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MB-GNG: Addressing drawbacks in multi-objective optimization estimation of distribution algorithms
Authors:Luis Martí  ,Jesú  s Garcí  a
Affiliation:
  • a Group of Applied Artificial Intelligence, Department of Informatics, Universidad Carlos III de Madrid. Av. de la Universidad Carlos III, 22. Colmenarejo 28270 Madrid, Spain
  • b Department of Computer Science, CINVESTAV-IPN, Av. IPN No. 2508, Col. San Pedro Zacatenco México, D.F. 07360, Mexico
  • Abstract:We examine the model-building issue related to multi-objective estimation of distribution algorithms (MOEDAs) and show that some of their, as yet overlooked, characteristics render most current MOEDAs unviable when addressing optimization problems with many objectives. We propose a novel model-building growing neural gas (MB-GNG) network that is specially devised for properly dealing with that issue and therefore yields a better performance. Experiments are conducted in order to show from an empirical point of view the advantages of the new algorithm.
    Keywords:Multi-objective optimization   Estimation of distribution algorithm   Model building   Growing neural gas
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