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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

More PAC-Bayes bounds: From bounded losses, to losses with general tail behaviors, to anytime validity
Borja Rodríguez-Gálvez, Ragnar Thobaben, Mikael Skoglund, 2024.
[abs][pdf][bib]

Neural Hilbert Ladders: Multi-Layer Neural Networks in Function Space
Zhengdao Chen, 2024.
[abs][pdf][bib]

QDax: A Library for Quality-Diversity and Population-based Algorithms with Hardware Acceleration
Felix Chalumeau, Bryan Lim, Raphaël Boige, Maxime Allard, Luca Grillotti, Manon Flageat, Valentin Macé, Guillaume Richard, Arthur Flajolet, Thomas Pierrot, Antoine Cully, 2024. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Random Forest Weighted Local Fréchet Regression with Random Objects
Rui Qiu, Zhou Yu, Ruoqing Zhu, 2024.
[abs][pdf][bib]      [code]

PhAST: Physics-Aware, Scalable, and Task-Specific GNNs for Accelerated Catalyst Design
Alexandre Duval, Victor Schmidt, Santiago Miret, Yoshua Bengio, Alex Hernández-García, David Rolnick, 2024.
[abs][pdf][bib]      [code]

Unsupervised Anomaly Detection Algorithms on Real-world Data: How Many Do We Need?
Roel Bouman, Zaharah Bukhsh, Tom Heskes, 2024.
[abs][pdf][bib]      [code]

Multi-class Probabilistic Bounds for Majority Vote Classifiers with Partially Labeled Data
Vasilii Feofanov, Emilie Devijver, Massih-Reza Amini, 2024.
[abs][pdf][bib]

Information Processing Equalities and the Information–Risk Bridge
Robert C. Williamson, Zac Cranko, 2024.
[abs][pdf][bib]

Nonparametric Regression for 3D Point Cloud Learning
Xinyi Li, Shan Yu, Yueying Wang, Guannan Wang, Li Wang, Ming-Jun Lai, 2024.
[abs][pdf][bib]      [code]

AMLB: an AutoML Benchmark
Pieter Gijsbers, Marcos L. P. Bueno, Stefan Coors, Erin LeDell, Sébastien Poirier, Janek Thomas, Bernd Bischl, Joaquin Vanschoren, 2024.
[abs][pdf][bib]      [code]

Materials Discovery using Max K-Armed Bandit
Nobuaki Kikkawa, Hiroshi Ohno, 2024.
[abs][pdf][bib]

Semi-supervised Inference for Block-wise Missing Data without Imputation
Shanshan Song, Yuanyuan Lin, Yong Zhou, 2024.
[abs][pdf][bib]

Adaptivity and Non-stationarity: Problem-dependent Dynamic Regret for Online Convex Optimization
Peng Zhao, Yu-Jie Zhang, Lijun Zhang, Zhi-Hua Zhou, 2024.
[abs][pdf][bib]

Scaling Speech Technology to 1,000+ Languages
Vineel Pratap, Andros Tjandra, Bowen Shi, Paden Tomasello, Arun Babu, Sayani Kundu, Ali Elkahky, Zhaoheng Ni, Apoorv Vyas, Maryam Fazel-Zarandi, Alexei Baevski, Yossi Adi, Xiaohui Zhang, Wei-Ning Hsu, Alexis Conneau, Michael Auli, 2024.
[abs][pdf][bib]      [code]

MAP- and MLE-Based Teaching
Hans Ulrich Simon, Jan Arne Telle, 2024.
[abs][pdf][bib]

A General Framework for the Analysis of Kernel-based Tests
Tamara Fernández, Nicolás Rivera, 2024.
[abs][pdf][bib]

Overparametrized Multi-layer Neural Networks: Uniform Concentration of Neural Tangent Kernel and Convergence of Stochastic Gradient Descent
Jiaming Xu, Hanjing Zhu, 2024.
[abs][pdf][bib]

