PLoS ONE (Jan 2023)

An improved gene expression programming algorithm for function mining of map-reduce job execution in catenary monitoring systems.

  • Jin Ding,
  • Tianyu Jiang,
  • Ping Tan,
  • Yi Wang,
  • Zhenshun Fei,
  • Chuyuan Huang,
  • Jien Ma,
  • Youtong Fang

DOI
https://doi.org/10.1371/journal.pone.0290499
Journal volume & issue
Vol. 18, no. 11
p. e0290499

Abstract

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Gene expression programming (GEP) is one of the most prominent algorithms in function mining. In order to obtain a more accurate function model in configuration parameters-execution efficiency (CP-EE) of map-reduce job in the high-speed railway catenary monitoring system, this paper proposes a novel algorithm, called GEP based on multi-strategy (MS-GEP). Compared to traditional GEP, the proposed algorithm can escape premature convergence and jump out of local optimum. First, an adaptive mutation rate is designed according to the evolutionary generations, population diversity, and individual fitness values. A manual intervention strategy is then proposed to determine whether the algorithm enters the dilemma of local optimum based on the generations of population evolutionary stagnation. Finally, the average quality of the population is changed by randomly replacing individuals, and the ancestral population is traced to change the evolutionary direction. The experimental results on the benchmarks of function mining show that the proposed MS-GEP has better solution quality and higher population diversity than other GEP algorithms. Furthermore, the proposed MS-GEP has higher accuracy on the function model of CP-EE of high-speed railway catenary monitoring system than other commonly used algorithms in the field of function mining.