Robust Constrained Reinforcement Learning
Abstract
Constrained reinforcement learning is to maximize the expected reward subject to constraints on utilities/costs. However, the training environment may not be the same as the test one, due to, e.g., modeling error, adversarial attack, non-stationarity, resulting in severe performance degradation and more importantly constraint violation. We propose a framework of robust constrained reinforcement learning under model uncertainty, where the MDP is not fixed but lies in some uncertainty set, the goal is to guarantee that constraints on utilities/costs are satisfied for all MDPs in the uncertainty set, and to maximize the worst-case reward performance over the uncertainty set. We design a robust primal-dual approach, and further theoretically develop guarantee on its convergence, complexity and robust feasibility. We then investigate a concrete example of -contamination uncertainty set, design an online and model-free algorithm and theoretically characterize its sample complexity.
Cite
@article{arxiv.2209.06866,
title = {Robust Constrained Reinforcement Learning},
author = {Yue Wang and Fei Miao and Shaofeng Zou},
journal= {arXiv preprint arXiv:2209.06866},
year = {2022}
}