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A binary PSO-based ensemble under-sampling model for rebalancing imbalanced training data
Jinyan Li1; Yaoyang Wu1; Simon Fong1; Antonio J. Tallón‑Ballesteros3; Xin‑she Yang4; Sabah Mohammed5; Feng Wu2
2022-04-01
Source PublicationJournal of Supercomputing
ISSN0920-8542
Volume78Issue:5Pages:7428-7463
Abstract

Ensemble technique and under-sampling technique are both effective tools used for imbalanced dataset classification problems. In this paper, a novel ensemble method combining the advantages of both ensemble learning for biasing classifiers and a new under-sampling method is proposed. The under-sampling method is named Binary PSO instance selection; it gathers with ensemble classifiers to find the most suitable length and combination of the majority class samples to build a new dataset with minority class samples. The proposed method adopts multi-objective strategy, and contribution of this method is a notable improvement of the performances of imbalanced classification, and in the meantime guaranteeing a best integrity possible for the original dataset. We experimented the proposed method and compared its performance of processing imbalanced datasets with several other conventional basic ensemble methods. Experiment is also conducted on these imbalanced datasets using an improved version where ensemble classifiers are wrapped in the Binary PSO instance selection. According to experimental results, our proposed methods outperform single ensemble methods, state-of-the-art under-sampling methods, and also combinations of these methods with the traditional PSO instance selection algorithm.

KeywordBinary Pso Ensemble Imbalanced Classification Integrity Multi-objective Under-sampling
DOI10.1007/s11227-021-04177-6
URLView the original
Indexed BySCIE
Language英語English
WOS Research AreaComputer Science ; Engineering
WOS SubjectComputer Science, Hardware & Architecture ; Computer Science, Theory & Methods ; Engineering, Electrical & Electronic
WOS IDWOS:000717395600002
PublisherSPRINGER, VAN GODEWIJCKSTRAAT 30, 3311 GZ DORDRECHT, NETHERLANDS
Scopus ID2-s2.0-85118848728
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Citation statistics
Document TypeJournal article
CollectionUniversity of Macau
Corresponding AuthorYaoyang Wu
Affiliation1.Department of Computer and Information Science, University of Macau, Taipa, Macao
2.Zhuhai Institute of Advanced Technology Chinese Academy of Science, Zhuhai, China
3.Department of Languages and Computer Systems, University of Seville, Seville, Spain
4.Design Engineering and Math, School of Science & Technology, Middlesex University, London, United Kingdom
5.Department of Computer Science, Lakehead University, Thunder Bay, Canada
First Author AffilicationUniversity of Macau
Corresponding Author AffilicationUniversity of Macau
Recommended Citation
GB/T 7714
Jinyan Li,Yaoyang Wu,Simon Fong,et al. A binary PSO-based ensemble under-sampling model for rebalancing imbalanced training data[J]. Journal of Supercomputing, 2022, 78(5), 7428-7463.
APA Jinyan Li., Yaoyang Wu., Simon Fong., Antonio J. Tallón‑Ballesteros., Xin‑she Yang., Sabah Mohammed., & Feng Wu (2022). A binary PSO-based ensemble under-sampling model for rebalancing imbalanced training data. Journal of Supercomputing, 78(5), 7428-7463.
MLA Jinyan Li,et al."A binary PSO-based ensemble under-sampling model for rebalancing imbalanced training data".Journal of Supercomputing 78.5(2022):7428-7463.
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