In classification, feature selection is an essential preprocessing step that selects a small subset of features to improve classification performance. Existing feature selection approaches can be divided into three main approaches: wrapper approaches, filter approaches, and embedded approaches. In comparison with the two other approaches, embedded approaches usually have better trade-off between classification performance and computation time. One of the most well-known embedded approaches is sparsity regularisation-based feature selection which generates sparse solutions for feature selection. Despite its good performance, sparsity regularisation-based feature selection outputs only a feature ranking which requires the number of selected features to be predefined. More importantly, the ranking mechanism introduces a risk of ignoring feature interactions which leads to the fact that many top-ranked but redundant features are selected. This work addresses the above problems by proposing a new representation that considers the interactions between features and can automatically determine an appropriate number of selected features. The proposed representation is used in a differential evolutionary (DE) algorithm to optimise the feature subset. In addition, a novel initialisation mechanism is proposed to let DE consider various numbers of selected features at the beginning. The proposed algorithm is examined on both synthetic and real-world datasets. The results on the synthetic dataset show that the proposed algorithm can select complementary features while existing sparsity regularisation-based feature selection algorithms are at risk of selecting redundant features. The results on real-world datasets show that the proposed algorithm achieves better classification performance than well-known wrapper, filter, and embedded approaches. The algorithm is also as efficient as filter feature selection approaches.
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Summer 2025
June 02 2025
Evolutionary Sparsity Regularisation-Based Feature Selection for Binary Classification Unavailable
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Bach Hoai Nguyen
,
Bach Hoai Nguyen
School of Engineering and Computer Science, Faculty of Engineering, Victoria University of Wellington, Wellington, New Zealand [email protected]
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Bing Xue
,
Bing Xue
School of Engineering and Computer Science, Faculty of Engineering, Victoria University of Wellington, Wellington, New Zealand [email protected]
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Mengjie Zhang
Mengjie Zhang
School of Engineering and Computer Science, Faculty of Engineering, Victoria University of Wellington, Wellington, New Zealand [email protected]
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Bach Hoai Nguyen
School of Engineering and Computer Science, Faculty of Engineering, Victoria University of Wellington, Wellington, New Zealand [email protected]
School of Engineering and Computer Science, Faculty of Engineering, Victoria University of Wellington, Wellington, New Zealand [email protected]
Mengjie Zhang
School of Engineering and Computer Science, Faculty of Engineering, Victoria University of Wellington, Wellington, New Zealand [email protected]
Received:
September 06 2021
Accepted:
August 11 2024
Online ISSN: 1530-9304
Print ISSN: 1063-6560
© 2024 Massachusetts Institute of Technology
2024
Massachusetts Institute of Technology
Evolutionary Computation (2025) 33 (2): 215–248.
Article history
Received:
September 06 2021
Accepted:
August 11 2024
Citation
Bach Hoai Nguyen, Bing Xue, Mengjie Zhang; Evolutionary Sparsity Regularisation-Based Feature Selection for Binary Classification. Evol Comput 2025; 33 (2): 215–248. doi: https://doi.org/10.1162/evco_a_00358
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