Article

Enhancing Differential Evolution Utilizing Proximity-based Mutation Operators

Details

Citation

Epitropakis M, Tasoulis DK, Pavlidis NG, Plagianakos VP & Vrahatis MN (2011) Enhancing Differential Evolution Utilizing Proximity-based Mutation Operators. IEEE Transactions on Evolutionary Computation, 15 (1), pp. 99-119. https://doi.org/10.1109/TEVC.2010.2083670

Abstract
Differential evolution is a very popular optimization algorithm and considerable research has been devoted to the development of efficient search operators. Motivated by the different manner in which various search operators behave, we propose a novel framework based on the proximity characteristics among the individual solutions as they evolve. Our framework incorporates information of neighboring individuals, in an attempt to efficiently guide the evolution of the population toward the global optimum, without sacrificing the search capabilities of the algorithm. More specifically, the random selection of parents during mutation is modified, by assigning to each individual a probability of selection that is inversely proportional to its distance from the mutated individual. The proposed framework can be applied to any mutation strategy with minimal changes. In this paper, we incorporate this framework in the original differential evolution algorithm, as well as other recently proposed differential evolution variants. Through an extensive experimental study, we show that the proposed framework results in enhanced performance for the majority of the benchmark problems studied.

Keywords
Affinity matrix; differential evolution; mutation operator; nearest neighbors

Journal
IEEE Transactions on Evolutionary Computation: Volume 15, Issue 1

StatusPublished
Publication date28/02/2011
Date accepted by journal15/09/2010
PublisherIEEE
ISSN1089-778X