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Journal of Machine Learning Research

The Journal of Machine Learning Research (JMLR), established in 2000, provides an international forum for the electronic and paper publication of high-quality scholarly articles in all areas of machine learning. All published papers are freely available online.

JMLR has a commitment to rigorous yet rapid reviewing. Final versions are published electronically (ISSN 1533-7928) immediately upon receipt. Until the end of 2004, paper volumes (ISSN 1532-4435) were published 8 times annually and sold to libraries and individuals by the MIT Press. Paper volumes (ISSN 1532-4435) are now published and sold by Microtome Publishing.

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Latest papers

Towards Understanding Gradient Flow Dynamics of Homogeneous Neural Networks Beyond the Origin
Akshay Kumar, Jarvis Haupt, 2025.
[abs][pdf][bib]      [code]

Optimal Complexity in Byzantine-Robust Distributed Stochastic Optimization with Data Heterogeneity
Qiankun Shi, Jie Peng, Kun Yuan, Xiao Wang, Qing Ling, 2025.
[abs][pdf][bib]

Towards Unified Native Spaces in Kernel Methods
Xavier Emery, Emilio Porcu, Moreno Bevilacqua, 2025.
[abs][pdf][bib]

TorchCP: A Python Library for Conformal Prediction
Jianguo Huang, Jianqing Song, Xuanning Zhou, Bingyi Jing, Hongxin Wei, 2025. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Hopfield-Fenchel-Young Networks: A Unified Framework for Associative Memory Retrieval
Saul Santos, Vlad Niculae, Daniel McNamee, Andre F.T. Martins, 2025.
[abs][pdf][bib]      [code]

Identifiability of Causal Graphs under Non-Additive Conditionally Parametric Causal Models
Juraj Bodik, Valérie Chavez-Demoulin, 2025.
[abs][pdf][bib]      [code]

Fundamental Limits of Membership Inference Attacks on Machine Learning Models
Eric Aubinais, Elisabeth Gassiat, Pablo Piantanida, 2025.
[abs][pdf][bib]

On the Robustness of Kernel Goodness-of-Fit Tests
Xing Liu, François-Xavier Briol, 2025.
[abs][pdf][bib]      [code]

Efficient Online Prediction for High-Dimensional Time Series via Joint Tensor Tucker Decomposition
Zhenting Luan, Defeng Sun, Haoning Wang, Liping Zhang, 2025.
[abs][pdf][bib]

Fast Computation of Superquantile-Constrained Optimization Through Implicit Scenario Reduction
Jake Roth, Ying Cui, 2025.
[abs][pdf][bib]      [code]

Collaborative likelihood-ratio estimation over graphs
Alejandro de la Concha, Nicolas Vayatis, Argyris Kalogeratos, 2025.
[abs][pdf][bib]      [code]

On the Utility of Equal Batch Sizes for Inference in Stochastic Gradient Descent
Rahul Singh, Abhinek Shukla, Dootika Vats, 2025.
[abs][pdf][bib]      [code]

Differentially Private Bootstrap: New Privacy Analysis and Inference Strategies
Zhanyu Wang, Guang Cheng, Jordan Awan, 2025.
[abs][pdf][bib]      [code]

Convergence and Sample Complexity of Natural Policy Gradient Primal-Dual Methods for Constrained MDPs
Dongsheng Ding, Kaiqing Zhang, Jiali Duan, Tamer Basar, Mihailo R. Jovanovic, 2025.
[abs][pdf][bib]

Differentially Private Multivariate Medians
Kelly Ramsay, Aukosh Jagannath, Shoja'eddin Chenouri, 2025.
[abs][pdf][bib]      [code]

VFOSA: Variance-Reduced Fast Operator Splitting Algorithms for Generalized Equations
Quoc Tran-Dinh, 2025.
[abs][pdf][bib]

Scaling Capability in Token Space: An Analysis of Large Vision Language Model
Tenghui Li, Guoxu Zhou, Xuyang Zhao, Qibin Zhao, 2025.
[abs][pdf][bib]

Minimax Optimal Two-Sample Testing under Local Differential Privacy
Jongmin Mun, Seungwoo Kwak, Ilmun Kim, 2025.
[abs][pdf][bib]      [code]

Jackpot: Approximating Uncertainty Domains with Adversarial Manifolds
Nathanaël Munier, Emmanuel Soubies, Pierre Weiss, 2025.
[abs][pdf][bib]      [code]

An Asymptotically Optimal Coordinate Descent Algorithm for Learning Bayesian Networks from Gaussian Models
Tong Xu, Simge Küçükyavuz, Ali Shojaie, Armeen Taeb, 2025.
[abs][pdf][bib]      [code]

Convergence Rates for Non-Log-Concave Sampling and Log-Partition Estimation
David Holzmüller, Francis Bach, 2025.
[abs][pdf][bib]      [code]

A Unified Framework to Enforce, Discover, and Promote Symmetry in Machine Learning
Samuel E. Otto, Nicholas Zolman, J. Nathan Kutz, Steven L. Brunton, 2025.
[abs][pdf][bib]      [code]

Infinite-dimensional Mahalanobis Distance with Applications to Kernelized Novelty Detection
Nikita Zozoulenko, Thomas Cass, Lukas Gonon, 2025.
[abs][pdf][bib]      [code]

Stable learning using spiking neural networks equipped with affine encoders and decoders
A. Martina Neuman, Dominik Dold, Philipp Christian Petersen, 2025.
[abs][pdf][bib]      [code]

Efficient Knowledge Deletion from Trained Models Through Layer-wise Partial Machine Unlearning
Vinay Chakravarthi Gogineni, Esmaeil S. Nadimi, 2025.
[abs][pdf][bib]

General Loss Functions Lead to (Approximate) Interpolation in High Dimensions
Kuo-Wei Lai, Vidya Muthukumar, 2025.
[abs][pdf][bib]

Piecewise deterministic sampling with splitting schemes
Andrea Bertazzi, Paul Dobson, Pierre Monmarché, 2025.
[abs][pdf][bib]      [code]

Hierarchical and Stochastic Crystallization Learning: Geometrically Leveraged Nonparametric Regression with Delaunay Triangulation
Jiaqi Gu, Guosheng Yin, 2025.
[abs][pdf][bib]

Gold-medalist Performance in Solving Olympiad Geometry with AlphaGeometry2
Yuri Chervonyi, Trieu H. Trinh, Miroslav Olšák, Xiaomeng Yang, Hoang H. Nguyen, Marcelo Menegali, Junehyuk Jung, Junsu Kim, Vikas Verma, Quoc V. Le, Thang Luong, 2025.
[abs][pdf][bib]      [code]

Decentralized Bilevel Optimization: A Perspective from Transient Iteration Complexity
Boao Kong, Shuchen Zhu, Songtao Lu, Xinmeng Huang, Kun Yuan, 2025.
[abs][pdf][bib]

Fair Text Classification via Transferable Representations
Thibaud Leteno, Michael Perrot, Charlotte Laclau, Antoine Gourru, Christophe Gravier, 2025.
[abs][pdf][bib]      [code]

