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Local strategy learning in networked multi-agent team formation

机译:网络化多主体团队形成中的本地策略学习

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摘要

Networked multi-agent systems are comprised of many autonomous yet interdependent agents situated in a virtual social network. Two examples of such systems are supply chain networks and sensor networks. A common challenge in many networked multi-agent systems is decentralized team formation among the spatially and logically extended agents. Even in cooperative multi-agent systems, efficient team formation is made difficult by the limited local information available to the individual agents. We present a model of distributed multi-agent team formation in networked multi-agent systems, describe a policy learning framework for joining teams based on local information, and give empirical results on improving team formation performance. In particular, we show that local policy learning from limited information leads to a significant increase in organizational team formation performance compared to a random policy.
机译:联网的多主体系统由位于虚拟社交网络中的许多自治但相互依赖的主体组成。这种系统的两个例子是供应链网络和传感器网络。在许多网络化多主体系统中,共同的挑战是在空间上和逻辑上扩展的主体之间的分散团队形成。即使在协作式多代理系统中,由于各个代理可用的有限本地信息,也难以有效地组建团队。我们提出了网络化多主体系统中的分布式多主体团队形成模型,描述了基于本地信息加入团队的策略学习框架,并给出了改善团队形成绩效的实证结果。特别是,我们表明,与随机策略相比,从有限信息中学习本地策略会导致组织团队形成绩效的显着提高。

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