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.
News
- 2026.03.02: Volume 26 completed; Volume 27 began.
- 2025.02.10: Volume 25 completed; Volume 26 began.
- 2024.02.18: Volume 24 completed; Volume 25 began.
- 2023.01.20: Volume 23 completed; Volume 24 began.
- 2022.07.20: New special issue on climate change.
- 2022.02.18: New blog post: Retrospectives from 20 Years of JMLR .
- 2022.01.25: Volume 22 completed; Volume 23 began.
- 2021.12.02: Message from outgoing co-EiC Bernhard Schölkopf.
- 2021.02.10: Volume 21 completed; Volume 22 began.
- More news ...
Latest papers
- Transformers Can Overcome the Curse of Dimensionality: A Theoretical Study from an Approximation Perspective
- Yuling Jiao, Yanming Lai, Yang Wang, Bokai Yan, 2026.
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- Covariate-dependent Hierarchical Dirichlet Processes
- Huizi Zhang, Sara Wade, Natalia Bochkina, 2026.
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- DCatalyst: A Unified Accelerated Framework for Decentralized Optimization
- TIanyu Cao, Xiaokai Chen, Gesualdo Scutari, 2026.
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- Boosted Control Functions: Distribution Generalization and Invariance in Confounded Models
- Nicola Gnecco, Jonas Peters, Sebastian Engelke, Niklas Pfister, 2026.
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- Contrasting Local and Global Modeling with Machine Learning and Satellite Data: A Case Study Estimating Tree Canopy Height in African Savannas
- Esther Rolf, Lucia Gordon, Milind Tambe, Andrew Davies, 2026.
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- A Symplectic Analysis of Alternating Mirror Descent
- Jonas E. Katona, Xiuyuan Wang, Andre Wibisono, 2026.
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- Two-way Node Popularity Model for Directed and Bipartite Networks
- Bing-Yi Jing, Ting Li, Jiangzhou Wang, Ya Wang, 2026.
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- Convergence and complexity of block majorization-minimization for constrained block-Riemannian optimization
- Yuchen Li, Laura Balzano, Deanna Needell, Hanbaek Lyu, 2026.
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- Bayesian Inference of Contextual Bandit Policies via Empirical Likelihood
- Jiangrong Ouyang, Mingming Gong, Howard Bondell, 2026.
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- A causal fused lasso for interpretable heterogeneous treatment effects estimation
- Oscar Hernan Madrid Padilla, Yanzhen Chen, Carlos Misael Madrid Padilla, Gabriel Ruiz, 2026.
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- Unsupervised Feature Selection via Nonnegative Orthogonal Constrained Regularized Minimization
- Yan Li, Defeng Sun, Liping Zhang, 2026.
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- Reparameterized Complex-valued Neurons Can Efficiently Learn More than Real-valued Neurons via Gradient Descent
- Jin-Hui Wu, Shao-Qun Zhang, Yuan Jiang, Zhi-Hua Zhou, 2026.
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- Optimizing Attention with Mirror Descent: Generalized Max-Margin Token Selection
- Addison Kristanto Julistiono, Davoud Ataee Tarzanagh, Navid Azizan, 2026.
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- Adaptive Forward Stepwise: A Method for High Sparsity Regression
- Ivy Zhang, Robert Tibshirani, 2026.
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- Optimization and Generalization of Gradient Descent for Shallow ReLU Networks with Minimal Width
- Yunwen Lei, Puyu Wang, Yiming Ying, Ding-Xuan Zhou, 2026.
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- Finite Neural Networks as Mixtures of Gaussian Processes: From Provable Error Bounds to Prior Selection
- Steven Adams, Andrea Patanè, Morteza Lahijanian, Luca Laurenti, 2026.
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- CHANI: Correlation-based Hawkes Aggregation of Neurons with bio-Inspiration
- Sophie Jaffard, Samuel Vaiter, Patricia Reynaud-Bouret, 2026.
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- Persistence Diagrams Estimation of Multivariate Piecewise Hölder-continuous Signals
- Hugo Henneuse, 2026.
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- Exploring Novel Uncertainty Quantification through Forward Intensity Function Modeling
- Yudong Wang, Zhi-Sheng Ye, Cheng Yong Tang, 2026.
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- Communication-efficient Distributed Statistical Inference for Massive Data with Heterogeneous Auxiliary Information
- Miaomiao Yu, Zhongfeng Jiang, Jiaxuan Li, Yong Zhou, 2026.
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- Decorrelated Local Linear Estimator: Inference for Non-linear Effects in High-dimensional Additive Models
- Zijian Guo, Wei Yuan, Cunhui Zhang, 2026.
