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Classification through incremental max-min separability

journal contribution
posted on 2011-05-01, 00:00 authored by A M Bagirov, Julien UgonJulien Ugon, D Webb, B Karasözen
Piecewise linear functions can be used to approximate non-linear decision boundaries between pattern classes. Piecewise linear boundaries are known to provide efficient real-time classifiers. However, they require a long training time. Finding piecewise linear boundaries between sets is a difficult optimization problem. Most approaches use heuristics to avoid solving this problem, which may lead to suboptimal piecewise linear boundaries. In this paper, we propose an algorithm for globally training hyperplanes using an incremental approach. Such an approach allows one to find a near global minimizer of the classification error function and to compute as few hyperplanes as needed for separating sets. We apply this algorithm for solving supervised data classification problems and report the results of numerical experiments on real-world data sets. These results demonstrate that the new algorithm requires a reasonable training time and its test set accuracy is consistently good on most data sets compared with mainstream classifiers.

History

Journal

Pattern analysis and applications

Volume

14

Issue

2

Pagination

165 - 174

Publisher

Springer

Location

Berlin, Germany

ISSN

1433-7541

Language

eng

Publication classification

C1.1 Refereed article in a scholarly journal

Copyright notice

2010, Springer-Verlag London Limited