2013
DOI: 10.1109/tevc.2012.2191292
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Evolving Team Compositions by Agent Swapping

Abstract: Abstract-Optimizing collective behavior in multiagent systems requires algorithms to find not only appropriate individual behaviors but also a suitable composition of agents within a team. Over the last two decades, evolutionary methods have been shown to be a promising approach for the design of agents and their compositions into teams. The choice of a crossover operator that facilitates the evolution of optimal team composition is recognized to be crucial, but so far it has never been thoroughly quantified. … Show more

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Cited by 9 publications
(1 citation statement)
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“…Mapping genotype to phenotypes is also challenging in the collective robotics context, where it is necessary to specify the behavior of a group/team of robots. Lichocki et al (2013) demonstrate how to engineer an evolutionary experiment when a single genotype encodes the control system for the whole team. Instead, when genotypes define the controllers of individual robots, it is necessary to appropriately assemble the groups from multiple genotypes.…”
Section: Designmentioning
confidence: 99%
“…Mapping genotype to phenotypes is also challenging in the collective robotics context, where it is necessary to specify the behavior of a group/team of robots. Lichocki et al (2013) demonstrate how to engineer an evolutionary experiment when a single genotype encodes the control system for the whole team. Instead, when genotypes define the controllers of individual robots, it is necessary to appropriately assemble the groups from multiple genotypes.…”
Section: Designmentioning
confidence: 99%