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A Multi-Agent Off-Policy Actor-Critic Algorithm for Distributed Reinforcement Learning

Wesley A. Suttle, Zhuoran Yang, Kaiqing Zhang, Zhaoran Wang, Tamer Başar, Ji Liu

2020IFAC-PapersOnLine51 citationsDOIOpen Access PDF

Abstract

This paper extends off-policy reinforcement learning to the multi-agent case in which a set of networked agents communicating with their neighbors according to a time-varying graph collaboratively evaluates and improves a target policy while following a distinct behavior policy. To this end, the paper develops a multi-agent version of emphatic temporal difference learning for off-policy policy evaluation, and proves convergence under linear function approximation. The paper then leverages this result, in conjunction with a novel multi-agent off-policy policy gradient theorem and recent work in both multi-agent on-policy and single-agent off-policy actor-critic methods, to develop and give convergence guarantees for a new multi-agent off-policy actor-critic algorithm. An empirical validation of these theoretical results is given.

Topics & Concepts

Reinforcement learningComputer scienceConvergence (economics)Temporal difference learningSet (abstract data type)Policy learningGraphMulti-agent systemFunction (biology)Mathematical optimizationArtificial intelligenceTheoretical computer scienceMachine learningMathematicsEconomicsEvolutionary biologyEconomic growthProgramming languageBiologyReinforcement Learning in RoboticsAdaptive Dynamic Programming ControlDistributed Control Multi-Agent Systems
A Multi-Agent Off-Policy Actor-Critic Algorithm for Distributed Reinforcement Learning | Litcius