Sample Complexity of Distributionally Robust Average-Reward Reinforcement Learning
Abstract
Motivated by practical applications where stable long-term performance is critical—such as robotics, operations research, and healthcare—we study the problem of distributionally robust (DR) average-reward reinforcement learning. We propose two algorithms that achieve near-optimal sample complexity. The first reduces the problem to a DR discounted Markov decision process (MDP), while the second, Anchored DR Average-Reward MDP, introduces an anchoring state to stabilize the controlled transition kernels within the uncertainty set. Assuming the nominal MDP is uniformly ergodic, we prove that both algorithms attain a sample complexity of $\widetilde{O}\left(|\mathbf{S}||\mathbf{A}| t_{\mathrm{mix}}^2\varepsilon^{-2}\right)$ for estimating the optimal policy as well as the robust average reward under KL and $f_k$-divergence-based uncertainty sets, provided the uncertainty radius is sufficiently small. Here, $\varepsilon$ is the target accuracy, $|\mathbf{S}|$ and $|\mathbf{A}|$ denote the sizes of the state and action spaces, and $t_{\mathrm{mix}}$ is the mixing time of the nominal MDP. This represents the first finite-sample convergence guarantee for DR average-reward reinforcement learning. We further validate the convergence rates of our algorithms through numerical experiments.
Cite
Text
Chen et al. "Sample Complexity of Distributionally Robust Average-Reward Reinforcement Learning." Advances in Neural Information Processing Systems, 2025.Markdown
[Chen et al. "Sample Complexity of Distributionally Robust Average-Reward Reinforcement Learning." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/chen2025neurips-sample/)BibTeX
@inproceedings{chen2025neurips-sample,
title = {{Sample Complexity of Distributionally Robust Average-Reward Reinforcement Learning}},
author = {Chen, Zijun and Wang, Shengbo and Si, Nian},
booktitle = {Advances in Neural Information Processing Systems},
year = {2025},
url = {https://mlanthology.org/neurips/2025/chen2025neurips-sample/}
}