Laplacian smooth twin support vector machine for semi-supervised classification

被引:0
作者
Wei-Jie Chen
Yuan-Hai Shao
Ning Hong
机构
[1] Zhejiang University of Technology,Zhijiang College
来源
International Journal of Machine Learning and Cybernetics | 2014年 / 5卷
关键词
Semi-supervised classification; Manifold regularization; Twin support vector machine; Smooth technique;
D O I
暂无
中图分类号
学科分类号
摘要
Laplacian twin support vector machine (Lap-TSVM) is a state-of-the-art nonparallel-planes semi-supervised classifier. It tries to exploit the geometrical information embedded in unlabeled data to boost its generalization ability. However, Lap-TSVM may endure heavy burden in training procedure since it needs to solve two quadratic programming problems (QPPs) with the matrix “inversion” operation. In order to enhance the performance of Lap-TSVM, this paper presents a new formulation of Lap-TSVM, termed as Lap-STSVM. Rather than solving two QPPs in dual space, firstly, we convert the primal constrained QPPs of Lap-TSVM into unconstrained minimization problems (UMPs). Afterwards, a smooth technique is introduced to make these UMPs twice differentiable. At last, a fast Newton–Armijo algorithm is designed to solve the UMPs in Lap-STSVM. Experimental evaluation on both artificial and real-world datasets demonstrate the benefits of the proposed approach.
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页码:459 / 468
页数:9
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[1]  
Shao Y(2011)Improvements on twin support vector machines IEEE Trans Neural Netw 22 962-968
[2]  
Zhang C(2011)Extreme learning machines: a survey Int J Machine Learn Cybern 2 107-122
[3]  
Wang X(2012)A novel ensemble TBSVM classifier for imbalanced data classification J Comput Inf Syst 8 8223-8230
[4]  
Deng N(2011)Building sparse twin support vector machine classifiers in primal space Inf Sci 181 3967-3980
[5]  
Huang G(2012)Least squares recursive projection twin support vector machine for classification Pattern Recogn 45 2299-2307
[6]  
Wang D(2013)Multiple birth support vector machine for multi-class classification Neural Comput Appl 22 153-161
[7]  
Lan Y(2011)TPMSVM: a novel twin parametric-margin support vector machine for pattern recognition Pattern Recogn 44 2678-2692
[8]  
Chen W(2013)Twin support vector regression for the simultaneous learning of a function and its derivatives Int J Machine Learn Cybern 4 51-63
[9]  
Shao Y(2009)A review of machine learning approaches to spam filtering Exp Syst Appl 36 10206-10222
[10]  
Bao W(2011)Boosted multi-class semi-supervised learning for human action recognition Pattern Recogn 44 2334-2342