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AAMAS
2007
Springer

Local strategy learning in networked multi-agent team formation

13 years 4 months ago
Local strategy learning in networked multi-agent team formation
Abstract. Networked multi-agent systems are comprised of many autonomous yet interdependent agents situated in a virtual social network. Two examples of such systems are supply chain networks and sensor networks. A common challenge in many networked multiagent systems is decentralized team formation among the spatially and logically extended agents. Even in cooperative multi-agent systems, efficient team formation is made difficult by the limited local information available to the individual agents. We present a model of distributed multi-agent team formation in networked multi-agent systems, describe a policy learning framework for joining teams based on local information, and give empirical results on improving team formation performance. In particular, we show that local policy learning from limited information leads to a significant increase in organizational team formation performance compared to a random policy. Keywords multi-agent learning, networked multi-agent systems, agent...
Blazej Bulka, Matthew E. Gaston, Marie desJardins
Added 08 Dec 2010
Updated 08 Dec 2010
Type Journal
Year 2007
Where AAMAS
Authors Blazej Bulka, Matthew E. Gaston, Marie desJardins
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