An Analysis of a KNN Perturbation Operator: An Application to the Binarization of Continuous Metaheuristics
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Handle
https://riunet.upv.es/handle/10251/163290
Cita bibliográfica
García, J.; Astorga, G.; Yepes, V. (2021). An Analysis of a KNN Perturbation Operator: An Application to the Binarization of Continuous Metaheuristics. Mathematics. 9(3):1-20. https://doi.org/10.3390/math9030225
Titulación
Resumen
[EN] The optimization methods and, in particular, metaheuristics must be constantly improved to reduce execution times, improve the results, and thus be able to address broader instances. In particular, addressing combinatorial optimization problems is critical in the areas of operational research and engineering. In this work, a perturbation operator is proposed which uses the k-nearest neighbors technique, and this is studied with the aim of improving the diversification and intensification properties of metaheuristic algorithms in their binary version. Random operators are designed to study the contribution of the perturbation operator. To verify the proposal, large instances of the well-known set covering problem are studied. Box plots, convergence charts, and the Wilcoxon statistical test are used to determine the operator contribution. Furthermore, a comparison is made using metaheuristic techniques that use general binarization mechanisms such as transfer functions or db-scan as binarization methods. The results obtained indicate that the KNN perturbation operator improves significantly the results.
Palabras clave
Combinatorial optimization, Machine learning, KNN, Metaheuristics, Transfer functions
ISSN
ISBN
Fuente
Mathematics
DOI
10.3390/math9030225
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Agradecimientos
The first author was supported by the Grant CONICYT/FONDECYT/INICIACION/11180056.