A selection process for genetic algorithm using clustering analysis

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Abstract

This article presents a newly proposed selection process for genetic algorithms on a class of unconstrained optimization problems. The k-means genetic algorithm selection process (KGA) is composed of four essential stages: clustering, membership phase, fitness scaling and selection. Inspired from the hypothesis that clustering the population helps to preserve a selection pressure throughout the evolution of the population, a membership probability index is assigned to each individual following the clustering phase. Fitness scaling converts the membership scores in a range suitable for the selection function which selects the parents of the next generation. Two versions of the KGA process are presented: using a fixed number of clusters K (KGAf) and via an optimal partitioning Kopt (KGAo) determined by two different internal validity indices. The performance of each method is tested on seven benchmark problems.

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Chehouri, A., Younes, R., Khoder, J., Perron, J., & Ilinca, A. (2017). A selection process for genetic algorithm using clustering analysis. Algorithms, 10(4). https://doi.org/10.3390/a10040123

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