Article ID Journal Published Year Pages File Type
407895 Neurocomputing 2013 9 Pages PDF
Abstract

The parametric-margin ν-supportν-support vector machine (par-ν-SVM)(par-ν-SVM) is a useful classifier in many cases, especially when the noise is heteroscedastic. In this paper, the geometric interpretation for the par-ν-SVMpar-ν-SVM is described, which is equivalent to finding a couple of points in two disjoint μ-reducedμ-reduced convex hulls (μ-RCHs)(μ-RCHs) by simultaneously minimizing the square distance and maximizing the square norm of their sum with a weight factor 1/(cν)1/(cν) given by users. Motivated by the Gilbert–Schlesinger–Kozinec (GSK) and Mitchell–Dem'yanov–Malozemov (MDM) algorithms, two geometric algorithms, called the parametric μ-GSK(par-μ-GSK) and parametric μ-MDM(par-μ-MDM) algorithms, are introduced to solve the par-ν-SVMpar-ν-SVM. Computational results on several synthetic as well as benchmark datasets demonstrate the significant performance of the proposed algorithms in terms of both kernel operations and classification accuracy.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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