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Robust Policy Gradient against Strong Data Corruption

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 Added by Xuezhou Zhang
 Publication date 2021
and research's language is English




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We study the problem of robust reinforcement learning under adversarial corruption on both rewards and transitions. Our attack model assumes an textit{adaptive} adversary who can arbitrarily corrupt the reward and transition at every step within an episode, for at most $epsilon$-fraction of the learning episodes. Our attack model is strictly stronger than those considered in prior works. Our first result shows that no algorithm can find a better than $O(epsilon)$-optimal policy under our attack model. Next, we show that surprisingly the natural policy gradient (NPG) method retains a natural robustness property if the reward corruption is bounded, and can find an $O(sqrt{epsilon})$-optimal policy. Consequently, we develop a Filtered Policy Gradient (FPG) algorithm that can tolerate even unbounded reward corruption and can find an $O(epsilon^{1/4})$-optimal policy. We emphasize that FPG is the first that can achieve a meaningful learning guarantee when a constant fraction of episodes are corrupted. Complimentary to the theoretical results, we show that a neural implementation of FPG achieves strong robust learning performance on the MuJoCo continuous control benchmarks.



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