Quantile $q$-Learning: Revisiting Offline Extreme $q$-Learning with Quantile Regression

Abstract

Offline reinforcement learning (RL) enables policy learning from fixed datasets without further environment interaction, making it particularly valuable in high-risk or costly domains. Extreme $Q$-Learning (XQL) is a recent offline RL method that models Bellman errors using the Extreme Value Theorem, yielding strong empirical performance. However, XQL and its stabilized variant MXQL suffer from notable limitations: both require extensive hyperparameter tuning specific to each dataset and domain, and also exhibit instability during training. To address these issues, we proposed a principled method to estimate the temperature coefficient $\beta$ via quantile regression under mild assumptions. To further improve training stability, we introduce a value regularization technique with mild generalization, inspired by recent advances in constrained value learning. Experimental results demonstrate that the proposed algorithm achieves competitive or superior performance across a range of benchmark tasks, including D4RL and NeoRL2, while maintaining stable training dynamics and using a consistent set of hyperparameters across all datasets and domains.

Cite

Text

Gao et al. "Quantile $q$-Learning: Revisiting Offline Extreme $q$-Learning with Quantile Regression." Transactions on Machine Learning Research, 2026.

Markdown

[Gao et al. "Quantile $q$-Learning: Revisiting Offline Extreme $q$-Learning with Quantile Regression." Transactions on Machine Learning Research, 2026.](https://mlanthology.org/tmlr/2026/gao2026tmlr-quantile/)

BibTeX

@article{gao2026tmlr-quantile,
  title     = {{Quantile $q$-Learning: Revisiting Offline Extreme $q$-Learning with Quantile Regression}},
  author    = {Gao, Xinming and Li, Shangzhe and Cai, Yujin and Yu, Wenwu},
  journal   = {Transactions on Machine Learning Research},
  year      = {2026},
  url       = {https://mlanthology.org/tmlr/2026/gao2026tmlr-quantile/}
}