Efficient sparse nonparallel support vector machines for classification

被引:0
|
作者
Yingjie Tian
Xuchan Ju
Zhiquan Qi
机构
[1] Chinese Academy of Sciences,Research Center on Fictitious Economy and Data Science
[2] Chinese Academy of Sciences,Academy of Mathematics and Systems Science
来源
关键词
Support vector machines; Twin support vector machines; Nonparallel; Structural risk minimization principle; Sparseness;
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学科分类号
摘要
In this paper, we propose a novel nonparallel classifier, named sparse nonparallel support vector machine (SNSVM), for binary classification. Different with the existing nonparallel classifiers, such as the twin support vector machines (TWSVMs), SNSVM has several advantages: It constructs two convex quadratic programming problems for both linear and nonlinear cases, which can be solved efficiently by successive overrelaxation technique; it does not need to compute the inverse matrices any more before training; it has the similar sparseness with standard SVMs; it degenerates to the TWSVMs when the parameters are appropriately chosen. Therefore, SNSVM is certainly superior to them theoretically. Experimental results on lots of data sets show the effectiveness of our method in both sparseness and classification accuracy and, therefore, confirm the above conclusions further.
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页码:1089 / 1099
页数:10
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