Sparse Representer Theorems for Learning in Reproducing Kernel Banach Spaces
Rui Wang, Yuesheng Xu, Mingsong Yan, 2024.
[abs][pdf][bib]

Exploration of the Search Space of Gaussian Graphical Models for Paired Data
Alberto Roverato, Dung Ngoc Nguyen, 2024.
[abs][pdf][bib]

The good, the bad and the ugly sides of data augmentation: An implicit spectral regularization perspective
Chi-Heng Lin, Chiraag Kaushik, Eva L. Dyer, Vidya Muthukumar, 2024.
[abs][pdf][bib]      [code]

Stochastic Approximation with Decision-Dependent Distributions: Asymptotic Normality and Optimality
Joshua Cutler, Mateo Díaz, Dmitriy Drusvyatskiy, 2024.
[abs][pdf][bib]

Minimax Rates for High-Dimensional Random Tessellation Forests
Eliza O'Reilly, Ngoc Mai Tran, 2024.
[abs][pdf][bib]

Nonparametric Estimation of Non-Crossing Quantile Regression Process with Deep ReQU Neural Networks
Guohao Shen, Yuling Jiao, Yuanyuan Lin, Joel L. Horowitz, Jian Huang, 2024.
[abs][pdf][bib]

Spatial meshing for general Bayesian multivariate models
Michele Peruzzi, David B. Dunson, 2024.
[abs][pdf][bib]      [code]

A Semi-parametric Estimation of Personalized Dose-response Function Using Instrumental Variables
Wei Luo, Yeying Zhu, Xuekui Zhang, Lin Lin, 2024.
[abs][pdf][bib]

Learning Non-Gaussian Graphical Models via Hessian Scores and Triangular Transport
Ricardo Baptista, Youssef Marzouk, Rebecca Morrison, Olivier Zahm, 2024.
[abs][pdf][bib]      [code]

On the Learnability of Out-of-distribution Detection
Zhen Fang, Yixuan Li, Feng Liu, Bo Han, Jie Lu, 2024.
[abs][pdf][bib]

Win: Weight-Decay-Integrated Nesterov Acceleration for Faster Network Training
Pan Zhou, Xingyu Xie, Zhouchen Lin, Kim-Chuan Toh, Shuicheng Yan, 2024.
[abs][pdf][bib]      [code]

On the Eigenvalue Decay Rates of a Class of Neural-Network Related Kernel Functions Defined on General Domains
Yicheng Li, Zixiong Yu, Guhan Chen, Qian Lin, 2024.
[abs][pdf][bib]

Tight Convergence Rate Bounds for Optimization Under Power Law Spectral Conditions
Maksim Velikanov, Dmitry Yarotsky, 2024.
[abs][pdf][bib]

ptwt - The PyTorch Wavelet Toolbox
Moritz Wolter, Felix Blanke, Jochen Garcke, Charles Tapley Hoyt, 2024. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Choosing the Number of Topics in LDA Models – A Monte Carlo Comparison of Selection Criteria
Victor Bystrov, Viktoriia Naboka-Krell, Anna Staszewska-Bystrova, Peter Winker, 2024.
[abs][pdf][bib]      [code]

Functional Directed Acyclic Graphs
Kuang-Yao Lee, Lexin Li, Bing Li, 2024.
[abs][pdf][bib]

Unlabeled Principal Component Analysis and Matrix Completion
Yunzhen Yao, Liangzu Peng, Manolis C. Tsakiris, 2024.
[abs][pdf][bib]      [code]

Distributed Estimation on Semi-Supervised Generalized Linear Model
Jiyuan Tu, Weidong Liu, Xiaojun Mao, 2024.
[abs][pdf][bib]

Towards Explainable Evaluation Metrics for Machine Translation
Christoph Leiter, Piyawat Lertvittayakumjorn, Marina Fomicheva, Wei Zhao, Yang Gao, Steffen Eger, 2024.
[abs][pdf][bib]

