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A novel ensemble causal feature selection approach with mutual information and group fusion strategy for multi-label data

Yifeng Zheng (School of Computer Science, Minnan Normal University, Zhangzhou, China) (Key Laboratory of Data Science and Intelligence Application, Fujian Province University, Zhangzhou, China)
Xianlong Zeng (School of Computer Science, Minnan Normal University, Zhangzhou, China) (Key Laboratory of Data Science and Intelligence Application, Fujian Province University, Zhangzhou, China)
Wenjie Zhang (School of Computer Science, Minnan Normal University, Zhangzhou, China) (Key Laboratory of Data Science and Intelligence Application, Fujian Province University, Zhangzhou, China)
Baoya Wei (School of Computer Science, Minnan Normal University, Zhangzhou, China) (Key Laboratory of Data Science and Intelligence Application, Fujian Province University, Zhangzhou, China)
Weishuo Ren (School of Computer Science, Minnan Normal University, Zhangzhou, China) (Key Laboratory of Data Science and Intelligence Application, Fujian Province University, Zhangzhou, China)
Depeng Qing (School of Computer Science, Minnan Normal University, Zhangzhou, China) (Key Laboratory of Data Science and Intelligence Application, Fujian Province University, Zhangzhou, China)

International Journal of Intelligent Computing and Cybernetics

ISSN: 1756-378X

Article publication date: 22 July 2024

Issue publication date: 11 November 2024

33

Abstract

Purpose

As intelligent technology advances, practical applications often involve data with multiple labels. Therefore, multi-label feature selection methods have attracted much attention to extract valuable information. However, current methods tend to lack interpretability when evaluating the relationship between different types of variables without considering the potential causal relationship.

Design/methodology/approach

To address the above problems, we propose an ensemble causal feature selection method based on mutual information and group fusion strategy (CMIFS) for multi-label data. First, the causal relationship between labels and features is analyzed by local causal structure learning, respectively, to obtain a causal feature set. Second, we eliminate false positive features from the obtained feature set using mutual information to improve the feature subset reliability. Eventually, we employ a group fusion strategy to fuse the obtained feature subsets from multiple data sub-space to enhance the stability of the results.

Findings

Experimental comparisons are performed on six datasets to validate that our proposal can enhance the interpretation and robustness of the model compared with other methods in different metrics. Furthermore, the statistical analyses further validate the effectiveness of our approach.

Originality/value

The present study makes a noteworthy contribution to proposing a causal feature selection approach based on mutual information to obtain an approximate optimal feature subset for multi-label data. Additionally, our proposal adopts the group fusion strategy to guarantee the robustness of the obtained feature subset.

Keywords

Acknowledgements

This work is supported by the Nature Science Foundation of China (Grant No. 62376114), the Nature Science Foundation of Fujian Province (Grant No. 2021J011004, No. 2021J011002), the Ministry of Education Industry-University-Research Innovation Program (Grant No. 2021LDA09003), the Department of Education Foundation of Fujian Province (No. JAT210266).

Citation

Zheng, Y., Zeng, X., Zhang, W., Wei, B., Ren, W. and Qing, D. (2024), "A novel ensemble causal feature selection approach with mutual information and group fusion strategy for multi-label data", International Journal of Intelligent Computing and Cybernetics, Vol. 17 No. 4, pp. 671-704. https://doi.org/10.1108/IJICC-04-2024-0144

Publisher

:

Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

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