An improvement on parametric $$\nu $$ ν -support vector algorithm for classification
Saeed Ketabchi (),
Hossein Moosaei (),
Mohamad Razzaghi () and
Panos M. Pardalos ()
Additional contact information
Saeed Ketabchi: University of Guilan
Hossein Moosaei: University of Bojnord
Mohamad Razzaghi: University of Guilan
Panos M. Pardalos: University of Florida
Annals of Operations Research, 2019, vol. 276, issue 1, No 7, 155-168
Abstract:
Abstract One effective technique that has recently been considered for solving classification problems is parametric $$\nu $$ ν -support vector regression. This method obtains a concurrent learning framework for both margin determination and function approximation and leads to a convex quadratic programming problem. In this paper we introduce a new idea that converts this problem into an unconstrained convex problem. Moreover, we propose an extension of Newton’s method for solving the unconstrained convex problem. We compare the accuracy and efficiency of our method with support vector machines and parametric $$\nu $$ ν -support vector regression methods. Experimental results on several UCI benchmark data sets indicate the high efficiency and accuracy of this method.
Keywords: Classification; Support vector regression; $$\nu $$ ν -support vector machines; Parametric $$\nu $$ ν -support vector; Generalized Newton method; Parametric margin (search for similar items in EconPapers)
Date: 2019
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Citations: View citations in EconPapers (1)
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DOI: 10.1007/s10479-017-2724-8
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