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Papers/Decomposed Soft Actor-Critic Method for Cooperative Multi-...

Decomposed Soft Actor-Critic Method for Cooperative Multi-Agent Reinforcement Learning

Yuan Pu, Shaochen Wang, Rui Yang, Xin Yao, Bin Li

2021-04-14Reinforcement LearningSMAC+Starcraft IIMulti-agent Reinforcement LearningStarcraftreinforcement-learning
PaperPDFCode(official)

Abstract

Deep reinforcement learning methods have shown great performance on many challenging cooperative multi-agent tasks. Two main promising research directions are multi-agent value function decomposition and multi-agent policy gradients. In this paper, we propose a new decomposed multi-agent soft actor-critic (mSAC) method, which effectively combines the advantages of the aforementioned two methods. The main modules include decomposed Q network architecture, discrete probabilistic policy and counterfactual advantage function (optinal). Theoretically, mSAC supports efficient off-policy learning and addresses credit assignment problem partially in both discrete and continuous action spaces. Tested on StarCraft II micromanagement cooperative multiagent benchmark, we empirically investigate the performance of mSAC against its variants and analyze the effects of the different components. Experimental results demonstrate that mSAC significantly outperforms policy-based approach COMA, and achieves competitive results with SOTA value-based approach Qmix on most tasks in terms of asymptotic perfomance metric. In addition, mSAC achieves pretty good results on large action space tasks, such as 2c_vs_64zg and MMM2.

Results

TaskDatasetMetricValueModel
Multi-agent Reinforcement LearningDef_Infantry_parallelMedian Win Rate30MASAC
Multi-agent Reinforcement LearningDef_Infantry_sequentialMedian Win Rate37.5MASAC
SMACDef_Infantry_parallelMedian Win Rate30MASAC
SMACDef_Infantry_sequentialMedian Win Rate37.5MASAC

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