Stochastic Interior-Point Methods for Smooth Conic Optimization with Applications
Chuan He, Zhanwang Deng, 2025.
[abs][pdf][bib]      [code]

Revisiting Gradient Normalization and Clipping for Nonconvex SGD under Heavy-Tailed Noise: Necessity, Sufficiency, and Acceleration
Tao Sun, Xinwang Liu, Kun Yuan, 2025.
[abs][pdf][bib]

Generalized multi-view model: Adaptive density estimation under low-rank constraints
Julien Chhor, Olga Klopp, Alexandre B. Tsybakov, 2025.
[abs][pdf][bib]      [code]

(De)-regularized Maximum Mean Discrepancy Gradient Flow
Zonghao Chen, Aratrika Mustafi, Pierre Glaser, Anna Korba, Arthur Gretton, Bharath K. Sriperumbudur, 2025.
[abs][pdf][bib]

On Probabilistic Embeddings in Optimal Dimension Reduction
Ryan Murray, Adam Pickarski, 2025.
[abs][pdf][bib]

Physics Informed Kolmogorov-Arnold Neural Networks for Dynamical Analysis via Efficient-KAN and WAV-KAN
Subhajit Patra, Sonali Panda, Bikram Keshari Parida, Mahima Arya, Kurt Jacobs, Denys I. Bondar, Abhijit Sen, 2025.
[abs][pdf][bib]      [code]

Graph-accelerated Markov Chain Monte Carlo using Approximate Samples
Leo L. Duan, Anirban Bhattacharya, 2025.
[abs][pdf][bib]      [code]

Online Quantile Regression
Yinan Shen, Dong Xia, Wen-Xin Zhou, 2025.
[abs][pdf][bib]

Statistical Inference of Random Graphs With a Surrogate Likelihood Function
Dingbo Wu, Fangzheng Xie, 2025.
[abs][pdf][bib]      [code]

On the Representation of Pairwise Causal Background Knowledge and Its Applications in Causal Inference
Zhuangyan Fang, Ruiqi Zhao, Yue Liu, Yangbo He, 2025.
[abs][pdf][bib]

An Augmentation Overlap Theory of Contrastive Learning
Qi Zhang, Yifei Wang, Yisen Wang, 2025.
[abs][pdf][bib]      [code]

Algorithms for ridge estimation with convergence guarantees
Wanli Qiao, Wolfgang Polonik, 2025.
[abs][pdf][bib]

Talent: A Tabular Analytics and Learning Toolbox
Si-Yang Liu, Hao-Run Cai, Qi-Le Zhou, Huai-Hong Yin, Tao Zhou, Jun-Peng Jiang, Han-Jia Ye, 2025. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Inferring Change Points in High-Dimensional Regression via Approximate Message Passing
Gabriel Arpino, Xiaoqi Liu, Julia Gontarek, Ramji Venkataramanan, 2025.
[abs][pdf][bib]      [code]

Universality of Kernel Random Matrices and Kernel Regression in the Quadratic Regime
Parthe Pandit, Zhichao Wang, Yizhe Zhu, 2025.
[abs][pdf][bib]

Lexicographic Lipschitz Bandits: New Algorithms and a Lower Bound
Bo Xue, Ji Cheng, Fei Liu, Yimu Wang, Lijun Zhang, Qingfu Zhang, 2025.
[abs][pdf][bib]

On the Natural Gradient of the Evidence Lower Bound
Nihat Ay, Jesse van Oostrum, Adwait Datar, 2025.
[abs][pdf][bib]      [code]

Geometry and Stability of Supervised Learning Problems
Facundo Mémoli, Brantley Vose, Robert C. Williamson, 2025.
[abs][pdf][bib]

Understanding Deep Representation Learning via Layerwise Feature Compression and Discrimination
Peng Wang, Xiao Li, Can Yaras, Zhihui Zhu, Laura Balzano, Wei Hu, Qing Qu, 2025.
[abs][pdf][bib]      [code]

Optimal Rates of Kernel Ridge Regression under Source Condition in Large Dimensions
Haobo Zhang, Yicheng Li, Weihao Lu, Qian Lin, 2025.
[abs][pdf][bib]

A Hybrid Weighted Nearest Neighbour Classifier for Semi-Supervised Learning
Stephen M. S. Lee, Mehdi Soleymani, 2025.
[abs][pdf][bib]

Scalable and Adaptive Variational Bayes Methods for Hawkes Processes
Deborah Sulem, Vincent Rivoirard, Judith Rousseau, 2025.
[abs][pdf][bib]

Biological Sequence Kernels with Guaranteed Flexibility
Alan N. Amin, Debora S. Marks, Eli N. Weinstein, 2025.
[abs][pdf][bib]      [code]

Unified Discrete Diffusion for Categorical Data
Lingxiao Zhao, Xueying Ding, Lijun Yu, Leman Akoglu, 2025.
[abs][pdf][bib]      [code]

Reinforcement Learning for Infinite-Dimensional Systems
Wei Zhang, Jr-Shin Li, 2025.
[abs][pdf][bib]

Deep Neural Networks are Adaptive to Function Regularity and Data Distribution in Approximation and Estimation
Hao Liu, Jiahui Cheng, Wenjing Liao, 2025.
[abs][pdf][bib]

Generation of Geodesics with Actor-Critic Reinforcement Learning to Predict Midpoints
Kazumi Kasaura, 2025.
[abs][pdf][bib]      [code]

Learning-to-Optimize with PAC-Bayesian Guarantees: Theoretical Considerations and Practical Implementation
Michael Sucker, Jalal Fadili, Peter Ochs, 2025.
[abs][pdf][bib]      [code]

Sparse Semiparametric Discriminant Analysis for High-dimensional Zero-inflated Data
Hee Cheol Chung, Yang Ni, Irina Gaynanova, 2025.
[abs][pdf][bib]      [code]

Stochastic Interpolants: A Unifying Framework for Flows and Diffusions
Michael Albergo, Nicholas M. Boffi, Eric Vanden-Eijnden, 2025.
[abs][pdf][bib]

Efficient Methods for Non-stationary Online Learning
Peng Zhao, Yan-Feng Xie, Lijun Zhang, Zhi-Hua Zhou, 2025.
[abs][pdf][bib]

Decentralized Asynchronous Optimization with DADAO allows Decoupling and Acceleration
Adel Nabli, Edouard Oyallon, 2025.
[abs][pdf][bib]      [code]

Mixtures of Gaussian Process Experts with SMC^2
Teemu Härkönen, Sara Wade, Kody Law, Lassi Roininen, 2025.
[abs][pdf][bib]      [code]

Robust Point Matching with Distance Profiles
YoonHaeng Hur, Yuehaw Khoo, 2025.
[abs][pdf][bib]

BoFire: Bayesian Optimization Framework Intended for Real Experiments
Johannes P. Dürholt, Thomas S. Asche, Johanna Kleinekorte, Gabriel Mancino-Ball, Benjamin Schiller, Simon Sung, Julian Keupp, Aaron Osburg, Toby Boyne, Ruth Misener, Rosona Eldred, Chrysoula Kappatou, Robert M. Lee, Dominik Linzner, Wagner Steuer Costa, David Walz, Niklas Wulkow, Behrang Shafei, 2025. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Reliever: Relieving the Burden of Costly Model Fits for Changepoint Detection
Chengde Qian, Guanghui Wang, Changliang Zou, 2025.
[abs][pdf][bib]

