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dc.contributor.authorHE Yulin, ZHU Penghui, HUANG Zhexue, Fournier-Viger PHILIPPE
dc.contributor.other1 Guangdong Laboratory of Artificial Intelligence and Digital Economy(SZ),Shenzhen,Guangdong 518107,China;2 College of Computer Science & Software Engineering,Shenzhen University,Shenzhen,Guangdong 518060,China
dc.date.accessioned2025-08-27T02:35:05Z
dc.date.accessioned2025-10-08T08:26:20Z
dc.date.available2025-10-08T08:26:20Z
dc.date.issued01-10-2023
dc.identifier.urihttp://digilib.fisipol.ugm.ac.id/repo/handle/15717717/35871
dc.description.abstractSemi-supervised ensemble learning(SSEL) is a combinatorial paradigm by fusing semi-supervised learning and ensemble learning together,which improves the diversity of ensemble learning by introducing unlabeled samples and at the same time solves the problem of insufficient sample size for ensemble learning.In addition,SSEL can improve the generalization capability of classification system by integrating multiple classifiers trained on the highly-credible labeled samples.The existing researches have proved the mutual benefit between semi-supervised learning and integrated learning from both theoretical and practical perspectives.The existing SSEL algorithms are unable to make full use of the unlabeled samples,which limit their prediction capabi-lities when handling the classification problems with less labeled samples.This paper proposes a novel classification uncertainty minimization-based semi-supervised ensemble learning(CUM-SSEL) algorithm,which introduces the information entropy as the criterion of confidence and uses the characteristics of information entropy to minimize the classification uncertainty in the process of predicting unlabeled samples.The feasibility,rationality and effectiveness of CUM-SSEL algorithm are verified based on a series of persuasive experiments.Experimental results demonstrate that CUM-SSEL is a valid algorithm to deal with the semi-supervised learning problems.
dc.language.isoZH
dc.publisherEditorial office of Computer Science
dc.subject.lccComputer software
dc.titleClassification Uncertainty Minimization-based Semi-supervised Ensemble Learning Algorithm
dc.typeArticle
dc.description.keywordssemi-supervised ensemble learning| ensemble learning|semi-supervised learning|classification uncertainty|confidence|information entropy
dc.description.pages88-95
dc.description.doi10.11896/jsjkx.230600048
dc.title.journalJisuanji kexue
dc.identifier.oai3d985c8fff164e9880bdc46a00169f13
dc.journal.infoVolume 50, Issue 10


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