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GECCO
2003
Springer

Evolutionary Multimodal Optimization Revisited

13 years 9 months ago
Evolutionary Multimodal Optimization Revisited
Abstract. We revisit a class of multimodal function optimizations using evolutionary algorithms reformulated into a multiobjective framework where previous implementations have needed niching/sharing to ensure diversity. In this paper, we use a steady-state multiobjective algorithm which preserves diversity without niching to produce diverse sampling of the Pareto-front with significantly lower computational effort. Multimodal optimization (MMO) and multiobjective optimization (MOO) are two classes of optimizations requiring multiple (near-)optimal solutions: having found a solution set, a user makes a selection from the (hopefully) diverse options. In this context, niching/sharing techniques have been commonly employed to ensure a diverse solution set although such techniques work the best when one has a priori knowledge of the problem. In most real-problems, the analytical form is unknown and so picking good niche parameters is problematic. Consequently, most of the work related to M...
Rajeev Kumar, Peter Rockett
Added 06 Jul 2010
Updated 06 Jul 2010
Type Conference
Year 2003
Where GECCO
Authors Rajeev Kumar, Peter Rockett
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