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Embedded feature ranking for ensemble MLP classifiers
Journal article   Open access  Peer reviewed

Embedded feature ranking for ensemble MLP classifiers

T Windeatt, R Duangsoithong and R Smith
IEEE Transactions on Neural Networks, Vol.22(6), pp.988-994
2011

Abstract

A feature ranking scheme for multilayer perceptron (MLP) ensembles is proposed, along with a stopping criterion based upon the out-of-bootstrap estimate. To solve multi-class problems feature ranking is combined with modified error-correcting output coding. Experimental results on benchmark data demonstrate the versatility of the MLP base classifier in removing irrelevant features.
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http://dx.doi.org/10.1109/TNN.2011.2138158View
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