Policy Gradient for Rectangular Robust Markov Decision Processes
Policy gradient methods have become a standard for training reinforcement learning agents in a scalable and efficient manner. However, they do not account for transition uncertainty, whereas learning robust policies can be computationally expensive. In this paper, we introduce robust policy gradient...
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Zusammenfassung: | Policy gradient methods have become a standard for training reinforcement
learning agents in a scalable and efficient manner. However, they do not
account for transition uncertainty, whereas learning robust policies can be
computationally expensive. In this paper, we introduce robust policy gradient
(RPG), a policy-based method that efficiently solves rectangular robust Markov
decision processes (MDPs). We provide a closed-form expression for the worst
occupation measure. Incidentally, we find that the worst kernel is a rank-one
perturbation of the nominal. Combining the worst occupation measure with a
robust Q-value estimation yields an explicit form of the robust gradient. Our
resulting RPG can be estimated from data with the same time complexity as its
non-robust equivalent. Hence, it relieves the computational burden of convex
optimization problems required for training robust policies by current policy
gradient approaches. |
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DOI: | 10.48550/arxiv.2301.13589 |