Literature DB >> 15768523

The cooperative coevolutionary (1+1) EA.

Thomas Jansen1, R Paul Wiegand.   

Abstract

Coevolutionary algorithms are variants of traditional evolutionary algorithms and are often considered more suitable for certain kinds of complex tasks than noncoevolutionary methods. One example is a general cooperative coevolutionary framework for function optimization. This paper presents a thorough and rigorous introductory analysis of the optimization potential of cooperative coevolution. Using the cooperative coevolutionary framework as a starting point, the CC (1+1) EA is defined and investigated from the perspective of the expected optimization time. The research concentrates on separability, a key property of objective functions. We show that separability alone is not sufficient to yield any advantage of the CC (1+1) EA over its traditional, non-coevolutionary counterpart. Such an advantage is demonstrated to have its basis in the increased explorative possibilities of the cooperative coevolutionary algorithm. For inseparable functions, the cooperative coevolutionary set-up can be harmful. We prove that for some objective functions the CC (1+1) EA fails to locate a global optimum with overwhelming probability, even in infinite time; however, inseparability alone is not sufficient for an objective function to cause difficulties. It is demonstrated that the CC (1+1) EA may perform equal to its traditional counterpart, and may even outperform it on certain inseparable functions.

Mesh:

Year:  2004        PMID: 15768523     DOI: 10.1162/1063656043138905

Source DB:  PubMed          Journal:  Evol Comput        ISSN: 1063-6560            Impact factor:   3.277


  1 in total

1.  On Easiest Functions for Mutation Operators in Bio-Inspired Optimisation.

Authors:  Dogan Corus; Jun He; Thomas Jansen; Pietro S Oliveto; Dirk Sudholt; Christine Zarges
Journal:  Algorithmica       Date:  2016-08-18       Impact factor: 0.791

  1 in total

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