Policy gradient in Lipschitz Markov Decision Processes
作者:Matteo Pirotta, Marcello Restelli, Luca Bascetta
摘要
This paper is about the exploitation of Lipschitz continuity properties for Markov Decision Processes to safely speed up policy-gradient algorithms. Starting from assumptions about the Lipschitz continuity of the state-transition model, the reward function, and the policies considered in the learning process, we show that both the expected return of a policy and its gradient are Lipschitz continuous w.r.t. policy parameters. By leveraging such properties, we define policy-parameter updates that guarantee a performance improvement at each iteration. The proposed methods are empirically evaluated and compared to other related approaches using different configurations of three popular control scenarios: the linear quadratic regulator, the mass-spring-damper system and the ship-steering control.
论文关键词:Reinforcement learning, Markov Decision Process, Lipschitz continuity, Policy gradient algorithm
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论文官网地址:https://doi.org/10.1007/s10994-015-5484-1