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Promoting Cooperation in Multi-Agent Reinforcement Learning via Mutual Help

Yunbo Qiu (Tsinghua University); Yue Jin (University of Warwick); Lebin Yu (Tsinghua University); Jian Wang (Tsinghua university); Xudong Zhang (Tsinghua university)

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06 Jun 2023

Multi-agent reinforcement learning (MARL) has achieved great progress in cooperative tasks in recent years. However, in the local reward scheme, where only local rewards for each agent are given without global rewards shared by all the agents, traditional MARL algorithms lack sufficient consideration of agents' mutual influence. In cooperative tasks, agents' mutual influence is especially important since agents are supposed to coordinate to achieve better performance. In this paper, we propose a novel algorithm Mutual-Help-based MARL (MH-MARL) to instruct agents to help each other in order to promote cooperation. MH-MARL utilizes an expected action module to generate expected other agents' actions for each particular agent. Then, the expected actions are delivered to other agents for selective imitation during training. Experimental results show that MH-MARL improves the performance of MARL both in success rate and cumulative reward.

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