Hsuan Lai, Yen-Chun Chen, Frank Wang |
| 2023 | Mode Connectivity in Auction Design. Christoph Hertrich, Yixin Tao, László A. Végh |
| 2023 | Model Shapley: Equitable Model Valuation with Black-box Access. Xinyi Xu, Thanh Lam, Chuan Sheng Foo, Bryan Kian Hsiang Low |
| 2023 | Model Sparsity Can Simplify Machine Unlearning. Jinghan Jia, Jiancheng Liu, Parikshit Ram, Yuguang Yao, Gaowen Liu, Yang Liu, Pranay Sharma, Sijia Liu |
| 2023 | Model Spider: Learning to Rank Pre-Trained Models Efficiently. Yi-Kai Zhang, Ting-Ji Huang, Yao-Xiang Ding, De-Chuan Zhan, Han-Jia Ye |
| 2023 | Model and Feature Diversity for Bayesian Neural Networks in Mutual Learning. Van Cuong Pham, Cuong C. Nguyen, Trung Le, Dinh Phung, Gustavo Carneiro, Thanh-Toan Do |
| 2023 | Model-Based Control with Sparse Neural Dynamics. Ziang Liu, Genggeng Zhou, Jeff He, Tobia Marcucci, Fei-Fei Li, Jiajun Wu, Yunzhu Li |
| 2023 | Model-Based Reparameterization Policy Gradient Methods: Theory and Practical Algorithms. Shenao Zhang, Boyi Liu, Zhaoran Wang, Tuo Zhao |
| 2023 | Model-Free Active Exploration in Reinforcement Learning. Alessio Russo, Alexandre Proutière |
| 2023 | Model-Free Reinforcement Learning with the Decision-Estimation Coefficient. Dylan J. Foster, Noah Golowich, Jian Qian, Alexander Rakhlin, Ayush Sekhari |
| 2023 | Model-enhanced Vector Index. Hailin Zhang, Yujing Wang, Qi Chen, Ruiheng Chang, Ting Zhang, Ziming Miao, Yingyan Hou, Yang Ding, Xupeng Miao, Haonan Wang, Bochen Pang, Yuefeng Zhan, Hao Sun, Weiwei Deng, Qi Zhang, Fan Yang, Xing Xie, Mao Yang, Bin Cui |
| 2023 | Model-free Posterior Sampling via Learning Rate Randomization. Daniil Tiapkin, Denis Belomestny, Daniele Calandriello, Eric Moulines, Rémi Munos, Alexey Naumov, Pierre Perrault, Michal Valko, Pierre Ménard |
| 2023 | Modeling Dynamics over Meshes with Gauge Equivariant Nonlinear Message Passing. Jung Yeon Park, Lawson L. S. Wong, Robin Walters |
| 2023 | Modeling Human Visual Motion Processing with Trainable Motion Energy Sensing and a Self-attention Network. Zitang Sun, Yen-Ju Chen, Yung-Hao Yang, Shin'ya Nishida |
| 2023 | Modelling Cellular Perturbations with the Sparse Additive Mechanism Shift Variational Autoencoder. Michael Bereket, Theofanis Karaletsos |
| 2023 | Modulated Neural ODEs. Ilze Amanda Auzina, Çagatay Yildiz, Sara Magliacane, Matthias Bethge, Efstratios Gavves |
| 2023 | Module-wise Adaptive Distillation for Multimodality Foundation Models. Chen Liang, Jiahui Yu, Ming-Hsuan Yang, Matthew Brown, Yin Cui, Tuo Zhao, Boqing Gong, Tianyi Zhou |
| 2023 | Module-wise Training of Neural Networks via the Minimizing Movement Scheme. Skander Karkar, Ibrahim Ayed, Emmanuel de Bézenac, Patrick Gallinari |
| 2023 | Molecule Joint Auto-Encoding: Trajectory Pretraining with 2D and 3D Diffusion. Weitao Du, Jiujiu Chen, Xuecang Zhang, Zhi-Ming Ma, Shengchao Liu |
| 2023 | Moment Matching Denoising Gibbs Sampling. Mingtian Zhang, Alex Hawkins-Hooker, Brooks Paige, David Barber |
| 2023 | MomentDiff: Generative Video Moment Retrieval from Random to Real. Pandeng Li, Chen-Wei Xie, Hongtao Xie, Liming Zhao, Lei Zhang, Yun Zheng, Deli Zhao, Yongdong Zhang |
| 2023 | Momentum Provably Improves Error Feedback! Ilyas Fatkhullin, Alexander Tyurin, Peter Richtárik |
| 2023 | Monarch Mixer: A Simple Sub-Quadratic GEMM-Based Architecture. Daniel Y. Fu, Simran Arora, Jessica Grogan, Isys Johnson, Evan Sabri Eyuboglu, Armin W. Thomas, Benjamin Spector, Michael Poli, Atri Rudra, Christopher Ré |
| 2023 | Monitor-Guided Decoding of Code LMs with Static Analysis of Repository Context. Lakshya A. Agrawal, Aditya Kanade, Navin Goyal, Shuvendu K. Lahiri, Sriram K. Rajamani |
| 2023 | MonoUNI: A Unified Vehicle and Infrastructure-side Monocular 3D Object Detection Network with Sufficient Depth Clues. Jinrang Jia, Zhenjia Li, Yifeng Shi |
| 2023 | Monte Carlo Tree Search with Boltzmann Exploration. Michael Painter, Mohamed Baioumy, Nick Hawes, Bruno Lacerda |
| 2023 | Moral Responsibility for AI Systems. Sander Beckers |
| 2023 | MosaicBERT: A Bidirectional Encoder Optimized for Fast Pretraining. Jacob P. Portes, Alexander Trott, Sam Havens, Daniel King, Abhinav Venigalla, Moin Nadeem, Nikhil Sardana, Daya Khudia, Jonathan Frankle |
| 2023 | Most Neural Networks Are Almost Learnable. Amit Daniely, Nati Srebro, Gal Vardi |
| 2023 | Motion-X: A Large-scale 3D Expressive Whole-body Human Motion Dataset. Jing Lin, Ailing Zeng, Shunlin Lu, Yuanhao Cai, Ruimao Zhang, Haoqian Wang, Lei Zhang |
| 2023 | MotionGPT: Human Motion as a Foreign Language. Biao Jiang, Xin Chen, Wen Liu, Jingyi Yu, Gang Yu, Tao Chen |
| 2023 | Mr. HiSum: A Large-scale Dataset for Video Highlight Detection and Summarization. Jinhwan Sul, Jihoon Han, Joonseok Lee |
| 2023 | MuSe-GNN: Learning Unified Gene Representation From Multimodal Biological Graph Data. Tianyu Liu, Yuge Wang, Rex Ying, Hongyu Zhao |
| 2023 | Multi Time Scale World Models. Vaisakh Shaj, Saleh Gholam Zadeh, Ozan Demir, Luiz R. Douat, Gerhard Neumann |
| 2023 | Multi-Agent First Order Constrained Optimization in Policy Space. Youpeng Zhao, Yaodong Yang, Zhenbo Lu, Wengang Zhou, Houqiang Li |
| 2023 | Multi-Agent Learning with Heterogeneous Linear Contextual Bandits. Anh Do, Thanh Nguyen-Tang, Raman Arora |
| 2023 | Multi-Agent Meta-Reinforcement Learning: Sharper Convergence Rates with Task Similarity. Weichao Mao, Haoran Qiu, Chen Wang, Hubertus Franke, Zbigniew Kalbarczyk, Ravishankar K. Iyer, Tamer Basar |
| 2023 | Multi-Fidelity Multi-Armed Bandits Revisited. Xuchuang Wang, Qingyun Wu, Wei Chen, John C. S. Lui |
| 2023 | Multi-Head Adapter Routing for Cross-Task Generalization. Lucas Page-Caccia, Edoardo Maria Ponti, Zhan Su, Matheus Pereira, Nicolas Le Roux, Alessandro Sordoni |
| 2023 | Multi-Modal Inverse Constrained Reinforcement Learning from a Mixture of Demonstrations. Guanren Qiao, Guiliang Liu, Pascal Poupart, Zhiqiang Xu |
| 2023 | Multi-Object Representation Learning via Feature Connectivity and Object-Centric Regularization. Alex Foo, Wynne Hsu, Mong-Li Lee |
| 2023 | Multi-Objective Intrinsic Reward Learning for Conversational Recommender Systems. Zhendong Chu, Nan Wang, Hongning Wang |
| 2023 | Multi-Player Zero-Sum Markov Games with Networked Separable Interactions. Chanwoo Park, Kaiqing Zhang, Asuman E. Ozdaglar |
| 2023 | Multi-Prompt Alignment for Multi-Source Unsupervised Domain Adaptation. Haoran Chen, Xintong Han, Zuxuan Wu, Yu-Gang Jiang |
| 2023 | Multi-Step Generalized Policy Improvement by Leveraging Approximate Models. Lucas Nunes Alegre, Ana L. C. Bazzan, Ann Nowé, Bruno C. da Silva |
| 2023 | Multi-Swap k-Means++. Lorenzo Beretta, Vincent Cohen-Addad, Silvio Lattanzi, Nikos Parotsidis |
| 2023 | Multi-body SE(3) Equivariance for Unsupervised Rigid Segmentation and Motion Estimation. Jia-Xing Zhong, Ta Ying Cheng, Yuhang He, Kai Lu, Kaichen Zhou, Andrew Markham, Niki Trigoni |
| 2023 | Multi-modal Queried Object Detection in the Wild. Yifan Xu, Mengdan Zhang, Chaoyou Fu, Peixian Chen, Xiaoshan Yang, Ke Li, Changsheng Xu |
| 2023 | Multi-resolution Spectral Coherence for Graph Generation with Score-based Diffusion. Hyuna Cho, Minjae Jeong, Sooyeon Jeon, Sungsoo Ahn, Won Hwa Kim |
| 2023 | Multi-scale Diffusion Denoised Smoothing. Jongheon Jeong, Jinwoo Shin |
| 2023 | Multi-task Graph Neural Architecture Search with Task-aware Collaboration and Curriculum. Yijian Qin, Xin Wang, Ziwei Zhang, Hong Chen, Wenwu Zhu |
| 2023 | Multi-task Representation Learning for Pure Exploration in Bilinear Bandits. Subhojyoti Mukherjee, Qiaomin Xie, Josiah Hanna, Robert D. Nowak |
| 2023 | Multi-task learning with summary statistics. Parker Knight, Rui Duan |
| 2023 | MultiFusion: Fusing Pre-Trained Models for Multi-Lingual, Multi-Modal Image Generation. Marco Bellagente, Manuel Brack, Hannah Teufel, Felix Friedrich, Björn Deiseroth, Constantin Eichenberg, Andrew Dai, Robert Baldock, Souradeep Nanda, Koen Oostermeijer, Andrés Felipe Cruz-Salinas, Patrick Schramowski, Kristian Kersting, Samuel Weinbach |
| 2023 | MultiMoDN - Multimodal, Multi-Task, Interpretable Modular Networks. Vinitra Swamy, Malika Satayeva, Jibril Frej, Thierry Bossy, Thijs Vogels, Martin Jaggi, Tanja Käser, Mary-Anne Hartley |
| 2023 | MultiVENT: Multilingual Videos of Events and Aligned Natural Text. Kate Sanders, David Etter, Reno Kriz, Benjamin Van Durme |
| 2023 | Multiclass Boosting: Simple and Intuitive Weak Learning Criteria. Nataly Brukhim, Amit Daniely, Yishay Mansour, Shay Moran |
| 2023 | Multimodal C4: An Open, Billion-scale Corpus of Images Interleaved with Text. Wanrong Zhu, Jack Hessel, Anas Awadalla, Samir Yitzhak Gadre, Jesse Dodge, Alex Fang, Youngjae Yu, Ludwig Schmidt, William Yang Wang, Yejin Choi |
| 2023 | Multimodal Clinical Benchmark for Emergency Care (MC-BEC): A Comprehensive Benchmark for Evaluating Foundation Models in Emergency Medicine. Emma Chen, Aman Kansal, Julie Chen, Boyang Tom Jin, Julia Rachel Reisler, David A. Kim, Pranav Rajpurkar |
| 2023 | Multimodal Deep Learning Model Unveils Behavioral Dynamics of V1 Activity in Freely Moving Mice. Aiwen Xu, Yuchen Hou, Cristopher Niell, Michael Beyeler |
| 2023 | Multinomial Logistic Regression: Asymptotic Normality on Null Covariates in High-Dimensions. Kai Tan, Pierre C. Bellec |
| 2023 | Multiplication-Free Transformer Training via Piecewise Affine Operations. Atli Kosson, Martin Jaggi |
| 2023 | Multiply Robust Federated Estimation of Targeted Average Treatment Effects. Larry Han, Zhu Shen, José R. Zubizarreta |
| 2023 | Multitask Learning with No Regret: from Improved Confidence Bounds to Active Learning. Pier Giuseppe Sessa, Pierre Laforgue, Nicolò Cesa-Bianchi, Andreas Krause |
| 2023 | Mutual Information Regularized Offline Reinforcement Learning. Xiao Ma, Bingyi Kang, Zhongwen Xu, Min Lin, Shuicheng Yan |
| 2023 | Mutual-Information Regularized Multi-Agent Policy Iteration. Jiangxing Wang, Deheng Ye, Zongqing Lu |
| 2023 | NAP: Neural 3D Articulated Object Prior. Jiahui Lei, Congyue Deng, William B. Shen, Leonidas J. Guibas, Kostas Daniilidis |
| 2023 | NAR-Former V2: Rethinking Transformer for Universal Neural Network Representation Learning. Yun Yi, Haokui Zhang, Rong Xiao, Nannan Wang, Xiaoyu Wang |
| 2023 | NAS-X: Neural Adaptive Smoothing via Twisting. Dieterich Lawson, Michael Li, Scott W. Linderman |
| 2023 | NAVI: Category-Agnostic Image Collections with High-Quality 3D Shape and Pose Annotations. Varun Jampani, Kevis-Kokitsi Maninis, Andreas Engelhardt, Arjun Karpur, Karen Truong, Kyle Sargent, Stefan Popov, André Araújo, Ricardo Martin-Brualla, Kaushal Patel, Daniel Vlasic, Vittorio Ferrari, Ameesh Makadia, Ce Liu, Yuanzhen Li, Howard Zhou |
| 2023 | NCDL: A Framework for Deep Learning on non-Cartesian Lattices. Joshua Horacsek, Usman R. Alim |
| 2023 | NEO-KD: Knowledge-Distillation-Based Adversarial Training for Robust Multi-Exit Neural Networks. Seokil Ham, Jungwuk Park, Dong-Jun Han, Jaekyun Moon |
| 2023 | NICE: NoIse-modulated Consistency rEgularization for Data-Efficient GANs. Yao Ni, Piotr Koniusz |
| 2023 | NIS3D: A Completely Annotated Benchmark for Dense 3D Nuclei Image Segmentation. Wei Zheng, James Cheng Peng, Zeyuan Hou, Boyu Lyu, Mengfan Wang, Xuelong Mi, Shuoxuan Qiao, Yinan Wan, Guoqiang Yu |
| 2023 | NPCL: Neural Processes for Uncertainty-Aware Continual Learning. Saurav Jha, Dong Gong, He Zhao, Lina Yao |
| 2023 | NU-MCC: Multiview Compressive Coding with Neighborhood Decoder and Repulsive UDF. Stefan Lionar, Xiangyu Xu, Min Lin, Gim Hee Lee |
| 2023 | NVFi: Neural Velocity Fields for 3D Physics Learning from Dynamic Videos. Jinxi Li, Ziyang Song, Bo Yang |
| 2023 | Nash Regret Guarantees for Linear Bandits. Ayush Sawarni, Soumyabrata Pal, Siddharth Barman |
| 2023 | Natural Actor-Critic for Robust Reinforcement Learning with Function Approximation. Ruida Zhou, Tao Liu, Min Cheng, Dileep Kalathil, P. R. Kumar, Chao Tian |
| 2023 | Natural Language Instruction-following with Task-related Language Development and Translation. Jing-Cheng Pang, Xinyu Yang, Si-Hang Yang, Xiong-Hui Chen, Yang Yu |
| 2023 | Navigating Data Heterogeneity in Federated Learning: A Semi-Supervised Approach for Object Detection. Taehyeon Kim, Eric Lin, Junu Lee, Christian Lau, Vaikkunth Mugunthan |
| 2023 | Navigating the Pitfalls of Active Learning Evaluation: A Systematic Framework for Meaningful Performance Assessment. Carsten T. Lüth, Till J. Bungert, Lukas Klein, Paul F. Jaeger |
| 2023 | NeRF Revisited: Fixing Quadrature Instability in Volume Rendering. Mikaela Angelina Uy, Kiyohiro Nakayama, Guandao Yang, Rahul Krishna Thomas, Leonidas J. Guibas, Ke Li |
| 2023 | NeRF-IBVS: Visual Servo Based on NeRF for Visual Localization and Navigation. Yuanze Wang, Yichao Yan, Dianxi Shi, Wenhan Zhu, Jianqiang Xia, Jeff Tan, Songchang Jin, Ke Gao, Xiaobo Li, Xiaokang Yang |
| 2023 | Near Optimal Reconstruction of Spherical Harmonic Expansions. Amir Zandieh, Insu Han, Haim Avron |
| 2023 | Near-Linear Time Algorithm for the Chamfer Distance. Ainesh Bakshi, Piotr Indyk, Rajesh Jayaram, Sandeep Silwal, Erik Waingarten |
| 2023 | Near-Optimal Algorithms for Gaussians with Huber Contamination: Mean Estimation and Linear Regression. Ilias Diakonikolas, Daniel Kane, Ankit Pensia, Thanasis Pittas |
| 2023 | Near-Optimal Bounds for Learning Gaussian Halfspaces with Random Classification Noise. Ilias Diakonikolas, Jelena Diakonikolas, Daniel Kane, Puqian Wang, Nikos Zarifis |
| 2023 | Near-Optimal k-Clustering in the Sliding Window Model. David P. Woodruff, Peilin Zhong, Samson Zhou |
| 2023 | Near-optimal learning with average Hölder smoothness. Guy Kornowski, Steve Hanneke, Aryeh Kontorovich |
| 2023 | Nearest Neighbour with Bandit Feedback. Stephen Pasteris, Chris Hicks, Vasilios Mavroudis |
| 2023 | Nearly Optimal Bounds for Cyclic Forgetting. William Swartworth, Deanna Needell, Rachel A. Ward, Mark Kong, Halyun Jeong |
| 2023 | Nearly Optimal VC-Dimension and Pseudo-Dimension Bounds for Deep Neural Network Derivatives. Yahong Yang, Haizhao Yang, Yang Xiang |
| 2023 | Nearly Tight Bounds For Differentially Private Multiway Cut. Mina Dalirrooyfard, Slobodan Mitrovic, Yuriy Nevmyvaka |
| 2023 | Necessary and Sufficient Conditions for Optimal Decision Trees using Dynamic Programming. Jacobus G. M. van der Linden, Mathijs de Weerdt, Emir Demirovic |
| 2023 | NetHack is Hard to Hack. Ulyana Piterbarg, Lerrel Pinto, Rob Fergus |
| 2023 | Networks are Slacking Off: Understanding Generalization Problem in Image Deraining. Jinjin Gu, Xianzheng Ma, Xiangtao Kong, Yu Qiao, Chao Dong |
| 2023 | Neural (Tangent Kernel) Collapse. Mariia Seleznova, Dana Weitzner, Raja Giryes, Gitta Kutyniok, Hung-Hsu Chou |
| 2023 | Neural Algorithmic Reasoning Without Intermediate Supervision. Gleb Rodionov, Liudmila Prokhorenkova |
| 2023 | Neural Circuits for Fast Poisson Compressed Sensing in the Olfactory Bulb. Jacob A. Zavatone-Veth, Paul Masset, William L. Tong, Joseph D. Zak, Venkatesh Murthy, Cengiz Pehlevan |
| 2023 | Neural Combinatorial Optimization with Heavy Decoder: Toward Large Scale Generalization. Fu Luo, Xi Lin, Fei Liu, Qingfu Zhang, Zhenkun Wang |
| 2023 | Neural Data Transformer 2: Multi-context Pretraining for Neural Spiking Activity. Joel Ye, Jennifer L. Collinger, Leila Wehbe, Robert Gaunt |
| 2023 | Neural Fields with Hard Constraints of Arbitrary Differential Order. Fangcheng Zhong, Kyle Fogarty, Param Hanji, Tianhao Wu, Alejandro Sztrajman, Andrew Spielberg, Andrea Tagliasacchi, Petra Bosilj, Cengiz Öztireli |
| 2023 | Neural Foundations of Mental Simulation: Future Prediction of Latent Representations on Dynamic Scenes. Aran Nayebi, Rishi Rajalingham, Mehrdad Jazayeri, Guangyu Robert Yang |
| 2023 | Neural Frailty Machine: Beyond proportional hazard assumption in neural survival regressions. Ruofan Wu, Jiawei Qiao, Mingzhe Wu, Wen Yu, Ming Zheng, Tengfei Liu, Tianyi Zhang, Weiqiang Wang |
| 2023 | Neural Functional Transformers. Allan Zhou, Kaien Yang, Yiding Jiang, Kaylee Burns, Winnie Xu, Samuel Sokota, J. Zico Kolter, Chelsea Finn |
| 2023 | Neural Graph Generation from Graph Statistics. Kiarash Zahirnia, Yaochen Hu, Mark Coates, Oliver Schulte |
| 2023 | Neural Harmonics: Bridging Spectral Embedding and Matrix Completion in Self-Supervised Learning. Marina Munkhoeva, Ivan V. Oseledets |
| 2023 | Neural Ideal Large Eddy Simulation: Modeling Turbulence with Neural Stochastic Differential Equations. Anudhyan Boral, Zhong Yi Wan, Leonardo Zepeda-Núñez, James Lottes, Qing Wang, Yi-Fan Chen, John Anderson, Fei Sha |
| 2023 | Neural Image Compression: Generalization, Robustness, and Spectral Biases. Kelsey Lieberman, James Diffenderfer, Charles Godfrey, Bhavya Kailkhura |
| 2023 | Neural Injective Functions for Multisets, Measures and Graphs via a Finite Witness Theorem. Tal Amir, Steven J. Gortler, Ilai Avni, Ravina Ravina, Nadav Dym |
| 2023 | Neural Lad: A Neural Latent Dynamics Framework for Times Series Modeling. Ting Li, Jianguo Li, Zhanxing Zhu |
| 2023 | Neural Latent Geometry Search: Product Manifold Inference via Gromov-Hausdorff-Informed Bayesian Optimization. Haitz Sáez de Ocáriz Borde, Alvaro Arroyo, Ismael Morales, Ingmar Posner, Xiaowen Dong |
| 2023 | Neural Lighting Simulation for Urban Scenes. Ava Pun, Gary Sun, Jingkang Wang, Yun Chen, Ze Yang, Sivabalan Manivasagam, Wei-Chiu Ma, Raquel Urtasun |
| 2023 | Neural Lyapunov Control for Discrete-Time Systems. Junlin Wu, Andrew Clark, Yiannis Kantaros, Yevgeniy Vorobeychik |
| 2023 | Neural MMO 2.0: A Massively Multi-task Addition to Massively Multi-agent Learning. Joseph Suarez, David Bloomin, Kyoung Whan Choe, Hao Xiang Li, Ryan Sullivan, Nishaanth Kanna, Daniel Scott, Rose S. Shuman, Herbie Bradley, Louis Castricato, Phillip Isola, ChengHui Yu, Yuhao Jiang, Qimai Li, Jiaxin Chen, Xiaolong Zhu |
| 2023 | Neural Modulation for Flash Memory: An Unsupervised Learning Framework for Improved Reliability. Jonathan Zedaka, Elisha Halperin, Evgeny Blaichman, Amit Berman |
| 2023 | Neural Multi-Objective Combinatorial Optimization with Diversity Enhancement. Jinbiao Chen, Zizhen Zhang, Zhiguang Cao, Yaoxin Wu, Yining Ma, Te Ye, Jiahai Wang |
| 2023 | Neural Oscillators are Universal. Samuel Lanthaler, T. Konstantin Rusch, Siddhartha Mishra |
| 2023 | Neural Polarizer: A Lightweight and Effective Backdoor Defense via Purifying Poisoned Features. Mingli Zhu, Shaokui Wei, Hongyuan Zha, Baoyuan Wu |
| 2023 | Neural Priming for Sample-Efficient Adaptation. Matthew Wallingford, Vivek Ramanujan, Alex Fang, Aditya Kusupati, Roozbeh Mottaghi, Aniruddha Kembhavi, Ludwig Schmidt, Ali Farhadi |
| 2023 | Neural Processes with Stability. Huafeng Liu, Liping Jing, Jian Yu |
| 2023 | Neural Relation Graph: A Unified Framework for Identifying Label Noise and Outlier Data. Jang-Hyun Kim, Sangdoo Yun, Hyun Oh Song |
| 2023 | Neural Sampling in Hierarchical Exponential-family Energy-based Models. Xingsi Dong, Si Wu |
| 2023 | Neural Sculpting: Uncovering hierarchically modular task structure in neural networks through pruning and network analysis. Shreyas Malakarjun Patil, Loizos Michael, Constantine Dovrolis |
| 2023 | Neural approximation of Wasserstein distance via a universal architecture for symmetric and factorwise group invariant functions. Samantha Chen, Yusu Wang |
| 2023 | Neural-Logic Human-Object Interaction Detection. Liulei Li, Jianan Wei, Wenguan Wang, Yi Yang |
| 2023 | NeuralGF: Unsupervised Point Normal Estimation by Learning Neural Gradient Function. Qing Li, Huifang Feng, Kanle Shi, Yue Gao, Yi Fang, Yu-Shen Liu, Zhizhong Han |
| 2023 | Neuro-symbolic Learning Yielding Logical Constraints. Zenan Li, Yunpeng Huang, Zhaoyu Li, Yuan Yao, Jingwei Xu, Taolue Chen, Xiaoxing Ma, Jian Lu |
| 2023 | NeuroEvoBench: Benchmarking Evolutionary Optimizers for Deep Learning Applications. Robert Tjarko Lange, Yujin Tang, Yingtao Tian |
| 2023 | NeuroGF: A Neural Representation for Fast Geodesic Distance and Path Queries. Qijian Zhang, Junhui Hou, Yohanes Yudhi Adikusuma, Wenping Wang, Ying He |
| 2023 | NeuroGraph: Benchmarks for Graph Machine Learning in Brain Connectomics. Anwar Said, Roza G. Bayrak, Tyler Derr, Mudassir Shabbir, Daniel Moyer, Catie Chang, Xenofon D. Koutsoukos |
| 2023 | New Bounds for Hyperparameter Tuning of Regression Problems Across Instances. Maria-Florina Balcan, Anh Nguyen, Dravyansh Sharma |
| 2023 | New Complexity-Theoretic Frontiers of Tractability for Neural Network Training. Cornelius Brand, Robert Ganian, Mathis Rocton |
| 2023 | Newton-Cotes Graph Neural Networks: On the Time Evolution of Dynamic Systems. Lingbing Guo, Weiqing Wang, Zhuo Chen, Ningyu Zhang, Zequn Sun, Yixuan Lai, Qiang Zhang, Huajun Chen |
| 2023 | No Change, No Gain: Empowering Graph Neural Networks with Expected Model Change Maximization for Active Learning. Zixing Song, Yifei Zhang, Irwin King |
| 2023 | No Representation Rules Them All in Category Discovery. Sagar Vaze, Andrea Vedaldi, Andrew Zisserman |
| 2023 | No Train No Gain: Revisiting Efficient Training Algorithms For Transformer-based Language Models. Jean Kaddour, Oscar Key, Piotr Nawrot, Pasquale Minervini, Matt J. Kusner |
| 2023 | No-Regret Learning in Dynamic Competition with Reference Effects Under Logit Demand. Mengzi Amy Guo, Donghao Ying, Javad Lavaei, Zuo-Jun Max Shen |
| 2023 | No-Regret Learning with Unbounded Losses: The Case of Logarithmic Pooling. Eric Neyman, Tim Roughgarden |
| 2023 | No-Regret Online Prediction with Strategic Experts. Omid Sadeghi, Maryam Fazel |
| 2023 | No-Regret Online Reinforcement Learning with Adversarial Losses and Transitions. Tiancheng Jin, Junyan Liu, Chloé Rouyer, William Chang, Chen-Yu Wei, Haipeng Luo |
| 2023 | No-regret Algorithms for Fair Resource Allocation. Abhishek Sinha, Ativ Joshi, Rajarshi Bhattacharjee, Cameron Musco, Mohammad Hajiesmaili |
| 2023 | Noether Embedding: Efficient Learning of Temporal Regularities. Chi Gao, Zidong Zhou, Luping Shi |
| 2023 | Noise-Adaptive Thompson Sampling for Linear Contextual Bandits. Ruitu Xu, Yifei Min, Tianhao Wang |
| 2023 | Nominality Score Conditioned Time Series Anomaly Detection by Point/Sequential Reconstruction. Chih-Yu Lai, Fan-Keng Sun, Zhengqi Gao, Jeffrey H. Lang, Duane S. Boning |
| 2023 | Non-Asymptotic Analysis of a UCB-based Top Two Algorithm. Marc Jourdan, Rémy Degenne |
| 2023 | Non-Convex Bilevel Optimization with Time-Varying Objective Functions. Sen Lin, Daouda Sow, Kaiyi Ji, Yingbin Liang, Ness B. Shroff |
| 2023 | Non-Rigid Shape Registration via Deep Functional Maps Prior. Puhua Jiang, Mingze Sun, Ruqi Huang |
| 2023 | Non-Smooth Weakly-Convex Finite-sum Coupled Compositional Optimization. Quanqi Hu, Dixian Zhu, Tianbao Yang |
| 2023 | Non-Stationary Bandits with Auto-Regressive Temporal Dependency. Qinyi Chen, Negin Golrezaei, Djallel Bouneffouf |
| 2023 | Non-adversarial training of Neural SDEs with signature kernel scores. Zacharia Issa, Blanka Horvath, Maud Lemercier, Cristopher Salvi |
| 2023 | Non-autoregressive Machine Translation with Probabilistic Context-free Grammar. Shangtong Gui, Chenze Shao, Zhengrui Ma, Xishan Zhang, Yunji Chen, Yang Feng |
| 2023 | Non-stationary Experimental Design under Linear Trends. David Simchi-Levi, Chonghuan Wang, Zeyu Zheng |
| 2023 | Nonparametric Boundary Geometry in Physics Informed Deep Learning. Scott Alexander Cameron, Arnu Pretorius, Stephen J. Roberts |
| 2023 | Nonparametric Identifiability of Causal Representations from Unknown Interventions. Julius von Kügelgen, Michel Besserve, Wendong Liang, Luigi Gresele, Armin Kekic, Elias Bareinboim, David M. Blei, Bernhard Schölkopf |
| 2023 | Nonparametric Teaching for Multiple Learners. Chen Zhang, Xiaofeng Cao, Weiyang Liu, Ivor W. Tsang, James T. Kwok |
| 2023 | Norm-based Generalization Bounds for Sparse Neural Networks. Tomer Galanti, Mengjia Xu, Liane Galanti, Tomaso A. Poggio |
| 2023 | Norm-guided latent space exploration for text-to-image generation. Dvir Samuel, Rami Ben-Ari, Nir Darshan, Haggai Maron, Gal Chechik |
| 2023 | Normalization Layers Are All That Sharpness-Aware Minimization Needs. Maximilian Müller, Tiffany Vlaar, David Rolnick, Matthias Hein |
| 2023 | Normalization-Equivariant Neural Networks with Application to Image Denoising. Sébastien Herbreteau, Emmanuel Moebel, Charles Kervrann |
| 2023 | Normalizing flow neural networks by JKO scheme. Chen Xu, Xiuyuan Cheng, Yao Xie |
| 2023 | Not All Neuro-Symbolic Concepts Are Created Equal: Analysis and Mitigation of Reasoning Shortcuts. Emanuele Marconato, Stefano Teso, Antonio Vergari, Andrea Passerini |
| 2023 | Not All Out-of-Distribution Data Are Harmful to Open-Set Active Learning. Yang Yang, Yuxuan Zhang, Xin Song, Yi Xu |
| 2023 | NuTrea: Neural Tree Search for Context-guided Multi-hop KGQA. Hyeong Kyu Choi, Seunghun Lee, Jaewon Chu, Hyunwoo J. Kim |
| 2023 | NurViD: A Large Expert-Level Video Database for Nursing Procedure Activity Understanding. Ming Hu, Lin Wang, Siyuan Yan, Don Ma, Qingli Ren, Peng Xia, Wei Feng, Peibo Duan, Lie Ju, Zongyuan Ge |
| 2023 | OBELICS: An Open Web-Scale Filtered Dataset of Interleaved Image-Text Documents. Hugo Laurençon, Lucile Saulnier, Léo Tronchon, Stas Bekman, Amanpreet Singh, Anton Lozhkov, Thomas Wang, Siddharth Karamcheti, Alexander M. Rush, Douwe Kiela, Matthieu Cord, Victor Sanh |
| 2023 | OBJECT 3DIT: Language-guided 3D-aware Image Editing. Oscar Michel, Anand Bhattad, Eli VanderBilt, Ranjay Krishna, Aniruddha Kembhavi, Tanmay Gupta |
| 2023 | ODE-based Recurrent Model-free Reinforcement Learning for POMDPs. Xuanle Zhao, Duzhen Zhang, Liyuan Han, Tielin Zhang, Bo Xu |
| 2023 | OFCOURSE: A Multi-Agent Reinforcement Learning Environment for Order Fulfillment. Yiheng Zhu, Yang Zhan, Xuankun Huang, Yuwei Chen, Yujie Chen, Jiangwen Wei, Wei Feng, Yinzhi Zhou, Haoyuan Hu, Jieping Ye |
| 2023 | OKRidge: Scalable Optimal k-Sparse Ridge Regression. Jiachang Liu, Sam Rosen, Chudi Zhong, Cynthia Rudin |
| 2023 | OV-PARTS: Towards Open-Vocabulary Part Segmentation. Meng Wei, Xiaoyu Yue, Wenwei Zhang, Shu Kong, Xihui Liu, Jiangmiao Pang |
| 2023 | Objaverse-XL: A Universe of 10M+ 3D Objects. Matt Deitke, Ruoshi Liu, Matthew Wallingford, Huong Ngo, Oscar Michel, Aditya Kusupati, Alan Fan, Christian Laforte, Vikram Voleti, Samir Yitzhak Gadre, Eli VanderBilt, Aniruddha Kembhavi, Carl Vondrick, Georgia Gkioxari, Kiana Ehsani, Ludwig Schmidt, Ali Farhadi |
| 2023 | Object Reprojection Error (ORE): Camera pose benchmarks from lightweight tracking annotations. Xingyu Chen, Weiyao Wang, Hao Tang, Matt Feiszli |
| 2023 | Object-Centric Learning for Real-World Videos by Predicting Temporal Feature Similarities. Andrii Zadaianchuk, Maximilian Seitzer, Georg Martius |
| 2023 | Object-Centric Slot Diffusion. Jindong Jiang, Fei Deng, Gautam Singh, Sungjin Ahn |
| 2023 | Object-centric Learning with Cyclic Walks between Parts and Whole. Ziyu Wang, Mike Zheng Shou, Mengmi Zhang |
| 2023 | Occ3D: A Large-Scale 3D Occupancy Prediction Benchmark for Autonomous Driving. Xiaoyu Tian, Tao Jiang, Longfei Yun, Yucheng Mao, Huitong Yang, Yue Wang, Yilun Wang, Hang Zhao |
| 2023 | OceanBench: The Sea Surface Height Edition. J. Emmanuel Johnson, Quentin Febvre, Anastasiia Gorbunova, Sammy Metref, Maxime Ballarotta, Julien Le Sommer, Ronan Fablet |
| 2023 | Off-Policy Evaluation for Human Feedback. Qitong Gao, Ge Gao, Juncheng Dong, Vahid Tarokh, Min Chi, Miroslav Pajic |
| 2023 | Offline Imitation Learning with Variational Counterfactual Reasoning. Zexu Sun, Bowei He, Jinxin Liu, Xu Chen, Chen Ma, Shuai Zhang |
| 2023 | Offline Minimax Soft-Q-learning Under Realizability and Partial Coverage. Masatoshi Uehara, Nathan Kallus, Jason D. Lee, Wen Sun |
| 2023 | Offline Multi-Agent Reinforcement Learning with Implicit Global-to-Local Value Regularization. Xiangsen Wang, Haoran Xu, Yinan Zheng, Xianyuan Zhan |
| 2023 | Offline RL with Discrete Proxy Representations for Generalizability in POMDPs. Pengjie Gu, Xinyu Cai, Dong Xing, Xinrun Wang, Mengchen Zhao, Bo An |
| 2023 | Offline Reinforcement Learning for Mixture-of-Expert Dialogue Management. Dhawal Gupta, Yinlam Chow, Azamat Tulepbergenov, Mohammad Ghavamzadeh, Craig Boutilier |
| 2023 | Offline Reinforcement Learning with Differential Privacy. Dan Qiao, Yu-Xiang Wang |
| 2023 | On Calibrating Diffusion Probabilistic Models. Tianyu Pang, Cheng Lu, Chao Du, Min Lin, Shuicheng Yan, Zhijie Deng |
| 2023 | On Certified Generalization in Structured Prediction. Bastian Boll, Christoph Schnörr |
| 2023 | On Class Distributions Induced by Nearest Neighbor Graphs for Node Classification of Tabular Data. Federico Errica |
| 2023 | On Computing Pairwise Statistics with Local Differential Privacy. Badih Ghazi, Pritish Kamath, Ravi Kumar, Pasin Manurangsi, Adam Sealfon |
| 2023 | On Convergence of Polynomial Approximations to the Gaussian Mixture Entropy. Caleb Dahlke, Jason Pacheco |
| 2023 | On Differentially Private Sampling from Gaussian and Product Distributions. Badih Ghazi, Xiao Hu, Ravi Kumar, Pasin Manurangsi |
| 2023 | On Dynamic Programming Decompositions of Static Risk Measures in Markov Decision Processes. Jia Lin Hau, Erick Delage, Mohammad Ghavamzadeh, Marek Petrik |
| 2023 | On Evaluating Adversarial Robustness of Large Vision-Language Models. Yunqing Zhao, Tianyu Pang, Chao Du, Xiao Yang, Chongxuan Li, Ngai-Man Cheung, Min Lin |
| 2023 | On Generalization Bounds for Projective Clustering. Maria Sofia Bucarelli, Matilde Fjeldsø Larsen, Chris Schwiegelshohn, Mads Toftrup |
| 2023 | On Imitation in Mean-field Games. Giorgia Ramponi, Pavel Kolev, Olivier Pietquin, Niao He, Mathieu Laurière, Matthieu Geist |
| 2023 | On Learning Latent Models with Multi-Instance Weak Supervision. Kaifu Wang, Efthymia Tsamoura, Dan Roth |
