An adaptive-learning framework for semi-cooperative multi-agent coordination

A. Boukhtouta, J. Berger, Warrren B Powell, Abraham P. George
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引用次数: 8

Abstract

Complex problems involving multiple agents exhibit varying degrees of cooperation. The levels of cooperation might reflect both differences in information as well as differences in goals. In this research, we develop a general mathematical model for distributed, semi-cooperative planning and suggest a solution strategy which involves decomposing the system into subproblems, each of which is specified at a certain period in time and controlled by an agent. The agents communicate marginal values of resources to each other, possibly with distortion. We design experiments to demonstrate the benefits of communication between the agents and show that, with communication, the solution quality approaches that of the ideal situation where the entire problem is controlled by a single agent.
半合作多智能体协调的自适应学习框架
涉及多个代理的复杂问题表现出不同程度的合作。合作的程度可能既反映了信息的差异,也反映了目标的差异。在本研究中,我们建立了分布式半协作规划的一般数学模型,并提出了一种解决策略,该策略涉及将系统分解为子问题,每个子问题在特定时间段指定并由代理控制。代理之间相互传递资源的边际值,可能会有失真。我们设计了实验来证明智能体之间通信的好处,并表明,通过通信,解决方案的质量接近于整个问题由单个智能体控制的理想情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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