A fast iterative nearest point algorithm for support vector machine classifier design

Keerthi, S.S. ; Shevade, S.K. ; Bhattacharyya, C. ; Murthy, K.R.K. (2000) A fast iterative nearest point algorithm for support vector machine classifier design IEEE Transactions on Neural Networks, 11 (1). pp. 124-136. ISSN 10459227

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Official URL: http://doi.org/10.1109/72.822516

Related URL: http://dx.doi.org/10.1109/72.822516

Abstract

In this paper we give a new fast iterative algorithm for support vector machine (SVM) classifier design. The basic problem treated is one that does not allow classification violations. The problem is converted to a problem of computing the nearest point between two convex polytopes. The suitability of two classical nearest point algorithms, due to Gilbert, and Mitchell et al., is studied. Ideas from both these algorithms are combined and modified to derive our fast algorithm. For problems which require classification violations to be allowed, the violations are quadratically penalized and an idea due to Cortes and Vapnik and Friess is used to convert it to a problem in which there are no classification violations. Comparative computational evaluation of our algorithm against powerful SVM methods such as Platt's sequential minimal optimization shows that our algorithm is very competitive.

Item Type:Article
Source:Copyright of this article belongs to IEEE
Keywords:Iterative algorithms, Support vector machines, Support vector machine classification, Algorithm design and analysis, Quadratic programming, Optimization methods, Production engineering, Computer science, Automation
ID Code:127679
Deposited On:13 Oct 2022 10:59
Last Modified:13 Oct 2022 10:59

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