An experimental study on diversity for bagging and boosting with linear classifiers

Journal Article (2002)
Author(s)

LI Kuncheva (External organisation)

M Skurichina (TU Delft - ImPhys/Quantitative Imaging)

Bob Duin (TU Delft - ImPhys/Quantitative Imaging)

Research Group
ImPhys/Quantitative Imaging
More Info
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Publication Year
2002
Research Group
ImPhys/Quantitative Imaging
Issue number
2
Volume number
3
Pages (from-to)
245-258

Abstract

Recently bagging, boosting and the random subspace method have become popular combining techniques for improving weak classifiers. These techniques are designed for, and usually applied to, decision trees. In this paper, in contrast to a common opinion, we demonstrate that they may also be useful in linear discriminant analysis. Simulation studies, carried out for several artificial and real data sets, show that the performance of the combining techniques is strongly affected by the small sample size properties of the base classifier: boosting is useful for large training sample sizes, while bagging and the random subspace method are useful for critical training sample sizes. Finally, a table describing the possible usefulness of the combining techniques for linear classifiers is presented.
Keywords: Bagging; Boosting; Combining classifiers; Linear classifiers; Random subspaces; Training sample size

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