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Sample and Communication-Efficient Decentralized Actor-Critic Algorithms with Finite-Time Analysis

Abstract

Actor-critic (AC) algorithms have been widely adopted in decentralized multi-agent systems to learn the optimal joint control policy. However, existing decentralized AC algorithms either do not preserve the privacy of agents or are not sample and communication-efficient. In this work, we develop two decentralized AC and natural AC (NAC) algorithms that are private, and sample and communication-efficient. In both algorithms, agents share noisy information to preserve privacy and adopt mini-batch updates to improve sample and communication efficiency. Particularly for decentralized NAC, we develop a decentralized Markovian SGD algorithm with an adaptive mini-batch size to efficiently compute the natural policy gradient. Under Markovian sampling and linear function approximation, we prove the proposed decentralized AC and NAC algorithms achieve the state-of-the-art sample complexities O(ϵ2ln(ϵ1))\mathcal{O}\big(\epsilon^{-2}\ln(\epsilon^{-1})\big) and O(ϵ3ln(ϵ1))\mathcal{O}\big(\epsilon^{-3}\ln(\epsilon^{-1})\big), respectively, and the same small communication complexity O(ϵ1ln(ϵ1))\mathcal{O}\big(\epsilon^{-1}\ln(\epsilon^{-1})\big). Numerical experiments demonstrate that the proposed algorithms achieve lower sample and communication complexities than the existing decentralized AC algorithm.

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