Variational Inference for Uncertainty Quantification: an Analysis of Trade-offs
Charles C. Margossian, Loucas Pillaud-Vivien, Lawrence K. Saul, 2025.
[abs][pdf][bib]      [code]

Are Ensembles Getting Better All the Time?
Pierre-Alexandre Mattei, Damien Garreau, 2025.
[abs][pdf][bib]      [code]

An Adaptive Parameter-free and Projection-free Restarting Level Set Method for Constrained Convex Optimization Under the Error Bound Condition
Qihang Lin, Negar Soheili, Runchao Ma, Selvaprabu Nadarajah, 2025.
[abs][pdf][bib]

Operator Learning for Hyperbolic PDEs
Christopher Wang, Alex Townsend, 2025.
[abs][pdf][bib]      [code]

Optimal subsampling for high-dimensional partially linear models via machine learning methods
Yujing Shao, Lei Wang, Heng Lian, Haiying Wang, 2025.
[abs][pdf][bib]

Decentralized Sparse Linear Regression via Gradient-Tracking
Marie Maros, Gesualdo Scutari, Ying Sun, Guang Cheng, 2025.
[abs][pdf][bib]

Calibrated Inference: Statistical Inference that Accounts for Both Sampling Uncertainty and Distributional Uncertainty
Yujin Jeong, Dominik Rothenhäusler, 2025.
[abs][pdf][bib]

Relaxed Gaussian Process Interpolation: a Goal-Oriented Approach to Bayesian Optimization
Sébastien J. Petit, Julien Bect, Emmanuel Vazquez, 2025.
[abs][pdf][bib]      [code]

Linear Separation Capacity of Self-Supervised Representation Learning
Shulei Wang, 2025.
[abs][pdf][bib]

On the Convergence of Projected Policy Gradient for Any Constant Step Sizes
Jiacai Liu, Wenye Li, Dachao Lin, Ke Wei, Zhihua Zhang, 2025.
[abs][pdf][bib]

Learning with Linear Function Approximations in Mean-Field Control
Erhan Bayraktar, Ali Devran Kara, 2025.
[abs][pdf][bib]

A New Random Reshuffling Method for Nonsmooth Nonconvex Finite-sum Optimization
Junwen Qiu, Xiao Li, Andre Milzarek, 2025.
[abs][pdf][bib]

Model-free Change-Point Detection Using AUC of a Classifier
Rohit Kanrar, Feiyu Jiang, Zhanrui Cai, 2025.
[abs][pdf][bib]      [code]

EF21 with Bells & Whistles: Six Algorithmic Extensions of Modern Error Feedback
Ilyas Fatkhullin, Igor Sokolov, Eduard Gorbunov, Zhize Li, Peter Richtárik, 2025.
[abs][pdf][bib]      [code]

Multiple Instance Verification
Xin Xu, Eibe Frank, Geoffrey Holmes, 2025.
[abs][pdf][bib]      [code]

Learning from Similar Linear Representations: Adaptivity, Minimaxity, and Robustness
Ye Tian, Yuqi Gu, Yang Feng, 2025.
[abs][pdf][bib]      [code]

Exponential Family Graphical Models: Correlated Replicates and Unmeasured Confounders, with Applications to fMRI Data
Yanxin Jin, Yang Ning, Kean Ming Tan, 2025.
[abs][pdf][bib]

Optimizing Return Distributions with Distributional Dynamic Programming
Bernardo Ávila Pires, Mark Rowland, Diana Borsa, Zhaohan Daniel Guo, Khimya Khetarpal, André Barreto, David Abel, Rémi Munos, Will Dabney, 2025.
[abs][pdf][bib]

Imprecise Multi-Armed Bandits: Representing Irreducible Uncertainty as a Zero-Sum Game
Vanessa Kosoy, 2025.
[abs][pdf][bib]

Early Alignment in Two-Layer Networks Training is a Two-Edged Sword
Etienne Boursier, Nicolas Flammarion, 2025.
[abs][pdf][bib]      [code]

Hierarchical Decision Making Based on Structural Information Principles
Xianghua Zeng, Hao Peng, Dingli Su, Angsheng Li, 2025.
[abs][pdf][bib]

Generative Adversarial Networks: Dynamics
Matias G. Delgadino, Bruno B. Suassuna, Rene Cabrera, 2025.
[abs][pdf][bib]

"What is Different Between These Datasets?" A Framework for Explaining Data Distribution Shifts
Varun Babbar*, Zhicheng Guo*, Cynthia Rudin, 2025.
[abs][pdf][bib]      [code]

Assumption-lean and data-adaptive post-prediction inference
Jiacheng Miao, Xinran Miao, Yixuan Wu, Jiwei Zhao, Qiongshi Lu, 2025.
[abs][pdf][bib]      [code]

Bagged Regularized k-Distances for Anomaly Detection
Yuchao Cai, Hanfang Yang, Yuheng Ma, Hanyuan Hang, 2025.
[abs][pdf][bib]

Four Axiomatic Characterizations of the Integrated Gradients Attribution Method
Daniel Lundstrom, Meisam Razaviyayn, 2025.
[abs][pdf][bib]

Fast Algorithm for Constrained Linear Inverse Problems
Mohammed Rayyan Sheriff, Floor Fenne Redel, Peyman Mohajerin Esfahani, 2025.
[abs][pdf][bib]      [code]

High-Rank Irreducible Cartesian Tensor Decomposition and Bases of Equivariant Spaces
Shihao Shao, Yikang Li, Zhouchen Lin, Qinghua Cui, 2025.
[abs][pdf][bib]      [code]

Best Linear Unbiased Estimate from Privatized Contingency Tables
Jordan Awan, Adam Edwards, Paul Bartholomew, Andrew Sillers, 2025.
[abs][pdf][bib]      [code]

Interpretable Global Minima of Deep ReLU Neural Networks on Sequentially Separable Data
Thomas Chen, Patrícia Muñoz Ewald, 2025.
[abs][pdf][bib]

Enhanced Feature Learning via Regularisation: Integrating Neural Networks and Kernel Methods
Bertille FOLLAIN, Francis BACH, 2025.
[abs][pdf][bib]      [code]

Data-Driven Performance Guarantees for Classical and Learned Optimizers
Rajiv Sambharya, Bartolomeo Stellato, 2025.
[abs][pdf][bib]      [code]

Contextual Bandits with Stage-wise Constraints
Aldo Pacchiano, Mohammad Ghavamzadeh, Peter Bartlett, 2025.
[abs][pdf][bib]

Boosting Causal Additive Models
Maximilian Kertel, Nadja Klein, 2025.
[abs][pdf][bib]      [code]

Frequentist Guarantees of Distributed (Non)-Bayesian Inference
Bohan Wu, César A. Uribe, 2025.
[abs][pdf][bib]

Asymptotic Inference for Multi-Stage Stationary Treatment Policy with Variable Selection
Daiqi Gao, Yufeng Liu, Donglin Zeng, 2025.
[abs][pdf][bib]      [code]

