机会主义分散决策中的丰富沟通模型

A. Beynier, A. Mouaddib
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引用次数: 2

摘要

在分散控制下的多智能体系统中,通信是提高协调的一种自然方式。它允许代理交换本地信息,以增加它们在系统上的可观察性,从而导致更高的性能。最近研究合作多智能体系统中的分散控制的工作对分散马尔可夫决策过程(decp - mdp)表现出了极大的兴趣。然而,dec - mdp中提出的通信模型做出了强有力的假设,而这些假设在现实的多智能体系统中很少成立,在这些系统中,智能体的执行可能是异步的,通信消耗时间和资源,并且可能受到时间约束的限制。在本文中,我们提出了一种方法,使我们能够用交互图形式化decp - mdp中更复杂和现实的通信决策。我们假设一个通信模型,在每个决策步骤中,每个代理必须能够决定是否通信,哪些信息要通信以及与谁通信。为了做出这样的决策,我们扩展了最具可扩展性的分散决策模型之一,带有机会成本的DEC-MDP (OC-DEC-MDP)。这种新的决策模型使我们能够评估决策的价值,即何时、以何种方式与谁进行沟通,并节省oc - dec - mdp的绩效。
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A Rich Communication Model in Opportunistic Decentralized Decision Making
Communication is a natural way to improve coordination in multi-agent systems under decentralized control. It allows the agents to exchange local information, to increase their observability on the system and thus leading to higher performance. Recent works dealing with decentralized control in cooperative multiagent systems have shown a great interest in Decentralized Markov Decision Processes (DEC-MDPs). However, communication models that are proposed in DEC-MDPs make strong assumptions which seldom hold in realistic multiagent systems where the execution of the agents may be asynchronous, communication is time and resource consuming and may be restricted by temporal constraints. In this paper we propose an approach that allows us to formalize more complex and realistic communication decisions in DEC-MDPs with interaction graph. We assume a communication model where, at each decision step, each agent must be able to decide to communicate or not, which information to communicate and to whom. In order to make such decisions, we extend one of the most scalable decentralized decision model, the DEC-MDP with opportunity cost (OC-DEC-MDP). This new decision model allows us to assess the value of making decisions on when and what communicating and to whom, and to save the performance of OC-DEC-MDPs.
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