Feature Subset Selection Problem using Wrapper Approach in Supervised Learning

Feature subset selection is of immense importance in the field of data mining. The increased dimensionality of data makes testing and training of general classification method difficult. Mining on the reduced set of attributes reduces computation time and also helps to make the patterns easier to un...

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Veröffentlicht in:International journal of computer applications 2010-02, Vol.1 (7), p.13-17
Hauptverfasser: Karegowda, Asha Gowda, Manjunath, A S, Jayaram, M A
Format: Artikel
Sprache:eng
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Zusammenfassung:Feature subset selection is of immense importance in the field of data mining. The increased dimensionality of data makes testing and training of general classification method difficult. Mining on the reduced set of attributes reduces computation time and also helps to make the patterns easier to understand. In this paper a wrapper approach for feature selection is proposed. As a part of feature selection step we used wrapper approach with Genetic algorithm as random search technique for subset generation ,wrapped with different classifiers/ induction algorithm namely decision tree C4.5, NaïveBayes, Bayes networks and Radial basis function as subset evaluating mechanism on four standard datasets namely Pima Indians Diabetes Dataset, Breast Cancer, Heart Stat log and Wisconsin Breast Cancer. Further the relevant attributes identified by proposed wrapper are validated using classifiers. Experimental results illustrate, employing feature subset selection using proposed wrapper approach has enhanced classification accuracy.
ISSN:0975-8887
0975-8887
DOI:10.5120/169-295