EMaP: Explainable AI with Manifold-based Perturbations
Minh Nhat Vu, Huy Quang Mai, My T. Thai, 2025.
[abs][pdf][bib]

Autoencoders in Function Space
Justin Bunker, Mark Girolami, Hefin Lambley, Andrew M. Stuart, T. J. Sullivan, 2025.
[abs][pdf][bib]      [code]

Nonparametric Regression on Random Geometric Graphs Sampled from Submanifolds
Paul Rosa, Judith Rousseau, 2025.
[abs][pdf][bib]

System Neural Diversity: Measuring Behavioral Heterogeneity in Multi-Agent Learning
Matteo Bettini, Ajay Shankar, Amanda Prorok, 2025.
[abs][pdf][bib]      [code]

Distribution Estimation under the Infinity Norm
Aryeh Kontorovich, Amichai Painsky, 2025.
[abs][pdf][bib]

Extending Temperature Scaling with Homogenizing Maps
Christopher Qian, Feng Liang, Jason Adams, 2025.
[abs][pdf][bib]      [code]

Density Estimation Using the Perceptron
Patrik Róbert Gerber, Tianze Jiang, Yury Polyanskiy, Rui Sun, 2025.
[abs][pdf][bib]

Simplex Constrained Sparse Optimization via Tail Screening
Peng Chen, Jin Zhu, Junxian Zhu, Xueqin Wang, 2025.
[abs][pdf][bib]      [code]

Score-Based Diffusion Models in Function Space
Jae Hyun Lim, Nikola B. Kovachki, Ricardo Baptista, Christopher Beckham, Kamyar Azizzadenesheli, Jean Kossaifi, Vikram Voleti, Jiaming Song, Karsten Kreis, Jan Kautz, Christopher Pal, Arash Vahdat, Anima Anandkumar, 2025.
[abs][pdf][bib]      [code]

Regularized Rényi Divergence Minimization through Bregman Proximal Gradient Algorithms
Thomas Guilmeau, Emilie Chouzenoux, Víctor Elvira, 2025.
[abs][pdf][bib]

WEFE: A Python Library for Measuring and Mitigating Bias in Word Embeddings
Pablo Badilla, Felipe Bravo-Marquez, María José Zambrano, Jorge Pérez, 2025. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Frontiers to the learning of nonparametric hidden Markov models
Kweku Abraham, Elisabeth Gassiat, Zacharie Naulet, 2025.
[abs][pdf][bib]

On Non-asymptotic Theory of Recurrent Neural Networks in Temporal Point Processes
Zhiheng Chen, Guanhua Fang, Wen Yu, 2025.
[abs][pdf][bib]

Classification in the high dimensional Anisotropic mixture framework: A new take on Robust Interpolation
Stanislav Minsker, Mohamed Ndaoud, Yiqiu Shen, 2025.
[abs][pdf][bib]

Universal Online Convex Optimization Meets Second-order Bounds
Lijun Zhang, Yibo Wang, Guanghui Wang, Jinfeng Yi, Tianbao Yang, 2025.
[abs][pdf][bib]

Sample Complexity of the Linear Quadratic Regulator: A Reinforcement Learning Lens
Amirreza Neshaei Moghaddam, Alex Olshevsky, Bahman Gharesifard, 2025.
[abs][pdf][bib]

Randomization Can Reduce Both Bias and Variance: A Case Study in Random Forests
Brian Liu, Rahul Mazumder, 2025.
[abs][pdf][bib]

skglm: Improving scikit-learn for Regularized Generalized Linear Models
Badr Moufad, Pierre-Antoine Bannier, Quentin Bertrand, Quentin Klopfenstein, Mathurin Massias, 2025. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Losing Momentum in Continuous-time Stochastic Optimisation
Kexin Jin, Jonas Latz, Chenguang Liu, Alessandro Scagliotti, 2025.
[abs][pdf][bib]

Latent Process Models for Functional Network Data
Peter W. MacDonald, Elizaveta Levina, Ji Zhu, 2025.
[abs][pdf][bib]      [code]

Dynamic Bayesian Learning for Spatiotemporal Mechanistic Models
Sudipto Banerjee, Xiang Chen, Ian Frankenburg, Daniel Zhou, 2025.
[abs][pdf][bib]      [code]

On the Ability of Deep Networks to Learn Symmetries from Data: A Neural Kernel Theory
Andrea Perin, Stephane Deny, 2025.
[abs][pdf][bib]      [code]

Fine-grained Analysis and Faster Algorithms for Iteratively Solving Linear Systems
Michal Dereziński, Daniel LeJeune, Deanna Needell, Elizaveta Rebrova, 2025.
[abs][pdf][bib]

Deep Generative Models: Complexity, Dimensionality, and Approximation
Kevin Wang, Hongqian Niu, Yixin Wang, Didong Li, 2025.
[abs][pdf][bib]      [code]

ClimSim-Online: A Large Multi-Scale Dataset and Framework for Hybrid Physics-ML Climate Emulation
Sungduk Yu, Zeyuan Hu, Akshay Subramaniam, Walter Hannah, Liran Peng, Jerry Lin, Mohamed Aziz Bhouri, Ritwik Gupta, Björn Lütjens, Justus C. Will, Gunnar Behrens, Julius J. M. Busecke, Nora Loose, Charles I Stern, Tom Beucler, Bryce Harrop, Helge Heuer, Benjamin R Hillman, Andrea Jenney, Nana Liu, Alistair White, Tian Zheng, Zhiming Kuang, Fiaz Ahmed, Elizabeth Barnes, Noah D. Brenowitz, Christopher Bretherton, Veronika Eyring, Savannah Ferretti, Nicholas Lutsko, Pierre Gentine, Stephan Mandt, J. David Neelin, Rose Yu, Laure Zanna, Nathan M. Urban, Janni Yuval, Ryan Abernathey, Pierre Baldi, Wayne Chuang, Yu Huang, Fernando Iglesias-Suarez, Sanket Jantre, Po-Lun Ma, Sara Shamekh, Guang Zhang, Michael Pritchard, 2025.
[abs][pdf][bib]      [code]

Conditional Wasserstein Distances with Applications in Bayesian OT Flow Matching
Jannis Chemseddine, Paul Hagemann, Gabriele Steidl, Christian Wald, 2025.
[abs][pdf][bib]      [code]

Deep Variational Multivariate Information Bottleneck - A Framework for Variational Losses
Eslam Abdelaleem, Ilya Nemenman, K. Michael Martini, 2025.
[abs][pdf][bib]      [code]

Diffeomorphism-based feature learning using Poincaré inequalities on augmented input space
Romain Verdière, Clémentine Prieur, Olivier Zahm, 2025.
[abs][pdf][bib]

Finite Expression Method for Solving High-Dimensional Partial Differential Equations
Senwei Liang, Haizhao Yang, 2025.
[abs][pdf][bib]      [code]

Randomly Projected Convex Clustering Model: Motivation, Realization, and Cluster Recovery Guarantees
Ziwen Wang, Yancheng Yuan, Jiaming Ma, Tieyong Zeng, Defeng Sun, 2025.
[abs][pdf][bib]