| 2023 | On Learning Necessary and Sufficient Causal Graphs. Hengrui Cai, Yixin Wang, Michael I. Jordan, Rui Song |
| 2023 | On Masked Pre-training and the Marginal Likelihood. Pablo Moreno-Muñoz, Pol Garcia Recasens, Søren Hauberg |
| 2023 | On Measuring Fairness in Generative Models. Christopher T. H. Teo, Milad Abdollahzadeh, Ngai-Man Cheung |
| 2023 | On Occlusions in Video Action Detection: Benchmark Datasets And Training Recipes. Rajat Modi, Vibhav Vineet, Yogesh S. Rawat |
| 2023 | On Private and Robust Bandits. Yulian Wu, Xingyu Zhou, Youming Tao, Di Wang |
| 2023 | On Proper Learnability between Average- and Worst-case Robustness. Vinod Raman, Unique Subedi, Ambuj Tewari |
| 2023 | On Robust Streaming for Learning with Experts: Algorithms and Lower Bounds. David P. Woodruff, Fred Zhang, Samson Zhou |
| 2023 | On Sample-Efficient Offline Reinforcement Learning: Data Diversity, Posterior Sampling and Beyond. Thanh Nguyen-Tang, Raman Arora |
| 2023 | On Separate Normalization in Self-supervised Transformers. Xiaohui Chen, Yinkai Wang, Yuanqi Du, Soha Hassoun, Liping Liu |
| 2023 | On Single-Index Models beyond Gaussian Data. Aaron Zweig, Loucas Pillaud-Vivien, Joan Bruna |
| 2023 | On Slicing Optimality for Mutual Information. Ammar Fayad, Majd Ibrahim |
| 2023 | On Sparse Modern Hopfield Model. Jerry Yao-Chieh Hu, Donglin Yang, Dennis Wu, Chenwei Xu, Bo-Yu Chen, Han Liu |
| 2023 | On Transfer of Adversarial Robustness from Pretraining to Downstream Tasks. Laura Fee Nern, Harsh Raj, Maurice André Georgi, Yash Sharma |
| 2023 | On kernel-based statistical learning theory in the mean field limit. Christian Fiedler, Michael Herty, Sebastian Trimpe |
| 2023 | On permutation symmetries in Bayesian neural network posteriors: a variational perspective. Simone Rossi, Ankit Singh, Thomas Hannagan |
| 2023 | On quantum backpropagation, information reuse, and cheating measurement collapse. Amira Abbas, Robbie King, Hsin-Yuan Huang, William J. Huggins, Ramis Movassagh, Dar Gilboa, Jarrod R. McClean |
| 2023 | On skip connections and normalisation layers in deep optimisation. Lachlan E. MacDonald, Jack Valmadre, Hemanth Saratchandran, Simon Lucey |
| 2023 | On student-teacher deviations in distillation: does it pay to disobey? Vaishnavh Nagarajan, Aditya Krishna Menon, Srinadh Bhojanapalli, Hossein Mobahi, Sanjiv Kumar |
| 2023 | On the Ability of Graph Neural Networks to Model Interactions Between Vertices. Noam Razin, Tom Verbin, Nadav Cohen |
| 2023 | On the Adversarial Robustness of Out-of-distribution Generalization Models. Xin Zou, Weiwei Liu |
| 2023 | On the Asymptotic Learning Curves of Kernel Ridge Regression under Power-law Decay. Yicheng Li, Haobo Zhang, Qian Lin |
| 2023 | On the Complexity of Differentially Private Best-Arm Identification with Fixed Confidence. Achraf Azize, Marc Jourdan, Aymen Al Marjani, Debabrota Basu |
| 2023 | On the Connection between Pre-training Data Diversity and Fine-tuning Robustness. Vivek Ramanujan, Thao Nguyen, Sewoong Oh, Ali Farhadi, Ludwig Schmidt |
| 2023 | On the Consistency of Maximum Likelihood Estimation of Probabilistic Principal Component Analysis. Arghya Datta, Sayak Chakrabarty |
| 2023 | On the Constrained Time-Series Generation Problem. Andrea Coletta, Sriram Gopalakrishnan, Daniel Borrajo, Svitlana Vyetrenko |
| 2023 | On the Convergence and Sample Complexity Analysis of Deep Q-Networks with ε-Greedy Exploration. Shuai Zhang, Hongkang Li, Meng Wang, Miao Liu, Pin-Yu Chen, Songtao Lu, Sijia Liu, Keerthiram Murugesan, Subhajit Chaudhury |
| 2023 | On the Convergence of Black-Box Variational Inference. Kyurae Kim, Jisu Oh, Kaiwen Wu, Yi-An Ma, Jacob R. Gardner |
| 2023 | On the Convergence of CART under Sufficient Impurity Decrease Condition. Rahul Mazumder, Haoyue Wang |
| 2023 | On the Convergence of Encoder-only Shallow Transformers. Yongtao Wu, Fanghui Liu, Grigorios Chrysos, Volkan Cevher |
| 2023 | On the Convergence of No-Regret Learning Dynamics in Time-Varying Games. Ioannis Anagnostides, Ioannis Panageas, Gabriele Farina, Tuomas Sandholm |
| 2023 | On the Convergence to a Global Solution of Shuffling-Type Gradient Algorithms. Lam M. Nguyen, Trang H. Tran |
| 2023 | On the Exploitability of Instruction Tuning. Manli Shu, Jiongxiao Wang, Chen Zhu, Jonas Geiping, Chaowei Xiao, Tom Goldstein |
| 2023 | On the Exploration of Local Significant Differences For Two-Sample Test. Zhijian Zhou, Jie Ni, Jia-He Yao, Wei Gao |
| 2023 | On the Generalization Error of Stochastic Mirror Descent for Quadratically-Bounded Losses: an Improved Analysis. Ta Duy Nguyen, Alina Ene, Huy L. Nguyen |
| 2023 | On the Generalization Properties of Diffusion Models. Puheng Li, Zhong Li, Huishuai Zhang, Jiang Bian |
| 2023 | On the Gini-impurity Preservation For Privacy Random Forests. Xinran Xie, Man-Jie Yuan, Xuetong Bai, Wei Gao, Zhi-Hua Zhou |
| 2023 | On the Identifiability and Interpretability of Gaussian Process Models. Jiawen Chen, Wancen Mu, Yun Li, Didong Li |
| 2023 | On the Identifiability of Sparse ICA without Assuming Non-Gaussianity. Ignavier Ng, Yujia Zheng, Xinshuai Dong, Kun Zhang |
| 2023 | On the Implicit Bias of Linear Equivariant Steerable Networks. Ziyu Chen, Wei Zhu |
| 2023 | On the Importance of Exploration for Generalization in Reinforcement Learning. Yiding Jiang, J. Zico Kolter, Roberta Raileanu |
| 2023 | On the Importance of Feature Separability in Predicting Out-Of-Distribution Error. Renchunzi Xie, Hongxin Wei, Lei Feng, Yuzhou Cao, Bo An |
| 2023 | On the Interplay between Social Welfare and Tractability of Equilibria. Ioannis Anagnostides, Tuomas Sandholm |
| 2023 | On the Last-iterate Convergence in Time-varying Zero-sum Games: Extra Gradient Succeeds where Optimism Fails. Yi Feng, Hu Fu, Qun Hu, Ping Li, Ioannis Panageas, Bo Peng, Xiao Wang |
| 2023 | On the Learnability of Multilabel Ranking. Vinod Raman, Unique Subedi, Ambuj Tewari |
| 2023 | On the Minimax Regret for Online Learning with Feedback Graphs. Khaled Eldowa, Emmanuel Esposito, Tommaso Cesari, Nicolò Cesa-Bianchi |
| 2023 | On the Need for a Language Describing Distribution Shifts: Illustrations on Tabular Datasets. Jiashuo Liu, Tianyu Wang, Peng Cui, Hongseok Namkoong |
| 2023 | On the Overlooked Pitfalls of Weight Decay and How to Mitigate Them: A Gradient-Norm Perspective. Zeke Xie, Zhiqiang Xu, Jingzhao Zhang, Issei Sato, Masashi Sugiyama |
| 2023 | On the Overlooked Structure of Stochastic Gradients. Zeke Xie, Qian-Yuan Tang, Mingming Sun, Ping Li |
| 2023 | On the Pareto Front of Multilingual Neural Machine Translation. Liang Chen, Shuming Ma, Dongdong Zhang, Furu Wei, Baobao Chang |
| 2023 | On the Planning Abilities of Large Language Models - A Critical Investigation. Karthik Valmeekam, Matthew Marquez, Sarath Sreedharan, Subbarao Kambhampati |
| 2023 | On the Power of SVD in the Stochastic Block Model. Xinyu Mao, Jiapeng Zhang |
| 2023 | On the Powerfulness of Textual Outlier Exposure for Visual OoD Detection. Sangha Park, Jisoo Mok, Dahuin Jung, Saehyung Lee, Sungroh Yoon |
| 2023 | On the Properties of Kullback-Leibler Divergence Between Multivariate Gaussian Distributions. Yufeng Zhang, Jialu Pan, Li Ken Li, Wanwei Liu, Zhenbang Chen, Xinwang Liu, Ji Wang |
| 2023 | On the Relationship Between Relevance and Conflict in Online Social Link Recommendations. Yanbang Wang, Jon M. Kleinberg |
| 2023 | On the Robustness of Mechanism Design under Total Variation Distance. Anuran Makur, Marios Mertzanidis, Alexandros Psomas, Athina Terzoglou |
| 2023 | On the Robustness of Removal-Based Feature Attributions. Chris Lin, Ian Covert, Su-In Lee |
| 2023 | On the Role of Entanglement and Statistics in Learning. Srinivasan Arunachalam, Vojtech Havlícek, Louis Schatzki |
| 2023 | On the Role of Noise in the Sample Complexity of Learning Recurrent Neural Networks: Exponential Gaps for Long Sequences. Alireza Fathollah Pour, Hassan Ashtiani |
| 2023 | On the Role of Randomization in Adversarially Robust Classification. Lucas Gnecco Heredia, Muni Sreenivas Pydi, Laurent Meunier, Benjamin Négrevergne, Yann Chevaleyre |
| 2023 | On the Size and Approximation Error of Distilled Datasets. Alaa Maalouf, Murad Tukan, Noel Loo, Ramin M. Hasani, Mathias Lechner, Daniela Rus |
| 2023 | On the Stability-Plasticity Dilemma in Continual Meta-Learning: Theory and Algorithm. Qi Chen, Changjian Shui, Ligong Han, Mario Marchand |
| 2023 | On the Statistical Consistency of Risk-Sensitive Bayesian Decision-Making. Prateek Jaiswal, Harsha Honnappa, Vinayak A. Rao |
| 2023 | On the Sublinear Regret of GP-UCB. Justin Whitehouse, Aaditya Ramdas, Zhiwei Steven Wu |
| 2023 | On the Trade-off of Intra-/Inter-class Diversity for Supervised Pre-training. Jieyu Zhang, Bohan Wang, Zhengyu Hu, Pang Wei Koh, Alexander J. Ratner |
| 2023 | On the Variance, Admissibility, and Stability of Empirical Risk Minimization. Gil Kur, Eli Putterman, Alexander Rakhlin |
| 2023 | On the choice of Perception Loss Function for Learned Video Compression. Sadaf Salehkalaibar, Buu Phan, Jun Chen, Wei Yu, Ashish Khisti |
| 2023 | On the explainable properties of 1-Lipschitz Neural Networks: An Optimal Transport Perspective. Mathieu Serrurier, Franck Mamalet, Thomas Fel, Louis Béthune, Thibaut Boissin |
| 2023 | On the impact of activation and normalization in obtaining isometric embeddings at initialization. Amir Joudaki, Hadi Daneshmand, Francis R. Bach |
| 2023 | On the spectral bias of two-layer linear networks. Aditya Vardhan Varre, Maria-Luiza Vladarean, Loucas Pillaud-Vivien, Nicolas Flammarion |
| 2023 | On-the-Fly Adapting Code Summarization on Trainable Cost-Effective Language Models. Yufan Cai, Yun Lin, Chenyan Liu, Jinglian Wu, Yifan Zhang, Yiming Liu, Yeyun Gong, Jin Song Dong |
| 2023 | One Fits All: Power General Time Series Analysis by Pretrained LM. Tian Zhou, Peisong Niu, Xue Wang, Liang Sun, Rong Jin |
| 2023 | One Less Reason for Filter Pruning: Gaining Free Adversarial Robustness with Structured Grouped Kernel Pruning. Shaochen (Henry) Zhong, Zaichuan You, Jiamu Zhang, Sebastian Zhao, Zachary LeClaire, Zirui Liu, Daochen Zha, Vipin Chaudhary, Shuai Xu, Xia Hu |
| 2023 | One Risk to Rule Them All: A Risk-Sensitive Perspective on Model-Based Offline Reinforcement Learning. Marc Rigter, Bruno Lacerda, Nick Hawes |
| 2023 | One-2-3-45: Any Single Image to 3D Mesh in 45 Seconds without Per-Shape Optimization. Minghua Liu, Chao Xu, Haian Jin, Linghao Chen, Mukund Varma T., Zexiang Xu, Hao Su |
| 2023 | One-Line-of-Code Data Mollification Improves Optimization of Likelihood-based Generative Models. Ba-Hien Tran, Giulio Franzese, Pietro Michiardi, Maurizio Filippone |
| 2023 | One-Pass Distribution Sketch for Measuring Data Heterogeneity in Federated Learning. Zichang Liu, Zhaozhuo Xu, Benjamin Coleman, Anshumali Shrivastava |
| 2023 | One-Step Diffusion Distillation via Deep Equilibrium Models. Zhengyang Geng, Ashwini Pokle, J. Zico Kolter |
| 2023 | One-for-All: Bridge the Gap Between Heterogeneous Architectures in Knowledge Distillation. Zhiwei Hao, Jianyuan Guo, Kai Han, Yehui Tang, Han Hu, Yunhe Wang, Chang Xu |
| 2023 | One-step differentiation of iterative algorithms. Jérôme Bolte, Edouard Pauwels, Samuel Vaiter |
| 2023 | OneNet: Enhancing Time Series Forecasting Models under Concept Drift by Online Ensembling. Yifan Zhang, Qingsong Wen, Xue Wang, Weiqi Chen, Liang Sun, Zhang Zhang, Liang Wang, Rong Jin, Tieniu Tan |
| 2023 | Online (Multinomial) Logistic Bandit: Improved Regret and Constant Computation Cost. Yu-Jie Zhang, Masashi Sugiyama |
| 2023 | Online Ad Allocation with Predictions. Fabian Spaeh, Alina Ene |
| 2023 | Online Ad Procurement in Non-stationary Autobidding Worlds. Jason Cheuk Nam Liang, Haihao Lu, Baoyu Zhou |
| 2023 | Online Adaptive Policy Selection in Time-Varying Systems: No-Regret via Contractive Perturbations. Yiheng Lin, James A. Preiss, Emile Anand, Yingying Li, Yisong Yue, Adam Wierman |
| 2023 | Online Clustering of Bandits with Misspecified User Models. Zhiyong Wang, Jize Xie, Xutong Liu, Shuai Li, John C. S. Lui |
| 2023 | Online Constrained Meta-Learning: Provable Guarantees for Generalization. Siyuan Xu, Minghui Zhu |
| 2023 | Online Control for Meta-optimization. Xinyi Chen, Elad Hazan |
| 2023 | Online Convex Optimization with Unbounded Memory. Raunak Kumar, Sarah Dean, Robert Kleinberg |
| 2023 | Online Corrupted User Detection and Regret Minimization. Zhiyong Wang, Jize Xie, Tong Yu, Shuai Li, John C. S. Lui |
| 2023 | Online Inventory Problems: Beyond the i.i.d. Setting with Online Convex Optimization. Massil Hihat, Stéphane Gaïffas, Guillaume Garrigos, Simon Bussy |
| 2023 | Online Label Shift: Optimal Dynamic Regret meets Practical Algorithms. Dheeraj Baby, Saurabh Garg, Tzu-Ching Yen, Sivaraman Balakrishnan, Zachary C. Lipton, Yu-Xiang Wang |
| 2023 | Online Learning under Adversarial Nonlinear Constraints. Pavel Kolev, Georg Martius, Michael Muehlebach |
| 2023 | Online List Labeling with Predictions. Samuel McCauley, Benjamin Moseley, Aidin Niaparast, Shikha Singh |
| 2023 | Online Map Vectorization for Autonomous Driving: A Rasterization Perspective. Gongjie Zhang, Jiahao Lin, Shuang Wu, Yilin Song, Zhipeng Luo, Yang Xue, Shijian Lu, Zuoguan Wang |
| 2023 | Online Nonstochastic Model-Free Reinforcement Learning. Udaya Ghai, Arushi Gupta, Wenhan Xia, Karan Singh, Elad Hazan |
| 2023 | Online PCA in Converging Self-consistent Field Equations. Xihan Li, Xiang Chen, Rasul Tutunov, Haitham Bou-Ammar, Lei Wang, Jun Wang |
| 2023 | Online POMDP Planning with Anytime Deterministic Guarantees. Moran Barenboim, Vadim Indelman |
| 2023 | Online Performative Gradient Descent for Learning Nash Equilibria in Decision-Dependent Games. Zihan Zhu, Ethan X. Fang, Zhuoran Yang |
| 2023 | Online Pricing for Multi-User Multi-Item Markets. Yigit Efe Erginbas, Thomas A. Courtade, Kannan Ramchandran, Soham Phade |
| 2023 | Online RL in Linearly q Gellért Weisz, András György, Csaba Szepesvári |
| 2023 | Online learning of long-range dependencies. Nicolas Zucchet, Robert Meier, Simon Schug, Asier Mujika, João Sacramento |
| 2023 | Online robust non-stationary estimation. Abishek Sankararaman, Balakrishnan Narayanaswamy |
| 2023 | Open Compound Domain Adaptation with Object Style Compensation for Semantic Segmentation. Tingliang Feng, Hao Shi, Xueyang Liu, Wei Feng, Liang Wan, Yanlin Zhou, Di Lin |
| 2023 | Open Visual Knowledge Extraction via Relation-Oriented Multimodality Model Prompting. Hejie Cui, Xinyu Fang, Zihan Zhang, Ran Xu, Xuan Kan, Xin Liu, Yue Yu, Manling Li, Yangqiu Song, Carl Yang |
| 2023 | Open-Vocabulary Semantic Segmentation via Attribute Decomposition-Aggregation. Chaofan Ma, Yuhuan Yang, Chen Ju, Fei Zhang, Ya Zhang, Yanfeng Wang |
| 2023 | OpenAGI: When LLM Meets Domain Experts. Yingqiang Ge, Wenyue Hua, Kai Mei, Jianchao Ji, Juntao Tan, Shuyuan Xu, Zelong Li, Yongfeng Zhang |
| 2023 | OpenAssistant Conversations - Democratizing Large Language Model Alignment. Andreas Köpf, Yannic Kilcher, Dimitri von Rütte, Sotiris Anagnostidis, Zhi Rui Tam, Keith Stevens, Abdullah Barhoum, Duc Nguyen, Oliver Stanley, Richárd Nagyfi, Shahul ES, Sameer Suri, David Glushkov, Arnav Dantuluri, Andrew Maguire, Christoph Schuhmann, Huu Nguyen, Alexander Mattick |
| 2023 | OpenDataVal: a Unified Benchmark for Data Valuation. Kevin Fu Jiang, Weixin Liang, James Y. Zou, Yongchan Kwon |
| 2023 | OpenGSL: A Comprehensive Benchmark for Graph Structure Learning. Zhiyao Zhou, Sheng Zhou, Bochao Mao, Xuanyi Zhou, Jiawei Chen, Qiaoyu Tan, Daochen Zha, Yan Feng, Chun Chen, Can Wang |
| 2023 | OpenIllumination: A Multi-Illumination Dataset for Inverse Rendering Evaluation on Real Objects. Isabella Liu, Linghao Chen, Ziyang Fu, Liwen Wu, Haian Jin, Zhong Li, Chin Ming Ryan Wong, Yi Xu, Ravi Ramamoorthi, Zexiang Xu, Hao Su |
| 2023 | OpenLane-V2: A Topology Reasoning Benchmark for Unified 3D HD Mapping. Huijie Wang, Tianyu Li, Yang Li, Li Chen, Chonghao Sima, Zhenbo Liu, Bangjun Wang, Peijin Jia, Yuting Wang, Shengyin Jiang, Feng Wen, Hang Xu, Ping Luo, Junchi Yan, Wei Zhang, Hongyang Li |
| 2023 | OpenMask3D: Open-Vocabulary 3D Instance Segmentation. Ayça Takmaz, Elisabetta Fedele, Robert W. Sumner, Marc Pollefeys, Federico Tombari, Francis Engelmann |
| 2023 | OpenProteinSet: Training data for structural biology at scale. Gustaf Ahdritz, Nazim Bouatta, Sachin Kadyan, Lukas Jarosch, Daniel Berenberg, Ian Fisk, Andrew M. Watkins, Stephen Ra, Richard Bonneau, Mohammed AlQuraishi |
| 2023 | OpenSTL: A Comprehensive Benchmark of Spatio-Temporal Predictive Learning. Cheng Tan, Siyuan Li, Zhangyang Gao, Wenfei Guan, Zedong Wang, Zicheng Liu, Lirong Wu, Stan Z. Li |
| 2023 | OpenShape: Scaling Up 3D Shape Representation Towards Open-World Understanding. Minghua Liu, Ruoxi Shi, Kaiming Kuang, Yinhao Zhu, Xuanlin Li, Shizhong Han, Hong Cai, Fatih Porikli, Hao Su |
| 2023 | Opening the Vocabulary of Egocentric Actions. Dibyadip Chatterjee, Fadime Sener, Shugao Ma, Angela Yao |
| 2023 | Operation-Level Early Stopping for Robustifying Differentiable NAS. Shen Jiang, Zipeng Ji, Guanghui Zhu, Chunfeng Yuan, Yihua Huang |
| 2023 | Operator Learning with Neural Fields: Tackling PDEs on General Geometries. Louis Serrano, Lise Le Boudec, Armand Kassaï Koupaï, Thomas X. Wang, Yuan Yin, Jean-Noël Vittaut, Patrick Gallinari |
| 2023 | Optimal Algorithms for the Inhomogeneous Spiked Wigner Model. Aleksandr Pak, Justin Ko, Florent Krzakala |
| 2023 | Optimal Block-wise Asymmetric Graph Construction for Graph-based Semi-supervised Learning. Zixing Song, Yifei Zhang, Irwin King |
| 2023 | Optimal Convergence Rate for Exact Policy Mirror Descent in Discounted Markov Decision Processes. Emmeran Johnson, Ciara Pike-Burke, Patrick Rebeschini |
| 2023 | Optimal Excess Risk Bounds for Empirical Risk Minimization on p-Norm Linear Regression. Ayoub El Hanchi, Murat A. Erdogdu |
| 2023 | Optimal Exploration for Model-Based RL in Nonlinear Systems. Andrew Wagenmaker, Guanya Shi, Kevin Jamieson |
| 2023 | Optimal Extragradient-Based Algorithms for Stochastic Variational Inequalities with Separable Structure. Angela Yuan, Chris Junchi Li, Gauthier Gidel, Michael I. Jordan, Quanquan Gu, Simon S. Du |
| 2023 | Optimal Guarantees for Algorithmic Reproducibility and Gradient Complexity in Convex Optimization. Liang Zhang, Junchi Yang, Amin Karbasi, Niao He |
| 2023 | Optimal Learners for Realizable Regression: PAC Learning and Online Learning. Idan Attias, Steve Hanneke, Alkis Kalavasis, Amin Karbasi, Grigoris Velegkas |
| 2023 | Optimal Parameter and Neuron Pruning for Out-of-Distribution Detection. Chao Chen, Zhihang Fu, Kai Liu, Ze Chen, Mingyuan Tao, Jieping Ye |
| 2023 | Optimal Preconditioning and Fisher Adaptive Langevin Sampling. Michalis K. Titsias |
| 2023 | Optimal Rates for Bandit Nonstochastic Control. Y. Jennifer Sun, Stephen H. Newman, Elad Hazan |
| 2023 | Optimal Regret Is Achievable with Bounded Approximate Inference Error: An Enhanced Bayesian Upper Confidence Bound Framework. Ziyi Huang, Henry Lam, Amirhossein Meisami, Haofeng Zhang |
| 2023 | Optimal Time Complexities of Parallel Stochastic Optimization Methods Under a Fixed Computation Model. Alexander Tyurin, Peter Richtárik |
| 2023 | Optimal Transport Model Distributional Robustness. Van-Anh Nguyen, Trung Le, Anh Tuan Bui, Thanh-Toan Do, Dinh Q. Phung |
| 2023 | Optimal Transport for Treatment Effect Estimation. Hao Wang, Jiajun Fan, Zhichao Chen, Haoxuan Li, Weiming Liu, Tianqiao Liu, Quanyu Dai, Yichao Wang, Zhenhua Dong, Ruiming Tang |
| 2023 | Optimal Transport-Guided Conditional Score-Based Diffusion Model. Xiang Gu, Liwei Yang, Jian Sun, Zongben Xu |
| 2023 | Optimal Treatment Allocation for Efficient Policy Evaluation in Sequential Decision Making. Ting Li, Chengchun Shi, Jianing Wang, Fan Zhou, Hongtu Zhu |
| 2023 | Optimal Treatment Regimes for Proximal Causal Learning. Tao Shen, Yifan Cui |
| 2023 | Optimal Unbiased Randomizers for Regression with Label Differential Privacy. Ashwinkumar Badanidiyuru Varadaraja, Badih Ghazi, Pritish Kamath, Ravi Kumar, Ethan Leeman, Pasin Manurangsi, Avinash V. Varadarajan, Chiyuan Zhang |
| 2023 | Optimal and Fair Encouragement Policy Evaluation and Learning. Angela Zhou |
| 2023 | Optimal approximation using complex-valued neural networks. Paul Geuchen, Felix Voigtländer |
| 2023 | Optimal cross-learning for contextual bandits with unknown context distributions. Jon Schneider, Julian Zimmert |
| 2023 | Optimal privacy guarantees for a relaxed threat model: Addressing sub-optimal adversaries in differentially private machine learning. Georgios Kaissis, Alexander Ziller, Stefan Kolek, Anneliese Riess, Daniel Rueckert |
| 2023 | Optimal testing using combined test statistics across independent studies. Lasse Vuursteen, Botond Szabó, Aad van der Vaart, Harry van Zanten |
| 2023 | Optimality in Mean Estimation: Beyond Worst-Case, Beyond Sub-Gaussian, and Beyond 1+α Moments. Trung Dang, Jasper C. H. Lee, Maoyuan Raymond Song, Paul Valiant |
| 2023 | Optimality of Message-Passing Architectures for Sparse Graphs. Aseem Baranwal, Kimon Fountoulakis, Aukosh Jagannath |
| 2023 | Optimistic Active Exploration of Dynamical Systems. Bhavya Sukhija, Lenart Treven, Cansu Sancaktar, Sebastian Blaes, Stelian Coros, Andreas Krause |
| 2023 | Optimistic Exploration in Reinforcement Learning Using Symbolic Model Estimates. Sarath Sreedharan, Michael Katz |
| 2023 | Optimistic Meta-Gradients. Sebastian Flennerhag, Tom Zahavy, Brendan O'Donoghue, Hado Philip van Hasselt, András György, Satinder Singh |
| 2023 | Optimistic Natural Policy Gradient: a Simple Efficient Policy Optimization Framework for Online RL. Qinghua Liu, Gellért Weisz, András György, Chi Jin, Csaba Szepesvári |
| 2023 | Optimistic Rates for Multi-Task Representation Learning. Austin Watkins, Enayat Ullah, Thanh Nguyen-Tang, Raman Arora |
| 2023 | Optimization and Bayes: A Trade-off for Overparameterized Neural Networks. Zhengmian Hu, Heng Huang |
| 2023 | Optimization of Inter-group criteria for clustering with minimum size constraints. Eduardo Sany Laber, Lucas Murtinho |
| 2023 | Optimization or Architecture: How to Hack Kalman Filtering. Ido Greenberg, Netanel Yannay, Shie Mannor |
| 2023 | Optimize Planning Heuristics to Rank, not to Estimate Cost-to-Goal. Leah Chrestien, Stefan Edelkamp, Antonín Komenda, Tomás Pevný |
| 2023 | Optimized Covariance Design for AB Test on Social Network under Interference. Qianyi Chen, Bo Li, Lu Deng, Yong Wang |
| 2023 | Optimizing Prompts for Text-to-Image Generation. Yaru Hao, Zewen Chi, Li Dong, Furu Wei |
| 2023 | Optimizing Solution-Samplers for Combinatorial Problems: The Landscape of Policy-Gradient Method. Constantine Caramanis, Dimitris Fotakis, Alkis Kalavasis, Vasilis Kontonis, Christos Tzamos |
| 2023 | Optimizing over trained GNNs via symmetry breaking. Shiqiang Zhang, Juan S. Campos, Christian Feldmann, David Walz, Frederik Sandfort, Miriam Mathea, Calvin Tsay, Ruth Misener |
| 2023 | Oracle Complexity of Single-Loop Switching Subgradient Methods for Non-Smooth Weakly Convex Functional Constrained Optimization. Yankun Huang, Qihang Lin |
| 2023 | Order Matters in the Presence of Dataset Imbalance for Multilingual Learning. Dami Choi, Derrick Xin, Hamid Dadkhahi, Justin Gilmer, Ankush Garg, Orhan Firat, Chih-Kuan Yeh, Andrew M. Dai, Behrooz Ghorbani |
| 2023 | Ordering-based Conditions for Global Convergence of Policy Gradient Methods. Jincheng Mei, Bo Dai, Alekh Agarwal, Mohammad Ghavamzadeh, Csaba Szepesvári, Dale Schuurmans |
| 2023 | Orthogonal Non-negative Tensor Factorization based Multi-view Clustering. Jing Li, Quanxue Gao, Qianqian Wang, Ming Yang, Wei Xia |
| 2023 | Out-of-distribution Detection Learning with Unreliable Out-of-distribution Sources. Haotian Zheng, Qizhou Wang, Zhen Fang, Xiaobo Xia, Feng Liu, Tongliang Liu, Bo Han |
| 2023 | Outlier-Robust Gromov-Wasserstein for Graph Data. Lemin Kong, Jiajin Li, Jianheng Tang, Anthony Man-Cho So |
| 2023 | Outlier-Robust Wasserstein DRO. Sloan Nietert, Ziv Goldfeld, Soroosh Shafiee |
| 2023 | Overcoming Recency Bias of Normalization Statistics in Continual Learning: Balance and Adaptation. Yilin Lyu, Liyuan Wang, Xingxing Zhang, Zicheng Sun, Hang Su, Jun Zhu, Liping Jing |
| 2023 | P-Flow: A Fast and Data-Efficient Zero-Shot TTS through Speech Prompting. Sungwon Kim, Kevin J. Shih, Rohan Badlani, João Felipe Santos, Evelina Bakhturina, Mikyas T. Desta, Rafael Valle, Sungroh Yoon, Bryan Catanzaro |
| 2023 | PAC Learning Linear Thresholds from Label Proportions. Anand Brahmbhatt, Rishi Saket, Aravindan Raghuveer |
| 2023 | PAC-Bayes Generalization Certificates for Learned Inductive Conformal Prediction. Apoorva Sharma, Sushant Veer, Asher J. Hancock, Heng Yang, Marco Pavone, Anirudha Majumdar |
| 2023 | PAC-Bayesian Spectrally-Normalized Bounds for Adversarially Robust Generalization. Jiancong Xiao, Ruoyu Sun, Zhi-Quan Luo |
| 2023 | PAD: A Dataset and Benchmark for Pose-agnostic Anomaly Detection. Qiang Zhou, Weize Li, Lihan Jiang, Guoliang Wang, Guyue Zhou, Shanghang Zhang, Hao Zhao |
| 2023 | PAPR: Proximity Attention Point Rendering. Yanshu Zhang, Shichong Peng, Alireza Moazeni, Ke Li |
| 2023 | PCF-GAN: generating sequential data via the characteristic function of measures on the path space. Hang Lou, Siran Li, Hao Ni |
| 2023 | PDE-Refiner: Achieving Accurate Long Rollouts with Neural PDE Solvers. Phillip Lippe, Bas Veeling, Paris Perdikaris, Richard E. Turner, Johannes Brandstetter |
| 2023 | PDF: Point Diffusion Implicit Function for Large-scale Scene Neural Representation. Yuhan Ding, Fukun Yin, Jiayuan Fan, Hui Li, Xin Chen, Wen Liu, Chongshan Lu, Gang Yu, Tao Chen |
| 2023 | PDP: Parameter-free Differentiable Pruning is All You Need. Minsik Cho, Saurabh Adya, Devang Naik |
| 2023 | PERFOGRAPH: A Numerical Aware Program Graph Representation for Performance Optimization and Program Analysis. Ali TehraniJamsaz, Quazi Ishtiaque Mahmud, Le Chen, Nesreen K. Ahmed, Ali Jannesari |
| 2023 | PETAL: Physics Emulation Through Averaged Linearizations for Solving Inverse Problems. Jihui Jin, Etienne Ollivier, Richard Touret, Matthew McKinley, Karim Sabra, Justin Romberg |
| 2023 | PGDiff: Guiding Diffusion Models for Versatile Face Restoration via Partial Guidance. Peiqing Yang, Shangchen Zhou, Qingyi Tao, Chen Change Loy |
| 2023 | PHOTOSWAP: Personalized Subject Swapping in Images. Jing Gu, Yilin Wang, Nanxuan Zhao, Tsu-Jui Fu, Wei Xiong, Qing Liu, Zhifei Zhang, He Zhang, Jianming Zhang, Hyunjoon Jung, Xin Eric Wang |
| 2023 | PICProp: Physics-Informed Confidence Propagation for Uncertainty Quantification. Qianli Shen, Wai Hoh Tang, Zhun Deng, Apostolos F. Psaros, Kenji Kawaguchi |
| 2023 | PID-Inspired Inductive Biases for Deep Reinforcement Learning in Partially Observable Control Tasks. Ian Char, Jeff Schneider |
| 2023 | PIXIU: A Comprehensive Benchmark, Instruction Dataset and Large Language Model for Finance. Qianqian Xie, Weiguang Han, Xiao Zhang, Yanzhao Lai, Min Peng, Alejandro Lopez-Lira, Jimin Huang |
| 2023 | PLANNER: Generating Diversified Paragraph via Latent Language Diffusion Model. Yizhe Zhang, Jiatao Gu, Zhuofeng Wu, Shuangfei Zhai, Joshua M. Susskind, Navdeep Jaitly |
| 2023 | PLASTIC: Improving Input and Label Plasticity for Sample Efficient Reinforcement Learning. Hojoon Lee, Hanseul Cho, Hyunseung Kim, Daehoon Gwak, Joonkee Kim, Jaegul Choo, Se-Young Yun, Chulhee Yun |
| 2023 | POMDP Planning for Object Search in Partially Unknown Environment. Yongbo Chen, Hanna Kurniawati |
| 2023 | POP-3D: Open-Vocabulary 3D Occupancy Prediction from Images. Antonín Vobecký, Oriane Siméoni, David Hurych, Spyridon Gidaris, Andrei Bursuc, Patrick Pérez, Josef Sivic |
| 2023 | PPi: Pretraining Brain Signal Model for Patient-independent Seizure Detection. Zhizhang Yuan, Daoze Zhang, Yang Yang, Junru Chen, Yafeng Li |
| 2023 | PRED: Pre-training via Semantic Rendering on LiDAR Point Clouds. Hao Yang, Haiyang Wang, Di Dai, Liwei Wang |
| 2023 | PRIOR: Personalized Prior for Reactivating the Information Overlooked in Federated Learning. Mingjia Shi, Yuhao Zhou, Kai Wang, Huaizheng Zhang, Shudong Huang, Qing Ye, Jiancheng Lv |
| 2023 | PRODIGY: Enabling In-context Learning Over Graphs. Qian Huang, Hongyu Ren, Peng Chen, Gregor Krzmanc, Daniel Zeng, Percy Liang, Jure Leskovec |
| 2023 | PROTES: Probabilistic Optimization with Tensor Sampling. Anastasia Batsheva, Andrei Chertkov, Gleb V. Ryzhakov, Ivan V. Oseledets |
| 2023 | PTADisc: A Cross-Course Dataset Supporting Personalized Learning in Cold-Start Scenarios. Liya Hu, Zhiang Dong, Jingyuan Chen, Guifeng Wang, Zhihua Wang, Zhou Zhao, Fei Wu |
| 2023 | PTQD: Accurate Post-Training Quantization for Diffusion Models. Yefei He, Luping Liu, Jing Liu, Weijia Wu, Hong Zhou, Bohan Zhuang |
| 2023 | PUCA: Patch-Unshuffle and Channel Attention for Enhanced Self-Supervised Image Denoising. Hyemi Jang, Junsung Park, Dahuin Jung, Jaihyun Lew, Ho Bae, Sungroh Yoon |
| 2023 | PUG: Photorealistic and Semantically Controllable Synthetic Data for Representation Learning. Florian Bordes, Shashank Shekhar, Mark Ibrahim, Diane Bouchacourt, Pascal Vincent, Ari Morcos |
| 2023 | PUe: Biased Positive-Unlabeled Learning Enhancement by Causal Inference. Xutao Wang, Hanting Chen, Tianyu Guo, Yunhe Wang |
| 2023 | PackQViT: Faster Sub-8-bit Vision Transformers via Full and Packed Quantization on the Mobile. Peiyan Dong, Lei Lu, Chao Wu, Cheng Lyu, Geng Yuan, Hao Tang, Yanzhi Wang |
| 2023 | PaintSeg: Painting Pixels for Training-free Segmentation. Xiang Li, Chung-Ching Lin, Yinpeng Chen, Zicheng Liu, Jinglu Wang, Rita Singh, Bhiksha Raj |
