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Efficient Policy Learning for Non-Stationary MDPs under Adversarial Manipulation

22 July 2019
Tiancheng Yu
S. Sra
    AAML
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Abstract

A Markov Decision Process (MDP) is a popular model for reinforcement learning. However, its commonly used assumption of stationary dynamics and rewards is too stringent and fails to hold in adversarial, nonstationary, or multi-agent problems. We study an episodic setting where the parameters of an MDP can differ across episodes. We learn a reliable policy of this potentially adversarial MDP by developing an Adversarial Reinforcement Learning (ARL) algorithm that reduces our MDP to a sequence of \emph{adversarial} bandit problems. ARL achieves O(SATH3)O(\sqrt{SATH^3})O(SATH3​) regret, which is optimal with respect to SSS, AAA, and TTT, and its dependence on HHH is the best (even for the usual stationary MDP) among existing model-free methods.

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