Path Relinking in Pareto Multi-objective Genetic Algorithms
نویسندگان
چکیده
Submitted by Matthieu Basseur on Thu, 02/12/2015 13:53 Titre Path Relinking in Pareto Multi-objective Genetic Algorithms Type de publication Communication Type Communication avec actes dans un congrès Année 2005 Langue Anglais Date du colloque 09-11/03/2015 Titre du colloque Evolutionary Multi-Criterion Optimization Volume 3410 Pagination 120-134 Auteur Basseur, Matthieu [1], Seynhaeve, Franck [2], Talbi, El-Ghazali [3] Editeur Springer Berlin Heidelberg Ville Berlin, Heidelberg ISBN 978-3-540-24983-2
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