Fluctuated peer selection policy and its performance in large-scale multi-agent systems

T. Sugawara, K. Fukuda, Toshio Hirotsu, Shin-ya Sato, Osamu Akashi, S. Kurihara
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引用次数: 1

Abstract

This paper describes how, in large-scale multi-agent systems, each agent's adaptive selection of peer agents for collaborative tasks affects the overall performance and how this performance varies with the workload of the system and with fluctuations in the agents' peer selection policies (PSP). An intelligent agent in a multi-agent system (MAS) often has to select appropriate agents to assign tasks that cannot be executed locally. These collaborating agents are usually chosen according to their skills. However, if multiple candidate peer agents still remain a more efficient agent is preferable. Of course, its efficiency is affected by the agent' workload and CPU performance and the available communication bandwidth. Unfortunately, as no agent in an open environment such as the Internet can obtain such data from any other agent, this selection must be done according to the available local information about the other known agents. However, this information is limited, usually uncertain and often obsolete. Agents' states may also change over time, so the PSP must be adaptive to some extent. We investigated how the overall performance of MAS would change under adaptive policies in which agents selects peer agents using statistical/reinforcement learning. We particularly focused on mutual interference for selection under different workloads, that is, underloaded, near-critical, and overloaded situations. This paper presents simulation results and shows that the overall performance of MAS highly depends on the workload. It is shown that when agents' workloads are near the limit of theoretical total capability, a greedy PSP degrades the overall performance, even after a sufficient learning time, but that a PSP with a little fluctuation, called fluctuated PSP, can considerably improve it. This paper is the revised and extended version of our conference papers [21] and [22].
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大规模多智能体系统中的波动同伴选择策略及其性能
本文描述了在大规模多智能体系统中,每个智能体对协作任务的同伴智能体的自适应选择如何影响整体性能,以及这种性能如何随系统工作负载和智能体同伴选择策略(PSP)的波动而变化。多代理系统(MAS)中的智能代理通常必须选择合适的代理来分配无法在本地执行的任务。这些合作代理通常是根据他们的技能来选择的。但是,如果仍然存在多个候选对等代理,那么更有效的代理是可取的。当然,它的效率受到代理的工作负载、CPU性能和可用通信带宽的影响。不幸的是,由于在Internet等开放环境中没有任何代理可以从任何其他代理获得此类数据,因此必须根据有关其他已知代理的可用本地信息进行选择。然而,这些信息是有限的,通常是不确定的,而且常常是过时的。代理的状态也可能随着时间的推移而改变,因此PSP必须在某种程度上具有适应性。我们研究了在agent使用统计/强化学习选择同伴agent的自适应策略下,MAS的整体性能将如何变化。我们特别关注在不同工作负载下进行选择的相互干扰,即负载不足、接近临界和过载的情况。仿真结果表明,MAS的整体性能高度依赖于负载。研究表明,当智能体的工作负荷接近理论总能力的极限时,即使在足够的学习时间后,贪婪的PSP也会降低整体性能,而具有少量波动的PSP(波动PSP)可以显著提高整体性能。本文是我们的会议论文[21]和[22]的修订和扩展版本。
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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