DocumentCode
836433
Title
Biasing Coevolutionary Search for Optimal Multiagent Behaviors
Author
Panait, Liviu ; Luke, Sean ; Wiegand, R. Paul
Author_Institution
Dept. of Comput. Sci., George Mason Univ., Fairfax, VA
Volume
10
Issue
6
fYear
2006
Firstpage
629
Lastpage
645
Abstract
Cooperative coevolutionary algorithms (CEAs) offer great potential for concurrent multiagent learning domains and are of special utility to domains involving teams of multiple agents. Unfortunately, they also exhibit pathologies resulting from their game-theoretic nature, and these pathologies interfere with finding solutions that correspond to optimal collaborations of interacting agents. We address this problem by biasing a cooperative CEA in such a way that the fitness of an individual is based partly on the result of interactions with other individuals (as is usual), and partly on an estimate of the best possible reward for that individual if partnered with its optimal collaborator. We justify this idea using existing theoretical models of a relevant subclass of CEAs, demonstrate how to apply biasing in a way that is robust with respect to parameterization, and provide some experimental evidence to validate the biasing approach. We show that it is possible to bias coevolutionary methods to better search for optimal multiagent behaviors
Keywords
evolutionary computation; game theory; learning (artificial intelligence); multi-agent systems; concurrent multi-agent learning; cooperative coevolutionary algorithm; game theory; multipopulation symmetric coevolution; Algorithm design and analysis; Collaboration; Computer science; Engineering education; Evolutionary computation; Laboratories; Pathology; Robustness; Biased coevolution; coevolution; cooperative coevolution; multiagent learning; multipopulation symmetric coevolution; optimal collaboration;
fLanguage
English
Journal_Title
Evolutionary Computation, IEEE Transactions on
Publisher
ieee
ISSN
1089-778X
Type
jour
DOI
10.1109/TEVC.2006.880330
Filename
4016070
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