$ \ell_{1} $-norm based safe semi-supervised learning
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Published:2021
Issue:6
Volume:18
Page:7727-7742
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ISSN:1551-0018
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Container-title:Mathematical Biosciences and Engineering
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language:
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Short-container-title:MBE
Author:
Gan Haitao, ,Yang Zhi,Wang Ji,Li Bing, , ,
Abstract
<abstract><p>In the past few years, Safe Semi-Supervised Learning (S3L) has received considerable attentions in machine learning field. Different researchers have proposed many S3L methods for safe exploitation of risky unlabeled samples which result in performance degradation of Semi-Supervised Learning (SSL). Nevertheless, there exist some shortcomings: (1) Risk degrees of the unlabeled samples are in advance defined by analyzing prediction differences between Supervised Learning (SL) and SSL; (2) Negative impacts of labeled samples on learning performance are not investigated. Therefore, it is essential to design a novel method to adaptively estimate importance and risk of both unlabeled and labeled samples. For this purpose, we present $ \ell_{1} $-norm based S3L which can simultaneously reach the safe exploitation of the labeled and unlabeled samples in this paper. In order to solve the proposed ptimization problem, we utilize an effective iterative approach. In each iteration, one can adaptively estimate the weights of both labeled and unlabeled samples. The weights can reflect the importance or risk of the labeled and unlabeled samples. Hence, the negative effects of the labeled and unlabeled samples are expected to be reduced. Experimental performance on different datasets verifies that the proposed S3L method can obtain comparable performance with the existing SL, SSL and S3L methods and achieve the expected goal.</p></abstract>
Publisher
American Institute of Mathematical Sciences (AIMS)
Subject
Applied Mathematics,Computational Mathematics,General Agricultural and Biological Sciences,Modeling and Simulation,General Medicine
Reference29 articles.
1. O. Chapelle, B. Scholkopf, A. Zien, editors, Semi-Supervised Learning, MIT Press, Cambridge, MA, 2006. 2. W. J. Chen, Y. H. Shao, C. N. Li, N. Y. Deng, MLTSVM: A novel twin support vector machine to multi-label learning, Pattern Recognit., 52 (2016), 61–74. 3. I. Cohen, F. G. Cozman, N. Sebe, M. C. Cirelo, T. S. Huang, Semisupervised learning of classifiers: theory, algorithms, and their application to human-computer interaction, IEEE Trans. Pattern Anal. Mach. Intell., 26 (2004), 1553–1566. 4. X. D. Wang, R. C. Chen, C. Q. Hong, Z. Q. Zeng, Z. L. Zhou, Semi-supervised multi-label feature selection via label correlation analysis with l1-norm graph embedding, Image Vision Comput., 63 (2017), 10–23. 5. H. Gan, N. Sang, R. Huang, X. Tong, Z. Dan, Using clustering analysis to improve semi-supervised classification, Neurocomputing, 101 (2013), 290–298.
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