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Cooperative Behavior Learning Based on Social Interaction of State Conversion and Reward Exchange Among Multi-Agents

机译:基于状态交互和多主体奖励交换的社会互动的合作行为学习

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In multi-agent systems, it is necessary for autonomous agents to interact with each other in order to have excellent cooperative performance. Therefore, we have studied social interaction between agents to see how they acquire cooperative behavior. We have found that sharing environmental states can improve agent cooperation through reinforcement learning, and that changing environmental states to target-related individual states improves cooperation. To further improve cooperation, we propose reward redistribution based on reward exchanges among agents. In receiving rewards from both the environment and other agents, agents learned how to adjust themselves to the environment and how to explore and strengthen cooperation in tasks that a single agent could not do alone. Agents thus cooperate best through the interaction of state conversion and reward exchange.
机译:在多主体系统中,自治主体必须相互交互才能具有出色的协作性能。因此,我们研究了代理商之间的社会互动,以了解代理商如何获得合作行为。我们发现共享环境状态可以通过强化学习来改善代理合作,而将环境状态更改为与目标相关的单个状态可以改善合作。为了进一步改善合作,我们建议基于代理商之间的奖励交换进行奖励重新分配。在获得环境和其他代理人的奖励时,代理人学会了如何适应环境,以及如何探索和加强在单个代理人无法独自完成的任务中的合作。因此,代理通过状态转换和奖励交换之间的最佳协作。

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