Minimax Optimal Deep Neural Network Classifiers Under Smooth Decision Boundary
Tianyang Hu, Ruiqi Liu, Zuofeng Shang, Guang Cheng, 2025.
[abs][pdf][bib]

Optimal and Efficient Algorithms for Decentralized Online Convex Optimization
Yuanyu Wan, Tong Wei, Bo Xue, Mingli Song, Lijun Zhang, 2025.
[abs][pdf][bib]

Characterizing Dynamical Stability of Stochastic Gradient Descent in Overparameterized Learning
Dennis Chemnitz, Maximilian Engel, 2025.
[abs][pdf][bib]

PREMAP: A Unifying PREiMage APproximation Framework for Neural Networks
Xiyue Zhang, Benjie Wang, Marta Kwiatkowska, Huan Zhang, 2025.
[abs][pdf][bib]

Score-Aware Policy-Gradient and Performance Guarantees using Local Lyapunov Stability
Céline Comte, Matthieu Jonckheere, Jaron Sanders, Albert Senen-Cerda, 2025.
[abs][pdf][bib]      [code]

On the O(sqrt(d)/T^(1/4)) Convergence Rate of RMSProp and Its Momentum Extension Measured by l_1 Norm
Huan Li, Yiming Dong, Zhouchen Lin, 2025.
[abs][pdf][bib]      [code]

Categorical Semantics of Compositional Reinforcement Learning
Georgios Bakirtzis, Michail Savvas, Ufuk Topcu, 2025.
[abs][pdf][bib]

Transformers from Diffusion: A Unified Framework for Neural Message Passing
Qitian Wu, David Wipf, Junchi Yan, 2025.
[abs][pdf][bib]      [code]

Optimal Sample Selection Through Uncertainty Estimation and Its Application in Deep Learning
Yong Lin, Chen Liu, Chenlu Ye, Qing Lian, Yuan Yao, Tong Zhang, 2025.
[abs][pdf][bib]      [code]

Actor-Critic learning for mean-field control in continuous time
Noufel FRIKHA, Maximilien GERMAIN, Mathieu LAURIERE, Huyen PHAM, Xuanye SONG, 2025.
[abs][pdf][bib]

Modelling Populations of Interaction Networks via Distance Metrics
George Bolt, Simón Lunagómez, Christopher Nemeth, 2025.
[abs][pdf][bib]

BitNet: 1-bit Pre-training for Large Language Models
Hongyu Wang, Shuming Ma, Lingxiao Ma, Lei Wang, Wenhui Wang, Li Dong, Shaohan Huang, Huaijie Wang, Jilong Xue, Ruiping Wang, Yi Wu, Furu Wei, 2025.
[abs][pdf][bib]

Physics-informed Kernel Learning
Nathan Doumèche, Francis Bach, Gérard Biau, Claire Boyer, 2025.
[abs][pdf][bib]      [code]

Last-iterate Convergence of Shuffling Momentum Gradient Method under the Kurdyka-Lojasiewicz Inequality
Yuqing Liang, Dongpo Xu, 2025.
[abs][pdf][bib]

Posterior and Variational Inference for Deep Neural Networks with Heavy-Tailed Weights
Paul Egels, Ismaël Castillo, 2025.
[abs][pdf][bib]

Maximum Causal Entropy IRL in Mean-Field Games and GNEP Framework for Forward RL
Berkay Anahtarci, Can Deha Kariksiz, Naci Saldi, 2025.
[abs][pdf][bib]

Degree of Interference: A General Framework For Causal Inference Under Interference
Yuki Ohnishi, Bikram Karmakar, Arman Sabbaghi, 2025.
[abs][pdf][bib]

Quantifying the Effectiveness of Linear Preconditioning in Markov Chain Monte Carlo
Max Hird, Samuel Livingstone, 2025.
[abs][pdf][bib]

Sparse SVM with Hard-Margin Loss: a Newton-Augmented Lagrangian Method in Reduced Dimensions
Penghe Zhang, Naihua Xiu, Hou-Duo Qi, 2025.
[abs][pdf][bib]

On Model Identification and Out-of-Sample Prediction of PCR with Applications to Synthetic Controls
Anish Agarwal, Devavrat Shah, Dennis Shen, 2025.
[abs][pdf][bib]      [code]

Bayesian Scalar-on-Image Regression with a Spatially Varying Single-layer Neural Network Prior
Ben Wu, Keru Wu, Jian Kang, 2025.
[abs][pdf][bib]

DRM Revisited: A Complete Error Analysis
Yuling Jiao, Ruoxuan Li, Peiying Wu, Jerry Zhijian Yang, Pingwen Zhang, 2025.
[abs][pdf][bib]

Principled Penalty-based Methods for Bilevel Reinforcement Learning and RLHF
Han Shen, Zhuoran Yang, Tianyi Chen, 2025.
[abs][pdf][bib]

Precise High-Dimensional Asymptotics for Quantifying Heterogeneous Transfers
Fan Yang, Hongyang R. Zhang, Sen Wu, Christopher Re, Weijie J. Su, 2025.
[abs][pdf][bib]      [code]

Score-based Causal Representation Learning: Linear and General Transformations
Burak Varici, Emre Acartürk, Karthikeyan Shanmugam, Abhishek Kumar, Ali Tajer, 2025.
[abs][pdf][bib]      [code]

On the Statistical Properties of Generative Adversarial Models for Low Intrinsic Data Dimension
Saptarshi Chakraborty, Peter L. Bartlett, 2025.
[abs][pdf][bib]

Prominent Roles of Conditionally Invariant Components in Domain Adaptation: Theory and Algorithms
Keru Wu, Yuansi Chen, Wooseok Ha, Bin Yu, 2025.
[abs][pdf][bib]      [code]

Near-Optimal Nonconvex-Strongly-Convex Bilevel Optimization with Fully First-Order Oracles
Lesi Chen, Yaohua Ma, Jingzhao Zhang, 2025.
[abs][pdf][bib]

Adaptive Distributed Kernel Ridge Regression: A Feasible Distributed Learning Scheme for Data Silos
Shao-Bo Lin, Xiaotong Liu, Di Wang, Hai Zhang, Ding-Xuan Zhou, 2025.
[abs][pdf][bib]

On Global and Local Convergence of Iterative Linear Quadratic Optimization Algorithms for Discrete Time Nonlinear Control
Vincent Roulet, Siddhartha Srinivasa, Maryam Fazel, Zaid Harchaoui, 2025.
[abs][pdf][bib]      [code]

A Decentralized Proximal Gradient Tracking Algorithm for Composite Optimization on Riemannian Manifolds
Lei Wang, Le Bao, Xin Liu, 2025.
[abs][pdf][bib]

Learning conditional distributions on continuous spaces
Cyril Benezet, Ziteng Cheng, Sebastian Jaimungal, 2025.
[abs][pdf][bib]      [code]

A Unified Analysis of Nonstochastic Delayed Feedback for Combinatorial Semi-Bandits, Linear Bandits, and MDPs
Lukas Zierahn, Dirk van der Hoeven, Tal Lancewicki, Aviv Rosenberg, Nicolò Cesa-Bianchi, 2025.
[abs][pdf][bib]      [code]