Differentially private methods for managing model uncertainty in linear regression
Víctor Peña, Andrés F. Barrientos, 2024.
[abs][pdf][bib]

Data Summarization via Bilevel Optimization
Zalán Borsos, Mojmír Mutný, Marco Tagliasacchi, Andreas Krause, 2024.
[abs][pdf][bib]

Pareto Smoothed Importance Sampling
Aki Vehtari, Daniel Simpson, Andrew Gelman, Yuling Yao, Jonah Gabry, 2024.
[abs][pdf][bib]      [code]

Policy Gradient Methods in the Presence of Symmetries and State Abstractions
Prakash Panangaden, Sahand Rezaei-Shoshtari, Rosie Zhao, David Meger, Doina Precup, 2024.
[abs][pdf][bib]      [code]

Scaling Instruction-Finetuned Language Models
Hyung Won Chung, Le Hou, Shayne Longpre, Barret Zoph, Yi Tay, William Fedus, Yunxuan Li, Xuezhi Wang, Mostafa Dehghani, Siddhartha Brahma, Albert Webson, Shixiang Shane Gu, Zhuyun Dai, Mirac Suzgun, Xinyun Chen, Aakanksha Chowdhery, Alex Castro-Ros, Marie Pellat, Kevin Robinson, Dasha Valter, Sharan Narang, Gaurav Mishra, Adams Yu, Vincent Zhao, Yanping Huang, Andrew Dai, Hongkun Yu, Slav Petrov, Ed H. Chi, Jeff Dean, Jacob Devlin, Adam Roberts, Denny Zhou, Quoc V. Le, Jason Wei, 2024.
[abs][pdf][bib]

Tangential Wasserstein Projections
Florian Gunsilius, Meng Hsuan Hsieh, Myung Jin Lee, 2024.
[abs][pdf][bib]      [code]

Learnability of Linear Port-Hamiltonian Systems
Juan-Pablo Ortega, Daiying Yin, 2024.
[abs][pdf][bib]      [code]

Off-Policy Action Anticipation in Multi-Agent Reinforcement Learning
Ariyan Bighashdel, Daan de Geus, Pavol Jancura, Gijs Dubbelman, 2024.
[abs][pdf][bib]      [code]

On Unbiased Estimation for Partially Observed Diffusions
Jeremy Heng, Jeremie Houssineau, Ajay Jasra, 2024. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Improving Lipschitz-Constrained Neural Networks by Learning Activation Functions
Stanislas Ducotterd, Alexis Goujon, Pakshal Bohra, Dimitris Perdios, Sebastian Neumayer, Michael Unser, 2024.
[abs][pdf][bib]      [code]

Mathematical Framework for Online Social Media Auditing
Wasim Huleihel, Yehonathan Refael, 2024.
[abs][pdf][bib]

An Embedding Framework for the Design and Analysis of Consistent Polyhedral Surrogates
Jessie Finocchiaro, Rafael M. Frongillo, Bo Waggoner, 2024.
[abs][pdf][bib]

Low-rank Variational Bayes correction to the Laplace method
Janet van Niekerk, Haavard Rue, 2024.
[abs][pdf][bib]      [code]

Scaling the Convex Barrier with Sparse Dual Algorithms
Alessandro De Palma, Harkirat Singh Behl, Rudy Bunel, Philip H.S. Torr, M. Pawan Kumar, 2024.
[abs][pdf][bib]      [code]

Causal-learn: Causal Discovery in Python
Yujia Zheng, Biwei Huang, Wei Chen, Joseph Ramsey, Mingming Gong, Ruichu Cai, Shohei Shimizu, Peter Spirtes, Kun Zhang, 2024. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Decomposed Linear Dynamical Systems (dLDS) for learning the latent components of neural dynamics
Noga Mudrik, Yenho Chen, Eva Yezerets, Christopher J. Rozell, Adam S. Charles, 2024.
[abs][pdf][bib]      [code]

