Achieving an appropriate balance between precision, support, and comprehensibility in the evolution of classification rules

Abstract

This article proposes a method for achieving an appropriate balance between the parameters of support, precision, and simplicity during the evolution of classification rules by means of genetic programming. The method includes an adaptive procedure in order to achieve such balance. This work lies within the data mining context, more precisely, it focuses on the extraction of comprehensible knowledge where the approach introduced plays a predominant role. Experimental results demonstrate the advantages of using the proposed methodRed de Universidades con Carreras en Informática (RedUNCI

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