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A unified approach to support vector machines

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posted on 2008-12-01, 00:00 authored by Alistair ShiltonAlistair Shilton, Marimuthu Palaniswami
This chapter presents a unified introduction to support vector machine (SVM) methods for binary classification, one-class classification, and regression. The SVM method for binary classification (binary SVC) is introduced first, and then extended to encompass one-class classification (clustering). Next, using the regularized risk approach as a motivation, the SVM method for regression (SVR) is described. These methods are then combined to obtain a single unified SVM formulation that encompasses binary classification, one-class classification, and regression (as well as some extensions of these), and the dual formulation of this unified model is derived. A mechanical analogy for binary and one-class SVCs is given to give an intuitive explanation of the operation of these two formulations. Finally, the unified SVM is extended to implement general cost functions, and an application of SVM classifiers to the problem of spam e-mail detection is considered.

History

Chapter number

14

Pagination

299-324

ISBN-13

9781599048079

ISBN-10

1599048078

Language

eng

Publication classification

BN.1 Other book chapter, or book chapter not attributed to Deakin

Copyright notice

2008, IGI Global

Extent

17

Editor/Contributor(s)

Verma B, Blumenstein M

Publisher

IGI Global

Place of publication

Hershey, Pa.

Title of book

Pattern Recognition Technologies and Applications: Recent Advances

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