Existence and Minimax Theorems for Adversarial Surrogate Risks in Binary Classification
Natalie S. Frank, Jonathan Niles-Weed, 2024.
[abs][pdf][bib]

Data Thinning for Convolution-Closed Distributions
Anna Neufeld, Ameer Dharamshi, Lucy L. Gao, Daniela Witten, 2024.
[abs][pdf][bib]      [code]

A projected semismooth Newton method for a class of nonconvex composite programs with strong prox-regularity
Jiang Hu, Kangkang Deng, Jiayuan Wu, Quanzheng Li, 2024.
[abs][pdf][bib]

Revisiting RIP Guarantees for Sketching Operators on Mixture Models
Ayoub Belhadji, Rémi Gribonval, 2024.
[abs][pdf][bib]

Monotonic Risk Relationships under Distribution Shifts for Regularized Risk Minimization
Daniel LeJeune, Jiayu Liu, Reinhard Heckel, 2024.
[abs][pdf][bib]      [code]

Polygonal Unadjusted Langevin Algorithms: Creating stable and efficient adaptive algorithms for neural networks
Dong-Young Lim, Sotirios Sabanis, 2024.
[abs][pdf][bib]

Axiomatic effect propagation in structural causal models
Raghav Singal, George Michailidis, 2024.
[abs][pdf][bib]

Optimal First-Order Algorithms as a Function of Inequalities
Chanwoo Park, Ernest K. Ryu, 2024.
[abs][pdf][bib]      [code]

Resource-Efficient Neural Networks for Embedded Systems
Wolfgang Roth, Günther Schindler, Bernhard Klein, Robert Peharz, Sebastian Tschiatschek, Holger Fröning, Franz Pernkopf, Zoubin Ghahramani, 2024.
[abs][pdf][bib]

Trained Transformers Learn Linear Models In-Context
Ruiqi Zhang, Spencer Frei, Peter L. Bartlett, 2024.
[abs][pdf][bib]

Adam-family Methods for Nonsmooth Optimization with Convergence Guarantees
Nachuan Xiao, Xiaoyin Hu, Xin Liu, Kim-Chuan Toh, 2024.
[abs][pdf][bib]

Efficient Modality Selection in Multimodal Learning
Yifei He, Runxiang Cheng, Gargi Balasubramaniam, Yao-Hung Hubert Tsai, Han Zhao, 2024.
[abs][pdf][bib]

A Multilabel Classification Framework for Approximate Nearest Neighbor Search
Ville Hyvönen, Elias Jääsaari, Teemu Roos, 2024.
[abs][pdf][bib]      [code]

Probabilistic Forecasting with Generative Networks via Scoring Rule Minimization
Lorenzo Pacchiardi, Rilwan A. Adewoyin, Peter Dueben, Ritabrata Dutta, 2024.
[abs][pdf][bib]      [code]

Multiple Descent in the Multiple Random Feature Model
Xuran Meng, Jianfeng Yao, Yuan Cao, 2024.
[abs][pdf][bib]

Mean-Square Analysis of Discretized Itô Diffusions for Heavy-tailed Sampling
Ye He, Tyler Farghly, Krishnakumar Balasubramanian, Murat A. Erdogdu, 2024.
[abs][pdf][bib]

Invariant and Equivariant Reynolds Networks
Akiyoshi Sannai, Makoto Kawano, Wataru Kumagai, 2024. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Personalized PCA: Decoupling Shared and Unique Features
Naichen Shi, Raed Al Kontar, 2024.
[abs][pdf][bib]      [code]

Survival Kernets: Scalable and Interpretable Deep Kernel Survival Analysis with an Accuracy Guarantee
George H. Chen, 2024.
[abs][pdf][bib]      [code]

On the Sample Complexity and Metastability of Heavy-tailed Policy Search in Continuous Control
Amrit Singh Bedi, Anjaly Parayil, Junyu Zhang, Mengdi Wang, Alec Koppel, 2024.
[abs][pdf][bib]

