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Accurate and efficient sequential ensemble learning for highly imbalanced multi-class data
Vong, C. M.; Du, J.
2020-08-01
Source PublicationNeural Networks (SCI-E)
ISSN0893-6080
Pages268-278
Abstract

Multi-class classification for highly imbalanced data is a challenging task in which multiple issues must be resolved simultaneously, including (i) accuracy on classifying highly imbalanced multi-class data; (ii) training efficiency for large data; and (iii) sensitivity to high imbalance ratio (IR). In this paper, a novel sequential ensemble learning (SEL) framework is designed to simultaneously resolve these issues. SEL framework provides a significant property over traditional AdaBoost, in which the majority samples can be divided into multiple small and disjoint subsets for training multiple weak learners without compromising accuracy (while AdaBoost cannot). To ensure the class balance and majority-disjoint property of subsets, a learning strategy called balanced and majority-disjoint subsets division (BMSD) is developed. Unfortunately it is difficult to derive a general learner combination method (LCM) for any kind of weak learner. In this work, LCM is specifically designed for extreme learning machine, called LCM-ELM. The proposed SEL framework with BMSD and LCM-ELM has been compared with state-ofthe- art methods over 16 benchmark datasets. In the experiments, under highly imbalanced multi-class data (IR up to 14K; data size up to 493K), (i) the proposed works improve the performance in different measures including G-mean, macro-F, micro-F, MAUC; (ii) training time is significantly reduced.

KeywordSequential Ensemble Learning Multi-class Classification Highly Imbalanced Data
URLView the original
Language英語English
The Source to ArticlePB_Publication
Document TypeJournal article
CollectionDEPARTMENT OF COMPUTER AND INFORMATION SCIENCE
Corresponding AuthorVong, C. M.
Recommended Citation
GB/T 7714
Vong, C. M.,Du, J.. Accurate and efficient sequential ensemble learning for highly imbalanced multi-class data[J]. Neural Networks (SCI-E), 2020, 268-278.
APA Vong, C. M.., & Du, J. (2020). Accurate and efficient sequential ensemble learning for highly imbalanced multi-class data. Neural Networks (SCI-E), 268-278.
MLA Vong, C. M.,et al."Accurate and efficient sequential ensemble learning for highly imbalanced multi-class data".Neural Networks (SCI-E) (2020):268-278.
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