| 2023 | Pairwise Causality Guided Transformers for Event Sequences. Xiao Shou, Debarun Bhattacharjya, Tian Gao, Dharmashankar Subramanian, Oktie Hassanzadeh, Kristin P. Bennett |
| 2023 | Pairwise GUI Dataset Construction Between Android Phones and Tablets. Han Hu, Haolan Zhan, Yujin Huang, Di Liu |
| 2023 | PanoGRF: Generalizable Spherical Radiance Fields for Wide-baseline Panoramas. Zheng Chen, Yan-Pei Cao, Yuan-Chen Guo, Chen Wang, Ying Shan, Song-Hai Zhang |
| 2023 | PanoGen: Text-Conditioned Panoramic Environment Generation for Vision-and-Language Navigation. Jialu Li, Mohit Bansal |
| 2023 | ParaFuzz: An Interpretability-Driven Technique for Detecting Poisoned Samples in NLP. Lu Yan, Zhuo Zhang, Guanhong Tao, Kaiyuan Zhang, Xuan Chen, Guangyu Shen, Xiangyu Zhang |
| 2023 | Parallel Sampling of Diffusion Models. Andy Shih, Suneel Belkhale, Stefano Ermon, Dorsa Sadigh, Nima Anari |
| 2023 | Parallel Spiking Neurons with High Efficiency and Ability to Learn Long-term Dependencies. Wei Fang, Zhaofei Yu, Zhaokun Zhou, Ding Chen, Yanqi Chen, Zhengyu Ma, Timothée Masquelier, Yonghong Tian |
| 2023 | Parallel Submodular Function Minimization. Deeparnab Chakrabarty, Andrei Graur, Haotian Jiang, Aaron Sidford |
| 2023 | Parallel-mentoring for Offline Model-based Optimization. Can Chen, Christopher Beckham, Zixuan Liu, Xue (Steve) Liu, Chris Pal |
| 2023 | Parameter and Computation Efficient Transfer Learning for Vision-Language Pre-trained Models. Qiong Wu, Wei Yu, Yiyi Zhou, Shubin Huang, Xiaoshuai Sun, Rongrong Ji |
| 2023 | Parameter-efficient Tuning of Large-scale Multimodal Foundation Model. Haixin Wang, Xinlong Yang, Jianlong Chang, Dian Jin, Jinan Sun, Shikun Zhang, Xiao Luo, Qi Tian |
| 2023 | Parameterizing Context: Unleashing the Power of Parameter-Efficient Fine-Tuning and In-Context Tuning for Continual Table Semantic Parsing. Yongrui Chen, Shenyu Zhang, Guilin Qi, Xinnan Guo |
| 2023 | Parameterizing Non-Parametric Meta-Reinforcement Learning Tasks via Subtask Decomposition. Suyoung Lee, Myungsik Cho, Youngchul Sung |
| 2023 | Paraphrasing evades detectors of AI-generated text, but retrieval is an effective defense. Kalpesh Krishna, Yixiao Song, Marzena Karpinska, John Wieting, Mohit Iyyer |
| 2023 | Pareto Frontiers in Deep Feature Learning: Data, Compute, Width, and Luck. Benjamin L. Edelman, Surbhi Goel, Sham M. Kakade, Eran Malach, Cyril Zhang |
| 2023 | Parsel🦆: Algorithmic Reasoning with Language Models by Composing Decompositions. Eric Zelikman, Qian Huang, Gabriel Poesia, Noah D. Goodman, Nick Haber |
| 2023 | Partial Counterfactual Identification of Continuous Outcomes with a Curvature Sensitivity Model. Valentyn Melnychuk, Dennis Frauen, Stefan Feuerriegel |
| 2023 | Partial Label Learning with Dissimilarity Propagation guided Candidate Label Shrinkage. Yuheng Jia, Fuchao Yang, Yongqiang Dong |
| 2023 | Partial Matrix Completion. Elad Hazan, Adam Tauman Kalai, Varun Kanade, Clara Mohri, Y. Jennifer Sun |
| 2023 | Partial Multi-Label Learning with Probabilistic Graphical Disambiguation. Jun-Yi Hang, Min-Ling Zhang |
| 2023 | Participatory Personalization in Classification. Hailey Joren, Chirag Nagpal, Katherine A. Heller, Berk Ustun |
| 2023 | Particle-based Variational Inference with Generalized Wasserstein Gradient Flow. Ziheng Cheng, Shiyue Zhang, Longlin Yu, Cheng Zhang |
| 2023 | Parts of Speech-Grounded Subspaces in Vision-Language Models. James Oldfield, Christos Tzelepis, Yannis Panagakis, Mihalis Nicolaou, Ioannis Patras |
| 2023 | Passive learning of active causal strategies in agents and language models. Andrew K. Lampinen, Stephanie C. Y. Chan, Ishita Dasgupta, Andrew J. Nam, Jane X. Wang |
| 2023 | Patch Diffusion: Faster and More Data-Efficient Training of Diffusion Models. Zhendong Wang, Yifan Jiang, Huangjie Zheng, Peihao Wang, Pengcheng He, Zhangyang Wang, Weizhu Chen, Mingyuan Zhou |
| 2023 | Patch n' Pack: NaViT, a Vision Transformer for any Aspect Ratio and Resolution. Mostafa Dehghani, Basil Mustafa, Josip Djolonga, Jonathan Heek, Matthias Minderer, Mathilde Caron, Andreas Steiner, Joan Puigcerver, Robert Geirhos, Ibrahim M. Alabdulmohsin, Avital Oliver, Piotr Padlewski, Alexey A. Gritsenko, Mario Lucic, Neil Houlsby |
| 2023 | Path Regularization: A Convexity and Sparsity Inducing Regularization for Parallel ReLU Networks. Tolga Ergen, Mert Pilanci |
| 2023 | Path following algorithms for 𝓁 Yunzhang Zhu, Renxiong Liu |
| 2023 | Paxion: Patching Action Knowledge in Video-Language Foundation Models. Zhenhailong Wang, Ansel Blume, Sha Li, Genglin Liu, Jaemin Cho, Zineng Tang, Mohit Bansal, Heng Ji |
| 2023 | Payoff-based Learning with Matrix Multiplicative Weights in Quantum Games. Kyriakos Lotidis, Panayotis Mertikopoulos, Nicholas Bambos, Jose H. Blanchet |
| 2023 | Penalising the biases in norm regularisation enforces sparsity. Etienne Boursier, Nicolas Flammarion |
| 2023 | Pengi: An Audio Language Model for Audio Tasks. Soham Deshmukh, Benjamin Elizalde, Rita Singh, Huaming Wang |
| 2023 | Penguin: Parallel-Packed Homomorphic Encryption for Fast Graph Convolutional Network Inference. Ran Ran, Nuo Xu, Tao Liu, Wei Wang, Gang Quan, Wujie Wen |
| 2023 | Percentile Criterion Optimization in Offline Reinforcement Learning. Cyrus Cousins, Elita A. Lobo, Marek Petrik, Yair Zick |
| 2023 | Perception Test: A Diagnostic Benchmark for Multimodal Video Models. Viorica Patraucean, Lucas Smaira, Ankush Gupta, Adrià Recasens, Larisa Markeeva, Dylan Banarse, Skanda Koppula, Joseph Heyward, Mateusz Malinowski, Yi Yang, Carl Doersch, Tatiana Matejovicova, Yury Sulsky, Antoine Miech, Alexandre Fréchette, Hanna Klimczak, Raphael Koster, Junlin Zhang, Stephanie Winkler, Yusuf Aytar, Simon Osindero, Dima Damen, Andrew Zisserman, João Carreira |
| 2023 | Perceptual Kalman Filters: Online State Estimation under a Perfect Perceptual-Quality Constraint. Dror Freirich, Tomer Michaeli, Ron Meir |
| 2023 | Perceptual adjustment queries and an inverted measurement paradigm for low-rank metric learning. Austin Xu, Andrew D. McRae, Jingyan Wang, Mark A. Davenport, Ashwin Pananjady |
| 2023 | Performance Bounds for Policy-Based Average Reward Reinforcement Learning Algorithms. Yashaswini Murthy, Mehrdad Moharrami, R. Srikant |
| 2023 | Performance Scaling via Optimal Transport: Enabling Data Selection from Partially Revealed Sources. Feiyang Kang, Hoang Anh Just, Anit Kumar Sahu, Ruoxi Jia |
| 2023 | Performance-optimized deep neural networks are evolving into worse models of inferotemporal visual cortex. Drew Linsley, Ivan F. Rodriguez Rodriguez, Thomas Fel, Michael Arcaro, Saloni Sharma, Margaret S. Livingstone, Thomas Serre |
| 2023 | Permutation Equivariant Neural Functionals. Allan Zhou, Kaien Yang, Kaylee Burns, Adriano Cardace, Yiding Jiang, Samuel Sokota, J. Zico Kolter, Chelsea Finn |
| 2023 | Personalized Dictionary Learning for Heterogeneous Datasets. Geyu Liang, Naichen Shi, Raed Al Kontar, Salar Fattahi |
| 2023 | Persuading Farsighted Receivers in MDPs: the Power of Honesty. Martino Bernasconi, Matteo Castiglioni, Alberto Marchesi, Mirco Mutti |
| 2023 | Perturbation Towards Easy Samples Improves Targeted Adversarial Transferability. Junqi Gao, Biqing Qi, Yao Li, Zhichang Guo, Dong Li, Yuming Xing, Dazhi Zhang |
| 2023 | Pgx: Hardware-Accelerated Parallel Game Simulators for Reinforcement Learning. Sotetsu Koyamada, Shinri Okano, Soichiro Nishimori, Yu Murata, Keigo Habara, Haruka Kita, Shin Ishii |
| 2023 | Phase diagram of early training dynamics in deep neural networks: effect of the learning rate, depth, and width. Dayal Singh Kalra, Maissam Barkeshli |
| 2023 | Physics-Driven ML-Based Modelling for Correcting Inverse Estimation. Ruiyuan Kang, Tingting Mu, Panagiotis Liatsis, Dimitrios C. Kyritsis |
| 2023 | Physics-Informed Bayesian Optimization of Variational Quantum Circuits. Kim Nicoli, Christopher J. Anders, Lena Funcke, Tobias Hartung, Karl Jansen, Stefan Kühn, Klaus-Robert Müller, Paolo Stornati, Pan Kessel, Shinichi Nakajima |
| 2023 | Physion++: Evaluating Physical Scene Understanding that Requires Online Inference of Different Physical Properties. Hsiao-Yu Tung, Mingyu Ding, Zhenfang Chen, Daniel Bear, Chuang Gan, Josh Tenenbaum, Dan Yamins, Judith E. Fan, Kevin A. Smith |
| 2023 | Pick-a-Pic: An Open Dataset of User Preferences for Text-to-Image Generation. Yuval Kirstain, Adam Polyak, Uriel Singer, Shahbuland Matiana, Joe Penna, Omer Levy |
| 2023 | Pitfall of Optimism: Distributional Reinforcement Learning by Randomizing Risk Criterion. Taehyun Cho, Seungyub Han, Heesoo Lee, Kyungjae Lee, Jungwoo Lee |
| 2023 | PlanBench: An Extensible Benchmark for Evaluating Large Language Models on Planning and Reasoning about Change. Karthik Valmeekam, Matthew Marquez, Alberto Olmo Hernandez, Sarath Sreedharan, Subbarao Kambhampati |
| 2023 | PlanE: Representation Learning over Planar Graphs. Radoslav Dimitrov, Zeyang Zhao, Ralph Abboud, Ismail Ilkan Ceylan |
| 2023 | Plug-and-Play Stability for Intracortical Brain-Computer Interfaces: A One-Year Demonstration of Seamless Brain-to-Text Communication. Chaofei Fan, Nick Hahn, Foram Kamdar, Donald T. Avansino, Guy H. Wilson, Leigh R. Hochberg, Krishna V. Shenoy, Jaimie M. Henderson, Francis R. Willett |
| 2023 | PoET: A generative model of protein families as sequences-of-sequences. Timothy F. Truong Jr., Tristan Bepler |
| 2023 | Point Cloud Completion with Pretrained Text-to-Image Diffusion Models. Yoni Kasten, Ohad Rahamim, Gal Chechik |
| 2023 | PointGPT: Auto-regressively Generative Pre-training from Point Clouds. Guangyan Chen, Meiling Wang, Yi Yang, Kai Yu, Li Yuan, Yufeng Yue |
| 2023 | Pointwise uncertainty quantification for sparse variational Gaussian process regression with a Brownian motion prior. Luke Travis, Kolyan Ray |
| 2023 | Policy Finetuning in Reinforcement Learning via Design of Experiments using Offline Data. Ruiqi Zhang, Andrea Zanette |
| 2023 | Policy Gradient for Rectangular Robust Markov Decision Processes. Navdeep Kumar, Esther Derman, Matthieu Geist, Kfir Y. Levy, Shie Mannor |
| 2023 | Policy Optimization for Continuous Reinforcement Learning. Hanyang Zhao, Wenpin Tang, David D. Yao |
| 2023 | Policy Optimization in a Noisy Neighborhood: On Return Landscapes in Continuous Control. Nate Rahn, Pierluca D'Oro, Harley Wiltzer, Pierre-Luc Bacon, Marc G. Bellemare |
| 2023 | Policy Space Diversity for Non-Transitive Games. Jian Yao, Weiming Liu, Haobo Fu, Yaodong Yang, Stephen McAleer, Qiang Fu, Wei Yang |
| 2023 | PolyDiffuse: Polygonal Shape Reconstruction via Guided Set Diffusion Models. Jiacheng Chen, Ruizhi Deng, Yasutaka Furukawa |
| 2023 | Polyhedron Attention Module: Learning Adaptive-order Interactions. Tan Zhu, Fei Dou, Xinyu Wang, Jin Lu, Jinbo Bi |
| 2023 | Polynomial-Time Linear-Swap Regret Minimization in Imperfect-Information Sequential Games. Gabriele Farina, Charilaos Pipis |
| 2023 | Polynomially Over-Parameterized Convolutional Neural Networks Contain Structured Strong Winning Lottery Tickets. Arthur da Cunha, Francesco d'Amore, Emanuele Natale |
| 2023 | PopSign ASL v1.0: An Isolated American Sign Language Dataset Collected via Smartphones. Thad Starner, Sean Forbes, Matthew So, David Martin, Rohit Sridhar, Gururaj Deshpande, Sam S. Sepah, Sahir Shahryar, Khushi Bhardwaj, Tyler Kwok, Daksh Sehgal, Saad Hassan, Bill Neubauer, Sofia Anandi Vempala, Alec Tan, Jocelyn Heath, Unnathi Kumar, Priyanka Mosur, Tavenner Hall, Rajandeep Singh, Christopher Cui, Glenn Cameron, Sohier Dane, Garrett Tanzer |
| 2023 | Post Hoc Explanations of Language Models Can Improve Language Models. Satyapriya Krishna, Jiaqi Ma, Dylan Slack, Asma Ghandeharioun, Sameer Singh, Himabindu Lakkaraju |
| 2023 | Post-processing Private Synthetic Data for Improving Utility on Selected Measures. Hao Wang, Shivchander Sudalairaj, John Henning, Kristjan H. Greenewald, Akash Srivastava |
| 2023 | Posterior Contraction Rates for Matérn Gaussian Processes on Riemannian Manifolds. Paul Rosa, Slava Borovitskiy, Alexander Terenin, Judith Rousseau |
| 2023 | Posterior Sampling for Competitive RL: Function Approximation and Partial Observation. Shuang Qiu, Ziyu Dai, Han Zhong, Zhaoran Wang, Zhuoran Yang, Tong Zhang |
| 2023 | Posterior Sampling with Delayed Feedback for Reinforcement Learning with Linear Function Approximation. Nikki Lijing Kuang, Ming Yin, Mengdi Wang, Yu-Xiang Wang, Yian Ma |
| 2023 | Posthoc privacy guarantees for collaborative inference with modified Propose-Test-Release. Abhishek Singh, Praneeth Vepakomma, Vivek Sharma, Ramesh Raskar |
| 2023 | PrObeD: Proactive Object Detection Wrapper. Vishal Asnani, Abhinav Kumar, Suya You, Xiaoming Liu |
| 2023 | Practical Contextual Bandits with Feedback Graphs. Mengxiao Zhang, Yuheng Zhang, Olga Vrousgou, Haipeng Luo, Paul Mineiro |
| 2023 | Practical Differentially Private Hyperparameter Tuning with Subsampling. Antti Koskela, Tejas D. Kulkarni |
| 2023 | Practical Equivariances via Relational Conditional Neural Processes. Daolang Huang, Manuel Haussmann, Ulpu Remes, St John, Grégoire Clarté, Kevin Sebastian Luck, Samuel Kaski, Luigi Acerbi |
| 2023 | Practical Sharpness-Aware Minimization Cannot Converge All the Way to Optima. Dongkuk Si, Chulhee Yun |
| 2023 | Practical and Asymptotically Exact Conditional Sampling in Diffusion Models. Luhuan Wu, Brian L. Trippe, Christian A. Naesseth, David M. Blei, John P. Cunningham |
| 2023 | Pre-RMSNorm and Pre-CRMSNorm Transformers: Equivalent and Efficient Pre-LN Transformers. Zixuan Jiang, Jiaqi Gu, Hanqing Zhu, David Z. Pan |
| 2023 | Pre-Training Protein Encoder via Siamese Sequence-Structure Diffusion Trajectory Prediction. Zuobai Zhang, Minghao Xu, Aurélie C. Lozano, Vijil Chenthamarakshan, Payel Das, Jian Tang |
| 2023 | Pre-training Contextualized World Models with In-the-wild Videos for Reinforcement Learning. Jialong Wu, Haoyu Ma, Chaoyi Deng, Mingsheng Long |
| 2023 | PreDiff: Precipitation Nowcasting with Latent Diffusion Models. Zhihan Gao, Xingjian Shi, Boran Han, Hao Wang, Xiaoyong Jin, Danielle C. Maddix, Yi Zhu, Mu Li, Yuyang Wang |
| 2023 | Precise asymptotic generalization for multiclass classification with overparameterized linear models. David Xing Wu, Anant Sahai |
| 2023 | Precision-Recall Divergence Optimization for Generative Modeling with GANs and Normalizing Flows. Alexandre Verine, Benjamin Négrevergne, Muni Sreenivas Pydi, Yann Chevaleyre |
| 2023 | Preconditioning Matters: Fast Global Convergence of Non-convex Matrix Factorization via Scaled Gradient Descent. Xixi Jia, Hailin Wang, Jiangjun Peng, Xiangchu Feng, Deyu Meng |
| 2023 | Predict, Refine, Synthesize: Self-Guiding Diffusion Models for Probabilistic Time Series Forecasting. Marcel Kollovieh, Abdul Fatir Ansari, Michael Bohlke-Schneider, Jasper Zschiegner, Hao Wang, Yuyang Wang |
| 2023 | Predict-then-Calibrate: A New Perspective of Robust Contextual LP. Chunlin Sun, Linyu Liu, Xiaocheng Li |
| 2023 | Predicting Global Label Relationship Matrix for Graph Neural Networks under Heterophily. Langzhang Liang, Xiangjing Hu, Zenglin Xu, Zixing Song, Irwin King |
| 2023 | Predicting a Protein's Stability under a Million Mutations. Jeffrey Ouyang-Zhang, Daniel Jesus Diaz, Adam R. Klivans, Philipp Krähenbühl |
| 2023 | Predicting mutational effects on protein-protein binding via a side-chain diffusion probabilistic model. Shiwei Liu, Tian Zhu, Milong Ren, Chungong Yu, Dongbo Bu, Haicang Zhang |
| 2023 | Prediction and Control in Continual Reinforcement Learning. Nishanth Anand, Doina Precup |
| 2023 | Preference-grounded Token-level Guidance for Language Model Fine-tuning. Shentao Yang, Shujian Zhang, Congying Xia, Yihao Feng, Caiming Xiong, Mingyuan Zhou |
| 2023 | Prefix-Tree Decoding for Predicting Mass Spectra from Molecules. Samuel Goldman, John Bradshaw, Jiayi Xin, Connor W. Coley |
| 2023 | Pretraining task diversity and the emergence of non-Bayesian in-context learning for regression. Allan Raventós, Mansheej Paul, Feng Chen, Surya Ganguli |
| 2023 | PrimDiffusion: Volumetric Primitives Diffusion for 3D Human Generation. Zhaoxi Chen, Fangzhou Hong, Haiyi Mei, Guangcong Wang, Lei Yang, Ziwei Liu |
| 2023 | Primal-Attention: Self-attention through Asymmetric Kernel SVD in Primal Representation. Yingyi Chen, Qinghua Tao, Francesco Tonin, Johan A. K. Suykens |
| 2023 | Principle-Driven Self-Alignment of Language Models from Scratch with Minimal Human Supervision. Zhiqing Sun, Yikang Shen, Qinhong Zhou, Hongxin Zhang, Zhenfang Chen, David D. Cox, Yiming Yang, Chuang Gan |
| 2023 | Principled Weight Initialisation for Input-Convex Neural Networks. Pieter-Jan Hoedt, Günter Klambauer |
| 2023 | PriorBand: Practical Hyperparameter Optimization in the Age of Deep Learning. Neeratyoy Mallik, Edward Bergman, Carl Hvarfner, Danny Stoll, Maciej Janowski, Marius Lindauer, Luigi Nardi, Frank Hutter |
| 2023 | Prioritizing Samples in Reinforcement Learning with Reducible Loss. Shivakanth Sujit, Somjit Nath, Pedro H. M. Braga, Samira Ebrahimi Kahou |
| 2023 | Privacy Amplification via Compression: Achieving the Optimal Privacy-Accuracy-Communication Trade-off in Distributed Mean Estimation. Wei-Ning Chen, Dan Song, Ayfer Özgür, Peter Kairouz |
| 2023 | Privacy Assessment on Reconstructed Images: Are Existing Evaluation Metrics Faithful to Human Perception? Xiaoxiao Sun, Nidham Gazagnadou, Vivek Sharma, Lingjuan Lyu, Hongdong Li, Liang Zheng |
| 2023 | Privacy Auditing with One (1) Training Run. Thomas Steinke, Milad Nasr, Matthew Jagielski |
| 2023 | Private (Stochastic) Non-Convex Optimization Revisited: Second-Order Stationary Points and Excess Risks. Daogao Liu, Arun Ganesh, Sewoong Oh, Abhradeep Guha Thakurta |
| 2023 | Private Distribution Learning with Public Data: The View from Sample Compression. Shai Ben-David, Alex Bie, Clément L. Canonne, Gautam Kamath, Vikrant Singhal |
| 2023 | Private Everlasting Prediction. Moni Naor, Kobbi Nissim, Uri Stemmer, Chao Yan |
| 2023 | Private Federated Frequency Estimation: Adapting to the Hardness of the Instance. Jingfeng Wu, Wennan Zhu, Peter Kairouz, Vladimir Braverman |
| 2023 | Private estimation algorithms for stochastic block models and mixture models. Hongjie Chen, Vincent Cohen-Addad, Tommaso d'Orsi, Alessandro Epasto, Jacob Imola, David Steurer, Stefan Tiegel |
| 2023 | ProBio: A Protocol-guided Multimodal Dataset for Molecular Biology Lab. Jieming Cui, Ziren Gong, Baoxiong Jia, Siyuan Huang, Zilong Zheng, Jianzhu Ma, Yixin Zhu |
| 2023 | ProPILE: Probing Privacy Leakage in Large Language Models. Siwon Kim, Sangdoo Yun, Hwaran Lee, Martin Gubri, Sungroh Yoon, Seong Joon Oh |
| 2023 | Probabilistic Exponential Integrators. Nathanael Bosch, Philipp Hennig, Filip Tronarp |
| 2023 | Probabilistic Inference in Reinforcement Learning Done Right. Jean Tarbouriech, Tor Lattimore, Brendan O'Donoghue |
| 2023 | Probabilistic Invariant Learning with Randomized Linear Classifiers. Leonardo Cotta, Gal Yehuda, Assaf Schuster, Chris J. Maddison |
| 2023 | Probabilistic Weight Fixing: Large-scale training of neural network weight uncertainties for quantisation. Christopher Subia-Waud, Srinandan Dasmahapatra |
| 2023 | Probabilistic inverse optimal control for non-linear partially observable systems disentangles perceptual uncertainty and behavioral costs. Dominik Straub, Matthias Schultheis, Heinz Koeppl, Constantin A. Rothkopf |
| 2023 | Progressive Ensemble Distillation: Building Ensembles for Efficient Inference. Don Kurian Dennis, Abhishek Shetty, Anish Prasad Sevekari, Kazuhito Koishida, Virginia Smith |
| 2023 | Projection Regret: Reducing Background Bias for Novelty Detection via Diffusion Models. Sungik Choi, Hankook Lee, Honglak Lee, Moontae Lee |
| 2023 | Projection-Free Methods for Solving Nonconvex-Concave Saddle Point Problems. Morteza Boroun, Erfan Yazdandoost Hamedani, Afrooz Jalilzadeh |
| 2023 | Projection-Free Methods for Stochastic Simple Bilevel Optimization with Convex Lower-level Problem. Jincheng Cao, Ruichen Jiang, Nazanin Abolfazli, Erfan Yazdandoost Hamedani, Aryan Mokhtari |
| 2023 | Projection-Free Online Convex Optimization via Efficient Newton Iterations. Khashayar Gatmiry, Zakaria Mhammedi |
| 2023 | ProlificDreamer: High-Fidelity and Diverse Text-to-3D Generation with Variational Score Distillation. Zhengyi Wang, Cheng Lu, Yikai Wang, Fan Bao, Chongxuan Li, Hang Su, Jun Zhu |
| 2023 | Promises and Pitfalls of Threshold-based Auto-labeling. Harit Vishwakarma, Heguang Lin, Frederic Sala, Ramya Korlakai Vinayak |
| 2023 | Prompt Pre-Training with Twenty-Thousand Classes for Open-Vocabulary Visual Recognition. Shuhuai Ren, Aston Zhang, Yi Zhu, Shuai Zhang, Shuai Zheng, Mu Li, Alexander J. Smola, Xu Sun |
| 2023 | Prompt-augmented Temporal Point Process for Streaming Event Sequence. Siqiao Xue, Yan Wang, Zhixuan Chu, Xiaoming Shi, Caigao Jiang, Hongyan Hao, Gangwei Jiang, Xiaoyun Feng, James Zhang, Jun Zhou |
| 2023 | PromptIR: Prompting for All-in-One Image Restoration. Vaishnav Potlapalli, Syed Waqas Zamir, Salman H. Khan, Fahad Shahbaz Khan |
| 2023 | PromptRestorer: A Prompting Image Restoration Method with Degradation Perception. Cong Wang, Jinshan Pan, Wei Wang, Jiangxin Dong, Mengzhu Wang, Yakun Ju, Junyang Chen |
| 2023 | Propagating Knowledge Updates to LMs Through Distillation. Shankar Padmanabhan, Yasumasa Onoe, Michael J. Q. Zhang, Greg Durrett, Eunsol Choi |
| 2023 | Proportional Response: Contextual Bandits for Simple and Cumulative Regret Minimization. Sanath Kumar Krishnamurthy, Ruohan Zhan, Susan Athey, Emma Brunskill |
| 2023 | Protein Design with Guided Discrete Diffusion. Nate Gruver, Samuel Stanton, Nathan C. Frey, Tim G. J. Rudner, Isidro Hötzel, Julien Lafrance-Vanasse, Arvind Rajpal, Kyunghyun Cho, Andrew Gordon Wilson |
| 2023 | ProteinGym: Large-Scale Benchmarks for Protein Fitness Prediction and Design. Pascal Notin, Aaron Kollasch, Daniel Ritter, Lood van Niekerk, Steffanie Paul, Han Spinner, Nathan J. Rollins, Ada Shaw, Rose Orenbuch, Ruben Weitzman, Jonathan Frazer, Mafalda Dias, Dinko Franceschi, Yarin Gal, Debora S. Marks |
| 2023 | ProteinInvBench: Benchmarking Protein Inverse Folding on Diverse Tasks, Models, and Metrics. Zhangyang Gao, Cheng Tan, Yijie Zhang, Xingran Chen, Lirong Wu, Stan Z. Li |
| 2023 | ProteinNPT: Improving protein property prediction and design with non-parametric transformers. Pascal Notin, Ruben Weitzman, Debora S. Marks, Yarin Gal |
| 2023 | ProteinShake: Building datasets and benchmarks for deep learning on protein structures. Tim Kucera, Carlos G. Oliver, Dexiong Chen, Karsten M. Borgwardt |
| 2023 | ProtoDiff: Learning to Learn Prototypical Networks by Task-Guided Diffusion. Yingjun Du, Zehao Xiao, Shengcai Liao, Cees Snoek |
| 2023 | Prototype-based Aleatoric Uncertainty Quantification for Cross-modal Retrieval. Hao Li, Jingkuan Song, Lianli Gao, Xiaosu Zhu, Hengtao Shen |
| 2023 | Prototypical Variational Autoencoder for 3D Few-shot Object Detection. Weiliang Tang, Biqi Yang, Xianzhi Li, Yun-Hui Liu, Pheng-Ann Heng, Chi-Wing Fu |
| 2023 | Provable Advantage of Curriculum Learning on Parity Targets with Mixed Inputs. Emmanuel Abbe, Elisabetta Cornacchia, Aryo Lotfi |
| 2023 | Provable Guarantees for Generative Behavior Cloning: Bridging Low-Level Stability and High-Level Behavior. Adam Block, Ali Jadbabaie, Daniel Pfrommer, Max Simchowitz, Russ Tedrake |
| 2023 | Provable Guarantees for Neural Networks via Gradient Feature Learning. Zhenmei Shi, Junyi Wei, Yingyu Liang |
| 2023 | Provable Guarantees for Nonlinear Feature Learning in Three-Layer Neural Networks. Eshaan Nichani, Alex Damian, Jason D. Lee |
| 2023 | Provable Training for Graph Contrastive Learning. Yue Yu, Xiao Wang, Mengmei Zhang, Nian Liu, Chuan Shi |
| 2023 | Provable benefits of annealing for estimating normalizing constants: Importance Sampling, Noise-Contrastive Estimation, and beyond. Omar Chehab, Aapo Hyvärinen, Andrej Risteski |
| 2023 | Provable benefits of score matching. Chirag Pabbaraju, Dhruv Rohatgi, Anish Prasad Sevekari, Holden Lee, Ankur Moitra, Andrej Risteski |
| 2023 | Provable convergence guarantees for black-box variational inference. Justin Domke, Robert M. Gower, Guillaume Garrigos |
| 2023 | Provably (More) Sample-Efficient Offline RL with Options. Xiaoyan Hu, Ho-fung Leung |
| 2023 | Provably Bounding Neural Network Preimages. Suhas Kotha, Christopher Brix, J. Zico Kolter, Krishnamurthy Dvijotham, Huan Zhang |
| 2023 | Provably Efficient Algorithm for Nonstationary Low-Rank MDPs. Yuan Cheng, Jing Yang, Yingbin Liang |
| 2023 | Provably Efficient Offline Goal-Conditioned Reinforcement Learning with General Function Approximation and Single-Policy Concentrability. Hanlin Zhu, Amy Zhang |
| 2023 | Provably Efficient Offline Reinforcement Learning in Regular Decision Processes. Roberto Cipollone, Anders Jonsson, Alessandro Ronca, Mohammad Sadegh Talebi |
| 2023 | Provably Fast Convergence of Independent Natural Policy Gradient for Markov Potential Games. Youbang Sun, Tao Liu, Ruida Zhou, P. R. Kumar, Shahin Shahrampour |
| 2023 | Provably Fast Finite Particle Variants of SVGD via Virtual Particle Stochastic Approximation. Aniket Das, Dheeraj Nagaraj |
| 2023 | Provably Robust Temporal Difference Learning for Heavy-Tailed Rewards. Semih Cayci, Atilla Eryilmaz |
| 2023 | Provably Safe Reinforcement Learning with Step-wise Violation Constraints. Nuoya Xiong, Yihan Du, Longbo Huang |
| 2023 | Proximity-Informed Calibration for Deep Neural Networks. Miao Xiong, Ailin Deng, Pang Wei W. Koh, Jiaying Wu, Shen Li, Jianqing Xu, Bryan Hooi |
| 2023 | Pruning vs Quantization: Which is Better? Andrey Kuzmin, Markus Nagel, Mart van Baalen, Arash Behboodi, Tijmen Blankevoort |
| 2023 | Pseudo-Likelihood Inference. Theo Gruner, Boris Belousov, Fabio Muratore, Daniel Palenicek, Jan R. Peters |
| 2023 | Public Opinion Field Effect Fusion in Representation Learning for Trending Topics Diffusion. Junliang Li, Yajun Yang, Qinghua Hu, Xin Wang, Hong Gao |
| 2023 | Punctuation-level Attack: Single-shot and Single Punctuation Can Fool Text Models. Wenqiang Wang, Chongyang Du, Tao Wang, Kaihao Zhang, Wenhan Luo, Lin Ma, Wei Liu, Xiaochun Cao |
| 2023 | Puzzlefusion: Unleashing the Power of Diffusion Models for Spatial Puzzle Solving. Sepidehsadat (Sepid) Hossieni, Mohammad Amin Shabani, Saghar Irandoust, Yasutaka Furukawa |
| 2023 | PyNeRF: Pyramidal Neural Radiance Fields. Haithem Turki, Michael Zollhöfer, Christian Richardt, Deva Ramanan |
| 2023 | Q-DM: An Efficient Low-bit Quantized Diffusion Model. Yanjing Li, Sheng Xu, Xianbin Cao, Xiao Sun, Baochang Zhang |
| 2023 | QATCH: Benchmarking SQL-centric tasks with Table Representation Learning Models on Your Data. Simone Papicchio, Paolo Papotti, Luca Cagliero |
| 2023 | QH9: A Quantum Hamiltonian Prediction Benchmark for QM9 Molecules. Haiyang Yu, Meng Liu, Youzhi Luo, Alex Strasser, Xiaofeng Qian, Xiaoning Qian, Shuiwang Ji |
| 2023 | QLoRA: Efficient Finetuning of Quantized LLMs. Tim Dettmers, Artidoro Pagnoni, Ari Holtzman, Luke Zettlemoyer |
| 2023 | QuACK: Accelerating Gradient-Based Quantum Optimization with Koopman Operator Learning. Di Luo, Jiayu Shen, Rumen Dangovski, Marin Soljacic |
| 2023 | QuIP: 2-Bit Quantization of Large Language Models With Guarantees. Jerry Chee, Yaohui Cai, Volodymyr Kuleshov, Christopher De Sa |
| 2023 | QuadAttacK: A Quadratic Programming Approach to Learning Ordered Top-K Adversarial Attacks. Thomas Paniagua, Ryan Grainger, Tianfu Wu |
| 2023 | QuantSR: Accurate Low-bit Quantization for Efficient Image Super-Resolution. Haotong Qin, Yulun Zhang, Yifu Ding, Yifan Liu, Xianglong Liu, Martin Danelljan, Fisher Yu |
| 2023 | Quantification of Uncertainty with Adversarial Models. Kajetan Schweighofer, Lukas Aichberger, Mykyta Ielanskyi, Günter Klambauer, Sepp Hochreiter |
| 2023 | Quantifying & Modeling Multimodal Interactions: An Information Decomposition Framework. Paul Pu Liang, Yun Cheng, Xiang Fan, Chun Kai Ling, Suzanne Nie, Richard J. Chen, Zihao Deng, Nicholas B. Allen, Randy Auerbach, Faisal Mahmood, Russ Salakhutdinov, Louis-Philippe Morency |
| 2023 | Quantifying the Cost of Learning in Queueing Systems. Daniel Freund, Thodoris Lykouris, Wentao Weng |
| 2023 | Quantizable Transformers: Removing Outliers by Helping Attention Heads Do Nothing. Yelysei Bondarenko, Markus Nagel, Tijmen Blankevoort |
| 2023 | Quantum Bayesian Optimization. Zhongxiang Dai, Gregory Kang Ruey Lau, Arun Verma, Yao Shu, Bryan Kian Hsiang Low, Patrick Jaillet |
| 2023 | Quantum speedups for stochastic optimization. Aaron Sidford, Chenyi Zhang |
| 2023 | Quasi-Monte Carlo Graph Random Features. Isaac Reid, Adrian Weller, Krzysztof Marcin Choromanski |
| 2023 | Query-based Temporal Fusion with Explicit Motion for 3D Object Detection. Jinghua Hou, Zhe Liu, Dingkang Liang, Zhikang Zou, Xiaoqing Ye, Xiang Bai |
| 2023 | Quilt-1M: One Million Image-Text Pairs for Histopathology. Wisdom Oluchi Ikezogwo, Mehmet Saygin Seyfioglu, Fatemeh Ghezloo, Dylan Stefan Chan Geva, Fatwir Sheikh Mohammed, Pavan Kumar Anand, Ranjay Krishna, Linda G. Shapiro |
| 2023 | R-divergence for Estimating Model-oriented Distribution Discrepancy. Zhilin Zhao, Longbing Cao |
| 2023 | RADAR: Robust AI-Text Detection via Adversarial Learning. Xiaomeng Hu, Pin-Yu Chen, Tsung-Yi Ho |
| 2023 | RAPHAEL: Text-to-Image Generation via Large Mixture of Diffusion Paths. Zeyue Xue, Guanglu Song, Qiushan Guo, Boxiao Liu, Zhuofan Zong, Yu Liu, Ping Luo |
| 2023 | RD-Suite: A Benchmark for Ranking Distillation. Zhen Qin, Rolf Jagerman, Rama Kumar Pasumarthi, Honglei Zhuang, He Zhang, Aijun Bai, Kai Hui, Le Yan, Xuanhui Wang |
| 2023 | RDumb: A simple approach that questions our progress in continual test-time adaptation. Ori Press, Steffen Schneider, Matthias Kümmerer, Matthias Bethge |
