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Synchronous R-NSGA-II: An Extended Preference-Based Evolutionary Algorithm for Multi-Objective Optimization
Volume 26, Issue 1 (2015), pp. 33–50
Ernestas Filatovas   Olga Kurasova   Karthik Sindhya  

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https://doi.org/10.15388/Informatica.2015.37
Pub. online: 1 January 2015      Type: Article     

Received
1 July 2014
Accepted
1 February 2015
Published
1 January 2015

Abstract

Abstract
Classical evolutionary multi-objective optimization algorithms aim at finding an approximation of the entire set of Pareto optimal solutions. By considering the preferences of a decision maker within evolutionary multi-objective optimization algorithms, it is possible to focus the search only on those parts of the Pareto front that satisfy his/her preferences. In this paper, an extended preference-based evolutionary algorithm has been proposed for solving multi-objective optimization problems. Here, concepts from an interactive synchronous NIMBUS method are borrowed and combined with the R-NSGA-II algorithm. The proposed synchronous R-NSGA-II algorithm uses preference information provided by the decision maker to find only desirable solutions satisfying his/her preferences on the Pareto front. Several scalarizing functions are used simultaneously so the several sets of solutions are obtained from the same preference information. In this paper, the experimental-comparative investigation of the proposed synchronous R-NSGA-II and original R-NSGA-II has been carried out. The results obtained are promising.

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Vilnius University

Keywords
interactive multi-objective optimization evolutionary multi-objective optimization preference-based evolutionary algorithms scalarizing function

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INFORMATICA

  • Online ISSN: 1822-8844
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