Article ID: | iaor2010503 |
Volume: | 48 |
Issue: | 3 |
Start Page Number: | 480 |
End Page Number: | 487 |
Publication Date: | Feb 2010 |
Journal: | Decision Support Systems |
Authors: | Zhu Dan |
Keywords: | classification |
An ensemble of classifiers, or a systematic combination of individual classifiers, often results in better classifications in comparison to a single classifier. However, the question regarding what classifiers should be chosen for a given situation to construct an optimal ensemble has often been debated. In addition, ensembles are often computationally expensive since they require the execution of multiple classifiers for a single classification task. To address these problems, we propose a hybrid approach for selecting and combining data mining models to construct ensembles by integrating Data Envelopment Analysis and stacking. Experimental results show the efficiency and effectiveness of the proposed approach.