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A Hierarchical Cooperative Genetic Programming for Complex Piecewise Symbolic Regression

Chen, Xinan; Yi, Wenjie; Bai, Ruibin; Qu, Rong; Jin, Yaochu

Authors

Xinan Chen

Wenjie Yi

Ruibin Bai

Yaochu Jin



Abstract

In regression analysis, methodologies range from black-box approaches like artificial neural networks to white-box techniques like symbolic regression. Renowned for its trans-parency and interpretability, symbolic regression has become increasingly prominent in elucidating complex data relationships. Nevertheless, its effectiveness in managing complex piecewise symbolic regression tasks poses significant challenges. This paper introduces a novel Hierarchical Cooperative Genetic Program-ming (HCGP) framework to address this issue. The HCGP model utilizes a unique hierarchical structure, incorporating dual cooperative genetic programming (GP) populations. This innovative design significantly enhances the capability to solve complex piecewise symbolic regression problems. Implementing a scenario-based GP is central to the HCGP framework, which strategically selects the appropriate underlying calculation GP. This feature enables the system to autonomously learn and adapt to complex scenarios, selecting the most suitable calculation GPs for each case. Our HCGP approach distinguishes itself from traditional and state-of-the-art methods. It demonstrates particular proficiency in modeling piecewise expressions within complex scenarios. The empirical evaluation of our model, conducted using benchmark datasets, has exhibited its superior accuracy and computational efficiency. This progress emphasizes the potential of HCGP in sophisticated data modeling and marks a substantial advancement in a hierarchical structure in complex piecewise symbolic regression.

Citation

Chen, X., Yi, W., Bai, R., Qu, R., & Jin, Y. (2024, June). A Hierarchical Cooperative Genetic Programming for Complex Piecewise Symbolic Regression. Presented at 2024 IEEE Congress on Evolutionary Computation (CEC 2024), Yokohama, Japan

Presentation Conference Type Edited Proceedings
Conference Name 2024 IEEE Congress on Evolutionary Computation (CEC 2024)
Start Date Jun 30, 2024
End Date Jul 5, 2024
Acceptance Date May 2, 2024
Online Publication Date Aug 8, 2024
Publication Date Jun 30, 2024
Deposit Date Jan 6, 2025
Publisher Institute of Electrical and Electronics Engineers
Peer Reviewed Peer Reviewed
Pages 1528-1535
Book Title 2024 IEEE Congress on Evolutionary Computation (CEC)
ISBN 9798350308372
DOI https://doi.org/10.1109/cec60901.2024.10611754
Public URL https://nottingham-repository.worktribe.com/output/38898149
Publisher URL https://ieeexplore.ieee.org/document/10611754