首页-->科学研究-->科研成果-->科研论文

[论文]洪立斌等人.Hyper-heuristic approach: automatically designing adaptive mutation operators for evolutionary programming

时间:2022-03-24 10:33:13 文章来源 :学科 浏览量:0

Hyper-heuristic approach: automatically designing adaptive mutation operators for evolutionary programming

L. B. Hong, J. R. Woodward, E. Ozcan and F. C. Liu

Complex & Intelligent Systems 2021 Vol. 7 Issue 6 Pages 3135-3163

Accession Number: WOS:000690367100001 DOI: 10.1007/s40747-021-00507-6

Genetic programming (GP) automatically designs programs. Evolutionary programming (EP) is a real-valued global optimisation method. EP uses a probability distribution as a mutation operator, such as Gaussian, Cauchy, or Levy distribution. This study proposes a hyper-heuristic approach that employs GP to automatically design different mutation operators for EP. At each generation, the EP algorithm can adaptively explore the search space according to historical information. The experimental results demonstrate that the EP with adaptive mutation operators, designed by the proposed hyper-heuristics, exhibits improved performance over other EP versions (both manually and automatically designed). Many researchers in evolutionary computation advocate adaptive search operators (which do adapt over time) over non-adaptive operators (which do not alter over time). The core motive of this study is that we can automatically design adaptive mutation operators that outperform automatically designed non-adaptive mutation operators.