| 2023 | REASONER: An Explainable Recommendation Dataset with Comprehensive Labeling Ground Truths. Xu Chen, Jingsen Zhang, Lei Wang, Quanyu Dai, Zhenhua Dong, Ruiming Tang, Rui Zhang, Li Chen, Xin Zhao, Ji-Rong Wen |
| 2023 | RECESS Vaccine for Federated Learning: Proactive Defense Against Model Poisoning Attacks. Haonan Yan, Wenjing Zhang, Qian Chen, Xiaoguang Li, Wenhai Sun, Hui Li, Xiaodong Lin |
| 2023 | RECKONING: Reasoning through Dynamic Knowledge Encoding. Zeming Chen, Gail Weiss, Eric Mitchell, Asli Celikyilmaz, Antoine Bosselut |
| 2023 | REFINE: A Fine-Grained Medication Recommendation System Using Deep Learning and Personalized Drug Interaction Modeling. Suman Bhoi, Mong-Li Lee, Wynne Hsu, Ngiap Chuan Tan |
| 2023 | RETVec: Resilient and Efficient Text Vectorizer. Elie Bursztein, Marina Zhang, Owen Vallis, Xinyu Jia, Alexey Kurakin |
| 2023 | REx: Data-Free Residual Quantization Error Expansion. Edouard Yvinec, Arnaud Dapogny, Matthieu Cord, Kevin Bailly |
| 2023 | RGMIL: Guide Your Multiple-Instance Learning Model with Regressor. Zhaolong Du, Shasha Mao, Yimeng Zhang, Shuiping Gou, Licheng Jiao, Lin Xiong |
| 2023 | RH-BrainFS: Regional Heterogeneous Multimodal Brain Networks Fusion Strategy. Hongting Ye, Yalu Zheng, Yueying Li, Ke Zhang, Youyong Kong, Yonggui Yuan |
| 2023 | RIO: A Benchmark for Reasoning Intention-Oriented Objects in Open Environments. Mengxue Qu, Yu Wu, Wu Liu, Xiaodan Liang, Jingkuan Song, Yao Zhao, Yunchao Wei |
| 2023 | RL-ViGen: A Reinforcement Learning Benchmark for Visual Generalization. Zhecheng Yuan, Sizhe Yang, Pu Hua, Can Chang, Kaizhe Hu, Huazhe Xu |
| 2023 | RL-based Stateful Neural Adaptive Sampling and Denoising for Real-Time Path Tracing. Antoine Scardigli, Lukas Cavigelli, Lorenz K. Müller |
| 2023 | RRHF: Rank Responses to Align Language Models with Human Feedback. Hongyi Yuan, Zheng Yuan, Chuanqi Tan, Wei Wang, Songfang Huang, Fei Huang |
| 2023 | RS-Del: Edit Distance Robustness Certificates for Sequence Classifiers via Randomized Deletion. Zhuoqun Huang, Neil G. Marchant, Keane Lucas, Lujo Bauer, Olga Ohrimenko, Benjamin I. P. Rubinstein |
| 2023 | RVD: A Handheld Device-Based Fundus Video Dataset for Retinal Vessel Segmentation. Md. Wahiduzzaman Khan, Hongwei Sheng, Hu Zhang, Heming Du, Sen Wang, Minas Theodore Coroneo, Farshid Hajati, Sahar Shariflou, Michael Kalloniatis, Jack Phu, Ashish Agar, Zi Huang, S. Mojtaba Golzan, Xin Yu |
| 2023 | RaLEs: a Benchmark for Radiology Language Evaluations. Juanma Zambrano Chaves, Nandita Bhaskhar, Maayane Attias, Jean-Benoit Delbrouck, Daniel L. Rubin, Andreas M. Loening, Curtis P. Langlotz, Akshay Chaudhari |
| 2023 | RanPAC: Random Projections and Pre-trained Models for Continual Learning. Mark D. McDonnell, Dong Gong, Amin Parvaneh, Ehsan Abbasnejad, Anton van den Hengel |
| 2023 | Random Cuts are Optimal for Explainable k-Medians. Konstantin Makarychev, Liren Shan |
| 2023 | Random-Access Infinite Context Length for Transformers. Amirkeivan Mohtashami, Martin Jaggi |
| 2023 | Randomized Sparse Neural Galerkin Schemes for Solving Evolution Equations with Deep Networks. Jules Berman, Benjamin Peherstorfer |
| 2023 | Randomized and Deterministic Maximin-share Approximations for Fractionally Subadditive Valuations. Hannaneh Akrami, Kurt Mehlhorn, Masoud Seddighin, Golnoosh Shahkarami |
| 2023 | RangePerception: Taming LiDAR Range View for Efficient and Accurate 3D Object Detection. Yeqi Bai, Ben Fei, Youquan Liu, Tao Ma, Yuenan Hou, Botian Shi, Yikang Li |
| 2023 | Rank-1 Matrix Completion with Gradient Descent and Small Random Initialization. Daesung Kim, Hye Won Chung |
| 2023 | Rank-DETR for High Quality Object Detection. Yifan Pu, Weicong Liang, Yiduo Hao, Yuhui Yuan, Yukang Yang, Chao Zhang, Han Hu, Gao Huang |
| 2023 | Rank-N-Contrast: Learning Continuous Representations for Regression. Kaiwen Zha, Peng Cao, Jeany Son, Yuzhe Yang, Dina Katabi |
| 2023 | RayDF: Neural Ray-surface Distance Fields with Multi-view Consistency. Zhuoman Liu, Bo Yang, Yan Luximon, Ajay Kumar, Jinxi Li |
| 2023 | Re-Think and Re-Design Graph Neural Networks in Spaces of Continuous Graph Diffusion Functionals. Tingting Dan, Jiaqi Ding, Ziquan Wei, Shahar Z. Kovalsky, Minjeong Kim, Won Hwa Kim, Guorong Wu |
| 2023 | ReContrast: Domain-Specific Anomaly Detection via Contrastive Reconstruction. Jia Guo, Shuai Lu, Lize Jia, Weihang Zhang, Huiqi Li |
| 2023 | ReDS: Offline RL With Heteroskedastic Datasets via Support Constraints. Anikait Singh, Aviral Kumar, Quan Vuong, Yevgen Chebotar, Sergey Levine |
| 2023 | ReHLine: Regularized Composite ReLU-ReHU Loss Minimization with Linear Computation and Linear Convergence. Ben Dai, Yixuan Qiu |
| 2023 | ReMaX: Relaxing for Better Training on Efficient Panoptic Segmentation. Shuyang Sun, Weijun Wang, Andrew G. Howard, Qihang Yu, Philip H. S. Torr, Liang-Chieh Chen |
| 2023 | RePo: Resilient Model-Based Reinforcement Learning by Regularizing Posterior Predictability. Chuning Zhu, Max Simchowitz, Siri Gadipudi, Abhishek Gupta |
| 2023 | ReSync: Riemannian Subgradient-based Robust Rotation Synchronization. Huikang Liu, Xiao Li, Anthony Man-Cho So |
| 2023 | ReTR: Modeling Rendering Via Transformer for Generalizable Neural Surface Reconstruction. Yixun Liang, Hao He, Yingcong Chen |
| 2023 | Read and Reap the Rewards: Learning to Play Atari with the Help of Instruction Manuals. Yue Wu, Yewen Fan, Paul Pu Liang, Amos Azaria, Yuanzhi Li, Tom M. Mitchell |
| 2023 | Reading Relevant Feature from Global Representation Memory for Visual Object Tracking. Xinyu Zhou, Pinxue Guo, Lingyi Hong, Jinglun Li, Wei Zhang, Weifeng Ge, Wenqiang Zhang |
| 2023 | Real-Time Motion Prediction via Heterogeneous Polyline Transformer with Relative Pose Encoding. Zhejun Zhang, Alexander Liniger, Christos Sakaridis, Fisher Yu, Luc Van Gool |
| 2023 | Real-World Image Super-Resolution as Multi-Task Learning. Wenlong Zhang, Xiaohui Li, Guangyuan Shi, Xiangyu Chen, Yu Qiao, Xiaoyun Zhang, Xiao-Ming Wu, Chao Dong |
| 2023 | Real-World Image Variation by Aligning Diffusion Inversion Chain. Yuechen Zhang, Jinbo Xing, Eric Lo, Jiaya Jia |
| 2023 | Real3D-AD: A Dataset of Point Cloud Anomaly Detection. Jiaqi Liu, Guoyang Xie, Ruitao Chen, Xinpeng Li, Jinbao Wang, Yong Liu, Chengjie Wang, Feng Zheng |
| 2023 | RealTime QA: What's the Answer Right Now? Jungo Kasai, Keisuke Sakaguchi, Yoichi Takahashi, Ronan Le Bras, Akari Asai, Xinyan Yu, Dragomir Radev, Noah A. Smith, Yejin Choi, Kentaro Inui |
| 2023 | Realistic Synthetic Financial Transactions for Anti-Money Laundering Models. Erik R. Altman, Jovan Blanusa, Luc von Niederhäusern, Beni Egressy, Andreea Anghel, Kubilay Atasu |
| 2023 | Recaptured Raw Screen Image and Video Demoiréing via Channel and Spatial Modulations. Yijia Cheng, Xin Liu, Jingyu Yang |
| 2023 | Recasting Continual Learning as Sequence Modeling. Soochan Lee, Jaehyeon Son, Gunhee Kim |
| 2023 | Recommender Systems with Generative Retrieval. Shashank Rajput, Nikhil Mehta, Anima Singh, Raghunandan Hulikal Keshavan, Trung Vu, Lukasz Heldt, Lichan Hong, Yi Tay, Vinh Q. Tran, Jonah Samost, Maciej Kula, Ed H. Chi, Mahesh Sathiamoorthy |
| 2023 | Reconciling Competing Sampling Strategies of Network Embedding. Yuchen Yan, Baoyu Jing, Lihui Liu, Ruijie Wang, Jinning Li, Tarek F. Abdelzaher, Hanghang Tong |
| 2023 | Reconstructing the Mind's Eye: fMRI-to-Image with Contrastive Learning and Diffusion Priors. Paul S. Scotti, Atmadeep Banerjee, Jimmie Goode, Stepan Shabalin, Alex Nguyen, Ethan Cohen, Aidan J. Dempster, Nathalie Verlinde, Elad Yundler, David Weisberg, Kenneth A. Norman, Tanishq Mathew Abraham |
| 2023 | Recovering Simultaneously Structured Data via Non-Convex Iteratively Reweighted Least Squares. Christian Kümmerle, Johannes Maly |
| 2023 | Recovering Unbalanced Communities in the Stochastic Block Model with Application to Clustering with a Faulty Oracle. Chandra Sekhar Mukherjee, Pan Peng, Jiapeng Zhang |
| 2023 | Recovering from Out-of-sample States via Inverse Dynamics in Offline Reinforcement Learning. Ke Jiang, Jia-Yu Yao, Xiaoyang Tan |
| 2023 | Recurrent Hypernetworks are Surprisingly Strong in Meta-RL. Jacob Beck, Risto Vuorio, Zheng Xiong, Shimon Whiteson |
| 2023 | Recurrent Temporal Revision Graph Networks. Yizhou Chen, Anxiang Zeng, Qingtao Yu, Kerui Zhang, Yuanpeng Cao, Kangle Wu, Guangda Huzhang, Han Yu, Zhiming Zhou |
| 2023 | Recursion in Recursion: Two-Level Nested Recursion for Length Generalization with Scalability. Jishnu Ray Chowdhury, Cornelia Caragea |
| 2023 | Red Teaming Deep Neural Networks with Feature Synthesis Tools. Stephen Casper, Tong Bu, Yuxiao Li, Jiawei Li, Kevin Zhang, Kaivalya Hariharan, Dylan Hadfield-Menell |
| 2023 | Reduced Policy Optimization for Continuous Control with Hard Constraints. Shutong Ding, Jingya Wang, Yali Du, Ye Shi |
| 2023 | Reducing Blackwell and Average Optimality to Discounted MDPs via the Blackwell Discount Factor. Julien Grand-Clément, Marek Petrik |
| 2023 | Reducing Shape-Radiance Ambiguity in Radiance Fields with a Closed-Form Color Estimation Method. Qihang Fang, Yafei Song, Keqiang Li, Liefeng Bo |
| 2023 | Reference-Based POMDPs. Edward Kim, Yohan Karunanayake, Hanna Kurniawati |
| 2023 | Refined Mechanism Design for Approximately Structured Priors via Active Regression. Christos Boutsikas, Petros Drineas, Marios Mertzanidis, Alexandros Psomas, Paritosh Verma |
| 2023 | Refining Diffusion Planner for Reliable Behavior Synthesis by Automatic Detection of Infeasible Plans. Kyowoon Lee, Seongun Kim, Jaesik Choi |
| 2023 | Reflexion: language agents with verbal reinforcement learning. Noah Shinn, Federico Cassano, Ashwin Gopinath, Karthik Narasimhan, Shunyu Yao |
| 2023 | RegBN: Batch Normalization of Multimodal Data with Regularization. Morteza Ghahremani, Christian Wachinger |
| 2023 | Regression with Cost-based Rejection. Xin Cheng, Yuzhou Cao, Haobo Wang, Hongxin Wei, Bo An, Lei Feng |
| 2023 | Regret Matching+: (In)Stability and Fast Convergence in Games. Gabriele Farina, Julien Grand-Clément, Christian Kroer, Chung-wei Lee, Haipeng Luo |
| 2023 | Regret Minimization via Saddle Point Optimization. Johannes Kirschner, Seyed Alireza Bakhtiari, Kushagra Chandak, Volodymyr Tkachuk, Csaba Szepesvári |
| 2023 | Regret-Optimal Model-Free Reinforcement Learning for Discounted MDPs with Short Burn-In Time. Xiang Ji, Gen Li |
| 2023 | Regularity as Intrinsic Reward for Free Play. Cansu Sancaktar, Justus H. Piater, Georg Martius |
| 2023 | Regularization properties of adversarially-trained linear regression. Antônio H. Ribeiro, Dave Zachariah, Francis R. Bach, Thomas B. Schön |
| 2023 | Regularized Behavior Cloning for Blocking the Leakage of Past Action Information. Seokin Seo, HyeongJoo Hwang, Hongseok Yang, Kee-Eung Kim |
| 2023 | Regularizing Neural Networks with Meta-Learning Generative Models. Shin'ya Yamaguchi, Daiki Chijiwa, Sekitoshi Kanai, Atsutoshi Kumagai, Hisashi Kashima |
| 2023 | Rehearsal Learning for Avoiding Undesired Future. Tian Qin, Tian-Zuo Wang, Zhi-Hua Zhou |
| 2023 | Reimagining Synthetic Tabular Data Generation through Data-Centric AI: A Comprehensive Benchmark. Lasse Hansen, Nabeel Seedat, Mihaela van der Schaar, Andrija Petrovic |
| 2023 | Reinforcement Learning for Fine-tuning Text-to-Image Diffusion Models. Ying Fan, Olivia Watkins, Yuqing Du, Hao Liu, Moonkyung Ryu, Craig Boutilier, Pieter Abbeel, Mohammad Ghavamzadeh, Kangwook Lee, Kimin Lee |
| 2023 | Reinforcement Learning with Fast and Forgetful Memory. Steven D. Morad, Ryan Kortvelesy, Stephan Liwicki, Amanda Prorok |
| 2023 | Reinforcement Learning with Simple Sequence Priors. Tankred Saanum, Noémi Élteto, Peter Dayan, Marcel Binz, Eric Schulz |
| 2023 | Reinforcement-Enhanced Autoregressive Feature Transformation: Gradient-steered Search in Continuous Space for Postfix Expressions. Dongjie Wang, Meng Xiao, Min Wu, Pengfei Wang, Yuanchun Zhou, Yanjie Fu |
| 2023 | Reining Generalization in Offline Reinforcement Learning via Representation Distinction. Yi Ma, Hongyao Tang, Dong Li, Zhaopeng Meng |
| 2023 | Relative Entropic Optimal Transport: a (Prior-aware) Matching Perspective to (Unbalanced) Classification. Liangliang Shi, Haoyu Zhen, Gu Zhang, Junchi Yan |
| 2023 | Relax, it doesn't matter how you get there: A new self-supervised approach for multi-timescale behavior analysis. Mehdi Azabou, Michael Mendelson, Nauman Ahad, Maks Sorokin, Shantanu Thakoor, Carolina Urzay, Eva L. Dyer |
| 2023 | Reliable Off-Policy Learning for Dosage Combinations. Jonas Schweisthal, Dennis Frauen, Valentyn Melnychuk, Stefan Feuerriegel |
| 2023 | Reliable learning in challenging environments. Maria-Florina Balcan, Steve Hanneke, Rattana Pukdee, Dravyansh Sharma |
| 2023 | Removing Hidden Confounding in Recommendation: A Unified Multi-Task Learning Approach. Haoxuan Li, Kunhan Wu, Chunyuan Zheng, Yanghao Xiao, Hao Wang, Zhi Geng, Fuli Feng, Xiangnan He, Peng Wu |
| 2023 | RenderMe-360: A Large Digital Asset Library and Benchmarks Towards High-fidelity Head Avatars. Dongwei Pan, Long Zhuo, Jingtan Piao, Huiwen Luo, Wei Cheng, Yuxin Wang, Siming Fan, Shengqi Liu, Lei Yang, Bo Dai, Ziwei Liu, Chen Change Loy, Chen Qian, Wayne Wu, Dahua Lin, Kwan-Yee Lin |
| 2023 | Renku: a platform for sustainable data science. Rok Roskar, Chandrasekhar Ramakrishnan, Michele Volpi, Fernando Pérez-Cruz, Lilian Gasser, Firat Ozdemir, Patrick Paitz, Mohammad Alisafaee, Philipp Fischer, Ralf Grubenmann, Eliza J. Harris, Tasko Olevski, Carl Remlinger, Luis Salamanca, Elisabet Capon Garcia, Lorenzo Cavazzi, Jakub Chrobasik, Darlin Cordoba Osnas, Alessandro Degano, Jimena Dupre, Wesley Johnson, Eike Kettner, Laura Kinkead, Sean D. Murphy, Flora Thiebaut, Olivier Verscheure |
| 2023 | Repetition In Repetition Out: Towards Understanding Neural Text Degeneration from the Data Perspective. Huayang Li, Tian Lan, Zihao Fu, Deng Cai, Lemao Liu, Nigel Collier, Taro Watanabe, Yixuan Su |
| 2023 | Replicability in Reinforcement Learning. Amin Karbasi, Grigoris Velegkas, Lin Yang, Felix Zhou |
| 2023 | Replicable Clustering. Hossein Esfandiari, Amin Karbasi, Vahab Mirrokni, Grigoris Velegkas, Felix Zhou |
| 2023 | Replicable Reinforcement Learning. Eric Eaton, Marcel Hussing, Michael Kearns, Jessica Sorrell |
| 2023 | Representation Equivalent Neural Operators: a Framework for Alias-free Operator Learning. Francesca Bartolucci, Emmanuel de Bézenac, Bogdan Raonic, Roberto Molinaro, Siddhartha Mishra, Rima Alaifari |
| 2023 | Representation Learning via Consistent Assignment of Views over Random Partitions. Thalles Santos Silva, Adín Ramírez Rivera |
| 2023 | Representational Strengths and Limitations of Transformers. Clayton Sanford, Daniel J. Hsu, Matus Telgarsky |
| 2023 | Reproducibility in Multiple Instance Learning: A Case For Algorithmic Unit Tests. Edward Raff, James Holt |
| 2023 | Res-Tuning: A Flexible and Efficient Tuning Paradigm via Unbinding Tuner from Backbone. Zeyinzi Jiang, Chaojie Mao, Ziyuan Huang, Ao Ma, Yiliang Lv, Yujun Shen, Deli Zhao, Jingren Zhou |
| 2023 | ResMem: Learn what you can and memorize the rest. Zitong Yang, Michal Lukasik, Vaishnavh Nagarajan, Zonglin Li, Ankit Singh Rawat, Manzil Zaheer, Aditya Krishna Menon, Sanjiv Kumar |
| 2023 | ResShift: Efficient Diffusion Model for Image Super-resolution by Residual Shifting. Zongsheng Yue, Jianyi Wang, Chen Change Loy |
| 2023 | Resetting the Optimizer in Deep RL: An Empirical Study. Kavosh Asadi, Rasool Fakoor, Shoham Sabach |
| 2023 | Residual Alignment: Uncovering the Mechanisms of Residual Networks. Jianing Li, Vardan Papyan |
| 2023 | Residual Q-Learning: Offline and Online Policy Customization without Value. Chenran Li, Chen Tang, Haruki Nishimura, Jean Mercat, Masayoshi Tomizuka, Wei Zhan |
| 2023 | Resilient Constrained Learning. Ignacio Hounie, Alejandro Ribeiro, Luiz F. O. Chamon |
| 2023 | Resilient Multiple Choice Learning: A learned scoring scheme with application to audio scene analysis. Victor Letzelter, Mathieu Fontaine, Mickaël Chen, Patrick Pérez, Slim Essid, Gaël Richard |
| 2023 | ResoNet: Noise-Trained Physics-Informed MRI Off-Resonance Correction. Alfredo De Goyeneche Macaya, Shreya Ramachandran, Ke Wang, Ekin Karasan, Joseph Y. Cheng, Stella X. Yu, Michael Lustig |
| 2023 | Resolving the Tug-of-War: A Separation of Communication and Learning in Federated Learning. Junyi Li, Heng Huang |
| 2023 | Response Length Perception and Sequence Scheduling: An LLM-Empowered LLM Inference Pipeline. Zangwei Zheng, Xiaozhe Ren, Fuzhao Xue, Yang Luo, Xin Jiang, Yang You |
| 2023 | Responsible AI (RAI) Games and Ensembles. Yash Gupta, Runtian Zhai, Arun Suggala, Pradeep Ravikumar |
| 2023 | Restart Sampling for Improving Generative Processes. Yilun Xu, Mingyang Deng, Xiang Cheng, Yonglong Tian, Ziming Liu, Tommi S. Jaakkola |
| 2023 | Restless Bandits with Average Reward: Breaking the Uniform Global Attractor Assumption. Yige Hong, Qiaomin Xie, Yudong Chen, Weina Wang |
| 2023 | Retaining Beneficial Information from Detrimental Data for Neural Network Repair. Long-Kai Huang, Peilin Zhao, Junzhou Huang, Sinno Jialin Pan |
| 2023 | Rethinking Bias Mitigation: Fairer Architectures Make for Fairer Face Recognition. Samuel Dooley, Rhea Sanjay Sukthanker, John P. Dickerson, Colin White, Frank Hutter, Micah Goldblum |
| 2023 | Rethinking Conditional Diffusion Sampling with Progressive Guidance. Anh-Dung Dinh, Daochang Liu, Chang Xu |
| 2023 | Rethinking Gauss-Newton for learning over-parameterized models. Michael Arbel, Romain Menegaux, Pierre Wolinski |
| 2023 | Rethinking Incentives in Recommender Systems: Are Monotone Rewards Always Beneficial? Fan Yao, Chuanhao Li, Karthik Abinav Sankararaman, Yiming Liao, Yan Zhu, Qifan Wang, Hongning Wang, Haifeng Xu |
| 2023 | Rethinking Semi-Supervised Imbalanced Node Classification from Bias-Variance Decomposition. Divin Yan, Gengchen Wei, Chen Yang, Shengzhong Zhang, Zengfeng Huang |
| 2023 | Rethinking Semi-Supervised Medical Image Segmentation: A Variance-Reduction Perspective. Chenyu You, Weicheng Dai, Yifei Min, Fenglin Liu, David A. Clifton, S. Kevin Zhou, Lawrence H. Staib, James S. Duncan |
| 2023 | Rethinking Tokenizer and Decoder in Masked Graph Modeling for Molecules. Zhiyuan Liu, Yaorui Shi, An Zhang, Enzhi Zhang, Kenji Kawaguchi, Xiang Wang, Tat-Seng Chua |
| 2023 | Rethinking the Backward Propagation for Adversarial Transferability. Xiaosen Wang, Kangheng Tong, Kun He |
| 2023 | Rethinking the Role of Token Retrieval in Multi-Vector Retrieval. Jinhyuk Lee, Zhuyun Dai, Sai Meher Karthik Duddu, Tao Lei, Iftekhar Naim, Ming-Wei Chang, Vincent Y. Zhao |
| 2023 | Retrieval-Augmented Multiple Instance Learning. Yufei Cui, Ziquan Liu, Yixin Chen, Yuchen Lu, Xinyue Yu, Xue (Steve) Liu, Tei-Wei Kuo, Miguel Rodrigues, Chun Jason Xue, Antoni B. Chan |
| 2023 | Reusable Slotwise Mechanisms. Bailey Trang Nguyen, Amin Mansouri, Kanika Madan, Khuong Nguyen, Kartik Ahuja, Dianbo Liu, Yoshua Bengio |
| 2023 | Reusing Pretrained Models by Multi-linear Operators for Efficient Training. Yu Pan, Ye Yuan, Yichun Yin, Zenglin Xu, Lifeng Shang, Xin Jiang, Qun Liu |
| 2023 | RevColV2: Exploring Disentangled Representations in Masked Image Modeling. Qi Han, Yuxuan Cai, Xiangyu Zhang |
| 2023 | Revealing the unseen: Benchmarking video action recognition under occlusion. Shresth Grover, Vibhav Vineet, Yogesh S. Rawat |
| 2023 | Reverse Engineering Self-Supervised Learning. Ido Ben-Shaul, Ravid Shwartz-Ziv, Tomer Galanti, Shai Dekel, Yann LeCun |
| 2023 | Reversible and irreversible bracket-based dynamics for deep graph neural networks. Anthony Gruber, Kookjin Lee, Nathaniel Trask |
| 2023 | Revisit Weakly-Supervised Audio-Visual Video Parsing from the Language Perspective. Yingying Fan, Yu Wu, Bo Du, Yutian Lin |
| 2023 | Revisit the Power of Vanilla Knowledge Distillation: from Small Scale to Large Scale. Zhiwei Hao, Jianyuan Guo, Kai Han, Han Hu, Chang Xu, Yunhe Wang |
| 2023 | Revisiting Adversarial Robustness Distillation from the Perspective of Robust Fairness. Xinli Yue, Ningping Mou, Qian Wang, Lingchen Zhao |
| 2023 | Revisiting Adversarial Training for ImageNet: Architectures, Training and Generalization across Threat Models. Naman Deep Singh, Francesco Croce, Matthias Hein |
| 2023 | Revisiting Area Convexity: Faster Box-Simplex Games and Spectrahedral Generalizations. Arun Jambulapati, Kevin Tian |
| 2023 | Revisiting Evaluation Metrics for Semantic Segmentation: Optimization and Evaluation of Fine-grained Intersection over Union. Zifu Wang, Maxim Berman, Amal Rannen-Triki, Philip H. S. Torr, Devis Tuia, Tinne Tuytelaars, Luc Van Gool, Jiaqian Yu, Matthew B. Blaschko |
| 2023 | Revisiting Implicit Differentiation for Learning Problems in Optimal Control. Ming Xu, Timothy L. Molloy, Stephen Gould |
| 2023 | Revisiting Logistic-softmax Likelihood in Bayesian Meta-Learning for Few-Shot Classification. Tianjun Ke, Haoqun Cao, Zenan Ling, Feng Zhou |
| 2023 | Revisiting Out-of-distribution Robustness in NLP: Benchmarks, Analysis, and LLMs Evaluations. Lifan Yuan, Yangyi Chen, Ganqu Cui, Hongcheng Gao, Fangyuan Zou, Xingyi Cheng, Heng Ji, Zhiyuan Liu, Maosong Sun |
| 2023 | Revisiting Scalarization in Multi-Task Learning: A Theoretical Perspective. Yuzheng Hu, Ruicheng Xian, Qilong Wu, Qiuling Fan, Lang Yin, Han Zhao |
| 2023 | Revisiting Visual Model Robustness: A Frequency Long-Tailed Distribution View. Zhiyu Lin, Yifei Gao, Yunfan Yang, Jitao Sang |
| 2023 | Revisiting the Evaluation of Image Synthesis with GANs. Mengping Yang, Ceyuan Yang, Yichi Zhang, Qingyan Bai, Yujun Shen, Bo Dai |
| 2023 | Revisiting the Minimalist Approach to Offline Reinforcement Learning. Denis Tarasov, Vladislav Kurenkov, Alexander Nikulin, Sergey Kolesnikov |
| 2023 | Reward Finetuning for Faster and More Accurate Unsupervised Object Discovery. Katie Luo, Zhenzhen Liu, Xiangyu Chen, Yurong You, Sagie Benaim, Cheng Perng Phoo, Mark E. Campbell, Wen Sun, Bharath Hariharan, Kilian Q. Weinberger |
| 2023 | Reward Imputation with Sketching for Contextual Batched Bandits. Xiao Zhang, Ninglu Shao, Zihua Si, Jun Xu, Wenhan Wang, Hanjing Su, Ji-Rong Wen |
| 2023 | Reward Scale Robustness for Proximal Policy Optimization via DreamerV3 Tricks. Ryan Sullivan, Akarsh Kumar, Shengyi Huang, John P. Dickerson, Joseph Suarez |
| 2023 | Reward-Directed Conditional Diffusion: Provable Distribution Estimation and Reward Improvement. Hui Yuan, Kaixuan Huang, Chengzhuo Ni, Minshuo Chen, Mengdi Wang |
| 2023 | Reward-agnostic Fine-tuning: Provable Statistical Benefits of Hybrid Reinforcement Learning. Gen Li, Wenhao Zhan, Jason D. Lee, Yuejie Chi, Yuxin Chen |
| 2023 | Rewarded soups: towards Pareto-optimal alignment by interpolating weights fine-tuned on diverse rewards. Alexandre Ramé, Guillaume Couairon, Corentin Dancette, Jean-Baptiste Gaya, Mustafa Shukor, Laure Soulier, Matthieu Cord |
| 2023 | Rewiring Neurons in Non-Stationary Environments. Zhicheng Sun, Yadong Mu |
| 2023 | Rewrite Caption Semantics: Bridging Semantic Gaps for Language-Supervised Semantic Segmentation. Yun Xing, Jian Kang, Aoran Xiao, Jiahao Nie, Ling Shao, Shijian Lu |
| 2023 | Riemannian Laplace approximations for Bayesian neural networks. Federico Bergamin, Pablo Moreno-Muñoz, Søren Hauberg, Georgios Arvanitidis |
| 2023 | Riemannian Projection-free Online Learning. Zihao Hu, Guanghui Wang, Jacob D. Abernethy |
| 2023 | Riemannian Residual Neural Networks. Isay Katsman, Eric Ming Chen, Sidhanth Holalkere, Anna Asch, Aaron Lou, Ser Nam Lim, Christopher De Sa |
| 2023 | Riemannian SAM: Sharpness-Aware Minimization on Riemannian Manifolds. Jihun Yun, Eunho Yang |
| 2023 | Riemannian stochastic optimization methods avoid strict saddle points. Ya-Ping Hsieh, Mohammad Reza Karimi Jaghargh, Andreas Krause, Panayotis Mertikopoulos |
| 2023 | Rigorous Runtime Analysis of MOEA/D for Solving Multi-Objective Minimum Weight Base Problems. Anh Viet Do, Aneta Neumann, Frank Neumann, Andrew M. Sutton |
| 2023 | Risk-Averse Active Sensing for Timely Outcome Prediction under Cost Pressure. Yuchao Qin, Mihaela van der Schaar, Changhee Lee |
| 2023 | Risk-Averse Model Uncertainty for Distributionally Robust Safe Reinforcement Learning. James Queeney, Mouhacine Benosman |
| 2023 | RiskQ: Risk-sensitive Multi-Agent Reinforcement Learning Value Factorization. Siqi Shen, Chennan Ma, Chao Li, Weiquan Liu, Yongquan Fu, Songzhu Mei, Xinwang Liu, Cheng Wang |
| 2023 | RoboCLIP: One Demonstration is Enough to Learn Robot Policies. Sumedh Sontakke, Jesse Zhang, Sébastien M. R. Arnold, Karl Pertsch, Erdem Biyik, Dorsa Sadigh, Chelsea Finn, Laurent Itti |
| 2023 | RoboDepth: Robust Out-of-Distribution Depth Estimation under Corruptions. Lingdong Kong, Shaoyuan Xie, Hanjiang Hu, Lai Xing Ng, Benoit Cottereau, Wei Tsang Ooi |
| 2023 | RoboHive: A Unified Framework for Robot Learning. Vikash Kumar, Rutav M. Shah, Gaoyue Zhou, Vincent Moens, Vittorio Caggiano, Abhishek Gupta, Aravind Rajeswaran |
| 2023 | Robust Bayesian Satisficing. Artun Saday, Yasar Cahit Yildirim, Cem Tekin |
| 2023 | Robust Concept Erasure via Kernelized Rate-Distortion Maximization. Somnath Basu Roy Chowdhury, Nicholas Monath, Kumar Avinava Dubey, Amr Ahmed, Snigdha Chaturvedi |
| 2023 | Robust Contrastive Language-Image Pretraining against Data Poisoning and Backdoor Attacks. Wenhan Yang, Jingdong Gao, Baharan Mirzasoleiman |
| 2023 | Robust Data Pruning under Label Noise via Maximizing Re-labeling Accuracy. Dongmin Park, Seola Choi, Doyoung Kim, Hwanjun Song, Jae-Gil Lee |
| 2023 | Robust Data Valuation with Weighted Banzhaf Values. Weida Li, Yaoliang Yu |
| 2023 | Robust Distributed Learning: Tight Error Bounds and Breakdown Point under Data Heterogeneity. Youssef Allouah, Rachid Guerraoui, Nirupam Gupta, Rafael Pinot, Geovani Rizk |
| 2023 | Robust Knowledge Transfer in Tiered Reinforcement Learning. Jiawei Huang, Niao He |
| 2023 | Robust Learning for Smoothed Online Convex Optimization with Feedback Delay. Pengfei Li, Jianyi Yang, Adam Wierman, Shaolei Ren |
| 2023 | Robust Learning with Progressive Data Expansion Against Spurious Correlation. Yihe Deng, Yu Yang, Baharan Mirzasoleiman, Quanquan Gu |
| 2023 | Robust Lipschitz Bandits to Adversarial Corruptions. Yue Kang, Cho-Jui Hsieh, Thomas Chun Man Lee |
| 2023 | Robust Matrix Sensing in the Semi-Random Model. Xing Gao, Yu Cheng |
| 2023 | Robust Mean Estimation Without Moments for Symmetric Distributions. Gleb Novikov, David Steurer, Stefan Tiegel |
| 2023 | Robust Model Reasoning and Fitting via Dual Sparsity Pursuit. Xingyu Jiang, Jiayi Ma |
| 2023 | Robust Multi-Agent Reinforcement Learning via Adversarial Regularization: Theoretical Foundation and Stable Algorithms. Alexander Bukharin, Yan Li, Yue Yu, Qingru Zhang, Zhehui Chen, Simiao Zuo, Chao Zhang, Songan Zhang, Tuo Zhao |
| 2023 | Robust Second-Order Nonconvex Optimization and Its Application to Low Rank Matrix Sensing. Shuyao Li, Yu Cheng, Ilias Diakonikolas, Jelena Diakonikolas, Rong Ge, Stephen J. Wright |
| 2023 | Robust and Actively Secure Serverless Collaborative Learning. Nicholas Franzese, Adam Dziedzic, Christopher A. Choquette-Choo, Mark R. Thomas, Muhammad Ahmad Kaleem, Stephan Rabanser, Congyu Fang, Somesh Jha, Nicolas Papernot, Xiao Wang |
| 2023 | Robust covariance estimation with missing values and cell-wise contamination. Grégoire Pacreau, Karim Lounici |
| 2023 | Robust low-rank training via approximate orthonormal constraints. Dayana Savostianova, Emanuele Zangrando, Gianluca Ceruti, Francesco Tudisco |
| 2023 | Robustifying Generalizable Implicit Shape Networks with a Tunable Non-Parametric Model. Amine Ouasfi, Adnane Boukhayma |
| 2023 | Robustness Guarantees for Adversarially Trained Neural Networks. Poorya Mianjy, Raman Arora |
| 2023 | Rotating Features for Object Discovery. Sindy Löwe, Phillip Lippe, Francesco Locatello, Max Welling |
| 2023 | Rubik's Cube: High-Order Channel Interactions with a Hierarchical Receptive Field. Naishan Zheng, Man Zhou, Chong Zhou, Chen Change Loy |
| 2023 | S Yunho Jin, Chun-Feng Wu, David Brooks, Gu-Yeon Wei |
| 2023 | S-CLIP: Semi-supervised Vision-Language Learning using Few Specialist Captions. Sangwoo Mo, Minkyu Kim, Kyungmin Lee, Jinwoo Shin |
| 2023 | SA-Solver: Stochastic Adams Solver for Fast Sampling of Diffusion Models. Shuchen Xue, Mingyang Yi, Weijian Luo, Shifeng Zhang, Jiacheng Sun, Zhenguo Li, Zhi-Ming Ma |
| 2023 | SALSA VERDE: a machine learning attack on LWE with sparse small secrets. Cathy Yuanchen Li, Emily Wenger, Zeyuan Allen-Zhu, François Charton, Kristin E. Lauter |
| 2023 | SAME: Uncovering GNN Black Box with Structure-aware Shapley-based Multipiece Explanations. Ziyuan Ye, Rihan Huang, Qilin Wu, Quanying Liu |
| 2023 | SAMRS: Scaling-up Remote Sensing Segmentation Dataset with Segment Anything Model. Di Wang, Jing Zhang, Bo Du, Minqiang Xu, Lin Liu, Dacheng Tao, Liangpei Zhang |
| 2023 | SAMoSSA: Multivariate Singular Spectrum Analysis with Stochastic Autoregressive Noise. Abdullah Omar Alomar, Munther A. Dahleh, Sean Mann, Devavrat Shah |
| 2023 | SANFlow: Semantic-Aware Normalizing Flow for Anomaly Detection. Daehyun Kim, Sungyong Baik, Tae Hyun Kim |
| 2023 | SARAMIS: Simulation Assets for Robotic Assisted and Minimally Invasive Surgery. Nina Montaña Brown, Shaheer U. Saeed, Ahmed Abdulaal, Thomas Dowrick, Yakup Kilic, Sophie Wilkinson, Jack Gao, Meghavi Mashar, Chloe He, Alkisti Stavropoulou, Emma Thomson, Zachary M. C. Baum, Simone Foti, Brian R. Davidson, Yipeng Hu, Matthew J. Clarkson |
| 2023 | SE(3) Diffusion Model-based Point Cloud Registration for Robust 6D Object Pose Estimation. Haobo Jiang, Mathieu Salzmann, Zheng Dang, Jin Xie, Jian Yang |