Error bounds for particle gradient descent, and extensions of the log-Sobolev and Talagrand inequalities
Rocco Caprio, Juan Kuntz, Samuel Power, Adam M. Johansen, 2025.
[abs][pdf][bib]

Linear Hypothesis Testing in High-Dimensional Expected Shortfall Regression with Heavy-Tailed Errors
Gaoyu Wu, Jelena Bradic, Kean Ming Tan, Wen-Xin Zhou, 2025.
[abs][pdf][bib]

Efficient Numerical Integration in Reproducing Kernel Hilbert Spaces via Leverage Scores Sampling
Antoine Chatalic, Nicolas Schreuder, Ernesto De Vito, Lorenzo Rosasco, 2025.
[abs][pdf][bib]      [code]

Distribution Free Tests for Model Selection Based on Maximum Mean Discrepancy with Estimated Parameters
Florian Brück, Jean-David Fermanian, Aleksey Min, 2025.
[abs][pdf][bib]      [code]

Statistical field theory for Markov decision processes under uncertainty
George Stamatescu, 2025.
[abs][pdf][bib]

Bayesian Data Sketching for Varying Coefficient Regression Models
Rajarshi Guhaniyogi, Laura Baracaldo, Sudipto Banerjee, 2025.
[abs][pdf][bib]

Bagged k-Distance for Mode-Based Clustering Using the Probability of Localized Level Sets
Hanyuan Hang, 2025.
[abs][pdf][bib]

Linear cost and exponentially convergent approximation of Gaussian Matérn processes on intervals
David Bolin, Vaibhav Mehandiratta, Alexandre B. Simas, 2025.
[abs][pdf][bib]      [code]

Invariant Subspace Decomposition
Margherita Lazzaretto, Jonas Peters, Niklas Pfister, 2025.
[abs][pdf][bib]      [code]

Posterior Concentrations of Fully-Connected Bayesian Neural Networks with General Priors on the Weights
Insung Kong, Yongdai Kim, 2025.
[abs][pdf][bib]

Outlier Robust and Sparse Estimation of Linear Regression Coefficients
Takeyuki Sasai, Hironori Fujisawa, 2025.
[abs][pdf][bib]

Affine Rank Minimization via Asymptotic Log-Det Iteratively Reweighted Least Squares
Sebastian Krämer, 2025.
[abs][pdf][bib]

Causal Effect of Functional Treatment
Ruoxu Tan, Wei Huang, Zheng Zhang, Guosheng Yin, 2025.
[abs][pdf][bib]      [code]

Uplift Model Evaluation with Ordinal Dominance Graphs
Brecht Verbeken, Marie-Anne Guerry, Wouter Verbeke, Sam Verboven, 2025.
[abs][pdf][bib]

High-Dimensional L2-Boosting: Rate of Convergence
Ye Luo, Martin Spindler, Jannis Kueck, 2025.
[abs][pdf][bib]

Feature Learning in Finite-Width Bayesian Deep Linear Networks with Multiple Outputs and Convolutional Layers
Federico Bassetti, Marco Gherardi, Alessandro Ingrosso, Mauro Pastore, Pietro Rotondo, 2025.
[abs][pdf][bib]

How good is your Laplace approximation of the Bayesian posterior? Finite-sample computable error bounds for a variety of useful divergences
Mikolaj J. Kasprzak, Ryan Giordano, Tamara Broderick, 2025.
[abs][pdf][bib]      [code]

Integral Probability Metrics Meet Neural Networks: The Radon-Kolmogorov-Smirnov Test
Seunghoon Paik, Michael Celentano, Alden Green, Ryan J. Tibshirani, 2025.
[abs][pdf][bib]      [code]

On Inference for the Support Vector Machine
Jakub Rybak, Heather Battey, Wen-Xin Zhou, 2025.
[abs][pdf][bib]

Random Pruning Over-parameterized Neural Networks Can Improve Generalization: A Training Dynamics Analysis
Hongru Yang, Yingbin Liang, Xiaojie Guo, Lingfei Wu, Zhangyang Wang, 2025.
[abs][pdf][bib]

Causal Abstraction: A Theoretical Foundation for Mechanistic Interpretability
Atticus Geiger, Duligur Ibeling, Amir Zur, Maheep Chaudhary, Sonakshi Chauhan, Jing Huang, Aryaman Arora, Zhengxuan Wu, Noah Goodman, Christopher Potts, Thomas Icard, 2025.
[abs][pdf][bib]

Implicit vs Unfolded Graph Neural Networks
Yongyi Yang, Tang Liu, Yangkun Wang, Zengfeng Huang, David Wipf, 2025.
[abs][pdf][bib]

Towards Optimal Branching of Linear and Semidefinite Relaxations for Neural Network Robustness Certification
Brendon G. Anderson, Ziye Ma, Jingqi Li, Somayeh Sojoudi, 2025.
[abs][pdf][bib]

GraphNeuralNetworks.jl: Deep Learning on Graphs with Julia
Carlo Lucibello, Aurora Rossi, 2025. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Dynamic angular synchronization under smoothness constraints
Ernesto Araya, Mihai Cucuringu, Hemant Tyagi, 2025.
[abs][pdf][bib]      [code]

Derivative-Informed Neural Operator Acceleration of Geometric MCMC for Infinite-Dimensional Bayesian Inverse Problems
Lianghao Cao, Thomas O'Leary-Roseberry, Omar Ghattas, 2025.
[abs][pdf][bib]      [code]

Wasserstein F-tests for Frechet regression on Bures-Wasserstein manifolds
Haoshu Xu, Hongzhe Li, 2025.
[abs][pdf][bib]

Distributed Stochastic Bilevel Optimization: Improved Complexity and Heterogeneity Analysis
Youcheng Niu, Jinming Xu, Ying Sun, Yan Huang, Li Chai, 2025.
[abs][pdf][bib]

Learning causal graphs via nonlinear sufficient dimension reduction
Eftychia Solea, Bing Li, Kyongwon Kim, 2025.
[abs][pdf][bib]

On Consistent Bayesian Inference from Synthetic Data
Ossi Räisä, Joonas Jälkö, Antti Honkela, 2025.
[abs][pdf][bib]      [code]

Optimization Over a Probability Simplex
James Chok, Geoffrey M. Vasil, 2025.
[abs][pdf][bib]      [code]

Laplace Meets Moreau: Smooth Approximation to Infimal Convolutions Using Laplace's Method
Ryan J. Tibshirani, Samy Wu Fung, Howard Heaton, Stanley Osher, 2025.
[abs][pdf][bib]      [code]

Sampling and Estimation on Manifolds using the Langevin Diffusion
Karthik Bharath, Alexander Lewis, Akash Sharma, Michael V. Tretyakov, 2025.
[abs][pdf][bib]

Sharp Bounds for Sequential Federated Learning on Heterogeneous Data
Yipeng Li, Xinchen Lyu, 2025.
[abs][pdf][bib]      [code]

Local Linear Recovery Guarantee of Deep Neural Networks at Overparameterization
Yaoyu Zhang, Leyang Zhang, Zhongwang Zhang, Zhiwei Bai, 2025.
[abs][pdf][bib]

