Título: | Injecting CMA-ES into MOEA/D |
Autor(es): | ZAPOTECAS MARTINEZ, SAUL DERBEL, BILEL LIEFOOGHE, ARNAUD BROCKHOFF, DIMO AGUIRRE, HERNAN TANAKA, KIYOSHI |
Temas: | Algoritmos computacionales Computación evolutiva Inteligencia artificial |
Fecha: | 2015 |
Editorial: | Nueva York : Association for Computing Machinery |
Citation: | Proceedings of the Genetic and Evolutionary Computation Conference July 2015 |
Resumen: | MOEA/D is an aggregation-based evolutionary algorithm whichhas been proved extremely efficient and effective for solving multi-objective optimization problems. It is based on the idea of de-composing the original multi-objective problem into several single-objective subproblems by means of wel l-defined scalari zi ng f unc-tions. Those single-objective subproblems are solved in a cooper-ative manner by defining a neighborhood relation between them.This makes MOEA/D particularly interesting when attempting toplug and to leverage single-objective optimizers in a multi-objectivesetting. In this context, we investigate the benefits that MOEA/Dcan achieve when coupled with CMA-ES, which is believed to bea pow erful single-objective optimizer. We rely on the ability ofCMA-ES to deal with injected solutions in order to update differ-ent covariance matrices with respect to each subproblem definedin MOEA/D. We show that by cooperatively evolving neighboringCMA-ES components, we are able to obtain competitive results fordifferent multi-objective benchmark functions. |
URI: | http://ilitia.cua.uam.mx:8080/jspui/handle/123456789/475 |
Aparece en las colecciones: | Libros |
Fichero | Descripción | Tamaño | Formato | |
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Injecting CMA.pdf | 921.88 kB | Adobe PDF | Visualizar/Abrir |
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