| 2023 | SE(3) Equivariant Augmented Coupling Flows. Laurence I. Midgley, Vincent Stimper, Javier Antorán, Emile Mathieu, Bernhard Schölkopf, José Miguel Hernández-Lobato |
| 2023 | SE(3) Equivariant Convolution and Transformer in Ray Space. Yinshuang Xu, Jiahui Lei, Kostas Daniilidis |
| 2023 | SEEDS: Exponential SDE Solvers for Fast High-Quality Sampling from Diffusion Models. Martin Gonzalez, Nelson Fernandez, Thuy Tran, Elies Gherbi, Hatem Hajri, Nader Masmoudi |
| 2023 | SEENN: Towards Temporal Spiking Early Exit Neural Networks. Yuhang Li, Tamar Geller, Youngeun Kim, Priyadarshini Panda |
| 2023 | SEGA: Instructing Text-to-Image Models using Semantic Guidance. Manuel Brack, Felix Friedrich, Dominik Hintersdorf, Lukas Struppek, Patrick Schramowski, Kristian Kersting |
| 2023 | SEVA: Leveraging sketches to evaluate alignment between human and machine visual abstraction. Kushin Mukherjee, Holly Huey, Xuanchen Lu, Yael Vinker, Rio Aguina-Kang, Ariel Shamir, Judith E. Fan |
| 2023 | SG×P : A Sorghum Genotype × Phenotype Prediction Dataset and Benchmark. Zeyu Zhang, Robert Pless, Nadia Shakoor, Austin Carnahan, Abby Stylianou |
| 2023 | SHAP-IQ: Unified Approximation of any-order Shapley Interactions. Fabian Fumagalli, Maximilian Muschalik, Patrick Kolpaczki, Eyke Hüllermeier, Barbara Hammer |
| 2023 | SHOT: Suppressing the Hessian along the Optimization Trajectory for Gradient-Based Meta-Learning. JunHoo Lee, Jayeon Yoo, Nojun Kwak |
| 2023 | SLIBO-Net: Floorplan Reconstruction via Slicing Box Representation with Local Geometry Regularization. Jheng-Wei Su, Kuei-Yu Tung, Chi-Han Peng, Peter Wonka, Hung-Kuo Chu |
| 2023 | SLM: A Smoothed First-Order Lagrangian Method for Structured Constrained Nonconvex Optimization. Songtao Lu |
| 2023 | SLaM: Student-Label Mixing for Distillation with Unlabeled Examples. Vasilis Kontonis, Fotis Iliopoulos, Khoa Trinh, Cenk Baykal, Gaurav Menghani, Erik Vee |
| 2023 | SMACv2: An Improved Benchmark for Cooperative Multi-Agent Reinforcement Learning. Benjamin Ellis, Jonathan Cook, Skander Moalla, Mikayel Samvelyan, Mingfei Sun, Anuj Mahajan, Jakob N. Foerster, Shimon Whiteson |
| 2023 | SMPLer-X: Scaling Up Expressive Human Pose and Shape Estimation. Zhongang Cai, Wanqi Yin, Ailing Zeng, Chen Wei, Qingping Sun, Wang Yanjun, Hui En Pang, Haiyi Mei, Mingyuan Zhang, Lei Zhang, Chen Change Loy, Lei Yang, Ziwei Liu |
| 2023 | SNAP: Self-Supervised Neural Maps for Visual Positioning and Semantic Understanding. Paul-Edouard Sarlin, Eduard Trulls, Marc Pollefeys, Jan Hosang, Simon Lynen |
| 2023 | SNEkhorn: Dimension Reduction with Symmetric Entropic Affinities. Hugues Van Assel, Titouan Vayer, Rémi Flamary, Nicolas Courty |
| 2023 | SOAR: Improved Indexing for Approximate Nearest Neighbor Search. Philip Sun, David Simcha, Dave Dopson, Ruiqi Guo, Sanjiv Kumar |
| 2023 | SOC: Semantic-Assisted Object Cluster for Referring Video Object Segmentation. Zhuoyan Luo, Yicheng Xiao, Yong Liu, Shuyan Li, Yitong Wang, Yansong Tang, Xiu Li, Yujiu Yang |
| 2023 | SODA: Robust Training of Test-Time Data Adaptors. Zige Wang, Yonggang Zhang, Zhen Fang, Long Lan, Wenjing Yang, Bo Han |
| 2023 | SOL: Sampling-based Optimal Linear bounding of arbitrary scalar functions. Yuriy Biktairov, Jyotirmoy Deshmukh |
| 2023 | SPA: A Graph Spectral Alignment Perspective for Domain Adaptation. Zhiqing Xiao, Haobo Wang, Ying Jin, Lei Feng, Gang Chen, Fei Huang, Junbo Zhao |
| 2023 | SPACE: Single-round Participant Amalgamation for Contribution Evaluation in Federated Learning. Yi-Chung Chen, Hsi-Wen Chen, Shun-Gui Wang, Ming-Syan Chen |
| 2023 | SPAE: Semantic Pyramid AutoEncoder for Multimodal Generation with Frozen LLMs. Lijun Yu, Yong Cheng, Zhiruo Wang, Vivek Kumar, Wolfgang Macherey, Yanping Huang, David A. Ross, Irfan Essa, Yonatan Bisk, Ming-Hsuan Yang, Kevin P. Murphy, Alexander G. Hauptmann, Lu Jiang |
| 2023 | SPQR: Controlling Q-ensemble Independence with Spiked Random Model for Reinforcement Learning. Dohyeok Lee, Seungyub Han, Taehyun Cho, Jungwoo Lee |
| 2023 | SPRING: Studying Papers and Reasoning to play Games. Yue Wu, So Yeon Min, Shrimai Prabhumoye, Yonatan Bisk, Russ Salakhutdinov, Amos Azaria, Tom M. Mitchell, Yuanzhi Li |
| 2023 | SQ Lower Bounds for Learning Mixtures of Linear Classifiers. Ilias Diakonikolas, Daniel Kane, Yuxin Sun |
| 2023 | SQ Lower Bounds for Non-Gaussian Component Analysis with Weaker Assumptions. Ilias Diakonikolas, Daniel Kane, Lisheng Ren, Yuxin Sun |
| 2023 | SSL4EO-L: Datasets and Foundation Models for Landsat Imagery. Adam J. Stewart, Nils Lehmann, Isaac A. Corley, Yi Wang, Yi-Chia Chang, Nassim Ait Ali Braham, Shradha Sehgal, Caleb Robinson, Arindam Banerjee |
| 2023 | STARSS23: An Audio-Visual Dataset of Spatial Recordings of Real Scenes with Spatiotemporal Annotations of Sound Events. Kazuki Shimada, Archontis Politis, Parthasaarathy Sudarsanam, Daniel Aleksander Krause, Kengo Uchida, Sharath Adavanne, Aapo Hakala, Yuichiro Koyama, Naoya Takahashi, Shusuke Takahashi, Tuomas Virtanen, Yuki Mitsufuji |
| 2023 | STEVE-1: A Generative Model for Text-to-Behavior in Minecraft. Shalev Lifshitz, Keiran Paster, Harris Chan, Jimmy Ba, Sheila A. McIlraith |
| 2023 | STORM: Efficient Stochastic Transformer based World Models for Reinforcement Learning. Weipu Zhang, Gang Wang, Jian Sun, Yetian Yuan, Gao Huang |
| 2023 | STREAMER: Streaming Representation Learning and Event Segmentation in a Hierarchical Manner. Ramy Mounir, Sujal Vijayaraghavan, Sudeep Sarkar |
| 2023 | STXD: Structural and Temporal Cross-Modal Distillation for Multi-View 3D Object Detection. Sujin Jang, Dae Ung Jo, Sung Ju Hwang, Dongwook Lee, Daehyun Ji |
| 2023 | SUBP: Soft Uniform Block Pruning for 1×N Sparse CNNs Multithreading Acceleration. Jingyang Xiang, Siqi Li, Jun Chen, Guang Dai, Shipeng Bai, Yukai Ma, Yong Liu |
| 2023 | SUPA: A Lightweight Diagnostic Simulator for Machine Learning in Particle Physics. Atul Kumar Sinha, Daniele Paliotta, Bálint Máté, John A. Raine, Tobias Golling, François Fleuret |
| 2023 | SaVeNet: A Scalable Vector Network for Enhanced Molecular Representation Learning. Sarp Aykent, Tian Xia |
| 2023 | Saddle-to-Saddle Dynamics in Diagonal Linear Networks. Scott Pesme, Nicolas Flammarion |
| 2023 | Safe Exploration in Reinforcement Learning: A Generalized Formulation and Algorithms. Akifumi Wachi, Wataru Hashimoto, Xun Shen, Kazumune Hashimoto |
| 2023 | SafeDICE: Offline Safe Imitation Learning with Non-Preferred Demonstrations. Youngsoo Jang, Geon-Hyeong Kim, Jongmin Lee, Sungryull Sohn, Byoungjip Kim, Honglak Lee, Moontae Lee |
| 2023 | Safety Gymnasium: A Unified Safe Reinforcement Learning Benchmark. Jiaming Ji, Borong Zhang, Jiayi Zhou, Xuehai Pan, Weidong Huang, Ruiyang Sun, Yiran Geng, Yifan Zhong, Josef Dai, Yaodong Yang |
| 2023 | Safety Verification of Decision-Tree Policies in Continuous Time. Christian Schilling, Anna Lukina, Emir Demirovic, Kim Guldstrand Larsen |
| 2023 | Sample Complexity Bounds for Score-Matching: Causal Discovery and Generative Modeling. Zhenyu Zhu, Francesco Locatello, Volkan Cevher |
| 2023 | Sample Complexity for Quadratic Bandits: Hessian Dependent Bounds and Optimal Algorithms. Qian Yu, Yining Wang, Baihe Huang, Qi Lei, Jason D. Lee |
| 2023 | Sample Complexity of Forecast Aggregation. Tao Lin, Yiling Chen |
| 2023 | Sample Complexity of Goal-Conditioned Hierarchical Reinforcement Learning. Arnaud Robert, Ciara Pike-Burke, Aldo A. Faisal |
| 2023 | Sample Efficient Reinforcement Learning in Mixed Systems through Augmented Samples and Its Applications to Queueing Networks. Honghao Wei, Xin Liu, Weina Wang, Lei Ying |
| 2023 | Sample based Explanations via Generalized Representers. Che-Ping Tsai, Chih-Kuan Yeh, Pradeep Ravikumar |
| 2023 | Sample-Conditioned Hypothesis Stability Sharpens Information-Theoretic Generalization Bounds. Ziqiao Wang, Yongyi Mao |
| 2023 | Sample-Efficient and Safe Deep Reinforcement Learning via Reset Deep Ensemble Agents. Woojun Kim, Yongjae Shin, Jongeui Park, Youngchul Sung |
| 2023 | Sample-efficient Multi-objective Molecular Optimization with GFlowNets. Yiheng Zhu, Jialu Wu, Chaowen Hu, Jiahuan Yan, Chang-Yu Hsieh, Tingjun Hou, Jian Wu |
| 2023 | Sampling from Gaussian Process Posteriors using Stochastic Gradient Descent. Jihao Andreas Lin, Javier Antorán, Shreyas Padhy, David Janz, José Miguel Hernández-Lobato, Alexander Terenin |
| 2023 | Sampling from Structured Log-Concave Distributions via a Soft-Threshold Dikin Walk. Oren Mangoubi, Nisheeth K. Vishnoi |
| 2023 | Sampling weights of deep neural networks. Erik Lien Bolager, Iryna Burak, Chinmay Datar, Qing Sun, Felix Dietrich |
| 2023 | SatBird: a Dataset for Bird Species Distribution Modeling using Remote Sensing and Citizen Science Data. Mélisande Teng, Amna Elmustafa, Benjamin Akera, Yoshua Bengio, Hager Radi Abdelwahed, Hugo Larochelle, David Rolnick |
| 2023 | SatLM: Satisfiability-Aided Language Models Using Declarative Prompting. Xi Ye, Qiaochu Chen, Isil Dillig, Greg Durrett |
| 2023 | Saving 100x Storage: Prototype Replay for Reconstructing Training Sample Distribution in Class-Incremental Semantic Segmentation. Jinpeng Chen, Runmin Cong, Yuxuan Luo, Horace Ho-Shing Ip, Sam Kwong |
| 2023 | Scalable 3D Captioning with Pretrained Models. Tiange Luo, Chris Rockwell, Honglak Lee, Justin Johnson |
| 2023 | Scalable Fair Influence Maximization. Xiaobin Rui, Zhixiao Wang, Jiayu Zhao, Lichao Sun, Wei Chen |
| 2023 | Scalable Membership Inference Attacks via Quantile Regression. Martín Bertrán, Shuai Tang, Aaron Roth, Michael Kearns, Jamie Morgenstern, Steven Wu |
| 2023 | Scalable Primal-Dual Actor-Critic Method for Safe Multi-Agent RL with General Utilities. Donghao Ying, Yunkai Zhang, Yuhao Ding, Alec Koppel, Javad Lavaei |
| 2023 | Scalable Transformer for PDE Surrogate Modeling. Zijie Li, Dule Shu, Amir Barati Farimani |
| 2023 | Scalarization for Multi-Task and Multi-Domain Learning at Scale. Amelie Royer, Tijmen Blankevoort, Babak Ehteshami Bejnordi |
| 2023 | Scale Alone Does not Improve Mechanistic Interpretability in Vision Models. Roland S. Zimmermann, Thomas Klein, Wieland Brendel |
| 2023 | Scale-Space Hypernetworks for Efficient Biomedical Image Analysis. Jose Javier Gonzalez Ortiz, John V. Guttag, Adrian V. Dalca |
| 2023 | Scale-teaching: Robust Multi-scale Training for Time Series Classification with Noisy Labels. Zhen Liu, Peitian Ma, Dongliang Chen, Wenbin Pei, Qianli Ma |
| 2023 | ScaleLong: Towards More Stable Training of Diffusion Model via Scaling Network Long Skip Connection. Zhongzhan Huang, Pan Zhou, Shuicheng Yan, Liang Lin |
| 2023 | Scaling Data-Constrained Language Models. Niklas Muennighoff, Alexander M. Rush, Boaz Barak, Teven Le Scao, Nouamane Tazi, Aleksandra Piktus, Sampo Pyysalo, Thomas Wolf, Colin A. Raffel |
| 2023 | Scaling Laws for Hyperparameter Optimization. Arlind Kadra, Maciej Janowski, Martin Wistuba, Josif Grabocka |
| 2023 | Scaling MLPs: A Tale of Inductive Bias. Gregor Bachmann, Sotiris Anagnostidis, Thomas Hofmann |
| 2023 | Scaling Open-Vocabulary Object Detection. Matthias Minderer, Alexey A. Gritsenko, Neil Houlsby |
| 2023 | Scaling Riemannian Diffusion Models. Aaron Lou, Minkai Xu, Adam Farris, Stefano Ermon |
| 2023 | Scaling Up Differentially Private LASSO Regularized Logistic Regression via Faster Frank-Wolfe Iterations. Edward Raff, Amol Khanna, Fred Lu |
| 2023 | Scaling laws for language encoding models in fMRI. Richard J. Antonello, Aditya R. Vaidya, Alexander Huth |
| 2023 | Scan and Snap: Understanding Training Dynamics and Token Composition in 1-layer Transformer. Yuandong Tian, Yiping Wang, Beidi Chen, Simon S. Du |
| 2023 | Scattering Vision Transformer: Spectral Mixing Matters. Badri N. Patro, Vijay Agneeswaran |
| 2023 | Scenario Diffusion: Controllable Driving Scenario Generation With Diffusion. Ethan Pronovost, Meghana Reddy Ganesina, Noureldin Hendy, Zeyu Wang, Andres Morales, Kai Wang, Nick Roy |
| 2023 | ScenarioNet: Open-Source Platform for Large-Scale Traffic Scenario Simulation and Modeling. Quanyi Li, Zhenghao Mark Peng, Lan Feng, Zhizheng Liu, Chenda Duan, Wenjie Mo, Bolei Zhou |
| 2023 | SceneScape: Text-Driven Consistent Scene Generation. Rafail Fridman, Amit Abecasis, Yoni Kasten, Tali Dekel |
| 2023 | Schema-learning and rebinding as mechanisms of in-context learning and emergence. Sivaramakrishnan Swaminathan, Antoine Dedieu, Rajkumar Vasudeva Raju, Murray Shanahan, Miguel Lázaro-Gredilla, Dileep George |
| 2023 | Scientific Document Retrieval using Multi-level Aspect-based Queries. Jianyou Wang, Kaicheng Wang, Xiaoyue Wang, Prudhviraj Naidu, Leon Bergen, Ramamohan Paturi |
| 2023 | Scissorhands: Exploiting the Persistence of Importance Hypothesis for LLM KV Cache Compression at Test Time. Zichang Liu, Aditya Desai, Fangshuo Liao, Weitao Wang, Victor Xie, Zhaozhuo Xu, Anastasios Kyrillidis, Anshumali Shrivastava |
| 2023 | Score-based Data Assimilation. François Rozet, Gilles Louppe |
| 2023 | Score-based Generative Modeling through Stochastic Evolution Equations in Hilbert Spaces. Sungbin Lim, Eun-Bi Yoon, Taehyun Byun, Taewon Kang, Seungwoo Kim, Kyungjae Lee, Sungjoon Choi |
| 2023 | Score-based Generative Models with Lévy Processes. Eun-Bi Yoon, Keehun Park, Sungwoong Kim, Sungbin Lim |
| 2023 | Score-based Source Separation with Applications to Digital Communication Signals. Tejas Jayashankar, Gary C. F. Lee, Alejandro Lancho, Amir Weiss, Yury Polyanskiy, Gregory W. Wornell |
| 2023 | Searching for Optimal Per-Coordinate Step-sizes with Multidimensional Backtracking. Frederik Kunstner, Victor Sanches Portella, Mark Schmidt, Nicholas J. A. Harvey |
| 2023 | Secure Out-of-Distribution Task Generalization with Energy-Based Models. Shengzhuang Chen, Long-Kai Huang, Jonathan Richard Schwarz, Yilun Du, Ying Wei |
| 2023 | Seeing is not Believing: Robust Reinforcement Learning against Spurious Correlation. Wenhao Ding, Laixi Shi, Yuejie Chi, Ding Zhao |
| 2023 | Seeing is not always believing: Benchmarking Human and Model Perception of AI-Generated Images. Zeyu Lu, Di Huang, Lei Bai, Jingjing Qu, Chengyue Wu, Xihui Liu, Wanli Ouyang |
| 2023 | SegRefiner: Towards Model-Agnostic Segmentation Refinement with Discrete Diffusion Process. Mengyu Wang, Henghui Ding, Jun Hao Liew, Jiajun Liu, Yao Zhao, Yunchao Wei |
| 2023 | Segment Any Point Cloud Sequences by Distilling Vision Foundation Models. Youquan Liu, Lingdong Kong, Jun Cen, Runnan Chen, Wenwei Zhang, Liang Pan, Kai Chen, Ziwei Liu |
| 2023 | Segment Anything in 3D with NeRFs. Jiazhong Cen, Zanwei Zhou, Jiemin Fang, Chen Yang, Wei Shen, Lingxi Xie, Dongsheng Jiang, Xiaopeng Zhang, Qi Tian |
| 2023 | Segment Anything in High Quality. Lei Ke, Mingqiao Ye, Martin Danelljan, Yifan Liu, Yu-Wing Tai, Chi-Keung Tang, Fisher Yu |
| 2023 | Segment Everything Everywhere All at Once. Xueyan Zou, Jianwei Yang, Hao Zhang, Feng Li, Linjie Li, Jianfeng Wang, Lijuan Wang, Jianfeng Gao, Yong Jae Lee |
| 2023 | Selective Amnesia: A Continual Learning Approach to Forgetting in Deep Generative Models. Alvin Heng, Harold Soh |
| 2023 | Selective Sampling and Imitation Learning via Online Regression. Ayush Sekhari, Karthik Sridharan, Wen Sun, Runzhe Wu |
| 2023 | Selectively Sharing Experiences Improves Multi-Agent Reinforcement Learning. Matthias Gerstgrasser, Tom Danino, Sarah Keren |
| 2023 | Selectivity Drives Productivity: Efficient Dataset Pruning for Enhanced Transfer Learning. Yihua Zhang, Yimeng Zhang, Aochuan Chen, Jinghan Jia, Jiancheng Liu, Gaowen Liu, Mingyi Hong, Shiyu Chang, Sijia Liu |
| 2023 | Self-Adaptive Motion Tracking against On-body Displacement of Flexible Sensors. Chengxu Zuo, Jiawei Fang, Shihui Guo, Yipeng Qin |
| 2023 | Self-Chained Image-Language Model for Video Localization and Question Answering. Shoubin Yu, Jaemin Cho, Prateek Yadav, Mohit Bansal |
| 2023 | Self-Consistent Velocity Matching of Probability Flows. Lingxiao Li, Samuel Hurault, Justin M. Solomon |
| 2023 | Self-Correcting Bayesian Optimization through Bayesian Active Learning. Carl Hvarfner, Erik Hellsten, Frank Hutter, Luigi Nardi |
| 2023 | Self-Evaluation Guided Beam Search for Reasoning. Yuxi Xie, Kenji Kawaguchi, Yiran Zhao, James Xu Zhao, Min-Yen Kan, Junxian He, Michael Qizhe Xie |
| 2023 | Self-Predictive Universal AI. Elliot Catt, Jordi Grau-Moya, Marcus Hutter, Matthew Aitchison, Tim Genewein, Grégoire Delétang, Kevin Li, Joel Veness |
| 2023 | Self-Refine: Iterative Refinement with Self-Feedback. Aman Madaan, Niket Tandon, Prakhar Gupta, Skyler Hallinan, Luyu Gao, Sarah Wiegreffe, Uri Alon, Nouha Dziri, Shrimai Prabhumoye, Yiming Yang, Shashank Gupta, Bodhisattwa Prasad Majumder, Katherine Hermann, Sean Welleck, Amir Yazdanbakhsh, Peter Clark |
| 2023 | Self-Supervised Learning of Representations for Space Generates Multi-Modular Grid Cells. Rylan Schaeffer, Mikail Khona, Tzuhsuan Ma, Cristóbal Eyzaguirre, Sanmi Koyejo, Ila Fiete |
| 2023 | Self-Supervised Learning with Lie Symmetries for Partial Differential Equations. Grégoire Mialon, Quentin Garrido, Hannah Lawrence, Danyal Rehman, Yann LeCun, Bobak T. Kiani |
| 2023 | Self-Supervised Motion Magnification by Backpropagating Through Optical Flow. Zhaoying Pan, Daniel Geng, Andrew Owens |
| 2023 | Self-Supervised Reinforcement Learning that Transfers using Random Features. Boyuan Chen, Chuning Zhu, Pulkit Agrawal, Kaiqing Zhang, Abhishek Gupta |
| 2023 | Self-Supervised Visual Acoustic Matching. Arjun Somayazulu, Changan Chen, Kristen Grauman |
| 2023 | Self-Weighted Contrastive Learning among Multiple Views for Mitigating Representation Degeneration. Jie Xu, Shuo Chen, Yazhou Ren, Xiaoshuang Shi, Hengtao Shen, Gang Niu, Xiaofeng Zhu |
| 2023 | Self-supervised Graph Neural Networks via Low-Rank Decomposition. Liang Yang, Runjie Shi, Qiuliang Zhang, Bingxin Niu, Zhen Wang, Xiaochun Cao, Chuan Wang |
| 2023 | Self-supervised Object-Centric Learning for Videos. Görkay Aydemir, Weidi Xie, Fatma Güney |
| 2023 | Self-supervised video pretraining yields robust and more human-aligned visual representations. Nikhil Parthasarathy, S. M. Ali Eslami, João Carreira, Olivier J. Hénaff |
| 2023 | Semantic HELM: A Human-Readable Memory for Reinforcement Learning. Fabian Paischer, Thomas Adler, Markus Hofmarcher, Sepp Hochreiter |
| 2023 | Semantic Image Synthesis with Unconditional Generator. Jungwoo Chae, Hyunin Cho, Sooyeon Go, Kyungmook Choi, Youngjung Uh |
| 2023 | Semantic segmentation of sparse irregular point clouds for leaf/wood discrimination. Yuchen Bai, Jean-Baptiste Durand, Grégoire Vincent, Florence Forbes |
| 2023 | Semi-Implicit Denoising Diffusion Models (SIDDMs). Yanwu Xu, Mingming Gong, Shaoan Xie, Wei Wei, Matthias Grundmann, Kayhan Batmanghelich, Tingbo Hou |
| 2023 | Semi-Supervised Contrastive Learning for Deep Regression with Ordinal Rankings from Spectral Seriation. Weihang Dai, Yao Du, Hanru Bai, Kwang-Ting Cheng, Xiaomeng Li |
| 2023 | Semi-Supervised Domain Generalization with Known and Unknown Classes. Lei Zhang, Ji-Fu Li, Wei Wang |
| 2023 | Sensitivity in Translation Averaging. Lalit Manam, Venu Madhav Govindu |
| 2023 | Separable Physics-Informed Neural Networks. Junwoo Cho, Seungtae Nam, Hyunmo Yang, Seok-Bae Yun, Youngjoon Hong, Eunbyung Park |
| 2023 | Sequential Memory with Temporal Predictive Coding. Mufeng Tang, Helen Barron, Rafal Bogacz |
| 2023 | Sequential Predictive Two-Sample and Independence Testing. Aleksandr Podkopaev, Aaditya Ramdas |
| 2023 | Sequential Preference Ranking for Efficient Reinforcement Learning from Human Feedback. Minyoung Hwang, Gunmin Lee, Hogun Kee, Chanwoo Kim, Kyungjae Lee, Songhwai Oh |
| 2023 | Sequential Subset Matching for Dataset Distillation. Jiawei Du, Qin Shi, Joey Tianyi Zhou |
| 2023 | Setting the Trap: Capturing and Defeating Backdoors in Pretrained Language Models through Honeypots. Ruixiang (Ryan) Tang, Jiayi Yuan, Yiming Li, Zirui Liu, Rui Chen, Xia Hu |
| 2023 | Shape Non-rigid Kinematics (SNK): A Zero-Shot Method for Non-Rigid Shape Matching via Unsupervised Functional Map Regularized Reconstruction. Souhaib Attaiki, Maks Ovsjanikov |
| 2023 | Shared Adversarial Unlearning: Backdoor Mitigation by Unlearning Shared Adversarial Examples. Shaokui Wei, Mingda Zhang, Hongyuan Zha, Baoyuan Wu |
| 2023 | Sharp Bounds for Generalized Causal Sensitivity Analysis. Dennis Frauen, Valentyn Melnychuk, Stefan Feuerriegel |
| 2023 | Sharp Calibrated Gaussian Processes. Alexandre Capone, Sandra Hirche, Geoff Pleiss |
| 2023 | Sharp Recovery Thresholds of Tensor PCA Spectral Algorithms. Michael Feldman, David Donoho |
| 2023 | Sharp Spectral Rates for Koopman Operator Learning. Vladimir Kostic, Karim Lounici, Pietro Novelli, Massimiliano Pontil |
| 2023 | Sharpness Minimization Algorithms Do Not Only Minimize Sharpness To Achieve Better Generalization. Kaiyue Wen, Zhiyuan Li, Tengyu Ma |
| 2023 | Sharpness-Aware Minimization Leads to Low-Rank Features. Maksym Andriushchenko, Dara Bahri, Hossein Mobahi, Nicolas Flammarion |
| 2023 | Sheaf Hypergraph Networks. Iulia Duta, Giulia Cassarà, Fabrizio Silvestri, Pietro Lió |
| 2023 | SheetCopilot: Bringing Software Productivity to the Next Level through Large Language Models. Hongxin Li, Jingran Su, Yuntao Chen, Qing Li, Zhaoxiang Zhang |
| 2023 | ShiftAddViT: Mixture of Multiplication Primitives Towards Efficient Vision Transformer. Haoran You, Huihong Shi, Yipin Guo, Yingyan Lin |
| 2023 | Should I Stop or Should I Go: Early Stopping with Heterogeneous Populations. Hammaad Adam, Fan Yin, Huibin Hu, Neil A. Tenenholtz, Lorin Crawford, Lester Mackey, Allison Koenecke |
| 2023 | Should Under-parameterized Student Networks Copy or Average Teacher Weights? Berfin Simsek, Amire Bendjeddou, Wulfram Gerstner, Johanni Brea |
| 2023 | Should We Learn Most Likely Functions or Parameters? Shikai Qiu, Tim G. J. Rudner, Sanyam Kapoor, Andrew Gordon Wilson |
| 2023 | SiT Dataset: Socially Interactive Pedestrian Trajectory Dataset for Social Navigation Robots. Jong Wook Bae, Jungho Kim, Junyong Yun, Changwon Kang, Jeongseon Choi, Chanhyeok Kim, Junho Lee, Jungwook Choi, Jun Won Choi |
| 2023 | Siamese Masked Autoencoders. Agrim Gupta, Jiajun Wu, Jia Deng, Fei-Fei Li |
| 2023 | SimFBO: Towards Simple, Flexible and Communication-efficient Federated Bilevel Learning. Yifan Yang, Peiyao Xiao, Kaiyi Ji |
| 2023 | SimMMDG: A Simple and Effective Framework for Multi-modal Domain Generalization. Hao Dong, Ismail Nejjar, Han Sun, Eleni N. Chatzi, Olga Fink |
| 2023 | SimMTM: A Simple Pre-Training Framework for Masked Time-Series Modeling. Jiaxiang Dong, Haixu Wu, Haoran Zhang, Li Zhang, Jianmin Wang, Mingsheng Long |
| 2023 | Similarity, Compression and Local Steps: Three Pillars of Efficient Communications for Distributed Variational Inequalities. Aleksandr Beznosikov, Martin Takác, Alexander V. Gasnikov |
| 2023 | Similarity-based cooperative equilibrium. Caspar Oesterheld, Johannes Treutlein, Roger B. Grosse, Vincent Conitzer, Jakob N. Foerster |
| 2023 | Simple and Asymmetric Graph Contrastive Learning without Augmentations. Teng Xiao, Huaisheng Zhu, Zhengyu Chen, Suhang Wang |
| 2023 | Simple and Controllable Music Generation. Jade Copet, Felix Kreuk, Itai Gat, Tal Remez, David Kant, Gabriel Synnaeve, Yossi Adi, Alexandre Défossez |
| 2023 | Simple, Scalable and Effective Clustering via One-Dimensional Projections. Moses Charikar, Monika Henzinger, Lunjia Hu, Maximilian Vötsch, Erik Waingarten |
| 2023 | Simplicity Bias in 1-Hidden Layer Neural Networks. Depen Morwani, Jatin Batra, Prateek Jain, Praneeth Netrapalli |
| 2023 | Simplifying Neural Network Training Under Class Imbalance. Ravid Shwartz-Ziv, Micah Goldblum, Yucen Lily Li, C. Bayan Bruss, Andrew Gordon Wilson |
| 2023 | Simplifying and Empowering Transformers for Large-Graph Representations. Qitian Wu, Wentao Zhao, Chenxiao Yang, Hengrui Zhang, Fan Nie, Haitian Jiang, Yatao Bian, Junchi Yan |
| 2023 | Simultaneous embedding of multiple attractor manifolds in a recurrent neural network using constrained gradient optimization. Haggai Agmon, Yoram Burak |
| 2023 | Single-Call Stochastic Extragradient Methods for Structured Non-monotone Variational Inequalities: Improved Analysis under Weaker Conditions. Sayantan Choudhury, Eduard Gorbunov, Nicolas Loizou |
| 2023 | Single-Pass Pivot Algorithm for Correlation Clustering. Keep it simple! Konstantin Makarychev, Sayak Chakrabarty |
| 2023 | Single-Stage Visual Query Localization in Egocentric Videos. Hanwen Jiang, Santhosh Kumar Ramakrishnan, Kristen Grauman |
| 2023 | SituatedGen: Incorporating Geographical and Temporal Contexts into Generative Commonsense Reasoning. Yunxiang Zhang, Xiaojun Wan |
| 2023 | Sketching Algorithms for Sparse Dictionary Learning: PTAS and Turnstile Streaming. Gregory Dexter, Petros Drineas, David P. Woodruff, Taisuke Yasuda |
| 2023 | Sketchy: Memory-efficient Adaptive Regularization with Frequent Directions. Vladimir Feinberg, Xinyi Chen, Y. Jennifer Sun, Rohan Anil, Elad Hazan |
| 2023 | Skill-it! A data-driven skills framework for understanding and training language models. Mayee F. Chen, Nicholas Roberts, Kush Bhatia, Jue Wang, Ce Zhang, Frederic Sala, Christopher Ré |
| 2023 | Slimmed Asymmetrical Contrastive Learning and Cross Distillation for Lightweight Model Training. Jian Meng, Li Yang, Kyungmin Lee, Jinwoo Shin, Deliang Fan, Jae-sun Seo |
| 2023 | Slot-guided Volumetric Object Radiance Fields. Di Qi, Tong Yang, Xiangyu Zhang |
| 2023 | SlotDiffusion: Object-Centric Generative Modeling with Diffusion Models. Ziyi Wu, Jingyu Hu, Wuyue Lu, Igor Gilitschenski, Animesh Garg |
| 2023 | Slow and Weak Attractor Computation Embedded in Fast and Strong E-I Balanced Neural Dynamics. Xiaohan Lin, Liyuan Li, Boxin Shi, Tiejun Huang, Yuanyuan Mi, Si Wu |
| 2023 | Small Total-Cost Constraints in Contextual Bandits with Knapsacks, with Application to Fairness. Evgenii Chzhen, Christophe Giraud, Zhen Li, Gilles Stoltz |
| 2023 | Small batch deep reinforcement learning. Johan S. Obando-Ceron, Marc G. Bellemare, Pablo Samuel Castro |
| 2023 | SmooSeg: Smoothness Prior for Unsupervised Semantic Segmentation. Mengcheng Lan, Xinjiang Wang, Yiping Ke, Jiaxing Xu, Litong Feng, Wayne Zhang |
| 2023 | Smooth Flipping Probability for Differential Private Sign Random Projection Methods. Ping Li, Xiaoyun Li |
| 2023 | Smooth, exact rotational symmetrization for deep learning on point clouds. Sergey Pozdnyakov, Michele Ceriotti |
| 2023 | SmoothHess: ReLU Network Feature Interactions via Stein's Lemma. Max Torop, Aria Masoomi, Davin Hill, Kivanç Köse, Stratis Ioannidis, Jennifer G. Dy |
| 2023 | Smoothed Analysis of Sequential Probability Assignment. Alankrita Bhatt, Nika Haghtalab, Abhishek Shetty |
| 2023 | Smoothed Online Learning for Prediction in Piecewise Affine Systems. Adam Block, Max Simchowitz, Russ Tedrake |
| 2023 | Smoothing the Landscape Boosts the Signal for SGD: Optimal Sample Complexity for Learning Single Index Models. Alex Damian, Eshaan Nichani, Rong Ge, Jason D. Lee |
| 2023 | SnapFusion: Text-to-Image Diffusion Model on Mobile Devices within Two Seconds. Yanyu Li, Huan Wang, Qing Jin, Ju Hu, Pavlo Chemerys, Yun Fu, Yanzhi Wang, Sergey Tulyakov, Jian Ren |
| 2023 | SoTTA: Robust Test-Time Adaptation on Noisy Data Streams. Taesik Gong, Yewon Kim, Taeckyung Lee, Sorn Chottananurak, Sung-Ju Lee |
| 2023 | Social Motion Prediction with Cognitive Hierarchies. Wentao Zhu, Jason Qin, Yuke Lou, Hang Ye, Xiaoxuan Ma, Hai Ci, Yizhou Wang |
| 2023 | Soft-Unification in Deep Probabilistic Logic. Jaron Maene, Luc De Raedt |
| 2023 | Softmax Output Approximation for Activation Memory-Efficient Training of Attention-based Networks. Changhyeon Lee, Seulki Lee |
| 2023 | Solving Inverse Physics Problems with Score Matching. Benjamin J. Holzschuh, Simona Vegetti, Nils Thuerey |
| 2023 | Solving Linear Inverse Problems Provably via Posterior Sampling with Latent Diffusion Models. Litu Rout, Negin Raoof, Giannis Daras, Constantine Caramanis, Alex Dimakis, Sanjay Shakkottai |
| 2023 | Solving a Class of Non-Convex Minimax Optimization in Federated Learning. Xidong Wu, Jianhui Sun, Zhengmian Hu, Aidong Zhang, Heng Huang |
| 2023 | Sorting with Predictions. Xingjian Bai, Christian Coester |
| 2023 | SoundCam: A Dataset for Finding Humans Using Room Acoustics. Mason L. Wang, Samuel Clarke, Jui-Hsien Wang, Ruohan Gao, Jiajun Wu |
| 2023 | Sounding Bodies: Modeling 3D Spatial Sound of Humans Using Body Pose and Audio. Xudong Xu, Dejan Markovic, Jacob Sandakly, Todd Keebler, Steven Krenn, Alexander Richard |
| 2023 | Sparse Deep Learning for Time Series Data: Theory and Applications. Mingxuan Zhang, Yan Sun, Faming Liang |
| 2023 | Sparse Modular Activation for Efficient Sequence Modeling. Liliang Ren, Yang Liu, Shuohang Wang, Yichong Xu, Chenguang Zhu, ChengXiang Zhai |
| 2023 | Sparse Parameterization for Epitomic Dataset Distillation. Xing Wei, Anjia Cao, Funing Yang, Zhiheng Ma |
| 2023 | SparseProp: Efficient Event-Based Simulation and Training of Sparse Recurrent Spiking Neural Networks. Rainer Engelken |
| 2023 | Sparsity-Preserving Differentially Private Training of Large Embedding Models. Badih Ghazi, Yangsibo Huang, Pritish Kamath, Ravi Kumar, Pasin Manurangsi, Amer Sinha, Chiyuan Zhang |
| 2023 | Spatial-frequency channels, shape bias, and adversarial robustness. Ajay Subramanian, Elena Sizikova, Najib J. Majaj, Denis G. Pelli |
| 2023 | SpatialRank: Urban Event Ranking with NDCG Optimization on Spatiotemporal Data. Bang An, Xun Zhou, Yongjian Zhong, Tianbao Yang |
| 2023 | Spatially Resolved Gene Expression Prediction from Histology Images via Bi-modal Contrastive Learning. Ronald Xie, Kuan Pang, Sai Chung, Catia Perciani, Sonya MacParland, Bo Wang, Gary D. Bader |
