Title of article :
Simultaneous feature selection and classification using kernel-penalized support vector machines
Author/Authors :
Sebasti?n Maldonado، نويسنده , , Richard Weber، نويسنده , , Jayanta Basak، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Pages :
14
From page :
115
To page :
128
Abstract :
We introduce an embedded method that simultaneously selects relevant features during classifier construction by penalizing each feature’s use in the dual formulation of support vector machines (SVM). This approach called kernel-penalized SVM (KP-SVM) optimizes the shape of an anisotropic RBF Kernel eliminating features that have low relevance for the classifier. Additionally, KP-SVM employs an explicit stopping condition, avoiding the elimination of features that would negatively affect the classifier’s performance. We performed experiments on four real-world benchmark problems comparing our approach with well-known feature selection techniques. KP-SVM outperformed the alternative approaches and determined consistently fewer relevant features.
Keywords :
feature selection , Embedded methods , Support Vector Machines , Mathematical programming
Journal title :
Information Sciences
Serial Year :
2011
Journal title :
Information Sciences
Record number :
1214180
Link To Document :
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