A preference-based multi-objective evolutionary algorithm R-NSGA-II with stochastic local search

被引:0
作者
Ernestas Filatovas
Algirdas Lančinskas
Olga Kurasova
Julius Žilinskas
机构
[1] Vilnius University,Institute of Mathematics and Informatics
来源
Central European Journal of Operations Research | 2017年 / 25卷
关键词
Multi-objective optimization; Preference-based evolutionary algorithms; Memetic algorithm; Stochastic local search;
D O I
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中图分类号
学科分类号
摘要
Incorporation of a decision maker’s preferences into multi-objective evolutionary algorithms has become a relevant trend during the last decade, and several preference-based evolutionary algorithms have been proposed in the literature. Our research is focused on improvement of a well-known preference-based evolutionary algorithm R-NSGA-II by incorporating a local search strategy based on a single agent stochastic approach. The proposed memetic algorithm has been experimentally evaluated by solving a set of well-known multi-objective optimization benchmark problems. It has been experimentally shown that incorporation of the local search strategy has a positive impact to the quality of the algorithm in the sense of the precision and distribution evenness of approximation.
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页码:859 / 878
页数:19
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