| 2023 | Spatio-Angular Convolutions for Super-resolution in Diffusion MRI. Matthew Lyon, Paul A. Armitage, Mauricio A. Álvarez |
| 2023 | SpecTr: Fast Speculative Decoding via Optimal Transport. Ziteng Sun, Ananda Theertha Suresh, Jae Hun Ro, Ahmad Beirami, Himanshu Jain, Felix X. Yu |
| 2023 | Species196: A One-Million Semi-supervised Dataset for Fine-grained Species Recognition. Wei He, Kai Han, Ying Nie, Chengcheng Wang, Yunhe Wang |
| 2023 | Spectral Co-Distillation for Personalized Federated Learning. Zihan Chen, Howard H. Yang, Tony Q. S. Quek, Kai Fong Ernest Chong |
| 2023 | Spectral Entry-wise Matrix Estimation for Low-Rank Reinforcement Learning. Stefan Stojanovic, Yassir Jedra, Alexandre Proutière |
| 2023 | Spectral Evolution and Invariance in Linear-width Neural Networks. Zhichao Wang, Andrew Engel, Anand D. Sarwate, Ioana Dumitriu, Tony Chiang |
| 2023 | Spectral Invariant Learning for Dynamic Graphs under Distribution Shifts. Zeyang Zhang, Xin Wang, Ziwei Zhang, Zhou Qin, Weigao Wen, Hui Xue, Haoyang Li, Wenwu Zhu |
| 2023 | Speculative Decoding with Big Little Decoder. Sehoon Kim, Karttikeya Mangalam, Suhong Moon, Jitendra Malik, Michael W. Mahoney, Amir Gholami, Kurt Keutzer |
| 2023 | Spike-driven Transformer. Man Yao, Jiakui Hu, Zhaokun Zhou, Li Yuan, Yonghong Tian, Bo Xu, Guoqi Li |
| 2023 | Spiking PointNet: Spiking Neural Networks for Point Clouds. Dayong Ren, Zhe Ma, Yuanpei Chen, Weihang Peng, Xiaode Liu, Yuhan Zhang, Yufei Guo |
| 2023 | SpokenWOZ: A Large-Scale Speech-Text Benchmark for Spoken Task-Oriented Dialogue Agents. Shuzheng Si, Wentao Ma, Haoyu Gao, Yuchuan Wu, Ting-En Lin, Yinpei Dai, Hangyu Li, Rui Yan, Fei Huang, Yongbin Li |
| 2023 | Spontaneous symmetry breaking in generative diffusion models. Gabriel Raya, Luca Ambrogioni |
| 2023 | Spuriosity Didn't Kill the Classifier: Using Invariant Predictions to Harness Spurious Features. Cian Eastwood, Shashank Singh, Andrei Liviu Nicolicioiu, Marin Vlastelica Pogancic, Julius von Kügelgen, Bernhard Schölkopf |
| 2023 | Spuriosity Rankings: Sorting Data to Measure and Mitigate Biases. Mazda Moayeri, Wenxiao Wang, Sahil Singla, Soheil Feizi |
| 2023 | Squared Neural Families: A New Class of Tractable Density Models. Russell Tsuchida, Cheng Soon Ong, Dino Sejdinovic |
| 2023 | Squeeze, Recover and Relabel: Dataset Condensation at ImageNet Scale From A New Perspective. Zeyuan Yin, Eric P. Xing, Zhiqiang Shen |
| 2023 | Stability Guarantees for Feature Attributions with Multiplicative Smoothing. Anton Xue, Rajeev Alur, Eric Wong |
| 2023 | Stability and Generalization of the Decentralized Stochastic Gradient Descent Ascent Algorithm. Miaoxi Zhu, Li Shen, Bo Du, Dacheng Tao |
| 2023 | Stability of Random Forests and Coverage of Random-Forest Prediction Intervals. Yan Wang, Huaiqing Wu, Dan Nettleton |
| 2023 | Stability-penalty-adaptive follow-the-regularized-leader: Sparsity, game-dependency, and best-of-both-worlds. Taira Tsuchiya, Shinji Ito, Junya Honda |
| 2023 | Stabilized Neural Differential Equations for Learning Dynamics with Explicit Constraints. Alistair White, Niki Kilbertus, Maximilian Gelbrecht, Niklas Boers |
| 2023 | Stabilizing the Optimization of Neural Signed Distance Functions and Finer Shape Representation. Huizong Yang, Yuxin Sun, Ganesh Sundaramoorthi, Anthony J. Yezzi |
| 2023 | Stable Bias: Evaluating Societal Representations in Diffusion Models. Sasha Luccioni, Christopher Akiki, Margaret Mitchell, Yacine Jernite |
| 2023 | Stable Diffusion is Unstable. Chengbin Du, Yanxi Li, Zhongwei Qiu, Chang Xu |
| 2023 | Stable Nonconvex-Nonconcave Training via Linear Interpolation. Thomas Pethick, Wanyun Xie, Volkan Cevher |
| 2023 | Stable Vectorization of Multiparameter Persistent Homology using Signed Barcodes as Measures. David Loiseaux, Luis Scoccola, Mathieu Carrière, Magnus Bakke Botnan, Steve Oudot |
| 2023 | Stable and low-precision training for large-scale vision-language models. Mitchell Wortsman, Tim Dettmers, Luke Zettlemoyer, Ari Morcos, Ali Farhadi, Ludwig Schmidt |
| 2023 | StableFDG: Style and Attention Based Learning for Federated Domain Generalization. Jungwuk Park, Dong-Jun Han, Jinho Kim, Shiqiang Wang, Christopher G. Brinton, Jaekyun Moon |
| 2023 | StableRep: Synthetic Images from Text-to-Image Models Make Strong Visual Representation Learners. Yonglong Tian, Lijie Fan, Phillip Isola, Huiwen Chang, Dilip Krishnan |
| 2023 | Stanford-ORB: A Real-World 3D Object Inverse Rendering Benchmark. Zhengfei Kuang, Yunzhi Zhang, Hong-Xing Yu, Samir Agarwala, Shangzhe Wu, Jiajun Wu |
| 2023 | Star-Shaped Denoising Diffusion Probabilistic Models. Andrey Okhotin, Dmitry Molchanov, Vladimir Arkhipkin, Grigory Bartosh, Viktor Ohanesian, Aibek Alanov, Dmitry P. Vetrov |
| 2023 | State Regularized Policy Optimization on Data with Dynamics Shift. Zhenghai Xue, Qingpeng Cai, Shuchang Liu, Dong Zheng, Peng Jiang, Kun Gai, Bo An |
| 2023 | State Sequences Prediction via Fourier Transform for Representation Learning. Mingxuan Ye, Yufei Kuang, Jie Wang, Yang rui, Wengang Zhou, Houqiang Li, Feng Wu |
| 2023 | State-Action Similarity-Based Representations for Off-Policy Evaluation. Brahma S. Pavse, Josiah Hanna |
| 2023 | State-space models with layer-wise nonlinearity are universal approximators with exponential decaying memory. Shida Wang, Beichen Xue |
| 2023 | State2Explanation: Concept-Based Explanations to Benefit Agent Learning and User Understanding. Devleena Das, Sonia Chernova, Been Kim |
| 2023 | StateMask: Explaining Deep Reinforcement Learning through State Mask. Zelei Cheng, Xian Wu, Jiahao Yu, Wenhai Sun, Wenbo Guo, Xinyu Xing |
| 2023 | Static and Sequential Malicious Attacks in the Context of Selective Forgetting. Chenxu Zhao, Wei Qian, Rex Ying, Mengdi Huai |
| 2023 | Statistical Analysis of Quantum State Learning Process in Quantum Neural Networks. Hao-Kai Zhang, Chenghong Zhu, Mingrui Jing, Xin Wang |
| 2023 | Statistical Guarantees for Variational Autoencoders using PAC-Bayesian Theory. Sokhna Diarra Mbacke, Florence Clerc, Pascal Germain |
| 2023 | Statistical Insights into HSIC in High Dimensions. Tao Zhang, Yaowu Zhang, Tingyou Zhou |
| 2023 | Statistical Knowledge Assessment for Large Language Models. Qingxiu Dong, Jingjing Xu, Lingpeng Kong, Zhifang Sui, Lei Li |
| 2023 | Statistical Limits of Adaptive Linear Models: Low-Dimensional Estimation and Inference. Licong Lin, Mufang Ying, Suvrojit Ghosh, Koulik Khamaru, Cun-Hui Zhang |
| 2023 | Statistical and Computational Trade-off in Multi-Agent Multi-Armed Bandits. Filippo Vannella, Alexandre Proutière, Jaeseong Jeong |
| 2023 | Statistically Valid Variable Importance Assessment through Conditional Permutations. Ahmad Chamma, Denis A. Engemann, Bertrand Thirion |
| 2023 | Stein Π-Importance Sampling. Congye Wang, Wilson Ye Chen, Heishiro Kanagawa, Chris J. Oates |
| 2023 | Stochastic Approximation Algorithms for Systems of Interacting Particles. Mohammad Reza Karimi Jaghargh, Ya-Ping Hsieh, Andreas Krause |
| 2023 | Stochastic Approximation Approaches to Group Distributionally Robust Optimization. Lijun Zhang, Peng Zhao, Zhen-Hua Zhuang, Tianbao Yang, Zhi-Hua Zhou |
| 2023 | Stochastic Collapse: How Gradient Noise Attracts SGD Dynamics Towards Simpler Subnetworks. Feng Chen, Daniel Kunin, Atsushi Yamamura, Surya Ganguli |
| 2023 | Stochastic Distributed Optimization under Average Second-order Similarity: Algorithms and Analysis. Dachao Lin, Yuze Han, Haishan Ye, Zhihua Zhang |
| 2023 | Stochastic Multi-armed Bandits: Optimal Trade-off among Optimality, Consistency, and Tail Risk. David Simchi-Levi, Zeyu Zheng, Feng Zhu |
| 2023 | Stochastic Optimal Control for Collective Variable Free Sampling of Molecular Transition Paths. Lars Holdijk, Yuanqi Du, Ferry Hooft, Priyank Jaini, Bernd Ensing, Max Welling |
| 2023 | StoryBench: A Multifaceted Benchmark for Continuous Story Visualization. Emanuele Bugliarello, H. Hernan Moraldo, Ruben Villegas, Mohammad Babaeizadeh, Mohammad Taghi Saffar, Han Zhang, Dumitru Erhan, Vittorio Ferrari, Pieter-Jan Kindermans, Paul Voigtlaender |
| 2023 | Strategic Apple Tasting. Keegan Harris, Chara Podimata, Zhiwei Steven Wu |
| 2023 | Strategic Behavior in Two-sided Matching Markets with Prediction-enhanced Preference-formation. Stefania Ionescu, Yuhao Du, Kenneth Joseph, Ancsa Hannak |
| 2023 | Strategic Classification under Unknown Personalized Manipulation. Han Shao, Avrim Blum, Omar Montasser |
| 2023 | Strategic Data Sharing between Competitors. Nikita Tsoy, Nikola Konstantinov |
| 2023 | Strategic Distribution Shift of Interacting Agents via Coupled Gradient Flows. Lauren E. Conger, Franca Hoffmann, Eric Mazumdar, Lillian J. Ratliff |
| 2023 | Strategyproof Voting under Correlated Beliefs. Daniel Halpern, Rachel Li, Ariel D. Procaccia |
| 2023 | StreamNet: Memory-Efficient Streaming Tiny Deep Learning Inference on the Microcontroller. Hong-Sheng Zheng, Yu-Yuan Liu, Chen-Fong Hsu, Tsung Tai Yeh |
| 2023 | Streaming Algorithms and Lower Bounds for Estimating Correlation Clustering Cost. Sepehr Assadi, Vihan Shah, Chen Wang |
| 2023 | Streaming Factor Trajectory Learning for Temporal Tensor Decomposition. Shikai Fang, Xin Yu, Shibo Li, Zheng Wang, Mike Kirby, Shandian Zhe |
| 2023 | Streaming PCA for Markovian Data. Syamantak Kumar, Purnamrita Sarkar |
| 2023 | StressID: a Multimodal Dataset for Stress Identification. Hava Chaptoukaev, Valeriya Strizhkova, Michele Panariello, Bianca Dalpaos, Aglind Reka, Valeria Manera, Susanne Thümmler, Esma Ismailova, Nicholas W. D. Evans, François Brémond, Massimiliano Todisco, Maria A. Zuluaga, Laura M. Ferrari |
| 2023 | Strong and Precise Modulation of Human Percepts via Robustified ANNs. Guy Gaziv, Michael J. Lee, James J. DiCarlo |
| 2023 | Structural Pruning for Diffusion Models. Gongfan Fang, Xinyin Ma, Xinchao Wang |
| 2023 | Structure Learning with Adaptive Random Neighborhood Informed MCMC. Xitong Liang, Alberto Caron, Samuel Livingstone, Jim E. Griffin |
| 2023 | Structure from Duplicates: Neural Inverse Graphics from a Pile of Objects. Tianhang Cheng, Wei-Chiu Ma, Kaiyu Guan, Antonio Torralba, Shenlong Wang |
| 2023 | Structure of universal formulas. Dmitry Yarotsky |
| 2023 | Structure-free Graph Condensation: From Large-scale Graphs to Condensed Graph-free Data. Xin Zheng, Miao Zhang, Chunyang Chen, Quoc Viet Hung Nguyen, Xingquan Zhu, Shirui Pan |
| 2023 | Structured Federated Learning through Clustered Additive Modeling. Jie Ma, Tianyi Zhou, Guodong Long, Jing Jiang, Chengqi Zhang |
| 2023 | Structured Neural Networks for Density Estimation and Causal Inference. Asic Q. Chen, Ruian Shi, Xiang Gao, Ricardo Baptista, Rahul G. Krishnan |
| 2023 | Structured Neural-PI Control with End-to-End Stability and Output Tracking Guarantees. Wenqi Cui, Yan Jiang, Baosen Zhang, Yuanyuan Shi |
| 2023 | Structured Prediction with Stronger Consistency Guarantees. Anqi Mao, Mehryar Mohri, Yutao Zhong |
| 2023 | Structured Semidefinite Programming for Recovering Structured Preconditioners. Arun Jambulapati, Jerry Li, Christopher Musco, Kirankumar Shiragur, Aaron Sidford, Kevin Tian |
| 2023 | Structured State Space Models for In-Context Reinforcement Learning. Chris Lu, Yannick Schroecker, Albert Gu, Emilio Parisotto, Jakob N. Foerster, Satinder Singh, Feryal M. P. Behbahani |
| 2023 | Structured Voronoi Sampling. Afra Amini, Li Du, Ryan Cotterell |
| 2023 | Students Parrot Their Teachers: Membership Inference on Model Distillation. Matthew Jagielski, Milad Nasr, Katherine Lee, Christopher A. Choquette-Choo, Nicholas Carlini, Florian Tramèr |
| 2023 | StyleDrop: Text-to-Image Synthesis of Any Style. Kihyuk Sohn, Lu Jiang, Jarred Barber, Kimin Lee, Nataniel Ruiz, Dilip Krishnan, Huiwen Chang, Yuanzhen Li, Irfan Essa, Michael Rubinstein, Yuan Hao, Glenn Entis, Irina Blok, Daniel Castro Chin |
| 2023 | StyleGAN knows Normal, Depth, Albedo, and More. Anand Bhattad, Daniel McKee, Derek Hoiem, David A. Forsyth |
| 2023 | StyleTTS 2: Towards Human-Level Text-to-Speech through Style Diffusion and Adversarial Training with Large Speech Language Models. Yinghao Aaron Li, Cong Han, Vinay S. Raghavan, Gavin Mischler, Nima Mesgarani |
| 2023 | Sub-optimality of the Naive Mean Field approximation for proportional high-dimensional Linear Regression. Jiaze Qiu |
| 2023 | Subclass-Dominant Label Noise: A Counterexample for the Success of Early Stopping. Yingbin Bai, Zhongyi Han, Erkun Yang, Jun Yu, Bo Han, Dadong Wang, Tongliang Liu |
| 2023 | Subject-driven Text-to-Image Generation via Apprenticeship Learning. Wenhu Chen, Hexiang Hu, Yandong Li, Nataniel Ruiz, Xuhui Jia, Ming-Wei Chang, William W. Cohen |
| 2023 | SubseasonalClimateUSA: A Dataset for Subseasonal Forecasting and Benchmarking. Soukayna Mouatadid, Paulo Orenstein, Genevieve Flaspohler, Miruna Oprescu, Judah Cohen, Franklyn Wang, Sean Knight, Maria Geogdzhayeva, Sam Levang, Ernest Fraenkel, Lester Mackey |
| 2023 | Subspace Identification for Multi-Source Domain Adaptation. Zijian Li, Ruichu Cai, Guangyi Chen, Boyang Sun, Zhifeng Hao, Kun Zhang |
| 2023 | Successor-Predecessor Intrinsic Exploration. Changmin Yu, Neil Burgess, Maneesh Sahani, Samuel J. Gershman |
| 2023 | SugarCrepe: Fixing Hackable Benchmarks for Vision-Language Compositionality. Cheng-Yu Hsieh, Jieyu Zhang, Zixian Ma, Aniruddha Kembhavi, Ranjay Krishna |
| 2023 | Suggesting Variable Order for Cylindrical Algebraic Decomposition via Reinforcement Learning. Fuqi Jia, Yuhang Dong, Minghao Liu, Pei Huang, Feifei Ma, Jian Zhang |
| 2023 | Supervised Pretraining Can Learn In-Context Reinforcement Learning. Jonathan Lee, Annie Xie, Aldo Pacchiano, Yash Chandak, Chelsea Finn, Ofir Nachum, Emma Brunskill |
| 2023 | Supply-Side Equilibria in Recommender Systems. Meena Jagadeesan, Nikhil Garg, Jacob Steinhardt |
| 2023 | Supported Value Regularization for Offline Reinforcement Learning. Yixiu Mao, Hongchang Zhang, Chen Chen, Yi Xu, Xiangyang Ji |
| 2023 | Survival Instinct in Offline Reinforcement Learning. Anqi Li, Dipendra Misra, Andrey Kolobov, Ching-An Cheng |
| 2023 | Survival Permanental Processes for Survival Analysis with Time-Varying Covariates. Hideaki Kim |
| 2023 | SustainGym: Reinforcement Learning Environments for Sustainable Energy Systems. Christopher Yeh, Victor Li, Rajeev Datta, Julio Arroyo, Nicolas Christianson, Chi Zhang, Yize Chen, Mohammad Mehdi Hosseini, Azarang Golmohammadi, Yuanyuan Shi, Yisong Yue, Adam Wierman |
| 2023 | SutraNets: Sub-series Autoregressive Networks for Long-Sequence, Probabilistic Forecasting. Shane Bergsma, Timothy Zeyl, Lei Guo |
| 2023 | Swap Agnostic Learning, or Characterizing Omniprediction via Multicalibration. Parikshit Gopalan, Michael P. Kim, Omer Reingold |
| 2023 | SwapPrompt: Test-Time Prompt Adaptation for Vision-Language Models. Xiaosong Ma, Jie Zhang, Song Guo, Wenchao Xu |
| 2023 | Swarm Reinforcement Learning for Adaptive Mesh Refinement. Niklas Freymuth, Philipp Dahlinger, Tobias Würth, Simon Reisch, Luise Kärger, Gerhard Neumann |
| 2023 | SwiFT: Swin 4D fMRI Transformer. Peter Yongho Kim, Junbeom Kwon, Sunghwan Joo, Sangyoon Bae, Donggyu Lee, Yoonho Jung, Shinjae Yoo, Jiook Cha, Taesup Moon |
| 2023 | SwiftSage: A Generative Agent with Fast and Slow Thinking for Complex Interactive Tasks. Bill Yuchen Lin, Yicheng Fu, Karina Yang, Faeze Brahman, Shiyu Huang, Chandra Bhagavatula, Prithviraj Ammanabrolu, Yejin Choi, Xiang Ren |
| 2023 | Switching Autoregressive Low-rank Tensor Models. Hyun Dong Lee, Andrew Warrington, Joshua I. Glaser, Scott W. Linderman |
| 2023 | Switching Temporary Teachers for Semi-Supervised Semantic Segmentation. Jaemin Na, Jung-Woo Ha, Hyung Jin Chang, Dongyoon Han, Wonjun Hwang |
| 2023 | Symbol-LLM: Leverage Language Models for Symbolic System in Visual Human Activity Reasoning. Xiaoqian Wu, Yonglu Li, Jianhua Sun, Cewu Lu |
| 2023 | Symbolic Discovery of Optimization Algorithms. Xiangning Chen, Chen Liang, Da Huang, Esteban Real, Kaiyuan Wang, Hieu Pham, Xuanyi Dong, Thang Luong, Cho-Jui Hsieh, Yifeng Lu, Quoc V. Le |
| 2023 | Symmetry-Informed Geometric Representation for Molecules, Proteins, and Crystalline Materials. Shengchao Liu, Weitao Du, Yanjing Li, Zhuoxinran Li, Zhiling Zheng, Chenru Duan, Zhi-Ming Ma, Omar Yaghi, Animashree Anandkumar, Christian Borgs, Jennifer T. Chayes, Hongyu Guo, Jian Tang |
| 2023 | SynMob: Creating High-Fidelity Synthetic GPS Trajectory Dataset for Urban Mobility Analysis. Yuanshao Zhu, Yongchao Ye, Ying Wu, Xiangyu Zhao, James Jian Qiao Yu |
| 2023 | SyncDiffusion: Coherent Montage via Synchronized Joint Diffusions. Yuseung Lee, Kunho Kim, HyunJin Kim, Minhyuk Sung |
| 2023 | SyncTREE: Fast Timing Analysis for Integrated Circuit Design through a Physics-informed Tree-based Graph Neural Network. Yuting Hu, Jiajie Li, Florian Klemme, Gi-Joon Nam, Tengfei Ma, Hussam Amrouch, Jinjun Xiong |
| 2023 | Synthcity: a benchmark framework for diverse use cases of tabular synthetic data. Zhaozhi Qian, Robert Davis, Mihaela van der Schaar |
| 2023 | Synthetic Combinations: A Causal Inference Framework for Combinatorial Interventions. Abhineet Agarwal, Anish Agarwal, Suhas Vijaykumar |
| 2023 | Synthetic Experience Replay. Cong Lu, Philip J. Ball, Yee Whye Teh, Jack Parker-Holder |
| 2023 | Synthetic-to-Real Pose Estimation with Geometric Reconstruction. Qiuxia Lin, Kerui Gu, Linlin Yang, Angela Yao |
| 2023 | Systematic Visual Reasoning through Object-Centric Relational Abstraction. Taylor W. Webb, Shanka Subhra Mondal, Jonathan D. Cohen |
| 2023 | T2I-CompBench: A Comprehensive Benchmark for Open-world Compositional Text-to-image Generation. Kaiyi Huang, Kaiyue Sun, Enze Xie, Zhenguo Li, Xihui Liu |
| 2023 | TACO: Temporal Latent Action-Driven Contrastive Loss for Visual Reinforcement Learning. Ruijie Zheng, Xiyao Wang, Yanchao Sun, Shuang Ma, Jieyu Zhao, Huazhe Xu, Hal Daumé III, Furong Huang |
| 2023 | TART: A plug-and-play Transformer module for task-agnostic reasoning. Kush Bhatia, Avanika Narayan, Christopher De Sa, Christopher Ré |
| 2023 | TD Convergence: An Optimization Perspective. Kavosh Asadi, Shoham Sabach, Yao Liu, Omer Gottesman, Rasool Fakoor |
| 2023 | TFLEX: Temporal Feature-Logic Embedding Framework for Complex Reasoning over Temporal Knowledge Graph. Xueyuan Lin, Haihong E, Chengjin Xu, Gengxian Zhou, Haoran Luo, Tianyi Hu, Fenglong Su, Ningyuan Li, Mingzhi Sun |
| 2023 | TIES-Merging: Resolving Interference When Merging Models. Prateek Yadav, Derek Tam, Leshem Choshen, Colin A. Raffel, Mohit Bansal |
| 2023 | TMT-VIS: Taxonomy-aware Multi-dataset Joint Training for Video Instance Segmentation. Rongkun Zheng, Lu Qi, Xi Chen, Yi Wang, Kun Wang, Yu Qiao, Hengshuang Zhao |
| 2023 | TOA: Task-oriented Active VQA. Xiaoying Xing, Mingfu Liang, Ying Wu |
| 2023 | TRIAGE: Characterizing and auditing training data for improved regression. Nabeel Seedat, Jonathan Crabbé, Zhaozhi Qian, Mihaela van der Schaar |
| 2023 | TWIGMA: A dataset of AI-Generated Images with Metadata From Twitter. Yiqun T. Chen, James Y. Zou |
| 2023 | TabMT: Generating tabular data with masked transformers. Manbir S. Gulati, Paul F. Roysdon |
| 2023 | Tackling Heavy-Tailed Rewards in Reinforcement Learning with Function Approximation: Minimax Optimal and Instance-Dependent Regret Bounds. Jiayi Huang, Han Zhong, Liwei Wang, Lin Yang |
| 2023 | Tailoring Self-Attention for Graph via Rooted Subtrees. Siyuan Huang, Yunchong Song, Jiayue Zhou, Zhouhan Lin |
| 2023 | Taking the neural sampling code very seriously: A data-driven approach for evaluating generative models of the visual system. Suhas Shrinivasan, Konstantin-Klemens Lurz, Kelli Restivo, George H. Denfield, Andreas S. Tolias, Edgar Y. Walker, Fabian H. Sinz |
| 2023 | Tame a Wild Camera: In-the-Wild Monocular Camera Calibration. Shengjie Zhu, Abhinav Kumar, Masa Hu, Xiaoming Liu |
| 2023 | Taming Local Effects in Graph-based Spatiotemporal Forecasting. Andrea Cini, Ivan Marisca, Daniele Zambon, Cesare Alippi |
| 2023 | Tanh Works Better with Asymmetry. Dongjin Kim, Woojeong Kim, Suhyun Kim |
| 2023 | Tanimoto Random Features for Scalable Molecular Machine Learning. Austin Tripp, Sergio Bacallado, Sukriti Singh, José Miguel Hernández-Lobato |
| 2023 | Tartarus: A Benchmarking Platform for Realistic And Practical Inverse Molecular Design. AkshatKumar Nigam, Robert Pollice, Gary Tom, Kjell Jorner, John Willes, Luca A. Thiede, Anshul Kundaje, Alán Aspuru-Guzik |
| 2023 | Task Arithmetic in the Tangent Space: Improved Editing of Pre-Trained Models. Guillermo Ortiz-Jiménez, Alessandro Favero, Pascal Frossard |
| 2023 | Task-Robust Pre-Training for Worst-Case Downstream Adaptation. Jianghui Wang, Yang Chen, Xingyu Xie, Cong Fang, Zhouchen Lin |
| 2023 | Task-aware Distributed Source Coding under Dynamic Bandwidth. Po-han Li, Sravan Kumar Ankireddy, Ruihan Philip Zhao, Hossein Nourkhiz Mahjoub, Ehsan Moradi-Pari, Ufuk Topcu, Sandeep Chinchali, Hyeji Kim |
| 2023 | Task-aware world model learning with meta weighting via bi-level optimization. Huining Yuan, Hongkun Dou, Xingyu Jiang, Yue Deng |
| 2023 | TaskMet: Task-driven Metric Learning for Model Learning. Dishank Bansal, Ricky T. Q. Chen, Mustafa Mukadam, Brandon Amos |
| 2023 | Taylor TD-learning. Michele Garibbo, Maxime Robeyns, Laurence Aitchison |
| 2023 | Team-PSRO for Learning Approximate TMECor in Large Team Games via Cooperative Reinforcement Learning. Stephen McAleer, Gabriele Farina, Gaoyue Zhou, Mingzhi Wang, Yaodong Yang, Tuomas Sandholm |
| 2023 | TempME: Towards the Explainability of Temporal Graph Neural Networks via Motif Discovery. Jialin Chen, Rex Ying |
| 2023 | Temperature Balancing, Layer-wise Weight Analysis, and Neural Network Training. Yefan Zhou, Tianyu Pang, Keqin Liu, Charles H. Martin, Michael W. Mahoney, Yaoqing Yang |
| 2023 | Template-free Articulated Neural Point Clouds for Reposable View Synthesis. Lukas Uzolas, Elmar Eisemann, Petr Kellnhofer |
| 2023 | Tempo Adaptation in Non-stationary Reinforcement Learning. Hyunin Lee, Yuhao Ding, Jongmin Lee, Ming Jin, Javad Lavaei, Somayeh Sojoudi |
| 2023 | Temporal Causal Mediation through a Point Process: Direct and Indirect Effects of Healthcare Interventions. Çaglar Hizli, St John, Anne Juuti, Tuure Saarinen, Kirsi Pietiläinen, Pekka Marttinen |
| 2023 | Temporal Conditioning Spiking Latent Variable Models of the Neural Response to Natural Visual Scenes. Gehua Ma, Runhao Jiang, Rui Yan, Huajin Tang |
| 2023 | Temporal Continual Learning with Prior Compensation for Human Motion Prediction. Jianwei Tang, Jiangxin Sun, Xiaotong Lin, Lifang Zhang, Wei-Shi Zheng, Jian-Fang Hu |
| 2023 | Temporal Dynamic Quantization for Diffusion Models. Junhyuk So, Jungwon Lee, Daehyun Ahn, Hyungjun Kim, Eunhyeok Park |
| 2023 | Temporal Graph Benchmark for Machine Learning on Temporal Graphs. Shenyang Huang, Farimah Poursafaei, Jacob Danovitch, Matthias Fey, Weihua Hu, Emanuele Rossi, Jure Leskovec, Michael M. Bronstein, Guillaume Rabusseau, Reihaneh Rabbany |
| 2023 | Temporal Robustness against Data poisoning. Wenxiao Wang, Soheil Feizi |
| 2023 | Temporally Disentangled Representation Learning under Unknown Nonstationarity. Xiangchen Song, Weiran Yao, Yewen Fan, Xinshuai Dong, Guangyi Chen, Juan Carlos Niebles, Eric P. Xing, Kun Zhang |
| 2023 | TensorNet: Cartesian Tensor Representations for Efficient Learning of Molecular Potentials. Guillem Simeon, Gianni De Fabritiis |
| 2023 | Test-Time Amendment with a Coarse Classifier for Fine-Grained Classification. Kanishk Jain, Shyamgopal Karthik, Vineet Gandhi |
| 2023 | Test-Time Distribution Normalization for Contrastively Learned Visual-language Models. Yifei Zhou, Juntao Ren, Fengyu Li, Ramin Zabih, Ser Nam Lim |
| 2023 | Test-time Adaptation of Discriminative Models via Diffusion Generative Feedback. Mihir Prabhudesai, Tsung-Wei Ke, Alexander C. Li, Deepak Pathak, Katerina Fragkiadaki |
| 2023 | Test-time Training for Matching-based Video Object Segmentation. Juliette Bertrand, Giorgos Kordopatis-Zilos, Yannis Kalantidis, Giorgos Tolias |
| 2023 | Tester-Learners for Halfspaces: Universal Algorithms. Aravind Gollakota, Adam R. Klivans, Konstantinos Stavropoulos, Arsen Vasilyan |
| 2023 | Testing the General Deductive Reasoning Capacity of Large Language Models Using OOD Examples. Abulhair Saparov, Richard Yuanzhe Pang, Vishakh Padmakumar, Nitish Joshi, Mehran Kazemi, Najoung Kim, He He |
| 2023 | TexQ: Zero-shot Network Quantization with Texture Feature Distribution Calibration. Xinrui Chen, Yizhi Wang, Renao Yan, Yiqing Liu, Tian Guan, Yonghong He |
| 2023 | Text Alignment Is An Efficient Unified Model for Massive NLP Tasks. Yuheng Zha, Yichi Yang, Ruichen Li, Zhiting Hu |
| 2023 | Text Promptable Surgical Instrument Segmentation with Vision-Language Models. Zijian Zhou, Oluwatosin Alabi, Meng Wei, Tom Vercauteren, Miaojing Shi |
| 2023 | Text-to-Image Diffusion Models are Zero Shot Classifiers. Kevin Clark, Priyank Jaini |
| 2023 | TextDiffuser: Diffusion Models as Text Painters. Jingye Chen, Yupan Huang, Tengchao Lv, Lei Cui, Qifeng Chen, Furu Wei |
| 2023 | Textually Pretrained Speech Language Models. Michael Hassid, Tal Remez, Tu Anh Nguyen, Itai Gat, Alexis Conneau, Felix Kreuk, Jade Copet, Alexandre Défossez, Gabriel Synnaeve, Emmanuel Dupoux, Roy Schwartz, Yossi Adi |
| 2023 | The Adversarial Consistency of Surrogate Risks for Binary Classification. Natalie Frank, Jonathan Niles-Weed |
| 2023 | The Bayesian Stability Zoo. Shay Moran, Hilla Schefler, Jonathan Shafer |
| 2023 | The Behavior and Convergence of Local Bayesian Optimization. Kaiwen Wu, Kyurae Kim, Roman Garnett, Jacob R. Gardner |
| 2023 | The Benefits of Being Distributional: Small-Loss Bounds for Reinforcement Learning. Kaiwen Wang, Kevin Zhou, Runzhe Wu, Nathan Kallus, Wen Sun |
| 2023 | The Best of Both Worlds in Network Population Games: Reaching Consensus and Convergence to Equilibrium. Shuyue Hu, Harold Soh, Georgios Piliouras |
| 2023 | The CLIP Model is Secretly an Image-to-Prompt Converter. Yuxuan Ding, Chunna Tian, Haoxuan Ding, Lingqiao Liu |
| 2023 | The Cambridge Law Corpus: A Corpus for Legal AI Research. Andreas Östling, Holli Sargeant, Huiyuan Xie, Ludwig Bull, Alexander Terenin, Leif Jonsson, Måns Magnusson, Felix Steffek |
| 2023 | The Clock and the Pizza: Two Stories in Mechanistic Explanation of Neural Networks. Ziqian Zhong, Ziming Liu, Max Tegmark, Jacob Andreas |
| 2023 | The Contextual Lasso: Sparse Linear Models via Deep Neural Networks. Ryan Thompson, Amir Dezfouli, Robert Kohn |
| 2023 | The Crucial Role of Normalization in Sharpness-Aware Minimization. Yan Dai, Kwangjun Ahn, Suvrit Sra |
| 2023 | The Curious Price of Distributional Robustness in Reinforcement Learning with a Generative Model. Laixi Shi, Gen Li, Yuting Wei, Yuxin Chen, Matthieu Geist, Yuejie Chi |
| 2023 | The Distortion of Binomial Voting Defies Expectation. Yannai A. Gonczarowski, Gregory Kehne, Ariel D. Procaccia, Ben Schiffer, Shirley Zhang |
| 2023 | The Double-Edged Sword of Implicit Bias: Generalization vs. Robustness in ReLU Networks. Spencer Frei, Gal Vardi, Peter L. Bartlett, Nati Srebro |
| 2023 | The Drunkard's Odometry: Estimating Camera Motion in Deforming Scenes. David Recasens, Martin R. Oswald, Marc Pollefeys, Javier Civera |
| 2023 | The Emergence of Essential Sparsity in Large Pre-trained Models: The Weights that Matter. Ajay Jaiswal, Shiwei Liu, Tianlong Chen, Zhangyang Wang |
| 2023 | The Equivalence of Dynamic and Strategic Stability under Regularized Learning in Games. Victor Boone, Panayotis Mertikopoulos |
| 2023 | The Exact Sample Complexity Gain from Invariances for Kernel Regression. Behrooz Tahmasebi, Stefanie Jegelka |
| 2023 | The Gain from Ordering in Online Learning. Vasilis Kontonis, Mingchen Ma, Christos Tzamos |
| 2023 | The Geometry of Neural Nets' Parameter Spaces Under Reparametrization. Agustinus Kristiadi, Felix Dangel, Philipp Hennig |
| 2023 | The Goldilocks of Pragmatic Understanding: Fine-Tuning Strategy Matters for Implicature Resolution by LLMs. Laura Ruis, Akbir Khan, Stella Biderman, Sara Hooker, Tim Rocktäschel, Edward Grefenstette |
| 2023 | The Grand Illusion: The Myth of Software Portability and Implications for ML Progress. Fraser Mince, Dzung Dinh, Jonas Kgomo, Neil Thompson, Sara Hooker |
| 2023 | The Graph Pencil Method: Mapping Subgraph Densities to Stochastic Block Models. Lee M. Gunderson, Gecia Bravo Hermsdorff, Peter Orbanz |
| 2023 | The Harvard USPTO Patent Dataset: A Large-Scale, Well-Structured, and Multi-Purpose Corpus of Patent Applications. Mirac Suzgun, Luke Melas-Kyriazi, Suproteem K. Sarkar, Scott Duke Kominers, Stuart M. Shieber |
| 2023 | The Impact of Positional Encoding on Length Generalization in Transformers. Amirhossein Kazemnejad, Inkit Padhi, Karthikeyan Natesan Ramamurthy, Payel Das, Siva Reddy |
| 2023 | The Learnability of In-Context Learning. Noam Wies, Yoav Levine, Amnon Shashua |
| 2023 | The Memory-Perturbation Equation: Understanding Model's Sensitivity to Data. Peter Nickl, Lu Xu, Dharmesh Tailor, Thomas Möllenhoff, Mohammad Emtiyaz Khan |
| 2023 | The Pick-to-Learn Algorithm: Empowering Compression for Tight Generalization Bounds and Improved Post-training Performance. Dario Paccagnan, Marco C. Campi, Simone Garatti |
| 2023 | The Pursuit of Human Labeling: A New Perspective on Unsupervised Learning. Artyom Gadetsky, Maria Brbic |
| 2023 | The Quantization Model of Neural Scaling. Eric J. Michaud, Ziming Liu, Uzay Girit, Max Tegmark |
| 2023 | The Rank-Reduced Kalman Filter: Approximate Dynamical-Low-Rank Filtering In High Dimensions. Jonathan Schmidt, Philipp Hennig, Jörg Nick, Filip Tronarp |
