合作q -学习环境中的非往复式共享方法

B. Cunningham, Yong Cao
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引用次数: 6

摘要

以往基于协作强化学习的多智能体仿真研究侧重于开发环境中所有智能体都采用和使用的共享策略。在本文中,我们的目标是所有代理采用单一共享策略的假设无效的情况。与独立学习相比,我们试图解决没有预定共享伙伴的智能体如何利用合作学习智能体群体来提高学习性能。具体来说,我们提出了3种内部代理方法,它们不假设互惠共享关系,并利用与Q-Learning相关的预先存在的代理接口来加速学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-reciprocating Sharing Methods in Cooperative Q-Learning Environments
Past research on multi-agent simulation with cooperative reinforcement learning (RL) focuses on developing sharing strategies that are adopted and used by all agents in the environment. In this paper, we target situations where this assumption of a single sharing strategy that is employed by all agents is not valid. We seek to address how agents with no predetermined sharing partners can exploit groups of cooperatively learning agents to improve learning performance when compared to Independent learning. Specifically, we propose 3 intra-agent methods that do not assume a reciprocating sharing relationship and leverage the pre-existing agent interface associated with Q-Learning to expedite learning.
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