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A Multi-Task Decomposition-Based Evolutionary Algorithm for Tackling High-Dimensional Bi-Objective Feature Selection

Author

Listed:
  • Hang Xu

    (School of Mechanical, Electrical & Information Engineering, Putian University, Putian 351100, China)

  • Chaohui Huang

    (School of Mechanical, Electrical & Information Engineering, Putian University, Putian 351100, China)

  • Jianbing Lin

    (School of Mechanical, Electrical & Information Engineering, Putian University, Putian 351100, China)

  • Min Lin

    (School of Mechanical, Electrical & Information Engineering, Putian University, Putian 351100, China)

  • Huahui Zhang

    (New Engineering Industry College, Putian University, Putian 351100, China)

  • Rongbin Xu

    (School of Mechanical, Electrical & Information Engineering, Putian University, Putian 351100, China)

Abstract

Evolutionary algorithms have been widely applied for solving multi-objective optimization problems, while the feature selection in classification can also be treated as a discrete bi-objective optimization problem if attempting to minimize both the classification error and the ratio of selected features. However, traditional multi-objective evolutionary algorithms (MOEAs) may have drawbacks for tackling large-scale feature selection, due to the curse of dimensionality in the decision space. Therefore, in this paper, we concentrated on designing an multi-task decomposition-based evolutionary algorithm (abbreviated as MTDEA), especially for handling high-dimensional bi-objective feature selection in classification. To be more specific, multiple subpopulations related to different evolutionary tasks are separately initialized and then adaptively merged into a single integrated population during the evolution. Moreover, the ideal points for these multi-task subpopulations are dynamically adjusted every generation, in order to achieve different search preferences and evolutionary directions. In the experiments, the proposed MTDEA was compared with seven state-of-the-art MOEAs on 20 high-dimensional classification datasets in terms of three performance indicators, along with using comprehensive Wilcoxon and Friedman tests. It was found that the MTDEA performed the best on most datasets, with a significantly better search ability and promising efficiency.

Suggested Citation

  • Hang Xu & Chaohui Huang & Jianbing Lin & Min Lin & Huahui Zhang & Rongbin Xu, 2024. "A Multi-Task Decomposition-Based Evolutionary Algorithm for Tackling High-Dimensional Bi-Objective Feature Selection," Mathematics, MDPI, vol. 12(8), pages 1-23, April.
  • Handle: RePEc:gam:jmathe:v:12:y:2024:i:8:p:1178-:d:1375635
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    References listed on IDEAS

    as
    1. Andrea Ponti & Antonio Candelieri & Ilaria Giordani & Francesco Archetti, 2023. "Intrusion Detection in Networks by Wasserstein Enabled Many-Objective Evolutionary Algorithms," Mathematics, MDPI, vol. 11(10), pages 1-14, May.
    2. Fan Cao & Zhili Tang & Caicheng Zhu & Xin Zhao, 2023. "An Efficient Hybrid Multi-Objective Optimization Method Coupling Global Evolutionary and Local Gradient Searches for Solving Aerodynamic Optimization Problems," Mathematics, MDPI, vol. 11(18), pages 1-31, September.
    Full references (including those not matched with items on IDEAS)

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