| 2023 | The Rashomon Importance Distribution: Getting RID of Unstable, Single Model-based Variable Importance. Jon Donnelly, Srikar Katta, Cynthia Rudin, Edward P. Browne |
| 2023 | The RefinedWeb Dataset for Falcon LLM: Outperforming Curated Corpora with Web Data Only. Guilherme Penedo, Quentin Malartic, Daniel Hesslow, Ruxandra Cojocaru, Hamza Alobeidli, Alessandro Cappelli, Baptiste Pannier, Ebtesam Almazrouei, Julien Launay |
| 2023 | The Rise of AI Language Pathologists: Exploring Two-level Prompt Learning for Few-shot Weakly-supervised Whole Slide Image Classification. Linhao Qu, Xiaoyuan Luo, Kexue Fu, Manning Wang, Zhijian Song |
| 2023 | The Shaped Transformer: Attention Models in the Infinite Depth-and-Width Limit. Lorenzo Noci, Chuning Li, Mufan Bill Li, Bobby He, Thomas Hofmann, Chris J. Maddison, Dan Roy |
| 2023 | The Simplicity Bias in Multi-Task RNNs: Shared Attractors, Reuse of Dynamics, and Geometric Representation. Elia Turner, Omri Barak |
| 2023 | The Surprising Effectiveness of Diffusion Models for Optical Flow and Monocular Depth Estimation. Saurabh Saxena, Charles Herrmann, Junhwa Hur, Abhishek Kar, Mohammad Norouzi, Deqing Sun, David J. Fleet |
| 2023 | The Target-Charging Technique for Privacy Analysis across Interactive Computations. Edith Cohen, Xin Lyu |
| 2023 | The ToMCAT Dataset. Adarsh Pyarelal, Eric Duong, Caleb Shibu, Paulo Soares, Savannah Boyd, Payal Khosla, Valeria A. Pfeifer, Diheng Zhang, Eric Andrews, Rick Champlin, Vincent Raymond, Meghavarshini Krishnaswamy, Clayton T. Morrison, Emily Butler, Kobus Barnard |
| 2023 | The Transient Nature of Emergent In-Context Learning in Transformers. Aaditya K. Singh, Stephanie C. Y. Chan, Ted Moskovitz, Erin Grant, Andrew M. Saxe, Felix Hill |
| 2023 | The Tunnel Effect: Building Data Representations in Deep Neural Networks. Wojciech Masarczyk, Mateusz Ostaszewski, Ehsan Imani, Razvan Pascanu, Piotr Milos, Tomasz Trzcinski |
| 2023 | The Utility of "Even if" Semifactual Explanation to Optimise Positive Outcomes. Eoin M. Kenny, Weipeng Huang |
| 2023 | The Waymo Open Sim Agents Challenge. Nico Montali, John Lambert, Paul Mougin, Alex Kuefler, Nicholas Rhinehart, Michelle Li, Cole Gulino, Tristan Emrich, Zoey Yang, Shimon Whiteson, Brandyn White, Dragomir Anguelov |
| 2023 | The emergence of clusters in self-attention dynamics. Borjan Geshkovski, Cyril Letrouit, Yury Polyanskiy, Philippe Rigollet |
| 2023 | The expressive power of pooling in Graph Neural Networks. Filippo Maria Bianchi, Veronica Lachi |
| 2023 | The geometry of hidden representations of large transformer models. Lucrezia Valeriani, Diego Doimo, Francesca Cuturello, Alessandro Laio, Alessio Ansuini, Alberto Cazzaniga |
| 2023 | The noise level in linear regression with dependent data. Ingvar M. Ziemann, Stephen Tu, George J. Pappas, Nikolai Matni |
| 2023 | The probability flow ODE is provably fast. Sitan Chen, Sinho Chewi, Holden Lee, Yuanzhi Li, Jianfeng Lu, Adil Salim |
| 2023 | The s-value: evaluating stability with respect to distributional shifts. Suyash Gupta, Dominik Rothenhäusler |
| 2023 | Theoretical Analysis of the Inductive Biases in Deep Convolutional Networks. Zihao Wang, Lei Wu |
| 2023 | Theoretical and Practical Perspectives on what Influence Functions Do. Andrea Schioppa, Katja Filippova, Ivan Titov, Polina Zablotskaia |
| 2023 | Theoretically Guaranteed Bidirectional Data Rectification for Robust Sequential Recommendation. Yatong Sun, Bin Wang, Zhu Sun, Xiaochun Yang, Yan Wang |
| 2023 | Thin and deep Gaussian processes. Daniel Augusto de Souza, Alexander Nikitin, St John, Magnus Ross, Mauricio A. Álvarez, Marc Peter Deisenroth, João Paulo Pordeus Gomes, Diego Mesquita, César Lincoln C. Mattos |
| 2023 | Thinker: Learning to Plan and Act. Stephen Chung, Ivan Anokhin, David Krueger |
| 2023 | This Looks Like Those: Illuminating Prototypical Concepts Using Multiple Visualizations. Chiyu Ma, Brandon Zhao, Chaofan Chen, Cynthia Rudin |
| 2023 | Thought Cloning: Learning to Think while Acting by Imitating Human Thinking. Shengran Hu, Jeff Clune |
| 2023 | Three Iterations of (d - 1)-WL Test Distinguish Non Isometric Clouds of d-dimensional Points. Valentino Delle Rose, Alexander Kozachinskiy, Cristobal Rojas, Mircea Petrache, Pablo Barceló |
| 2023 | Three Towers: Flexible Contrastive Learning with Pretrained Image Models. Jannik Kossen, Mark Collier, Basil Mustafa, Xiao Wang, Xiaohua Zhai, Lucas Beyer, Andreas Steiner, Jesse Berent, Rodolphe Jenatton, Effrosyni Kokiopoulou |
| 2023 | Three-Way Trade-Off in Multi-Objective Learning: Optimization, Generalization and Conflict-Avoidance. Lisha Chen, Heshan Devaka Fernando, Yiming Ying, Tianyi Chen |
| 2023 | Thrust: Adaptively Propels Large Language Models with External Knowledge. Xinran Zhao, Hongming Zhang, Xiaoman Pan, Wenlin Yao, Dong Yu, Jianshu Chen |
| 2023 | Tight Bounds for Volumetric Spanners and Applications. Aditya Bhaskara, Sepideh Mahabadi, Ali Vakilian |
| 2023 | Tight Risk Bounds for Gradient Descent on Separable Data. Matan Schliserman, Tomer Koren |
| 2023 | Time Series Kernels based on Nonlinear Vector AutoRegressive Delay Embeddings. Giovanni de Felice, John Yannis Goulermas, Vladimir V. Gusev |
| 2023 | Time Series as Images: Vision Transformer for Irregularly Sampled Time Series. Zekun Li, Shiyang Li, Xifeng Yan |
| 2023 | Time-Independent Information-Theoretic Generalization Bounds for SGLD. Futoshi Futami, Masahiro Fujisawa |
| 2023 | Time-Reversed Dissipation Induces Duality Between Minimizing Gradient Norm and Function Value. Jaeyeon Kim, Asuman E. Ozdaglar, Chanwoo Park, Ernest K. Ryu |
| 2023 | Time-uniform confidence bands for the CDF under nonstationarity. Paul Mineiro, Steven R. Howard |
| 2023 | Timewarp: Transferable Acceleration of Molecular Dynamics by Learning Time-Coarsened Dynamics. Leon Klein, Andrew Y. K. Foong, Tor Erlend Fjelde, Bruno Mlodozeniec, Marc Brockschmidt, Sebastian Nowozin, Frank Noé, Ryota Tomioka |
| 2023 | To Repeat or Not To Repeat: Insights from Scaling LLM under Token-Crisis. Fuzhao Xue, Yao Fu, Wangchunshu Zhou, Zangwei Zheng, Yang You |
| 2023 | To Stay or Not to Stay in the Pre-train Basin: Insights on Ensembling in Transfer Learning. Ildus Sadrtdinov, Dmitrii Pozdeev, Dmitry P. Vetrov, Ekaterina Lobacheva |
| 2023 | Token-Scaled Logit Distillation for Ternary Weight Generative Language Models. Minsoo Kim, Sihwa Lee, Janghwan Lee, Sukjin Hong, Du-Seong Chang, Wonyong Sung, Jungwook Choi |
| 2023 | ToolQA: A Dataset for LLM Question Answering with External Tools. Yuchen Zhuang, Yue Yu, Kuan Wang, Haotian Sun, Chao Zhang |
| 2023 | Toolformer: Language Models Can Teach Themselves to Use Tools. Timo Schick, Jane Dwivedi-Yu, Roberto Dessì, Roberta Raileanu, Maria Lomeli, Eric Hambro, Luke Zettlemoyer, Nicola Cancedda, Thomas Scialom |
| 2023 | ToolkenGPT: Augmenting Frozen Language Models with Massive Tools via Tool Embeddings. Shibo Hao, Tianyang Liu, Zhen Wang, Zhiting Hu |
| 2023 | Tools for Verifying Neural Models' Training Data. Dami Choi, Yonadav Shavit, David Kristjanson Duvenaud |
| 2023 | Top-Ambiguity Samples Matter: Understanding Why Deep Ensemble Works in Selective Classification. Qiang Ding, Yixuan Cao, Ping Luo |
| 2023 | TopP&R: Robust Support Estimation Approach for Evaluating Fidelity and Diversity in Generative Models. Pum Jun Kim, Yoojin Jang, Jisu Kim, Jaejun Yoo |
| 2023 | TopoSRL: Topology preserving self-supervised Simplicial Representation Learning. Hiren Madhu, Sundeep Prabhakar Chepuri |
| 2023 | Topological Obstructions and How to Avoid Them. Babak Esmaeili, Robin Walters, Heiko Zimmermann, Jan-Willem van de Meent |
| 2023 | Topological Parallax: A Geometric Specification for Deep Perception Models. Abraham D. Smith, Michael J. Catanzaro, Gabrielle Angeloro, Nirav Patel, Paul Bendich |
| 2023 | Topological RANSAC for instance verification and retrieval without fine-tuning. Guoyuan An, Juhyeong Seon, Inkyu An, Yuchi Huo, Sung-Eui Yoon |
| 2023 | Topology-Aware Uncertainty for Image Segmentation. Saumya Gupta, Yikai Zhang, Xiaoling Hu, Prateek Prasanna, Chao Chen |
| 2023 | Toward Better PAC-Bayes Bounds for Uniformly Stable Algorithms. Sijia Zhou, Yunwen Lei, Ata Kabán |
| 2023 | Toward Re-Identifying Any Animal. Bingliang Jiao, Lingqiao Liu, Liying Gao, Ruiqi Wu, Guosheng Lin, Peng Wang, Yanning Zhang |
| 2023 | Toward Understanding Generative Data Augmentation. Chenyu Zheng, Guoqiang Wu, Chongxuan Li |
| 2023 | Towards A Richer 2D Understanding of Hands at Scale. Tianyi Cheng, Dandan Shan, Ayda Hassen, Richard E. L. Higgins, David Fouhey |
| 2023 | Towards Accelerated Model Training via Bayesian Data Selection. Zhijie Deng, Peng Cui, Jun Zhu |
| 2023 | Towards Anytime Classification in Early-Exit Architectures by Enforcing Conditional Monotonicity. Metod Jazbec, James Urquhart Allingham, Dan Zhang, Eric T. Nalisnick |
| 2023 | Towards Automated Circuit Discovery for Mechanistic Interpretability. Arthur Conmy, Augustine N. Mavor-Parker, Aengus Lynch, Stefan Heimersheim, Adrià Garriga-Alonso |
| 2023 | Towards Better Dynamic Graph Learning: New Architecture and Unified Library. Le Yu, Leilei Sun, Bowen Du, Weifeng Lv |
| 2023 | Towards Characterizing the First-order Query Complexity of Learning (Approximate) Nash Equilibria in Zero-sum Matrix Games. Hédi Hadiji, Sarah Sachs, Tim van Erven, Wouter M. Koolen |
| 2023 | Towards Combinatorial Generalization for Catalysts: A Kohn-Sham Charge-Density Approach. Phillip Pope, David Jacobs |
| 2023 | Towards Consistent Video Editing with Text-to-Image Diffusion Models. Zicheng Zhang, Bonan Li, Xuecheng Nie, Congying Han, Tiande Guo, Luoqi Liu |
| 2023 | Towards Data-Agnostic Pruning At Initialization: What Makes a Good Sparse Mask? Hoang Pham, The-Anh Ta, Shiwei Liu, Lichuan Xiang, Dung Le, Hongkai Wen, Long Tran-Thanh |
| 2023 | Towards Data-Algorithm Dependent Generalization: a Case Study on Overparameterized Linear Regression. Jing Xu, Jiaye Teng, Yang Yuan, Andrew C. Yao |
| 2023 | Towards Distribution-Agnostic Generalized Category Discovery. Jianhong Bai, Zuozhu Liu, Hualiang Wang, Ruizhe Chen, Lianrui Mu, Xiaomeng Li, Joey Tianyi Zhou, Yang Feng, Jian Wu, Haoji Hu |
| 2023 | Towards Efficient Image Compression Without Autoregressive Models. Muhammad Salman Ali, Yeongwoong Kim, Maryam Qamar, Sung-Chang Lim, Donghyun Kim, Chaoning Zhang, Sung-Ho Bae, Hui Yong Kim |
| 2023 | Towards Efficient Pre-Trained Language Model via Feature Correlation Distillation. Kun Huang, Xin Guo, Meng Wang |
| 2023 | Towards Efficient and Accurate Winograd Convolution via Full Quantization. Tianqi Chen, Weixiang Xu, Weihan Chen, Peisong Wang, Jian Cheng |
| 2023 | Towards Evaluating Transfer-based Attacks Systematically, Practically, and Fairly. Qizhang Li, Yiwen Guo, Wangmeng Zuo, Hao Chen |
| 2023 | Towards Federated Foundation Models: Scalable Dataset Pipelines for Group-Structured Learning. Zachary Charles, Nicole Mitchell, Krishna Pillutla, Michael Reneer, Zachary Garrett |
| 2023 | Towards Foundation Models for Scientific Machine Learning: Characterizing Scaling and Transfer Behavior. Shashank Subramanian, Peter Harrington, Kurt Keutzer, Wahid Bhimji, Dmitriy Morozov, Michael W. Mahoney, Amir Gholami |
| 2023 | Towards Free Data Selection with General-Purpose Models. Yichen Xie, Mingyu Ding, Masayoshi Tomizuka, Wei Zhan |
| 2023 | Towards Generic Semi-Supervised Framework for Volumetric Medical Image Segmentation. Haonan Wang, Xiaomeng Li |
| 2023 | Towards Higher Ranks via Adversarial Weight Pruning. Yuchuan Tian, Hanting Chen, Tianyu Guo, Chao Xu, Yunhe Wang |
| 2023 | Towards Hybrid-grained Feature Interaction Selection for Deep Sparse Network. Fuyuan Lyu, Xing Tang, Dugang Liu, Chen Ma, Weihong Luo, Liang Chen, Xiuqiang He, Xue (Steve) Liu |
| 2023 | Towards In-context Scene Understanding. Ivana Balazevic, David Steiner, Nikhil Parthasarathy, Relja Arandjelovic, Olivier J. Hénaff |
| 2023 | Towards Label Position Bias in Graph Neural Networks. Haoyu Han, Xiaorui Liu, Feng Shi, MohamadAli Torkamani, Charu C. Aggarwal, Jiliang Tang |
| 2023 | Towards Label-free Scene Understanding by Vision Foundation Models. Runnan Chen, Youquan Liu, Lingdong Kong, Nenglun Chen, Xinge Zhu, Yuexin Ma, Tongliang Liu, Wenping Wang |
| 2023 | Towards Last-layer Retraining for Group Robustness with Fewer Annotations. Tyler LaBonte, Vidya Muthukumar, Abhishek Kumar |
| 2023 | Towards Optimal Caching and Model Selection for Large Model Inference. Banghua Zhu, Ying Sheng, Lianmin Zheng, Clark W. Barrett, Michael I. Jordan, Jiantao Jiao |
| 2023 | Towards Optimal Effective Resistance Estimation. Rajat Vadiraj Dwaraknath, Ishani Karmarkar, Aaron Sidford |
| 2023 | Towards Personalized Federated Learning via Heterogeneous Model Reassembly. Jiaqi Wang, Xingyi Yang, Suhan Cui, Liwei Che, Lingjuan Lyu, Dongkuan Xu, Fenglong Ma |
| 2023 | Towards Revealing the Mystery behind Chain of Thought: A Theoretical Perspective. Guhao Feng, Bohang Zhang, Yuntian Gu, Haotian Ye, Di He, Liwei Wang |
| 2023 | Towards Robust and Expressive Whole-body Human Pose and Shape Estimation. Hui En Pang, Zhongang Cai, Lei Yang, Qingyi Tao, Zhonghua Wu, Tianwei Zhang, Ziwei Liu |
| 2023 | Towards Self-Interpretable Graph-Level Anomaly Detection. Yixin Liu, Kaize Ding, Qinghua Lu, Fuyi Li, Leo Yu Zhang, Shirui Pan |
| 2023 | Towards Semi-Structured Automatic ICD Coding via Tree-based Contrastive Learning. Chang Lu, Chandan K. Reddy, Ping Wang, Yue Ning |
| 2023 | Towards Stable Backdoor Purification through Feature Shift Tuning. Rui Min, Zeyu Qin, Li Shen, Minhao Cheng |
| 2023 | Towards Symmetry-Aware Generation of Periodic Materials. Youzhi Luo, Chengkai Liu, Shuiwang Ji |
| 2023 | Towards Test-Time Refusals via Concept Negation. Peiran Dong, Song Guo, Junxiao Wang, Bingjie Wang, Jiewei Zhang, Ziming Liu |
| 2023 | Towards Unbounded Machine Unlearning. Meghdad Kurmanji, Peter Triantafillou, Jamie Hayes, Eleni Triantafillou |
| 2023 | Towards Understanding the Dynamics of Gaussian-Stein Variational Gradient Descent. Tianle Liu, Promit Ghosal, Krishnakumar Balasubramanian, Natesh S. Pillai |
| 2023 | Towards a Comprehensive Benchmark for High-Level Synthesis Targeted to FPGAs. Yunsheng Bai, Atefeh Sohrabizadeh, Zongyue Qin, Ziniu Hu, Yizhou Sun, Jason Cong |
| 2023 | Towards a Unified Analysis of Kernel-based Methods Under Covariate Shift. Xingdong Feng, Xin He, Caixing Wang, Chao Wang, Jingnan Zhang |
| 2023 | Towards a Unified Framework of Contrastive Learning for Disentangled Representations. Stefan Matthes, Zhiwei Han, Hao Shen |
| 2023 | Towards a fuller understanding of neurons with Clustered Compositional Explanations. Biagio La Rosa, Leilani Gilpin, Roberto Capobianco |
| 2023 | Towards robust and generalizable representations of extracellular data using contrastive learning. Ankit Vishnubhotla, Charlotte Loh, Akash Srivastava, Liam Paninski, Cole L. Hurwitz |
| 2023 | Towards the Difficulty for a Deep Neural Network to Learn Concepts of Different Complexities. Dongrui Liu, Huiqi Deng, Xu Cheng, Qihan Ren, Kangrui Wang, Quanshi Zhang |
| 2023 | TpuGraphs: A Performance Prediction Dataset on Large Tensor Computational Graphs. Phitchaya Mangpo Phothilimthana, Sami Abu-El-Haija, Kaidi Cao, Bahare Fatemi, Michael Burrows, Charith Mendis, Bryan Perozzi |
| 2023 | Tracking Most Significant Shifts in Nonparametric Contextual Bandits. Joe Suk, Samory Kpotufe |
| 2023 | Tracr: Compiled Transformers as a Laboratory for Interpretability. David Lindner, János Kramár, Sebastian Farquhar, Matthew Rahtz, Tom McGrath, Vladimir Mikulik |
| 2023 | Trade-off Between Efficiency and Consistency for Removal-based Explanations. Yifan Zhang, Haowei He, Zhiquan Tan, Yang Yuan |
| 2023 | TradeMaster: A Holistic Quantitative Trading Platform Empowered by Reinforcement Learning. Shuo Sun, Molei Qin, Wentao Zhang, Haochong Xia, Chuqiao Zong, Jie Ying, Yonggang Xie, Lingxuan Zhao, Xinrun Wang, Bo An |
| 2023 | Trading-off price for data quality to achieve fair online allocation. Mathieu Molina, Nicolas Gast, Patrick Loiseau, Vianney Perchet |
| 2023 | Train 'n Trade: Foundations of Parameter Markets. Tzu-Heng Huang, Harit Vishwakarma, Frederic Sala |
| 2023 | Train Faster, Perform Better: Modular Adaptive Training in Over-Parameterized Models. Yubin Shi, Yixuan Chen, Mingzhi Dong, Xiaochen Yang, Dongsheng Li, Yujiang Wang, Robert P. Dick, Qin Lv, Yingying Zhao, Fan Yang, Tun Lu, Ning Gu, Li Shang |
| 2023 | Train Hard, Fight Easy: Robust Meta Reinforcement Learning. Ido Greenberg, Shie Mannor, Gal Chechik, Eli A. Meirom |
| 2023 | Train Once and Explain Everywhere: Pre-training Interpretable Graph Neural Networks. Jun Yin, Chaozhuo Li, Hao Yan, Jianxun Lian, Senzhang Wang |
| 2023 | Train Once, Get a Family: State-Adaptive Balances for Offline-to-Online Reinforcement Learning. Shenzhi Wang, Qisen Yang, Jiawei Gao, Matthieu Gaetan Lin, Hao Chen, Liwei Wu, Ning Jia, Shiji Song, Gao Huang |
| 2023 | Training Chain-of-Thought via Latent-Variable Inference. Matthew Douglas Hoffman, Du Phan, David Dohan, Sholto Douglas, Tuan Anh Le, Aaron Parisi, Pavel Sountsov, Charles Sutton, Sharad Vikram, Rif A. Saurous |
| 2023 | Training Energy-Based Normalizing Flow with Score-Matching Objectives. Chen-Hao Chao, Wei-Fang Sun, Yen-Chang Hsu, Zsolt Kira, Chun-Yi Lee |
| 2023 | Training Fully Connected Neural Networks is ∃R-Complete. Daniel Bertschinger, Christoph Hertrich, Paul Jungeblut, Tillmann Miltzow, Simon Weber |
| 2023 | Training Neural Networks is NP-Hard in Fixed Dimension. Vincent Froese, Christoph Hertrich |
| 2023 | Training Private Models That Know What They Don't Know. Stephan Rabanser, Anvith Thudi, Abhradeep Guha Thakurta, Krishnamurthy Dvijotham, Nicolas Papernot |
| 2023 | Training Transformers with 4-bit Integers. Haocheng Xi, Changhao Li, Jianfei Chen, Jun Zhu |
| 2023 | Training Transitive and Commutative Multimodal Transformers with LoReTTa. Manuel Tran, Yashin Dicente Cid, Amal Lahiani, Fabian J. Theis, Tingying Peng, Eldad Klaiman |
| 2023 | Training Your Image Restoration Network Better with Random Weight Network as Optimization Function. Man Zhou, Naishan Zheng, Yuan Xu, Chun-Le Guo, Chongyi Li |
| 2023 | Training biologically plausible recurrent neural networks on cognitive tasks with long-term dependencies. Wayne Soo, Vishwa Goudar, Xiao-Jing Wang |
| 2023 | Training neural operators to preserve invariant measures of chaotic attractors. Ruoxi Jiang, Peter Y. Lu, Elena Orlova, Rebecca Willett |
| 2023 | Training on Foveated Images Improves Robustness to Adversarial Attacks. Muhammad A. Shah, Aqsa Kashaf, Bhiksha Raj |
| 2023 | Training shallow ReLU networks on noisy data using hinge loss: when do we overfit and is it benign? Erin George, Michael Murray, William Swartworth, Deanna Needell |
| 2023 | Training-free Diffusion Model Adaptation for Variable-Sized Text-to-Image Synthesis. Zhiyu Jin, Xuli Shen, Bin Li, Xiangyang Xue |
| 2023 | Trajectory Alignment: Understanding the Edge of Stability Phenomenon via Bifurcation Theory. Minhak Song, Chulhee Yun |
| 2023 | Trans-Dimensional Generative Modeling via Jump Diffusion Models. Andrew Campbell, William Harvey, Christian Weilbach, Valentin De Bortoli, Thomas Rainforth, Arnaud Doucet |
| 2023 | TransHP: Image Classification with Hierarchical Prompting. Wenhao Wang, Yifan Sun, Wei Li, Yi Yang |
| 2023 | Transfer Learning with Affine Model Transformation. Shunya Minami, Kenji Fukumizu, Yoshihiro Hayashi, Ryo Yoshida |
| 2023 | Transfer learning for atomistic simulations using GNNs and kernel mean embeddings. John Isak Texas Falk, Luigi Bonati, Pietro Novelli, Michele Parrinello, Massimiliano Pontil |
| 2023 | Transferable Adversarial Robustness for Categorical Data via Universal Robust Embeddings. Klim Kireev, Maksym Andriushchenko, Carmela Troncoso, Nicolas Flammarion |
| 2023 | Transformed Low-Rank Parameterization Can Help Robust Generalization for Tensor Neural Networks. Andong Wang, Chao Li, Mingyuan Bai, Zhong Jin, Guoxu Zhou, Qibin Zhao |
| 2023 | Transformer as a hippocampal memory consolidation model based on NMDAR-inspired nonlinearity. Dong Kyum Kim, Jea Kwon, Meeyoung Cha, Chul Lee |
| 2023 | Transformer-based Planning for Symbolic Regression. Parshin Shojaee, Kazem Meidani, Amir Barati Farimani, Chandan K. Reddy |
| 2023 | Transformers are uninterpretable with myopic methods: a case study with bounded Dyck grammars. Kaiyue Wen, Yuchen Li, Bingbin Liu, Andrej Risteski |
| 2023 | Transformers as Statisticians: Provable In-Context Learning with In-Context Algorithm Selection. Yu Bai, Fan Chen, Huan Wang, Caiming Xiong, Song Mei |
| 2023 | Transformers learn through gradual rank increase. Emmanuel Abbe, Samy Bengio, Enric Boix-Adserà, Etai Littwin, Joshua M. Susskind |
| 2023 | Transformers learn to implement preconditioned gradient descent for in-context learning. Kwangjun Ahn, Xiang Cheng, Hadi Daneshmand, Suvrit Sra |
| 2023 | Transformers over Directed Acyclic Graphs. Yuankai Luo, Veronika Thost, Lei Shi |
| 2023 | Transient Neural Radiance Fields for Lidar View Synthesis and 3D Reconstruction. Anagh Malik, Parsa Mirdehghan, Sotiris Nousias, Kyros Kutulakos, David B. Lindell |
| 2023 | Transition-constant Normalization for Image Enhancement. Jie Huang, Man Zhou, Jinghao Zhang, Gang Yang, Mingde Yao, Chongyi Li, Zhiwei Xiong, Feng Zhao |
| 2023 | Transitivity Recovering Decompositions: Interpretable and Robust Fine-Grained Relationships. Abhra Chaudhuri, Massimiliano Mancini, Zeynep Akata, Anjan Dutta |
| 2023 | Transportability for Bandits with Data from Different Environments. Alexis Bellot, Alan Malek, Silvia Chiappa |
| 2023 | Tree Variational Autoencoders. Laura Manduchi, Moritz Vandenhirtz, Alain Ryser, Julia E. Vogt |
| 2023 | Tree of Thoughts: Deliberate Problem Solving with Large Language Models. Shunyu Yao, Dian Yu, Jeffrey Zhao, Izhak Shafran, Tom Griffiths, Yuan Cao, Karthik Narasimhan |
| 2023 | Tree-Based Diffusion Schrödinger Bridge with Applications to Wasserstein Barycenters. Maxence Noble, Valentin De Bortoli, Arnaud Doucet, Alain Durmus |
| 2023 | Tree-Rings Watermarks: Invisible Fingerprints for Diffusion Images. Yuxin Wen, John Kirchenbauer, Jonas Geiping, Tom Goldstein |
| 2023 | TriRE: A Multi-Mechanism Learning Paradigm for Continual Knowledge Retention and Promotion. Preetha Vijayan, Prashant Shivaram Bhat, Bahram Zonooz, Elahe Arani |
| 2023 | Trial matching: capturing variability with data-constrained spiking neural networks. Christos Sourmpis, Carl C. H. Petersen, Wulfram Gerstner, Guillaume Bellec |
| 2023 | Triangulation Residual Loss for Data-efficient 3D Pose Estimation. Jiachen Zhao, Tao Yu, Liang An, Yipeng Huang, Fang Deng, Qionghai Dai |
| 2023 | Triple Eagle: Simple, Fast and Practical Budget-Feasible Mechanisms. Kai Han, You Wu, He Huang, Shuang Cui |
| 2023 | TrojLLM: A Black-box Trojan Prompt Attack on Large Language Models. Jiaqi Xue, Mengxin Zheng, Ting Hua, Yilin Shen, Yepeng Liu, Ladislau Bölöni, Qian Lou |
| 2023 | Truly Scale-Equivariant Deep Nets with Fourier Layers. Md Ashiqur Rahman, Raymond A. Yeh |
| 2023 | Truncated Affinity Maximization: One-class Homophily Modeling for Graph Anomaly Detection. Hezhe Qiao, Guansong Pang |
| 2023 | Truncating Trajectories in Monte Carlo Policy Evaluation: an Adaptive Approach. Riccardo Poiani, Nicole Nobili, Alberto Maria Metelli, Marcello Restelli |
| 2023 | Trust Region-Based Safe Distributional Reinforcement Learning for Multiple Constraints. Dohyeong Kim, Kyungjae Lee, Songhwai Oh |
| 2023 | Trust Your 𝛁: Gradient-based Intervention Targeting for Causal Discovery. Mateusz Olko, Michal Zajac, Aleksandra Nowak, Nino Scherrer, Yashas Annadani, Stefan Bauer, Lukasz Kucinski, Piotr Milos |
| 2023 | Tuning Multi-mode Token-level Prompt Alignment across Modalities. Dongsheng Wang, Miaoge Li, Xinyang Liu, Mingsheng Xu, Bo Chen, Hanwang Zhang |
| 2023 | Turbulence in Focus: Benchmarking Scaling Behavior of 3D Volumetric Super-Resolution with BLASTNet 2.0 Data. Wai Tong Chung, Bassem Akoush, Pushan Sharma, Alex Tamkin, Ki Sung Jung, Jacqueline Chen, Jack Guo, Davy Brouzet, Mohsen Talei, Bruno Savard, Alexei Y. Poludnenko, Matthias Ihme |
| 2023 | Two Heads are Better Than One: A Simple Exploration Framework for Efficient Multi-Agent Reinforcement Learning. Jiahui Li, Kun Kuang, Baoxiang Wang, Xingchen Li, Fei Wu, Jun Xiao, Long Chen |
| 2023 | Two Sides of One Coin: the Limits of Untuned SGD and the Power of Adaptive Methods. Junchi Yang, Xiang Li, Ilyas Fatkhullin, Niao He |
| 2023 | Two Sides of The Same Coin: Bridging Deep Equilibrium Models and Neural ODEs via Homotopy Continuation. Shutong Ding, Tianyu Cui, Jingya Wang, Ye Shi |
| 2023 | Two-Stage Learning to Defer with Multiple Experts. Anqi Mao, Christopher Mohri, Mehryar Mohri, Yutao Zhong |
| 2023 | Two-Stage Predict+Optimize for MILPs with Unknown Parameters in Constraints. Xinyi Hu, Jasper C. H. Lee, Jimmy Ho-Man Lee |
| 2023 | Type-to-Track: Retrieve Any Object via Prompt-based Tracking. Pha A. Nguyen, Kha Gia Quach, Kris Kitani, Khoa Luu |
| 2023 | UDC-SIT: A Real-World Dataset for Under-Display Cameras. Kyusu Ahn, Byeonghyun Ko, Hyungyu Lee, Chanwoo Park, Jaejin Lee |
| 2023 | UE4-NeRF: Neural Radiance Field for Real-Time Rendering of Large-Scale Scene. Jiaming Gu, Minchao Jiang, Hongsheng Li, Xiaoyuan Lu, Guangming Zhu, Syed Afaq Ali Shah, Liang Zhang, Mohammed Bennamoun |
| 2023 | UNSSOR: Unsupervised Neural Speech Separation by Leveraging Over-determined Training Mixtures. Zhong-Qiu Wang, Shinji Watanabe |
| 2023 | UP-DP: Unsupervised Prompt Learning for Data Pre-Selection with Vision-Language Models. Xin Li, Sima Behpour, Thang Long Doan, Wenbin He, Liang Gou, Liu Ren |
| 2023 | UP-NeRF: Unconstrained Pose Prior-Free Neural Radiance Field. Injae Kim, Minhyuk Choi, Hyunwoo J. Kim |
| 2023 | URL: A Representation Learning Benchmark for Transferable Uncertainty Estimates. Michael Kirchhof, Bálint Mucsányi, Seong Joon Oh, Enkelejda Kasneci |
| 2023 | UUKG: Unified Urban Knowledge Graph Dataset for Urban Spatiotemporal Prediction. Yansong Ning, Hao Liu, Hao Wang, Zhenyu Zeng, Hui Xiong |
| 2023 | UltraRE: Enhancing RecEraser for Recommendation Unlearning via Error Decomposition. Yuyuan Li, Chaochao Chen, Yizhao Zhang, Weiming Liu, Lingjuan Lyu, Xiaolin Zheng, Dan Meng, Jun Wang |
| 2023 | Unbalanced Low-rank Optimal Transport Solvers. Meyer Scetbon, Michal Klein, Giovanni Palla, Marco Cuturi |
| 2023 | Unbiased Compression Saves Communication in Distributed Optimization: When and How Much? Yutong He, Xinmeng Huang, Kun Yuan |
| 2023 | Unbiased constrained sampling with Self-Concordant Barrier Hamiltonian Monte Carlo. Maxence Noble, Valentin De Bortoli, Alain Durmus |
| 2023 | Unbiased learning of deep generative models with structured discrete representations. Henry C. Bendekgey, Gabe Hope, Erik B. Sudderth |
| 2023 | Unbounded Differentially Private Quantile and Maximum Estimation. David Durfee |
| 2023 | Uncertainty Estimation for Safety-critical Scene Segmentation via Fine-grained Reward Maximization. Hongzheng Yang, Cheng Chen, Yueyao Chen, Markus Scheppach, Hon-Chi Yip, Qi Dou |
| 2023 | Uncertainty Quantification over Graph with Conformalized Graph Neural Networks. Kexin Huang, Ying Jin, Emmanuel J. Candès, Jure Leskovec |
| 2023 | Uncertainty Quantification via Neural Posterior Principal Components. Elias Nehme, Omer Yair, Tomer Michaeli |
| 2023 | Uncertainty-Aware Alignment Network for Cross-Domain Video-Text Retrieval. Xiaoshuai Hao, Wanqian Zhang |
| 2023 | Uncertainty-Aware Instance Reweighting for Off-Policy Learning. Xiaoying Zhang, Junpu Chen, Hongning Wang, Hong Xie, Yang Liu, John C. S. Lui, Hang Li |
| 2023 | Unconstrained Dynamic Regret via Sparse Coding. Zhiyu Zhang, Ashok Cutkosky, Yannis Paschalidis |
| 2023 | Uncoupled and Convergent Learning in Two-Player Zero-Sum Markov Games with Bandit Feedback. Yang Cai, Haipeng Luo, Chen-Yu Wei, Weiqiang Zheng |
| 2023 | Uncovering Meanings of Embeddings via Partial Orthogonality. Yibo Jiang, Bryon Aragam, Victor Veitch |
| 2023 | Uncovering Neural Scaling Laws in Molecular Representation Learning. Dingshuo Chen, Yanqiao Zhu, Jieyu Zhang, Yuanqi Du, Zhixun Li, Qiang Liu, Shu Wu, Liang Wang |
| 2023 | Uncovering Prototypical Knowledge for Weakly Open-Vocabulary Semantic Segmentation. Fei Zhang, Tianfei Zhou, Boyang Li, Hao He, Chaofan Ma, Tianjiao Zhang, Jiangchao Yao, Ya Zhang, Yanfeng Wang |
| 2023 | Uncovering and Quantifying Social Biases in Code Generation. Yan Liu, Xiaokang Chen, Yan Gao, Zhe Su, Fengji Zhang, Daoguang Zan, Jian-Guang Lou, Pin-Yu Chen, Tsung-Yi Ho |
| 2023 | Uncovering motifs of concurrent signaling across multiple neuronal populations. Evren Gokcen, Anna Jasper, Alison Xu, Adam Kohn, Christian K. Machens, Byron M. Yu |
| 2023 | Uncovering the Hidden Dynamics of Video Self-supervised Learning under Distribution Shifts. Pritam Sarkar, Ahmad Beirami, Ali Etemad |
| 2023 | Understanding Contrastive Learning via Distributionally Robust Optimization. Junkang Wu, Jiawei Chen, Jiancan Wu, Wentao Shi, Xiang Wang, Xiangnan He |
| 2023 | Understanding Deep Gradient Leakage via Inversion Influence Functions. Haobo Zhang, Junyuan Hong, Yuyang Deng, Mehrdad Mahdavi, Jiayu Zhou |
| 2023 | Understanding Diffusion Objectives as the ELBO with Simple Data Augmentation. Diederik P. Kingma, Ruiqi Gao |
| 2023 | Understanding Few-Shot Learning: Measuring Task Relatedness and Adaptation Difficulty via Attributes. Minyang Hu, Hong Chang, Zong Guo, Bingpeng Ma, Shiguang Shan, Xilin Chen |
| 2023 | Understanding How Consistency Works in Federated Learning via Stage-wise Relaxed Initialization. Yan Sun, Li Shen, Dacheng Tao |
