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Original Articles

Equalizing imbalanced imprecise datasets for genetic fuzzy classifiers

Pages 276-296 | Received 14 Nov 2010, Accepted 01 Jun 2011, Published online: 23 Apr 2012
 

Abstract

Determining whether an imprecise dataset is imbalanced is not immediate. The vagueness in the data causes that the prior probabilities of the classes are not precisely known, and therefore the degree of imbalance can also be uncertain. In this paper we propose suitable extensions of different resampling algorithms that can be applied to interval valued, multi-labelled data. By means of these extended preprocessing algorithms, certain classification systems designed for minimizing the fraction of misclassifications are able to produce knowledge bases that are also adequate under common metrics for imbalanced classification.

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