Learning to Improve Coordinated Actions in Cooperative Distributed Problem-Solving Environments

作者:Toshiharu Sugawara, Victor Lesser

摘要

Coordination is an essential technique in cooperative, distributed multiagent systems. However, sophisticated coordination strategies are not always cost-effective in all problem-solving situations. This paper presents a learning method to identify what information will improve coordination in specific problem-solving situations. Learning is accomplished by recording and analyzing traces of inferences after problem solving. The analysis identifies situations where inappropriate coordination strategies caused redundant activities, or the lack of timely execution of important activities, thus degrading system performance. To remedy this problem, situation-specific control rules are created which acquire additional nonlocal information about activities in the agent networks and then select another plan or another scheduling strategy. Examples from a real distributed problem-solving application involving diagnosis of a local area network are described.

论文关键词:learning, coordination, multiagent systems

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论文官网地址:https://doi.org/10.1023/A:1007510522680