Feature selection algorithm in classification learning using support vector machines

被引:0
|
作者
Yu. V. Goncharov
I. B. Muchnik
L. V. Shvartser
机构
[1] Russian Academy of Sciences,Dorodnicyn Computing Center
[2] Rutgers University,undefined
[3] Ness Technologies,undefined
[4] Atidim,undefined
关键词
feature selection algorithm; classification learning; support vector machine; saddle point searching algorithm;
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学科分类号
摘要
An algorithm for selecting features in the classification learning problem is considered. The algorithm is based on a modification of the standard criterion used in the support vector machine method. The new criterion adds to the standard criterion a penalty function that depends on the selected features. The solution of the problem is reduced to finding the minimax of a convex-concave function. As a result, the initial set of features is decomposed into three classes—unconditionally selected, weighted selected, and eliminated features.
引用
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页码:1243 / 1260
页数:17
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