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Article type: Research Article
Authors: Ranilla, José | Luaces, Oscar | Bahamonde, Antonio
Affiliations: Artificial Intelligence Center, University of Oviedo at Gijón, E‐33271 Gijón, Spain E‐mail: {ranilla,oluaces,antonio}@aic.uniovi.es
Abstract: Let us consider a set of training examples described by continuous or symbolic attributes with categorical classes. In this paper we present a measure of the potential quality of a region of the attribute space to be represented as a rule condition to classify unseen cases. The aim is to take into account the distribution of the classes of the examples. The resulting measure, called impurity level, is inspired by a similar measure used in the instance‐based algorithm IB3 for selecting suitable paradigmatic exemplars that will classify, in a nearest‐neighbor context, future cases. The features of the impurity level are illustrated using a version of Quinlan's well‐known C4.5 where the information‐based heuristics are replaced by our measure. The experiments carried out to test the proposals indicate a very high accuracy reached with sets of classification rules as small as those found by RIPPER.
Keywords: Machine learning, classification rules, pruning, decision trees, impurity level
Journal: AI Communications, vol. 16, no. 2, pp. 71-87, 2003
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