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Optimal ensemble construction via meta-evolutionary ensembles
Authors:YongSeog Kim  W Nick Street  Filippo Menczer  
Affiliation:

aBusiness Information Systems, Utah State University, Logan, UT 84322, USA

bManagement Sciences, University of Iowa, Iowa City, IA 52242, USA

cSchool of Informatics, Indiana University, Bloomington, IN 47406, USA

Abstract:In this paper, we propose a meta-evolutionary approach to improve on the performance of individual classifiers. In the proposed system, individual classifiers evolve, competing to correctly classify test points, and are given extra rewards for getting difficult points right. Ensembles consisting of multiple classifiers also compete for member classifiers, and are rewarded based on their predictive performance. In this way we aim to build small-sized optimal ensembles rather than form large-sized ensembles of individually-optimized classifiers. Experimental results on 15 data sets suggest that our algorithms can generate ensembles that are more effective than single classifiers and traditional ensemble methods.
Keywords:Optimal ensemble  Evolutionary ensemble  Feature selection  Neural networks  Diversity of ensemble  Ensemble size
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