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   An interior point method for L1/2 -SVM and application to feature selection in classification  
   
نویسنده yao l. ,zhang x. ,li d.-h. ,zeng f. ,chen h.
منبع journal of applied mathematics - 2014 - دوره : 2014 - شماره : 0
چکیده    This paper studies feature selection for support vector machine (svm). by the use of the l1/2 regularization technique,we propose a new model l1/2-svm. to solve this nonconvex and non-lipschitz optimization problem,we first transform it into an equivalent quadratic constrained optimization model with linear objective function and then develop an interior point algorithm. we establish the convergence of the proposed algorithm. our experiments with artificial data and real data demonstrate that the l1/2-svm model works well and the proposed algorithm is more effective than some popular methods in selecting relevant features and improving classification performance. © 2014 lan yao et al.
آدرس college of mathematics and econometrics,hunan university, China, school of mathematical sciences,south china normal university, China, school of mathematical sciences,south china normal university, China, school of software,central south university, China, college of mathematics and econometrics,hunan university, China
 
     
   
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