A new evolving operator selector by using fitness landscape in differential evolution algorithm

S Li, W Li, J Tang, F Wang - Information Sciences, 2023 - Elsevier
S Li, W Li, J Tang, F Wang
Information Sciences, 2023Elsevier
Due to the problems of low accuracy and increasing control parameters in the existing
parameter adaptive methods of differential evolution (DE) algorithm, in this paper a mutation
operator selector and a parameter selector are proposed through Fitness Landscape (FL)
analysing. At first, the performance differences of the two categories of mutation operators
named DE/best/1 and DE/curren tt or and/1 were analyzed on many test problems.
Secondly, the relationship between the FL and mutation operator is founded by using …
Due to the problems of low accuracy and increasing control parameters in the existing parameter adaptive methods of differential evolution (DE) algorithm, in this paper a mutation operator selector and a parameter selector are proposed through Fitness Landscape (FL) analysing. At first, the performance differences of the two categories of mutation operators named DE/b e s t/1 and DE/c u r r e n t-t o-r a n d/1 were analyzed on many test problems. Secondly, the relationship between the FL and mutation operator is founded by using ensemble learning and decision tree, and achieved a classifier named mutation operator selector. Thirdly, the relationship between the FL and algorithm parameters is founded by using a neural network, and then a classifier named parameter selector is achieved. Finally, the improved DE algorithm equip with the two selectors is tested on the CEC2017 benchmark set. The results show that the proposed improved DE algorithm is outperforms both the basis DE algorithm and other three state-of-the-arts algorithms.
Elsevier
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