DocumentCode
1506552
Title
Simple Proof of Convergence of the SMO Algorithm for Different SVM Variants
Author
Lopez, J. ; Dorronsoro, J.R.
Author_Institution
Dept. de Ing. Inf., Univ. Autonoma de Madrid, Madrid, Spain
Volume
23
Issue
7
fYear
2012
fDate
7/1/2012 12:00:00 AM
Firstpage
1142
Lastpage
1147
Abstract
In this brief, we give a new proof of the asymptotic convergence of the sequential minimum optimization (SMO) algorithm for both the most violating pair and second order rules to select the pair of coefficients to be updated. The proof is more self-contained, shorter, and simpler than previous ones and has a different flavor, partially building upon Gilbert´s original convergence proof of its algorithm to solve the minimum norm problem for convex hulls. It is valid for both support vector classification (SVC) and support vector regression, which are formulated under a general problem that encompasses them. Moreover, this general problem can be further extended to also cover other support vector machines (SVM)-related problems such as -SVC or one-class SVMs, while the convergence proof of the slight variant of SMO needed for them remains basically unchanged.
Keywords
convergence; convex programming; minimisation; pattern classification; regression analysis; support vector machines; Gilbert convergence proof; SMO algorithm; SVM variant; convex hull; minimum norm problem; one-class SVM; sequential minimum optimization; support vector classification; support vector machines; support vector regression; Convergence; Convex functions; Indexes; Learning systems; Static VAr compensators; Support vector machines; Vectors; Classification; decomposition methods; regression; sequential minimum optimization (SMO); support vector machines;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2012.2195198
Filename
6193217
Link To Document