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2002 | OriginalPaper | Chapter

Bagging and Boosting for the Nearest Mean Classifier: Effects of Sample Size on Diversity and Accuracy

Authors : Marina Skurichina, Liudmila I. Kuncheva, Robert P. W. Duin

Published in: Multiple Classifier Systems

Publisher: Springer Berlin Heidelberg

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In combining classifiers, it is believed that diverse ensembles perform better than non-diverse ones. In order to test this hypothesis, we study the accuracy and diversity of ensembles obtained in bagging and boosting applied to the nearest mean classifier. In our simulation study we consider two diversity measures: the Q statistic and the disagreement measure. The experiments, carried out on four data sets have shown that both diversity and the accuracy of the ensembles depend on the training sample size. With exception of very small training sample sizes, both bagging and boosting are more useful when ensembles consist of diverse classifiers. However, in boosting the relationship between diversity and the efficiency of ensembles is much stronger than in bagging.

Metadata
Title
Bagging and Boosting for the Nearest Mean Classifier: Effects of Sample Size on Diversity and Accuracy
Authors
Marina Skurichina
Liudmila I. Kuncheva
Robert P. W. Duin
Copyright Year
2002
Publisher
Springer Berlin Heidelberg
DOI
https://doi.org/10.1007/3-540-45428-4_6