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Group Behavior Learning In Multi-Agent Systems Based on Social Interaction Among Agents

机译:基于Agent社交互动的多Agent系统群体行为学习

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摘要

Research on multi-agent systems, in which autonomous agents are able to learn cooperative behavior, has been the subject of rising expectations in recent years. We have aimed at the group behavior generation of the multi-agents who have high levels of autonomous learning ability, like that of human beings, through social interaction between agents to acquire cooperative behavior. The sharing of environment states can improve cooperative ability, and the changing state of the environment in the information shared by agents will improve agents' cooperative ability. On this basis, we use reward redistribution among agents to reinforce group behavior, and we propose a method of constructing a multi-agent system with an autonomous group creation ability. This is able to strengthen the cooperative behavior of the group as social agents.
机译:近年来,人们越来越期望对多智能体系统进行研究,在这种系统中,自治智能体能够学习协作行为。我们旨在通过人与人之间的社会互动来获得具有高水平自主学习能力的多人(如人类)的群体行为,从而获得合作行为。环境状态的共享可以提高协作能力,代理共享的信息中环境状态的变化可以提高代理的协作能力。在此基础上,我们利用代理之间的奖励重新分配来加强群体行为,并提出了一种构建具有自主群体创造能力的多主体系统的方法。这能够加强团体作为社会主体的合作行为。

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