| 2023 | Understanding Multi-phase Optimization Dynamics and Rich Nonlinear Behaviors of ReLU Networks. Mingze Wang, Chao Ma |
| 2023 | Understanding Neural Network Binarization with Forward and Backward Proximal Quantizers. Yiwei Lu, Yaoliang Yu, Xinlin Li, Vahid Partovi Nia |
| 2023 | Understanding Social Reasoning in Language Models with Language Models. Kanishk Gandhi, Jan-Philipp Fränken, Tobias Gerstenberg, Noah D. Goodman |
| 2023 | Understanding and Addressing the Pitfalls of Bisimulation-based Representations in Offline Reinforcement Learning. Hongyu Zang, Xin Li, Leiji Zhang, Yang Liu, Baigui Sun, Riashat Islam, Remi Tachet des Combes, Romain Laroche |
| 2023 | Understanding and Improving Ensemble Adversarial Defense. Yian Deng, Tingting Mu |
| 2023 | Understanding and Improving Feature Learning for Out-of-Distribution Generalization. Yongqiang Chen, Wei Huang, Kaiwen Zhou, Yatao Bian, Bo Han, James Cheng |
| 2023 | Understanding and Mitigating Copying in Diffusion Models. Gowthami Somepalli, Vasu Singla, Micah Goldblum, Jonas Geiping, Tom Goldstein |
| 2023 | Understanding the Latent Space of Diffusion Models through the Lens of Riemannian Geometry. Yong-Hyun Park, Mingi Kwon, Jaewoong Choi, Junghyo Jo, Youngjung Uh |
| 2023 | Understanding the Limitations of Deep Models for Molecular property prediction: Insights and Solutions. Jun Xia, Lecheng Zhang, Xiao Zhu, Yue Liu, Zhangyang Gao, Bozhen Hu, Cheng Tan, Jiangbin Zheng, Siyuan Li, Stan Z. Li |
| 2023 | Understanding the detrimental class-level effects of data augmentation. Polina Kirichenko, Mark Ibrahim, Randall Balestriero, Diane Bouchacourt, Shanmukha Ramakrishna Vedantam, Hamed Firooz, Andrew Gordon Wilson |
| 2023 | Understanding, Predicting and Better Resolving Q-Value Divergence in Offline-RL. Yang Yue, Rui Lu, Bingyi Kang, Shiji Song, Gao Huang |
| 2023 | Undirected Probabilistic Model for Tensor Decomposition. Zerui Tao, Toshihisa Tanaka, Qibin Zhao |
| 2023 | Unexpected Improvements to Expected Improvement for Bayesian Optimization. Sebastian Ament, Samuel Daulton, David Eriksson, Maximilian Balandat, Eytan Bakshy |
| 2023 | Uni-ControlNet: All-in-One Control to Text-to-Image Diffusion Models. Shihao Zhao, Dongdong Chen, Yen-Chun Chen, Jianmin Bao, Shaozhe Hao, Lu Yuan, Kwan-Yee K. Wong |
| 2023 | Uni3DETR: Unified 3D Detection Transformer. Zhenyu Wang, Ya-Li Li, Xi Chen, Hengshuang Zhao, Shengjin Wang |
| 2023 | UniControl: A Unified Diffusion Model for Controllable Visual Generation In the Wild. Can Qin, Shu Zhang, Ning Yu, Yihao Feng, Xinyi Yang, Yingbo Zhou, Huan Wang, Juan Carlos Niebles, Caiming Xiong, Silvio Savarese, Stefano Ermon, Yun Fu, Ran Xu |
| 2023 | UniPC: A Unified Predictor-Corrector Framework for Fast Sampling of Diffusion Models. Wenliang Zhao, Lujia Bai, Yongming Rao, Jie Zhou, Jiwen Lu |
| 2023 | UniT: A Unified Look at Certified Robust Training against Text Adversarial Perturbation. Muchao Ye, Ziyi Yin, Tianrong Zhang, Tianyu Du, Jinghui Chen, Ting Wang, Fenglong Ma |
| 2023 | UniTSFace: Unified Threshold Integrated Sample-to-Sample Loss for Face Recognition. Qiufu Li, Xi Jia, Jiancan Zhou, Linlin Shen, Jinming Duan |
| 2023 | Unified 3D Segmenter As Prototypical Classifiers. Zheyun Qin, Cheng Han, Qifan Wang, Xiushan Nie, Yilong Yin, Xiankai Lu |
| 2023 | Unified Embedding: Battle-Tested Feature Representations for Web-Scale ML Systems. Benjamin Coleman, Wang-Cheng Kang, Matthew Fahrbach, Ruoxi Wang, Lichan Hong, Ed H. Chi, Derek Zhiyuan Cheng |
| 2023 | Unified Enhancement of Privacy Bounds for Mixture Mechanisms via f-Differential Privacy. Chendi Wang, Buxin Su, Jiayuan Ye, Reza Shokri, Weijie J. Su |
| 2023 | Unified Lower Bounds for Interactive High-dimensional Estimation under Information Constraints. Jayadev Acharya, Clément L. Canonne, Ziteng Sun, Himanshu Tyagi |
| 2023 | Unified Off-Policy Learning to Rank: a Reinforcement Learning Perspective. Zeyu Zhang, Yi Su, Hui Yuan, Yiran Wu, Rishab Balasubramanian, Qingyun Wu, Huazheng Wang, Mengdi Wang |
| 2023 | Unified Segment-to-Segment Framework for Simultaneous Sequence Generation. Shaolei Zhang, Yang Feng |
| 2023 | Uniform Convergence with Square-Root Lipschitz Loss. Lijia Zhou, Zhen Dai, Frederic Koehler, Nati Srebro |
| 2023 | Uniform-in-Time Wasserstein Stability Bounds for (Noisy) Stochastic Gradient Descent. Lingjiong Zhu, Mert Gürbüzbalaban, Anant Raj, Umut Simsekli |
| 2023 | Unifying GANs and Score-Based Diffusion as Generative Particle Models. Jean-Yves Franceschi, Mike Gartrell, Ludovic Dos Santos, Thibaut Issenhuth, Emmanuel de Bézenac, Mickaël Chen, Alain Rakotomamonjy |
| 2023 | Unifying Predictions of Deterministic and Stochastic Physics in Mesh-reduced Space with Sequential Flow Generative Model. Luning Sun, Xu Han, Han Gao, Jian-Xun Wang, Liping Liu |
| 2023 | Universal Gradient Descent Ascent Method for Nonconvex-Nonconcave Minimax Optimization. Taoli Zheng, Linglingzhi Zhu, Anthony Man-Cho So, Jose H. Blanchet, Jiajin Li |
| 2023 | Universal Online Learning with Gradient Variations: A Multi-layer Online Ensemble Approach. Yu-Hu Yan, Peng Zhao, Zhi-Hua Zhou |
| 2023 | Universal Prompt Tuning for Graph Neural Networks. Taoran Fang, Yunchao Zhang, Yang Yang, Chunping Wang, Lei Chen |
| 2023 | Universality and Limitations of Prompt Tuning. Yihan Wang, Jatin Chauhan, Wei Wang, Cho-Jui Hsieh |
| 2023 | Universality laws for Gaussian mixtures in generalized linear models. Yatin Dandi, Ludovic Stephan, Florent Krzakala, Bruno Loureiro, Lenka Zdeborová |
| 2023 | Unleash the Potential of Image Branch for Cross-modal 3D Object Detection. Yifan Zhang, Qijian Zhang, Junhui Hou, Yixuan Yuan, Guoliang Xing |
| 2023 | Unleashing the Full Potential of Product Quantization for Large-Scale Image Retrieval. Yu Liang, Shiliang Zhang, Li Ken Li, Xiaoyu Wang |
| 2023 | Unleashing the Power of Graph Data Augmentation on Covariate Distribution Shift. Yongduo Sui, Qitian Wu, Jiancan Wu, Qing Cui, Longfei Li, Jun Zhou, Xiang Wang, Xiangnan He |
| 2023 | Unleashing the Power of Randomization in Auditing Differentially Private ML. Krishna Pillutla, Galen Andrew, Peter Kairouz, H. Brendan McMahan, Alina Oprea, Sewoong Oh |
| 2023 | Unlimiformer: Long-Range Transformers with Unlimited Length Input. Amanda Bertsch, Uri Alon, Graham Neubig, Matthew Gormley |
| 2023 | Unlocking Deterministic Robustness Certification on ImageNet. Kai Hu, Andy Zou, Zifan Wang, Klas Leino, Matt Fredrikson |
| 2023 | Unlocking Feature Visualization for Deep Network with MAgnitude Constrained Optimization. Thomas Fel, Thibaut Boissin, Victor Boutin, Agustin M. Picard, Paul Novello, Julien Colin, Drew Linsley, Tom Rousseau, Rémi Cadène, Lore Goetschalckx, Laurent Gardes, Thomas Serre |
| 2023 | Unpaired Multi-Domain Causal Representation Learning. Nils Sturma, Chandler Squires, Mathias Drton, Caroline Uhler |
| 2023 | Unsupervised Anomaly Detection with Rejection. Lorenzo Perini, Jesse Davis |
| 2023 | Unsupervised Behavior Extraction via Random Intent Priors. Hao Hu, Yiqin Yang, Jianing Ye, Ziqing Mai, Chongjie Zhang |
| 2023 | Unsupervised Graph Neural Architecture Search with Disentangled Self-Supervision. Zeyang Zhang, Xin Wang, Ziwei Zhang, Guangyao Shen, Shiqi Shen, Wenwu Zhu |
| 2023 | Unsupervised Image Denoising with Score Function. Yutong Xie, Mingze Yuan, Bin Dong, Quanzheng Li |
| 2023 | Unsupervised Learning for Solving the Travelling Salesman Problem. Yimeng Min, Yiwei Bai, Carla P. Gomes |
| 2023 | Unsupervised Optical Flow Estimation with Dynamic Timing Representation for Spike Camera. Lujie Xia, Ziluo Ding, Rui Zhao, Jiyuan Zhang, Lei Ma, Zhaofei Yu, Tiejun Huang, Ruiqin Xiong |
| 2023 | Unsupervised Polychromatic Neural Representation for CT Metal Artifact Reduction. Qing Wu, Lixuan Chen, Ce Wang, Hongjiang Wei, S. Kevin Zhou, Jingyi Yu, Yuyao Zhang |
| 2023 | Unsupervised Protein-Ligand Binding Energy Prediction via Neural Euler's Rotation Equation. Wengong Jin, Siranush Sarkizova, Xun Chen, Nir Hacohen, Caroline Uhler |
| 2023 | Unsupervised Semantic Correspondence Using Stable Diffusion. Eric Hedlin, Gopal Sharma, Shweta Mahajan, Hossam Isack, Abhishek Kar, Andrea Tagliasacchi, Kwang Moo Yi |
| 2023 | Unsupervised Video Domain Adaptation for Action Recognition: A Disentanglement Perspective. Pengfei Wei, Lingdong Kong, Xinghua Qu, Yi Ren, Zhiqiang Xu, Jing Jiang, Xiang Yin |
| 2023 | Use perturbations when learning from explanations. Juyeon Heo, Vihari Piratla, Matthew Wicker, Adrian Weller |
| 2023 | User-Level Differential Privacy With Few Examples Per User. Badih Ghazi, Pritish Kamath, Ravi Kumar, Pasin Manurangsi, Raghu Meka, Chiyuan Zhang |
| 2023 | Using Imperfect Surrogates for Downstream Inference: Design-based Supervised Learning for Social Science Applications of Large Language Models. Naoki Egami, Musashi Hinck, Brandon M. Stewart, Hanying Wei |
| 2023 | Utilitarian Algorithm Configuration. Devon R. Graham, Kevin Leyton-Brown, Tim Roughgarden |
| 2023 | V-InFoR: A Robust Graph Neural Networks Explainer for Structurally Corrupted Graphs. Senzhang Wang, Jun Yin, Chaozhuo Li, Xing Xie, Jianxin Wang |
| 2023 | VAST: A Vision-Audio-Subtitle-Text Omni-Modality Foundation Model and Dataset. Sihan Chen, Handong Li, Qunbo Wang, Zijia Zhao, Mingzhen Sun, Xinxin Zhu, Jing Liu |
| 2023 | VCC: Scaling Transformers to 128K Tokens or More by Prioritizing Important Tokens. Zhanpeng Zeng, Cole Hawkins, Mingyi Hong, Aston Zhang, Nikolaos Pappas, Vikas Singh, Shuai Zheng |
| 2023 | VLATTACK: Multimodal Adversarial Attacks on Vision-Language Tasks via Pre-trained Models. Ziyi Yin, Muchao Ye, Tianrong Zhang, Tianyu Du, Jinguo Zhu, Han Liu, Jinghui Chen, Ting Wang, Fenglong Ma |
| 2023 | VOCE: Variational Optimization with Conservative Estimation for Offline Safe Reinforcement Learning. Jiayi Guan, Guang Chen, Jiaming Ji, Long Yang, Ao Zhou, Zhijun Li, Changjun Jiang |
| 2023 | VPGTrans: Transfer Visual Prompt Generator across LLMs. Ao Zhang, Hao Fei, Yuan Yao, Wei Ji, Li Li, Zhiyuan Liu, Tat-Seng Chua |
| 2023 | VPP: Efficient Conditional 3D Generation via Voxel-Point Progressive Representation. Zekun Qi, Muzhou Yu, Runpei Dong, Kaisheng Ma |
| 2023 | VRA: Variational Rectified Activation for Out-of-distribution Detection. Mingyu Xu, Zheng Lian, Bin Liu, Jianhua Tao |
| 2023 | VTaC: A Benchmark Dataset of Ventricular Tachycardia Alarms from ICU Monitors. Li-Wei H. Lehman, Benjamin Moody, Harsh Deep, Feng Wu, Hasan Saeed, Lucas McCullum, Diane Perry, Tristan Struja, Qiao Li, Gari D. Clifford, Roger G. Mark |
| 2023 | VaRT: Variational Regression Trees. Sebastian Salazar |
| 2023 | Validated Image Caption Rating Dataset. Lothar D. Narins, Andrew T. Scott, Aakash Gautam, Anagha Kulkarni, Mar Castanon, Benjamin Kao, Shasta Ihorn, Yue-Ting Siu, James M. Mason, Alexander Blum, Ilmi Yoon |
| 2023 | VanillaNet: the Power of Minimalism in Deep Learning. Hanting Chen, Yunhe Wang, Jianyuan Guo, Dacheng Tao |
| 2023 | Variance-Reduced Gradient Estimation via Noise-Reuse in Online Evolution Strategies. Oscar Li, James Harrison, Jascha Sohl-Dickstein, Virginia Smith, Luke Metz |
| 2023 | Variational Annealing on Graphs for Combinatorial Optimization. Sebastian Sanokowski, Wilhelm Berghammer, Sepp Hochreiter, Sebastian Lehner |
| 2023 | Variational Gaussian Processes with Decoupled Conditionals. Xinran Zhu, Kaiwen Wu, Natalie Maus, Jacob R. Gardner, David Bindel |
| 2023 | Variational Gaussian processes for linear inverse problems. Thibault Randrianarisoa, Botond Szabó |
| 2023 | Variational Imbalanced Regression: Fair Uncertainty Quantification via Probabilistic Smoothing. Ziyan Wang, Hao Wang |
| 2023 | Variational Inference with Gaussian Score Matching. Chirag Modi, Robert M. Gower, Charles Margossian, Yuling Yao, David M. Blei, Lawrence K. Saul |
| 2023 | Variational Monte Carlo on a Budget - Fine-tuning pre-trained Neural Wavefunctions. Michael Scherbela, Leon Gerard, Philipp Grohs |
| 2023 | Variational Weighting for Kernel Density Ratios. Sangwoong Yoon, Frank C. Park, Gunsu S. Yun, Iljung Kim, Yung-Kyun Noh |
| 2023 | VeriX: Towards Verified Explainability of Deep Neural Networks. Min Wu, Haoze Wu, Clark W. Barrett |
| 2023 | Versatile Energy-Based Probabilistic Models for High Energy Physics. Taoli Cheng, Aaron C. Courville |
| 2023 | ViCA-NeRF: View-Consistency-Aware 3D Editing of Neural Radiance Fields. Jiahua Dong, Yu-Xiong Wang |
| 2023 | ViSt3D: Video Stylization with 3D CNN. Ayush Pande, Gaurav Sharma |
| 2023 | VidChapters-7M: Video Chapters at Scale. Antoine Yang, Arsha Nagrani, Ivan Laptev, Josef Sivic, Cordelia Schmid |
| 2023 | Video Dynamics Prior: An Internal Learning Approach for Robust Video Enhancements. Gaurav Shrivastava, Ser Nam Lim, Abhinav Shrivastava |
| 2023 | Video Prediction Models as Rewards for Reinforcement Learning. Alejandro Escontrela, Ademi Adeniji, Wilson Yan, Ajay Jain, Xue Bin Peng, Ken Goldberg, Youngwoon Lee, Danijar Hafner, Pieter Abbeel |
| 2023 | Video Timeline Modeling For News Story Understanding. Meng Liu, Mingda Zhang, Jialu Liu, Hanjun Dai, Ming-Hsuan Yang, Shuiwang Ji, Zheyun Feng, Boqing Gong |
| 2023 | Video-Mined Task Graphs for Keystep Recognition in Instructional Videos. Kumar Ashutosh, Santhosh Kumar Ramakrishnan, Triantafyllos Afouras, Kristen Grauman |
| 2023 | VideoComposer: Compositional Video Synthesis with Motion Controllability. Xiang Wang, Hangjie Yuan, Shiwei Zhang, Dayou Chen, Jiuniu Wang, Yingya Zhang, Yujun Shen, Deli Zhao, Jingren Zhou |
| 2023 | VillanDiffusion: A Unified Backdoor Attack Framework for Diffusion Models. Sheng-Yen Chou, Pin-Yu Chen, Tsung-Yi Ho |
| 2023 | VisAlign: Dataset for Measuring the Alignment between AI and Humans in Visual Perception. Jiyoung Lee, Seungho Kim, Seunghyun Won, Joonseok Lee, Marzyeh Ghassemi, James Thorne, Jaeseok Choi, O.-Kil Kwon, Edward Choi |
| 2023 | VisIT-Bench: A Dynamic Benchmark for Evaluating Instruction-Following Vision-and-Language Models. Yonatan Bitton, Hritik Bansal, Jack Hessel, Rulin Shao, Wanrong Zhu, Anas Awadalla, Josh Gardner, Rohan Taori, Ludwig Schmidt |
| 2023 | VisionLLM: Large Language Model is also an Open-Ended Decoder for Vision-Centric Tasks. Wenhai Wang, Zhe Chen, Xiaokang Chen, Jiannan Wu, Xizhou Zhu, Gang Zeng, Ping Luo, Tong Lu, Jie Zhou, Yu Qiao, Jifeng Dai |
| 2023 | VisoGender: A dataset for benchmarking gender bias in image-text pronoun resolution. Siobhan Mackenzie Hall, Fernanda Gonçalves Abrantes, Hanwen Zhu, Grace Sodunke, Aleksandar Shtedritski, Hannah Rose Kirk |
| 2023 | Visual Explanations of Image-Text Representations via Multi-Modal Information Bottleneck Attribution. Ying Wang, Tim G. J. Rudner, Andrew Gordon Wilson |
| 2023 | Visual Instruction Inversion: Image Editing via Image Prompting. Thao Nguyen, Yuheng Li, Utkarsh Ojha, Yong Jae Lee |
| 2023 | Visual Instruction Tuning. Haotian Liu, Chunyuan Li, Qingyang Wu, Yong Jae Lee |
| 2023 | Visual Programming for Step-by-Step Text-to-Image Generation and Evaluation. Jaemin Cho, Abhay Zala, Mohit Bansal |
| 2023 | Vocabulary-free Image Classification. Alessandro Conti, Enrico Fini, Massimiliano Mancini, Paolo Rota, Yiming Wang, Elisa Ricci |
| 2023 | Voicebox: Text-Guided Multilingual Universal Speech Generation at Scale. Matthew Le, Apoorv Vyas, Bowen Shi, Brian Karrer, Leda Sari, Rashel Moritz, Mary Williamson, Vimal Manohar, Yossi Adi, Jay Mahadeokar, Wei-Ning Hsu |
| 2023 | Volume Feature Rendering for Fast Neural Radiance Field Reconstruction. Kang Han, Wei Xiang, Lu Yu |
| 2023 | VoxDet: Voxel Learning for Novel Instance Detection. Bowen Li, Jiashun Wang, Yaoyu Hu, Chen Wang, Sebastian A. Scherer |
| 2023 | Vulnerabilities in Video Quality Assessment Models: The Challenge of Adversarial Attacks. Aoxiang Zhang, Yu Ran, Weixuan Tang, Yuan-Gen Wang |
| 2023 | WBCAtt: A White Blood Cell Dataset Annotated with Detailed Morphological Attributes. Satoshi Tsutsui, Winnie Pang, Bihan Wen |
| 2023 | WCLD: Curated Large Dataset of Criminal Cases from Wisconsin Circuit Courts. Elliott Ash, Naman Goel, Nianyun Li, Claudia Marangon, Peiyao Sun |
| 2023 | WITRAN: Water-wave Information Transmission and Recurrent Acceleration Network for Long-range Time Series Forecasting. Yuxin Jia, Youfang Lin, Xinyan Hao, Yan Lin, Shengnan Guo, Huaiyu Wan |
| 2023 | WalkLM: A Uniform Language Model Fine-tuning Framework for Attributed Graph Embedding. Yanchao Tan, Zihao Zhou, Hang Lv, Weiming Liu, Carl Yang |
| 2023 | Wasserstein Gradient Flows for Optimizing Gaussian Mixture Policies. Hanna Ziesche, Leonel Rozo |
| 2023 | Wasserstein Quantum Monte Carlo: A Novel Approach for Solving the Quantum Many-Body Schrödinger Equation. Kirill Neklyudov, Jannes Nys, Luca A. Thiede, Juan Carrasquilla, Qiang Liu, Max Welling, Alireza Makhzani |
| 2023 | Wasserstein distributional robustness of neural networks. Xingjian Bai, Guangyi He, Yifan Jiang, Jan Oblój |
| 2023 | Waymax: An Accelerated, Data-Driven Simulator for Large-Scale Autonomous Driving Research. Cole Gulino, Justin Fu, Wenjie Luo, George Tucker, Eli Bronstein, Yiren Lu, Jean Harb, Xinlei Pan, Yan Wang, Xiangyu Chen, John D. Co-Reyes, Rishabh Agarwal, Rebecca Roelofs, Yao Lu, Nico Montali, Paul Mougin, Zoey Yang, Brandyn White, Aleksandra Faust, Rowan McAllister, Dragomir Anguelov, Benjamin Sapp |
| 2023 | Waypoint Transformer: Reinforcement Learning via Supervised Learning with Intermediate Targets. Anirudhan Badrinath, Yannis Flet-Berliac, Allen Nie, Emma Brunskill |
| 2023 | Weakly Coupled Deep Q-Networks. Ibrahim El Shar, Daniel Jiang |
| 2023 | Weakly Supervised 3D Open-vocabulary Segmentation. Kunhao Liu, Fangneng Zhan, Jiahui Zhang, Muyu Xu, Yingchen Yu, Abdulmotaleb El Saddik, Christian Theobalt, Eric P. Xing, Shijian Lu |
| 2023 | Weakly-Supervised Audio-Visual Segmentation. Shentong Mo, Bhiksha Raj |
| 2023 | Weakly-Supervised Concealed Object Segmentation with SAM-based Pseudo Labeling and Multi-scale Feature Grouping. Chunming He, Kai Li, Yachao Zhang, Guoxia Xu, Longxiang Tang, Yulun Zhang, Zhenhua Guo, Xiu Li |
| 2023 | Weighted ROC Curve in Cost Space: Extending AUC to Cost-Sensitive Learning. Huiyang Shao, Qianqian Xu, Zhiyong Yang, Peisong Wen, Peifeng Gao, Qingming Huang |
| 2023 | Weitzman's Rule for Pandora's Box with Correlations. Evangelia Gergatsouli, Christos Tzamos |
| 2023 | What Can We Learn from Unlearnable Datasets? Pedro Sandoval Segura, Vasu Singla, Jonas Geiping, Micah Goldblum, Tom Goldstein |
| 2023 | What Distributions are Robust to Indiscriminate Poisoning Attacks for Linear Learners? Fnu Suya, Xiao Zhang, Yuan Tian, David Evans |
| 2023 | What Do Deep Saliency Models Learn about Visual Attention? Shi Chen, Ming Jiang, Qi Zhao |
| 2023 | What Knowledge Gets Distilled in Knowledge Distillation? Utkarsh Ojha, Yuheng Li, Anirudh Sundara Rajan, Yingyu Liang, Yong Jae Lee |
| 2023 | What Makes Data Suitable for a Locally Connected Neural Network? A Necessary and Sufficient Condition Based on Quantum Entanglement. Yotam Alexander, Nimrod De La Vega, Noam Razin, Nadav Cohen |
| 2023 | What Makes Good Examples for Visual In-Context Learning? Yuanhan Zhang, Kaiyang Zhou, Ziwei Liu |
| 2023 | What Planning Problems Can A Relational Neural Network Solve? Jiayuan Mao, Tomás Lozano-Pérez, Joshua B. Tenenbaum, Leslie Pack Kaelbling |
| 2023 | What Truly Matters in Trajectory Prediction for Autonomous Driving? Tran Phong, Haoran Wu, Cunjun Yu, Panpan Cai, Sifa Zheng, David Hsu |
| 2023 | What You See is What You Read? Improving Text-Image Alignment Evaluation. Michal Yarom, Yonatan Bitton, Soravit Changpinyo, Roee Aharoni, Jonathan Herzig, Oran Lang, Eran Ofek, Idan Szpektor |
| 2023 | What a MESS: Multi-Domain Evaluation of Zero-Shot Semantic Segmentation. Benedikt Blumenstiel, Johannes Jakubik, Hilde Kühne, Michael Vössing |
| 2023 | What can Large Language Models do in chemistry? A comprehensive benchmark on eight tasks. Taicheng Guo, Kehan Guo, Bozhao Nan, Zhenwen Liang, Zhichun Guo, Nitesh V. Chawla, Olaf Wiest, Xiangliang Zhang |
| 2023 | What can a Single Attention Layer Learn? A Study Through the Random Features Lens. Hengyu Fu, Tianyu Guo, Yu Bai, Song Mei |
| 2023 | What functions can Graph Neural Networks compute on random graphs? The role of Positional Encoding. Nicolas Keriven, Samuel Vaiter |
| 2023 | What is Flagged in Uncertainty Quantification? Latent Density Models for Uncertainty Categorization. Hao Sun, Boris van Breugel, Jonathan Crabbé, Nabeel Seedat, Mihaela van der Schaar |
| 2023 | What is the Inductive Bias of Flatness Regularization? A Study of Deep Matrix Factorization Models. Khashayar Gatmiry, Zhiyuan Li, Tengyu Ma, Sashank J. Reddi, Stefanie Jegelka, Ching-Yao Chuang |
| 2023 | What's Left? Concept Grounding with Logic-Enhanced Foundation Models. Joy Hsu, Jiayuan Mao, Joshua B. Tenenbaum, Jiajun Wu |
| 2023 | When Can We Track Significant Preference Shifts in Dueling Bandits? Joe Suk, Arpit Agarwal |
| 2023 | When Demonstrations meet Generative World Models: A Maximum Likelihood Framework for Offline Inverse Reinforcement Learning. Siliang Zeng, Chenliang Li, Alfredo García, Mingyi Hong |
| 2023 | When Do Graph Neural Networks Help with Node Classification? Investigating the Homophily Principle on Node Distinguishability. Sitao Luan, Chenqing Hua, Minkai Xu, Qincheng Lu, Jiaqi Zhu, Xiao-Wen Chang, Jie Fu, Jure Leskovec, Doina Precup |
| 2023 | When Do Neural Nets Outperform Boosted Trees on Tabular Data? Duncan C. McElfresh, Sujay Khandagale, Jonathan Valverde, Vishak Prasad C., Ganesh Ramakrishnan, Micah Goldblum, Colin White |
| 2023 | When Do Transformers Shine in RL? Decoupling Memory from Credit Assignment. Tianwei Ni, Michel Ma, Benjamin Eysenbach, Pierre-Luc Bacon |
| 2023 | When Does Confidence-Based Cascade Deferral Suffice? Wittawat Jitkrittum, Neha Gupta, Aditya Krishna Menon, Harikrishna Narasimhan, Ankit Singh Rawat, Sanjiv Kumar |
| 2023 | When Does Optimizing a Proper Loss Yield Calibration? Jaroslaw Blasiok, Parikshit Gopalan, Lunjia Hu, Preetum Nakkiran |
| 2023 | When Visual Prompt Tuning Meets Source-Free Domain Adaptive Semantic Segmentation. Xinhong Ma, Yiming Wang, Hao Liu, Tianyu Guo, Yunhe Wang |
| 2023 | When are ensembles really effective? Ryan Theisen, Hyunsuk Kim, Yaoqing Yang, Liam Hodgkinson, Michael W. Mahoney |
| 2023 | When can Regression-Adjusted Control Variate Help? Rare Events, Sobolev Embedding and Minimax Optimality. Jose H. Blanchet, Haoxuan Chen, Yiping Lu, Lexing Ying |
| 2023 | When is Agnostic Reinforcement Learning Statistically Tractable? Zeyu Jia, Gene Li, Alexander Rakhlin, Ayush Sekhari, Nati Srebro |
| 2023 | Where Did I Come From? Origin Attribution of AI-Generated Images. Zhenting Wang, Chen Chen, Yi Zeng, Lingjuan Lyu, Shiqing Ma |
| 2023 | Where are we in the search for an Artificial Visual Cortex for Embodied Intelligence? Arjun Majumdar, Karmesh Yadav, Sergio Arnaud, Yecheng Jason Ma, Claire Chen, Sneha Silwal, Aryan Jain, Vincent-Pierre Berges, Tingfan Wu, Jay Vakil, Pieter Abbeel, Jitendra Malik, Dhruv Batra, Yixin Lin, Oleksandr Maksymets, Aravind Rajeswaran, Franziska Meier |
| 2023 | Where2Explore: Few-shot Affordance Learning for Unseen Novel Categories of Articulated Objects. Chuanruo Ning, Ruihai Wu, Haoran Lu, Kaichun Mo, Hao Dong |
| 2023 | Which Models have Perceptually-Aligned Gradients? An Explanation via Off-Manifold Robustness. Suraj Srinivas, Sebastian Bordt, Himabindu Lakkaraju |
| 2023 | White-Box Transformers via Sparse Rate Reduction. Yaodong Yu, Sam Buchanan, Druv Pai, Tianzhe Chu, Ziyang Wu, Shengbang Tong, Benjamin D. Haeffele, Yi Ma |
| 2023 | Why Did This Model Forecast This Future? Information-Theoretic Saliency for Counterfactual Explanations of Probabilistic Regression Models. Chirag Raman, Alec Nonnemaker, Amelia Villegas-Morcillo, Hayley Hung, Marco Loog |
| 2023 | Why Does Sharpness-Aware Minimization Generalize Better Than SGD? Zixiang Chen, Junkai Zhang, Yiwen Kou, Xiangning Chen, Cho-Jui Hsieh, Quanquan Gu |
| 2023 | Why think step by step? Reasoning emerges from the locality of experience. Ben Prystawski, Michael Li, Noah D. Goodman |
| 2023 | Wide Neural Networks as Gaussian Processes: Lessons from Deep Equilibrium Models. Tianxiang Gao, Xiaokai Huo, Hailiang Liu, Hongyang Gao |
| 2023 | WildfireSpreadTS: A dataset of multi-modal time series for wildfire spread prediction. Sebastian Gerard, Yu Zhao, Josephine Sullivan |
| 2023 | Window-Based Distribution Shift Detection for Deep Neural Networks. Guy Bar-Shalom, Yonatan Geifman, Ran El-Yaniv |
| 2023 | Winner Takes It All: Training Performant RL Populations for Combinatorial Optimization. Nathan Grinsztajn, Daniel Furelos-Blanco, Shikha Surana, Clément Bonnet, Tom Barrett |
| 2023 | Winner-Take-All Column Row Sampling for Memory Efficient Adaptation of Language Model. Zirui Liu, Guanchu Wang, Shaochen Zhong, Zhaozhuo Xu, Daochen Zha, Ruixiang (Ryan) Tang, Zhimeng Stephen Jiang, Kaixiong Zhou, Vipin Chaudhary, Shuai Xu, Xia Hu |
| 2023 | WordScape: a Pipeline to extract multilingual, visually rich Documents with Layout Annotations from Web Crawl Data. Maurice Weber, Carlo Siebenschuh, Rory Butler, Anton Alexandrov, Valdemar Thanner, Georgios Tsolakis, Haris Jabbar, Ian T. Foster, Bo Li, Rick Stevens, Ce Zhang |
| 2023 | Worst-case Performance of Popular Approximate Nearest Neighbor Search Implementations: Guarantees and Limitations. Piotr Indyk, Haike Xu |
| 2023 | Would I have gotten that reward? Long-term credit assignment by counterfactual contribution analysis. Alexander Meulemans, Simon Schug, Seijin Kobayashi, Nathaniel D. Daw, Gregory Wayne |
| 2023 | Wyze Rule: Federated Rule Dataset for Rule Recommendation Benchmarking. Mohammad Mahdi Kamani, Yuhang Yao, Hanjia Lyu, Zhongwei Cheng, Lin Chen, Liangju Li, Carlee Joe-Wong, Jiebo Luo |
| 2023 | XAGen: 3D Expressive Human Avatars Generation. Zhongcong Xu, Jianfeng Zhang, Jun Hao Liew, Jiashi Feng, Mike Zheng Shou |
| 2023 | XES3G5M: A Knowledge Tracing Benchmark Dataset with Auxiliary Information. Zitao Liu, Qiongqiong Liu, Teng Guo, Jiahao Chen, Shuyan Huang, Xiangyu Zhao, Jiliang Tang, Weiqi Luo, Jian Weng |
| 2023 | You Only Condense Once: Two Rules for Pruning Condensed Datasets. Yang He, Lingao Xiao, Joey Tianyi Zhou |
| 2023 | YouTube-ASL: A Large-Scale, Open-Domain American Sign Language-English Parallel Corpus. David Uthus, Garrett Tanzer, Manfred Georg |
| 2023 | YouTubePD: A Multimodal Benchmark for Parkinson's Disease Analysis. Andy Zhou, Samuel Li, Pranav Sriram, Xiang Li, Jiahua Dong, Ansh Sharma, Yuanyi Zhong, Shirui Luo, Volodymyr V. Kindratenko, George Heintz, Christopher M. Zallek, Yu-Xiong Wang |
| 2023 | Your representations are in the network: composable and parallel adaptation for large scale models. Yonatan Dukler, Alessandro Achille, Hao Yang, Varsha Vivek, Luca Zancato, Benjamin Bowman, Avinash Ravichandran, Charless C. Fowlkes, Ashwin Swaminathan, Stefano Soatto |
| 2023 | Zero-One Laws of Graph Neural Networks. Sam Adam-Day, Theodor-Mihai Iliant, Ismail Ilkan Ceylan |
| 2023 | Zero-Regret Performative Prediction Under Inequality Constraints. Wenjing Yan, Xuanyu Cao |
| 2023 | Zero-Shot Anomaly Detection via Batch Normalization. Aodong Li, Chen Qiu, Marius Kloft, Padhraic Smyth, Maja Rudolph, Stephan Mandt |
| 2023 | Zero-shot Visual Relation Detection via Composite Visual Cues from Large Language Models. Lin Li, Jun Xiao, Guikun Chen, Jian Shao, Yueting Zhuang, Long Chen |
| 2023 | Zero-shot causal learning. Hamed Nilforoshan, Michael Moor, Yusuf H. Roohani, Yining Chen, Anja Surina, Michihiro Yasunaga, Sara Oblak, Jure Leskovec |
| 2023 | Zero-sum Polymatrix Markov Games: Equilibrium Collapse and Efficient Computation of Nash Equilibria. Fivos Kalogiannis, Ioannis Panageas |
| 2023 | Zeroth-Order Methods for Nondifferentiable, Nonconvex, and Hierarchical Federated Optimization. Yuyang Qiu, Uday V. Shanbhag, Farzad Yousefian |
| 2023 | ZipLM: Inference-Aware Structured Pruning of Language Models. Eldar Kurtic, Elias Frantar, Dan Alistarh |
| 2023 | ZoomTrack: Target-aware Non-uniform Resizing for Efficient Visual Tracking. Yutong Kou, Jin Gao, Bing Li, Gang Wang, Weiming Hu, Yizheng Wang, Liang Li |
| 2023 | f-Policy Gradients: A General Framework for Goal-Conditioned RL using f-Divergences. Siddhant Agarwal, Ishan Durugkar, Peter Stone, Amy Zhang |
| 2023 | iSCAN: Identifying Causal Mechanism Shifts among Nonlinear Additive Noise Models. Tianyu Chen, Kevin Bello, Bryon Aragam, Pradeep Ravikumar |
| 2023 | k-Means Clustering with Distance-Based Privacy. Alessandro Epasto, Vahab Mirrokni, Shyam Narayanan, Peilin Zhong |
| 2023 | k-Median Clustering via Metric Embedding: Towards Better Initialization with Differential Privacy. Chenglin Fan, Ping Li, Xiaoyun Li |
| 2023 | p-Poisson surface reconstruction in curl-free flow from point clouds. Yesom Park, Taekyung Lee, Jooyoung Hahn, Myungjoo Kang |
| 2023 | p-value Adjustment for Monotonous, Unbiased, and Fast Clustering Comparison. Kai Klede, Thomas Altstidl, Dario Zanca, Bjoern M. Eskofier |
| 2023 | rPPG-Toolbox: Deep Remote PPG Toolbox. Xin Liu, Girish Narayanswamy, Akshay Paruchuri, Xiaoyu Zhang, Jiankai Tang, Yuzhe Zhang, Roni Sengupta, Shwetak N. Patel, Yuntao Wang, Daniel McDuff |
| 2023 | trajdata: A Unified Interface to Multiple Human Trajectory Datasets. Boris Ivanovic, Guanyu Song, Igor Gilitschenski, Marco Pavone |
| 2023 | xTrimoGene: An Efficient and Scalable Representation Learner for Single-Cell RNA-Seq Data. Jing Gong, Minsheng Hao, Xingyi Cheng, Xin Zeng, Chiming Liu, Jianzhu Ma, Xuegong Zhang, Taifeng Wang, Le Song |
| 2023 | ε-fractional core stability in Hedonic Games. Simone Fioravanti, Michele Flammini, Bojana Kodric, Giovanna Varricchio |