Scientific journal paper Q1
Novelty-driven cooperative coevolution
Jorge Gomes (Gomes, J.); Pedro Mariano (Mariano, P.); Anders Christensen (Christensen, A. L.);
Journal Title
Evolutionary Computation
Year (definitive publication)
2017
Language
English
Country
United States of America
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Web of Science®

Times Cited: 17

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Times Cited: 24

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Times Cited: 39

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Abstract
Cooperative coevolutionary algorithms (CCEAs) rely on multiple coevolving populations for the evolution of solutions composed of coadapted components. CCEAs enable, for instance, the evolution of cooperative multiagent systems composed of heterogeneous agents, where each agent is modelled as a component of the solution. Previous works have, however, shown that CCEAs are biased toward stability: the evolutionary process tends to converge prematurely to stable states instead of (near-)optimal solutions. In this study, we show how novelty search can be used to avoid the counterproductive attraction to stable states in coevolution. Novelty search is an evolutionary technique that drives evolution toward behavioural novelty and diversity rather than exclusively pursuing a static objective. We evaluate three novelty-based approaches that rely on, respectively (1) the novelty of the team as a whole, (2) the novelty of the agents’ individual behaviour, and (3) the combination of the two. We compare the proposed approaches with traditional fitness-driven cooperative coevolution in three simulated multirobot tasks. Our results show that team-level novelty scoring is the most effective approach, significantly outperforming fitness-driven coevolution at multiple levels. Novelty-driven cooperative coevolution can substantially increase the potential of CCEAs while maintaining a computational complexity that scales well with the number of populations.
Acknowledgements
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Keywords
Cooperative coevolution,Multiagent systems,Neuroevolution,Novelty search,Convergence to stable states,Behaviour exploration
  • Computer and Information Sciences - Natural Sciences
Funding Records
Funding Reference Funding Entity
SFRH/BD/89095/2012 Fundação para a Ciência e a Tecnologia
UID/MULTI/04046/2013 Fundação para a Ciência e a Tecnologia
UID/EEA/50008/2013 Fundação para a Ciência e a Tecnologia