Coevolution of Role-Based Cooperation in Multiagent Systems

In tasks such as pursuit and evasion, multiple agents need to coordinate their behavior to achieve a common goal. An interesting question is, how can such behavior be best evolved? A powerful approach is to control the agents with neural networks, coevolve them in separate subpopulations, and test t...

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Veröffentlicht in:IEEE transactions on autonomous mental development 2009-10, Vol.1 (3), p.170-186
Hauptverfasser: Yong, C.H., Miikkulainen, R.
Format: Artikel
Sprache:eng
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Zusammenfassung:In tasks such as pursuit and evasion, multiple agents need to coordinate their behavior to achieve a common goal. An interesting question is, how can such behavior be best evolved? A powerful approach is to control the agents with neural networks, coevolve them in separate subpopulations, and test them together in the common task. In this paper, such a method, called multiagent enforced subpopulations (multiagent ESP), is proposed and demonstrated in a prey-capture task. First, the approach is shown to be more efficient than evolving a single central controller for all agents. Second, cooperation is found to be most efficient through stigmergy, i.e., through role-based responses to the environment, rather than communication between the agents. Together these results suggest that role-based cooperation is an effective strategy in certain multiagent tasks.
ISSN:1943-0604
2379-8920
1943-0612
2379-8939
DOI:10.1109/TAMD.2009.2037732