Convergence for nonconvex ADMM, with applications to CT imaging
Rina Foygel Barber, Emil Y. Sidky, 2024.
[abs][pdf][bib]      [code]

Distributed Gaussian Mean Estimation under Communication Constraints: Optimal Rates and Communication-Efficient Algorithms
T. Tony Cai, Hongji Wei, 2024.
[abs][pdf][bib]

Sparse NMF with Archetypal Regularization: Computational and Robustness Properties
Kayhan Behdin, Rahul Mazumder, 2024.
[abs][pdf][bib]      [code]

Deep Network Approximation: Beyond ReLU to Diverse Activation Functions
Shijun Zhang, Jianfeng Lu, Hongkai Zhao, 2024.
[abs][pdf][bib]

Effect-Invariant Mechanisms for Policy Generalization
Sorawit Saengkyongam, Niklas Pfister, Predrag Klasnja, Susan Murphy, Jonas Peters, 2024.
[abs][pdf][bib]

Pygmtools: A Python Graph Matching Toolkit
Runzhong Wang, Ziao Guo, Wenzheng Pan, Jiale Ma, Yikai Zhang, Nan Yang, Qi Liu, Longxuan Wei, Hanxue Zhang, Chang Liu, Zetian Jiang, Xiaokang Yang, Junchi Yan, 2024. (Machine Learning Open Source Software Paper)
[abs][pdf][bib]      [code]

Heterogeneous-Agent Reinforcement Learning
Yifan Zhong, Jakub Grudzien Kuba, Xidong Feng, Siyi Hu, Jiaming Ji, Yaodong Yang, 2024.
[abs][pdf][bib]      [code]

Sample-efficient Adversarial Imitation Learning
Dahuin Jung, Hyungyu Lee, Sungroh Yoon, 2024.
[abs][pdf][bib]

Stochastic Modified Flows, Mean-Field Limits and Dynamics of Stochastic Gradient Descent
Benjamin Gess, Sebastian Kassing, Vitalii Konarovskyi, 2024.
[abs][pdf][bib]

Rates of convergence for density estimation with generative adversarial networks
Nikita Puchkin, Sergey Samsonov, Denis Belomestny, Eric Moulines, Alexey Naumov, 2024.
[abs][pdf][bib]

Additive smoothing error in backward variational inference for general state-space models
Mathis Chagneux, Elisabeth Gassiat, Pierre Gloaguen, Sylvain Le Corff, 2024.
[abs][pdf][bib]

Optimal Bump Functions for Shallow ReLU networks: Weight Decay, Depth Separation, Curse of Dimensionality
Stephan Wojtowytsch, 2024.
[abs][pdf][bib]

Numerically Stable Sparse Gaussian Processes via Minimum Separation using Cover Trees
Alexander Terenin, David R. Burt, Artem Artemev, Seth Flaxman, Mark van der Wilk, Carl Edward Rasmussen, Hong Ge, 2024.
[abs][pdf][bib]      [code]

On Tail Decay Rate Estimation of Loss Function Distributions
Etrit Haxholli, Marco Lorenzi, 2024.
[abs][pdf][bib]      [code]

Deep Nonparametric Estimation of Operators between Infinite Dimensional Spaces
Hao Liu, Haizhao Yang, Minshuo Chen, Tuo Zhao, Wenjing Liao, 2024.
[abs][pdf][bib]

Post-Regularization Confidence Bands for Ordinary Differential Equations
Xiaowu Dai, Lexin Li, 2024.
[abs][pdf][bib]

On the Generalization of Stochastic Gradient Descent with Momentum
Ali Ramezani-Kebrya, Kimon Antonakopoulos, Volkan Cevher, Ashish Khisti, Ben Liang, 2024.
[abs][pdf][bib]