Stabilizing Sharpness-Aware Minimization Through A Simple Renormalization Strategy
Chengli Tan, Jiangshe Zhang, Junmin Liu, Yicheng Wang, Yunda Hao, 2025.
[abs][pdf][bib]

Fine-Grained Change Point Detection for Topic Modeling with Pitman-Yor Process
Feifei Wang, Zimeng Zhao, Ruimin Ye, Xiaoge Gu, Xiaoling Lu, 2025.
[abs][pdf][bib]

Deletion Robust Non-Monotone Submodular Maximization over Matroids
Paul Dütting, Federico Fusco, Silvio Lattanzi, Ashkan Norouzi-Fard, Morteza Zadimoghaddam, 2025.
[abs][pdf][bib]

Instability, Computational Efficiency and Statistical Accuracy
Nhat Ho, Koulik Khamaru, Raaz Dwivedi, Martin J. Wainwright, Michael I. Jordan, Bin Yu, 2025.
[abs][pdf][bib]

Estimation of Local Geometric Structure on Manifolds from Noisy Data
Yariv Aizenbud, Barak Sober, 2025.
[abs][pdf][bib]      [code]

Ontolearn---A Framework for Large-scale OWL Class Expression Learning in Python
Caglar Demir, Alkid Baci, N'Dah Jean Kouagou, Leonie Nora Sieger, Stefan Heindorf, Simon Bin, Lukas Blübaum, Alexander Bigerl, Axel-Cyrille Ngonga Ngomo, 2025. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Continuously evolving rewards in an open-ended environment
Richard M. Bailey, 2025.
[abs][pdf][bib]

Recursive Causal Discovery
Ehsan Mokhtarian, Sepehr Elahi, Sina Akbari, Negar Kiyavash, 2025.
[abs][pdf][bib]      [code]

Evaluation of Active Feature Acquisition Methods for Time-varying Feature Settings
Henrik von Kleist, Alireza Zamanian, Ilya Shpitser, Narges Ahmidi, 2025.
[abs][pdf][bib]

On Adaptive Stochastic Optimization for Streaming Data: A Newton's Method with O(dN) Operations
Antoine Godichon-Baggioni, Nicklas Werge, 2025.
[abs][pdf][bib]

Determine the Number of States in Hidden Markov Models via Marginal Likelihood
Yang Chen, Cheng-Der Fuh, Chu-Lan Michael Kao, 2025.
[abs][pdf][bib]

Variance-Aware Estimation of Kernel Mean Embedding
Geoffrey Wolfer, Pierre Alquier, 2025.
[abs][pdf][bib]

Scaling ResNets in the Large-depth Regime
Pierre Marion, Adeline Fermanian, Gérard Biau, Jean-Philippe Vert, 2025.
[abs][pdf][bib]      [code]

A Comparative Evaluation of Quantification Methods
Tobias Schumacher, Markus Strohmaier, Florian Lemmerich, 2025.
[abs][pdf][bib]      [code]

Lightning UQ Box: Uncertainty Quantification for Neural Networks
Nils Lehmann, Nina Maria Gottschling, Jakob Gawlikowski, Adam J. Stewart, Stefan Depeweg, Eric Nalisnick, 2025. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Scaling Data-Constrained Language Models
Niklas Muennighoff, Alexander M. Rush, Boaz Barak, Teven Le Scao, Aleksandra Piktus, Nouamane Tazi, Sampo Pyysalo, Thomas Wolf, Colin Raffel, 2025.
[abs][pdf][bib]      [code]

Curvature-based Clustering on Graphs
Yu Tian, Zachary Lubberts, Melanie Weber, 2025.
[abs][pdf][bib]

Composite Goodness-of-fit Tests with Kernels
Oscar Key, Arthur Gretton, François-Xavier Briol, Tamara Fernandez, 2025.
[abs][pdf][bib]      [code]

PFLlib: A Beginner-Friendly and Comprehensive Personalized Federated Learning Library and Benchmark
Jianqing Zhang, Yang Liu, Yang Hua, Hao Wang, Tao Song, Zhengui Xue, Ruhui Ma, Jian Cao, 2025. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

The Effect of SGD Batch Size on Autoencoder Learning: Sparsity, Sharpness, and Feature Learning
Nikhil Ghosh, Spencer Frei, Wooseok Ha, Bin Yu, 2025.
[abs][pdf][bib]

Efficient and Robust Transfer Learning of Optimal Individualized Treatment Regimes with Right-Censored Survival Data
Pan Zhao, Julie Josse, Shu Yang, 2025.
[abs][pdf][bib]      [code]

DAGs as Minimal I-maps for the Induced Models of Causal Bayesian Networks under Conditioning
Xiangdong Xie, Jiahua Guo, Yi Sun, 2025.
[abs][pdf][bib]      [code]

Adjusted Expected Improvement for Cumulative Regret Minimization in Noisy Bayesian Optimization
Shouri Hu, Haowei Wang, Zhongxiang Dai, Bryan Kian Hsiang Low, Szu Hui Ng, 2025.
[abs][pdf][bib]

Manifold Fitting under Unbounded Noise
Zhigang Yao, Yuqing Xia, 2025.
[abs][pdf][bib]

Learning Global Nash Equilibrium in Team Competitive Games with Generalized Fictitious Cross-Play
Zelai Xu, Chao Yu, Yancheng Liang, Yi Wu, Yu Wang, 2025.
[abs][pdf][bib]

Wasserstein Convergence Guarantees for a General Class of Score-Based Generative Models
Xuefeng Gao, Hoang M. Nguyen, Lingjiong Zhu, 2025.
[abs][pdf][bib]

Extremal graphical modeling with latent variables via convex optimization
Sebastian Engelke, Armeen Taeb, 2025.
[abs][pdf][bib]      [code]

On the Approximation of Kernel functions
Paul Dommel, Alois Pichler, 2025.
[abs][pdf][bib]

Efficient and Robust Semi-supervised Estimation of Average Treatment Effect with Partially Annotated Treatment and Response
Jue Hou, Rajarshi Mukherjee, Tianxi Cai, 2025.
[abs][pdf][bib]      [code]

Nonconvex Stochastic Bregman Proximal Gradient Method with Application to Deep Learning
Kuangyu Ding, Jingyang Li, Kim-Chuan Toh, 2025.
[abs][pdf][bib]

Optimizing Data Collection for Machine Learning
Rafid Mahmood, James Lucas, Jose M. Alvarez, Sanja Fidler, Marc T. Law, 2025.
[abs][pdf][bib]

Unbalanced Kantorovich-Rubinstein distance, plan, and barycenter on nite spaces: A statistical perspective
Shayan Hundrieser, Florian Heinemann, Marcel Klatt, Marina Struleva, Axel Munk, 2025.
[abs][pdf][bib]

Copula-based Sensitivity Analysis for Multi-Treatment Causal Inference with Unobserved Confounding
Jiajing Zheng, Alexander D'Amour, Alexander Franks, 2025.
[abs][pdf][bib]      [code]

