LNCS Homepage
ContentsAuthor IndexSearch

Elitist Archiving for Multi-Objective Evolutionary Algorithms: To Adapt or Not to Adapt

Hoang N. Luong and Peter A.N. Bosman

Centrum Wiskunde & Informatica (CWI), P.O. Box 94079, 1090 GB, Amsterdam, The Netherlands
Hoang.Luong@cwi.nl
Peter.Bosman@cwi.nl
http://www.cwi.nl

Abstract. Objective-space discretization is a popular method to control the elitist archive size for evolutionary multi-objective optimization and avoid problems with convergence. By setting the level of discretization, the proximity and diversity of the Pareto approximation set can be controlled. This paper proposes an adaptive archiving strategy which is developed from a rigid-grid discretization mechanism. The main advantage of this strategy is that the practitioner just decides the desirable target size for the elitist archive while all the maintenance details are automatically handled. We compare the adaptive and rigid archiving strategies on the basis of a performance indicator that measures front quality, success rate, and running time. Experimental results confirm the competitiveness of the adaptive method while showing its advantages in terms of transparency and ease of use.

Keywords: Multiobjective optimization, estimation of distribution algorithms, elitist archive

LNCS 7492, p. 72 ff.

Full article in PDF | BibTeX


lncs@springer.com
© Springer-Verlag Berlin Heidelberg 2012