4.7 Article

Influence of Binomial Crossover on Approximation Error of Evolutionary Algorithms

期刊

MATHEMATICS
卷 10, 期 16, 页码 -

出版社

MDPI
DOI: 10.3390/math10162850

关键词

binomial crossover; differential evolution; fixed-budget analysis; evolutionary computation; approximation error

资金

  1. Fundamental Research Funds for the Central Universities [WUT:2020IB006]

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This paper focuses on the importance of studying the binomial crossover function in differential evolution algorithms. It is discovered that using binomial crossover can improve the performance of evolutionary algorithms on certain problems, especially on Deceptive.
Although differential evolution (DE) algorithms perform well on a large variety of complicated optimization problems, only a few theoretical studies are focused on the working principle of DE algorithms. To make the first attempt to reveal the function of binomial crossover, this paper aims to answer whether it can reduce the approximation error of evolutionary algorithms. By investigating the expected approximation error and the probability of not finding the optimum, we conduct a case study comparing two evolutionary algorithms with and without binomial crossover on two classical benchmark problems: OneMax and Deceptive. It is proven that using binomial crossover leads to the dominance of transition matrices. As a result, the algorithm with binomial crossover asymptotically outperforms that without crossover on both OneMax and Deceptive, and outperforms on OneMax, however, not on Deceptive. Furthermore, an adaptive parameter strategy is proposed which can strengthen the superiority of binomial crossover on Deceptive.

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