2022
DOI: 10.3390/act11040099
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Multi-Agent Reinforcement Learning with Optimal Equivalent Action of Neighborhood

Abstract: In a multi-agent system, the complex interaction among agents is one of the difficulties in making the optimal decision. This paper proposes a new action value function and a learning mechanism based on the optimal equivalent action of the neighborhood (OEAN) of a multi-agent system, in order to obtain the optimal decision from the agents. In the new Q-value function, the OEAN is used to depict the equivalent interaction between the current agent and the others. To deal with the non-stationary environment when… Show more

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References 48 publications
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