LGAIMLOct 16, 2025

Policy Regularized Distributionally Robust Markov Decision Processes with Linear Function Approximation

arXiv:2510.14246v11 citationsh-index: 6
Originality Incremental advance
AI Analysis

This addresses the problem of robust reinforcement learning for agents in environments with adversarial dynamics, offering a novel policy optimization approach that is incremental in combining existing techniques.

The paper tackles the challenge of decision-making under distribution shift in reinforcement learning by proposing a model-free online policy optimization method for robust Markov decision processes, achieving polynomial suboptimality bounds and sample efficiency with empirical validation across diverse domains.

Decision-making under distribution shift is a central challenge in reinforcement learning (RL), where training and deployment environments differ. We study this problem through the lens of robust Markov decision processes (RMDPs), which optimize performance against adversarial transition dynamics. Our focus is the online setting, where the agent has only limited interaction with the environment, making sample efficiency and exploration especially critical. Policy optimization, despite its success in standard RL, remains theoretically and empirically underexplored in robust RL. To bridge this gap, we propose \textbf{D}istributionally \textbf{R}obust \textbf{R}egularized \textbf{P}olicy \textbf{O}ptimization algorithm (DR-RPO), a model-free online policy optimization method that learns robust policies with sublinear regret. To enable tractable optimization within the softmax policy class, DR-RPO incorporates reference-policy regularization, yielding RMDP variants that are doubly constrained in both transitions and policies. To scale to large state-action spaces, we adopt the $d$-rectangular linear MDP formulation and combine linear function approximation with an upper confidence bonus for optimistic exploration. We provide theoretical guarantees showing that policy optimization can achieve polynomial suboptimality bounds and sample efficiency in robust RL, matching the performance of value-based approaches. Finally, empirical results across diverse domains corroborate our theory and demonstrate the robustness of DR-RPO.

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