Status | 已发表Published |
Title | Hellinger distance-based stable sparse feature selection for high-dimensional class-imbalanced data |
Creator | |
Date Issued | 2020 |
Source Publication | BMC Bioinformatics
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ISSN | 1471-2105 |
Volume | 21Issue:1 |
Abstract | Background: Feature selection in class-imbalance learning has gained increasing attention in recent years due to the massive growth of high-dimensional class-imbalanced data across many scientific fields. In addition to reducing model complexity and discovering key biomarkers, feature selection is also an effective method of combating overlapping which may arise in such data and become a crucial aspect for determining classification performance. However, ordinary feature selection techniques for classification can not be simply used for addressing class-imbalanced data without any adjustment. Thus, more efficient feature selection technique must be developed for complicated class-imbalanced data, especially in the context of high-dimensionality. Results: We proposed an algorithm called sssHD to achieve stable sparse feature selection applied it to complicated class-imbalanced data. sssHD is based on the Hellinger distance (HD) coupled with sparse regularization techniques. We stated that Hellinger distance is not only class-insensitive but also translation-invariant. Simulation result indicates that HD-based selection algorithm is effective in recognizing key features and control false discoveries for class-imbalance learning. Five gene expression datasets are also employed to test the performance of the sssHD algorithm, and a comparison with several existing selection procedures is performed. The result shows that sssHD is highly competitive in terms of five assessment metrics. In addition, sssHD presents limited differences between performing and not performing re-balance preprocessing. Conclusions: sssHD is a practical feature selection method for high-dimensional class-imbalanced data, which is simple and can be an alternative for performing feature selection in class-imbalanced data. sssHD can be easily extended by connecting it with different re-balance preprocessing, different sparse regularization structures as well as different classifiers. As such, the algorithm is extremely general and has a wide range of applicability. © 2020 The Author(s). |
Keyword | Class-imbalance learning Feature selection Hellinger distance Sparse regularization |
DOI | 10.1186/s12859-020-3411-3 |
URL | View source |
Indexed By | SCIE |
Language | 英语English |
WOS Research Area | Biochemistry & Molecular Biology ; Biotechnology & Applied Microbiology ; Mathematical & Computational Biology |
WOS Subject | Biochemical Research Methods ; Biotechnology & Applied Microbiology ; Mathematical & Computational Biology |
WOS ID | WOS:000522037500001 |
Citation statistics | |
Document Type | Journal article |
Identifier | http://repository.uic.edu.cn/handle/39GCC9TT/5046 |
Collection | Research outside affiliated institution |
Affiliation | 1.School of Science, Kunming University of Science and Technology, Kunming, 650500, China 2.School of Mathematics, University of Manchester, Manchester, M13 9PL, United Kingdom |
Recommended Citation GB/T 7714 | Fu, Guang-Hui,Wu, Yuan-Jiao,Zong, Min-Jieet al. Hellinger distance-based stable sparse feature selection for high-dimensional class-imbalanced data[J]. BMC Bioinformatics, 2020, 21(1). |
APA | Fu, Guang-Hui, Wu, Yuan-Jiao, Zong, Min-Jie, & Pan, Jianxin. (2020). Hellinger distance-based stable sparse feature selection for high-dimensional class-imbalanced data. BMC Bioinformatics, 21(1). |
MLA | Fu, Guang-Hui,et al."Hellinger distance-based stable sparse feature selection for high-dimensional class-imbalanced data". BMC Bioinformatics 21.1(2020). |
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