An Empirical Investigation on the Use of Diversity for Creation of Classifier Ensembles

TitleAn Empirical Investigation on the Use of Diversity for Creation of Classifier Ensembles
Publication TypeConference Paper
Year of Publication2015
AuthorsAhmed, MAO, Didaci, L, Fumera, G, Roli, F
EditorSchwenker, F, Roli, F, Kittler, J
Conference NameMultiple Classifier Systems
Volume9132
Pagination206-219
PublisherSpringer International Publishing
ISBN Number978-3-319-20247-1
Abstract
We address one of the main open issues about the use of diversity in multiple classifier systems: the effectiveness of the explicit use of diversity  measures for creation of classifier ensembles. So far, diversity measures have been mostly used for ensemble pruning, namely, for selecting a subset of classifiers out of an original, larger ensemble. Here we focus on pruning techniques based on forward/backward selection, since they allow a direct comparison with the simple estimation of accuracy of classifier ensemble. We empirically carry out this comparison for several diversity measures and benchmark data sets, using bagging as the ensemble construction technique, and majority voting as the fusion rule. Our results provide further and more direct evidence to previous observations against the effectiveness of the use of diversity measures for ensemble pruning, but also show that, combined with ensemble accuracy estimated on a validation set, diversity can have a regularization effect when the validation set size is small.
URLhttp://dx.doi.org/10.1007/978-3-319-20248-8_18
DOI10.1007/978-3-319-20248-8_18
Citation Key1224