Pursuit of the Cluster Structure of Network Lasso: Recovery Condition and Non-convex Extension
Shotaro Yagishita, Jun-ya Gotoh, 2024.
[abs][pdf][bib]

Iterate Averaging in the Quest for Best Test Error
Diego Granziol, Nicholas P. Baskerville, Xingchen Wan, Samuel Albanie, Stephen Roberts, 2024.
[abs][pdf][bib]      [code]

Nonparametric Inference under B-bits Quantization
Kexuan Li, Ruiqi Liu, Ganggang Xu, Zuofeng Shang, 2024.
[abs][pdf][bib]

Black Box Variational Inference with a Deterministic Objective: Faster, More Accurate, and Even More Black Box
Ryan Giordano, Martin Ingram, Tamara Broderick, 2024.
[abs][pdf][bib]      [code]

On Sufficient Graphical Models
Bing Li, Kyongwon Kim, 2024.
[abs][pdf][bib]

Localized Debiased Machine Learning: Efficient Inference on Quantile Treatment Effects and Beyond
Nathan Kallus, Xiaojie Mao, Masatoshi Uehara, 2024.
[abs][pdf][bib]      [code]

On the Effect of Initialization: The Scaling Path of 2-Layer Neural Networks
Sebastian Neumayer, Lénaïc Chizat, Michael Unser, 2024.
[abs][pdf][bib]

Improving physics-informed neural networks with meta-learned optimization
Alex Bihlo, 2024.
[abs][pdf][bib]

A Comparison of Continuous-Time Approximations to Stochastic Gradient Descent
Stefan Ankirchner, Stefan Perko, 2024.
[abs][pdf][bib]

Critically Assessing the State of the Art in Neural Network Verification
Matthias König, Annelot W. Bosman, Holger H. Hoos, Jan N. van Rijn, 2024.
[abs][pdf][bib]

Estimating the Minimizer and the Minimum Value of a Regression Function under Passive Design
Arya Akhavan, Davit Gogolashvili, Alexandre B. Tsybakov, 2024.
[abs][pdf][bib]

Modeling Random Networks with Heterogeneous Reciprocity
Daniel Cirkovic, Tiandong Wang, 2024.
[abs][pdf][bib]

Exploration, Exploitation, and Engagement in Multi-Armed Bandits with Abandonment
Zixian Yang, Xin Liu, Lei Ying, 2024.
[abs][pdf][bib]

On Efficient and Scalable Computation of the Nonparametric Maximum Likelihood Estimator in Mixture Models
Yangjing Zhang, Ying Cui, Bodhisattva Sen, Kim-Chuan Toh, 2024.
[abs][pdf][bib]      [code]

Decorrelated Variable Importance
Isabella Verdinelli, Larry Wasserman, 2024.
[abs][pdf][bib]

Model-Free Representation Learning and Exploration in Low-Rank MDPs
Aditya Modi, Jinglin Chen, Akshay Krishnamurthy, Nan Jiang, Alekh Agarwal, 2024.
[abs][pdf][bib]

Seeded Graph Matching for the Correlated Gaussian Wigner Model via the Projected Power Method
Ernesto Araya, Guillaume Braun, Hemant Tyagi, 2024.
[abs][pdf][bib]      [code]

Fast Policy Extragradient Methods for Competitive Games with Entropy Regularization
Shicong Cen, Yuting Wei, Yuejie Chi, 2024.
[abs][pdf][bib]

Power of knockoff: The impact of ranking algorithm, augmented design, and symmetric statistic
Zheng Tracy Ke, Jun S. Liu, Yucong Ma, 2024.
[abs][pdf][bib]

Lower Complexity Bounds of Finite-Sum Optimization Problems: The Results and Construction
Yuze Han, Guangzeng Xie, Zhihua Zhang, 2024.
[abs][pdf][bib]

On Truthing Issues in Supervised Classification
Jonathan K. Su, 2024.
[abs][pdf][bib]

Full list

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