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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part B, Cybernetics >Performance enhancement of a contract net protocol based system through instance-based learning
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Performance enhancement of a contract net protocol based system through instance-based learning

机译:通过基于实例的学习增强基于合同网协议的系统的性能

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摘要

The contract net protocol (CNP) is a widely used coordination mechanism in multiagent systems. It has a lot of communication overhead due to the broadcast of the task announcements. The performance of the CNP degrades drastically when the number of communicating agents and the number of tasks announced increases. Hence, it has problems of scalability. In order to overcome this limitation, an instance-based learning (IBL) mechanism is designed that uses previously stored instances in order to select a target agent. This avoids the expensive bidding process. The scheme is implemented in a simulated distributed hospital system where the CNP is used for resource sharing across hospitals. Experimental results demonstrate that with the incorporation of the IBL, the system performance improves significantly. The system is better scalable with respect to the number of tasks.
机译:合同网络协议(CNP)是多代理系统中广泛使用的协调机制。由于任务公告的广播,它具有大量的通信开销。当通信代理程序的数量和宣布的任务数量增加时,CNP的性能将急剧下降。因此,它具有可伸缩性的问题。为了克服此限制,设计了基于实例的学习(IBL)机制,该机制使用先前存储的实例来选择目标代理。这避免了昂贵的投标过程。该方案在模拟分布式医院系统中实施,其中CNP用于医院之间的资源共享。实验结果表明,通过集成IBL,系统性能得到了显着改善。就任务数量而言,该系统具有更好的可伸缩性。

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