Rank-one Convexification for Sparse Regression
Alper Atamturk, Andres Gomez, 2025.
[abs][pdf][bib]

gsplat: An Open-Source Library for Gaussian Splatting
Vickie Ye, Ruilong Li, Justin Kerr, Matias Turkulainen, Brent Yi, Zhuoyang Pan, Otto Seiskari, Jianbo Ye, Jeffrey Hu, Matthew Tancik, Angjoo Kanazawa, 2025. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Statistical Inference of Constrained Stochastic Optimization via Sketched Sequential Quadratic Programming
Sen Na, Michael Mahoney, 2025.
[abs][pdf][bib]

Sliced-Wasserstein Distances and Flows on Cartan-Hadamard Manifolds
Clément Bonet, Lucas Drumetz, Nicolas Courty, 2025.
[abs][pdf][bib]      [code]

Accelerating optimization over the space of probability measures
Shi Chen, Qin Li, Oliver Tse, Stephen J. Wright, 2025.
[abs][pdf][bib]

Bayesian Multi-Group Gaussian Process Models for Heterogeneous Group-Structured Data
Didong Li, Andrew Jones, Sudipto Banerjee, Barbara E. Engelhardt, 2025.
[abs][pdf][bib]      [code]

Orthogonal Bases for Equivariant Graph Learning with Provable k-WL Expressive Power
Jia He, Maggie Cheng, 2025.
[abs][pdf][bib]

Optimal Experiment Design for Causal Effect Identification
Sina Akbari, Jalal Etesami, Negar Kiyavash, 2025.
[abs][pdf][bib]      [code]

Mean Aggregator is More Robust than Robust Aggregators under Label Poisoning Attacks on Distributed Heterogeneous Data
Jie Peng, Weiyu Li, Stefan Vlaski, Qing Ling, 2025.
[abs][pdf][bib]      [code]

The Blessing of Heterogeneity in Federated Q-Learning: Linear Speedup and Beyond
Jiin Woo, Gauri Joshi, Yuejie Chi, 2025.
[abs][pdf][bib]

depyf: Open the Opaque Box of PyTorch Compiler for Machine Learning Researchers
Kaichao You, Runsheng Bai, Meng Cao, Jianmin Wang, Ion Stoica, Mingsheng Long, 2025. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

The ODE Method for Stochastic Approximation and Reinforcement Learning with Markovian Noise
Shuze Daniel Liu, Shuhang Chen, Shangtong Zhang, 2025.
[abs][pdf][bib]

Improving Graph Neural Networks on Multi-node Tasks with the Labeling Trick
Xiyuan Wang, Pan Li, Muhan Zhang, 2025.
[abs][pdf][bib]      [code]

Directed Cyclic Graphs for Simultaneous Discovery of Time-Lagged and Instantaneous Causality from Longitudinal Data Using Instrumental Variables
Wei Jin, Yang Ni, Amanda B. Spence, Leah H. Rubin, Yanxun Xu, 2025.
[abs][pdf][bib]      [code]

Bayesian Sparse Gaussian Mixture Model for Clustering in High Dimensions
Dapeng Yao, Fangzheng Xie, Yanxun Xu, 2025.
[abs][pdf][bib]

Regularizing Hard Examples Improves Adversarial Robustness
Hyungyu Lee, Saehyung Lee, Ho Bae, Sungroh Yoon, 2025.
[abs][pdf][bib]

Random ReLU Neural Networks as Non-Gaussian Processes
Rahul Parhi, Pakshal Bohra, Ayoub El Biari, Mehrsa Pourya, Michael Unser, 2025.
[abs][pdf][bib]

Riemannian Bilevel Optimization
Jiaxiang Li, Shiqian Ma, 2025.
[abs][pdf][bib]      [code]

Supervised Learning with Evolving Tasks and Performance Guarantees
Verónica Álvarez, Santiago Mazuelas, Jose A. Lozano, 2025.
[abs][pdf][bib]      [code]

Error estimation and adaptive tuning for unregularized robust M-estimator
Pierre C. Bellec, Takuya Koriyama, 2025.
[abs][pdf][bib]

From Sparse to Dense Functional Data in High Dimensions: Revisiting Phase Transitions from a Non-Asymptotic Perspective
Shaojun Guo, Dong Li, Xinghao Qiao, Yizhu Wang, 2025.
[abs][pdf][bib]

Locally Private Causal Inference for Randomized Experiments
Yuki Ohnishi, Jordan Awan, 2025.
[abs][pdf][bib]

Estimating Network-Mediated Causal Effects via Principal Components Network Regression
Alex Hayes, Mark M. Fredrickson, Keith Levin, 2025.
[abs][pdf][bib]      [code]

Selective Inference with Distributed Data
Sifan Liu, Snigdha Panigrahi, 2025.
[abs][pdf][bib]      [code]

Two-Timescale Gradient Descent Ascent Algorithms for Nonconvex Minimax Optimization
Tianyi Lin, Chi Jin, Michael I. Jordan, 2025.
[abs][pdf][bib]

An Axiomatic Definition of Hierarchical Clustering
Ery Arias-Castro, Elizabeth Coda, 2025.
[abs][pdf][bib]

Test-Time Training on Video Streams
Renhao Wang, Yu Sun, Arnuv Tandon, Yossi Gandelsman, Xinlei Chen, Alexei A. Efros, Xiaolong Wang, 2025.
[abs][pdf][bib]      [code]

Adaptive Client Sampling in Federated Learning via Online Learning with Bandit Feedback
Boxin Zhao, Lingxiao Wang, Ziqi Liu, Zhiqiang Zhang, Jun Zhou, Chaochao Chen, Mladen Kolar, 2025.
[abs][pdf][bib]      [code]

A Random Matrix Approach to Low-Multilinear-Rank Tensor Approximation
Hugo Lebeau, Florent Chatelain, Romain Couillet, 2025.
[abs][pdf][bib]

Memory Gym: Towards Endless Tasks to Benchmark Memory Capabilities of Agents
Marco Pleines, Matthias Pallasch, Frank Zimmer, Mike Preuss, 2025.
[abs][pdf][bib]      [code]

Enhancing Graph Representation Learning with Localized Topological Features
Zuoyu Yan, Qi Zhao, Ze Ye, Tengfei Ma, Liangcai Gao, Zhi Tang, Yusu Wang, Chao Chen, 2025.
[abs][pdf][bib]

Deep Out-of-Distribution Uncertainty Quantification via Weight Entropy Maximization
Antoine de Mathelin, François Deheeger, Mathilde Mougeot, Nicolas Vayatis, 2025.
[abs][pdf][bib]

DisC2o-HD: Distributed causal inference with covariates shift for analyzing real-world high-dimensional data
Jiayi Tong, Jie Hu, George Hripcsak, Yang Ning, Yong Chen, 2025.
[abs][pdf][bib]

Bayes Meets Bernstein at the Meta Level: an Analysis of Fast Rates in Meta-Learning with PAC-Bayes
Charles Riou, Pierre Alquier, Badr-Eddine Chérief-Abdellatif, 2025.
[abs][pdf][bib]

Efficiently Escaping Saddle Points in Bilevel Optimization
Minhui Huang, Xuxing Chen, Kaiyi Ji, Shiqian Ma, Lifeng Lai, 2025.
[abs][pdf][bib]

Full list

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