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Published in: Soft Computing 5/2011

01-05-2011 | Focus

A hierarchical multiclass support vector machine incorporated with holistic triple learning units

Authors: Xiao-Lei Xia, Kang Li, George W. Irwin

Published in: Soft Computing | Issue 5/2011

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Abstract

This paper proposes a new hierarchical learning structure, namely the holistic triple learning (HTL), for extending the binary support vector machine (SVM) to multi-classification problems. For an N-class problem, a HTL constructs a decision tree up to a depth of \(\lceil N/3\rceil+1\). A leaf node of the decision tree is allowed to be placed with a holistic triple learning unit whose generalisation abilities are assessed and approved. Meanwhile, the remaining nodes in the decision tree each accommodate a standard binary SVM classifier. The holistic triple classifier is a regression model trained on three classes, whose training algorithm is originated from a recently proposed implementation technique, namely the least-squares support vector machine (LS-SVM). A major novelty with the holistic triple classifier is the reduced number of support vectors in the solution. For the resultant HTL-SVM, an upper bound of the generalisation error can be obtained. The time complexity of training the HTL-SVM is analysed, and is shown to be comparable to that of training the one-versus-one (1-vs.-1) SVM, particularly on small-scale datasets. Empirical studies show that the proposed HTL-SVM achieves competitive classification accuracy with a reduced number of support vectors compared to the popular 1-vs-1 alternative.

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Metadata
Title
A hierarchical multiclass support vector machine incorporated with holistic triple learning units
Authors
Xiao-Lei Xia
Kang Li
George W. Irwin
Publication date
01-05-2011
Publisher
Springer-Verlag
Published in
Soft Computing / Issue 5/2011
Print ISSN: 1432-7643
Electronic ISSN: 1433-7479
DOI
https://doi.org/10.1007/s00500-010-0551-9

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