Title of article :
A GA-based model selection for smooth twin parametric-margin support vector machine
Author/Authors :
Wang، نويسنده , , Zhen and Shao، نويسنده , , Yuan-Hai and Wu، نويسنده , , Tie-Ru، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Pages :
11
From page :
2267
To page :
2277
Abstract :
The recently proposed twin parametric-margin support vector machine, denoted by TPMSVM, gains good generalization and is suitable for many noise cases. However, in the TPMSVM, it solves two dual quadratic programming problems (QPPs). Moreover, compared with support vector machine (SVM), TPMSVM has at least four regularization parameters that need regulating, which affects its practical applications. In this paper, we increase the efficiency of TPMSVM from two aspects. First, by introducing a quadratic function, we directly optimize a pair of QPPs of TPMSVM in the primal space, called STPMSVM for short. Compared with solving two dual QPPs in the TPMSVM, STPMSVM can obviously improve the training speed without loss of generalization. Second, a genetic algorithm GA-based model selection for STPMSVM in the primal space is suggested. The GA-based STPMSVM can not only select the parameters efficiently, but also provide discriminative feature selection. Computational results on several synthetic as well as benchmark datasets confirm the great improvements on the training process of our GA-based STPMSVM.
Keywords :
Twin support vector machine , Support vector machine , Smoothing techniques , Pattern classification , genetic algorithm
Journal title :
PATTERN RECOGNITION
Serial Year :
2013
Journal title :
PATTERN RECOGNITION
Record number :
1735500
Link To Document :
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