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- Refined Risk Bounds for Unbounded Losses via Transductive Priors
- Jian Qian, Alexander Rakhlin, Nikita Zhivotovskiy, 2026.
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- A Common Interface for Automatic Differentiation
- Guillaume Dalle, Adrian Hill, 2026. (Machine Learning Open Source Software Paper)
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- LazyDINO: Fast, Scalable, and Efficiently Amortized Bayesian Inversion via Structure-Exploiting and Surrogate-Driven Measure Transport
- Lianghao Cao, Joshua Chen, Michael Brennan, Thomas O'Leary-Roseberry, Youssef Marzouk, Omar Ghattas, 2026.
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- The Distribution of Ridgeless Least Squares Interpolators
- Qiyang Han, Xiaocong Xu, 2026.
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- Nonparametric Estimation of a Factorizable Density using Diffusion Models
- Hyeok Kyu Kwon, Dongha Kim, Ilsang Ohn, Minwoo Chae, 2026.
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- Learning Bayesian Network Classifiers to Minimize Class Variable Parameters
- Shouta Sugahara, Koya Kato, James Cussens, Maomi Ueno, 2026.
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- Simulation-based Calibration of Uncertainty Intervals under Approximate Bayesian Estimation
- Terrance D. Savitsky, Julie Gershunskaya, 2026.
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- An Anytime Algorithm for Good Arm Identification
- Marc Jourdan, Andrée Delahaye-Duriez, Clémence Réda, 2026.
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- Extrapolated Markov Chain Oversampling Method for Imbalanced Text Classification
- Aleksi Avela, Pauliina Ilmonen, 2026.
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- Neural Network Parameter-optimization of Gaussian Pre-marginalized Directed Acyclic Graphs
- Mehrzad Saremi, 2026. (Machine Learning Open Source Software Paper)
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- Flexible Functional Treatment Effect Estimation
- Jiayi Wang, Raymond K. W. Wong, Xiaoke Zhang, Kwun Chuen Gary Chan, 2026.
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- Error Analysis for Deep ReLU Feedforward Density-Ratio Estimation with Bregman Divergence
- Siming Zheng, Guohao Shen, Yuanyuan Lin, Jian Huang, 2026.
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- A Reinforcement Learning Approach in Multi-Phase Second-Price Auction Design
- Rui Ai, Boxiang Lyu, Zhaoran Wang, Zhuoran Yang, Michael I. Jordan, 2026.
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- UQLM: A Python Package for Uncertainty Quantification in Large Language Models
- Dylan Bouchard, Mohit Singh Chauhan, David Skarbrevik, Ho-Kyeong Ra, Viren Bajaj, Zeya Ahmad, 2026. (Machine Learning Open Source Software Paper)
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- Nonlocal Techniques for the Analysis of Deep ReLU Neural Network Approximations
- Cornelia Schneider, Mario Ullrich, Jan Vybíral, 2026.
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- A Data-Augmented Contrastive Learning Approach to Nonparametric Density Estimation
- Chenghao Li, Yuanyuan Lin, 2026.
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- Guaranteed Nonconvex Low-Rank Tensor Estimation via Scaled Gradient Descent
- Tong Wu, 2026.
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- skwdro: a library for Wasserstein distributionally robust machine learning
- Vincent Florian, Waïss Azizian, Franck Iutzeler, Jérôme Malick, 2026. (Machine Learning Open Source Software Paper)
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- Extending Mean-Field Variational Inference via Entropic Regularization: Theory and Computation
- Bohan Wu, David M. Blei, 2026.
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- Stochastic Gradient Methods: Bias, Stability and Generalization
- Shuang Zeng, Yunwen Lei, 2026.
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- Classification Under Local Differential Privacy with Model Reversal and Model Averaging
- Caihong Qin, Yang Bai, 2026.
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- Identifying Weight-Variant Latent Causal Models
- Yuhang Liu, Zhen Zhang, Dong Gong, Mingming Gong, Biwei Huang, Anton van den Hengel, Kun Zhang, Javen Qinfeng Shi, 2026.
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- Efficient frequent directions algorithms for approximate decomposition of matrices and higher-order tensors
- Maolin Che, Yimin Wei, Hong Yan, 2026.
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- Online Detection of Changes in Moment--Based Projections: When to Retrain Deep Learners or Update Portfolios?
- Ansgar Steland, 2026.
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- The surrogate Gibbs-posterior of a corrected stochastic MALA: Towards uncertainty quantification for neural networks
- Sebastian Bieringer, Gregor Kasieczka, Maximilian F. Steffen, Mathias Trabs, 2026.
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