The new interpretation of support vector machines on statistical learning theory

被引:0
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作者
ChunHua Zhang
YingJie Tian
NaiYang Deng
机构
[1] Renmin University of China,School of Information
[2] Chinese Academy of Sciences,Research Center on Fictitious Economy and Data Science
[3] China Agricultural University,College of Science
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关键词
-support vector classification; the minimization principle of the structural risk; KKT conditions; 90C25; 90C30; 90C46;
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摘要
This paper is concerned with the theoretical foundation of support vector machines (SVMs). The purpose is to develop further an exact relationship between SVMs and the statistical learning theory (SLT). As a representative, the standard C-support vector classification (C-SVC) is considered here. More precisely, we show that the decision function obtained by C-SVC is just one of the decision functions obtained by solving the optimization problem derived directly from the structural risk minimization principle. In addition, an interesting meaning of the parameter C in C-SVC is given by showing that C corresponds to the size of the decision function candidate set in the structural risk minimization principle.
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页码:151 / 164
页数:13
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