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53. Meta-classifiers and Selective Superiority

Ryan BentonContact Information, Miroslav KubatContact Information and Rasaiah LoganantharajContact Information

(4)  Center for Advanced Computer Studies, University of Louisiana, Lafayette, LA, 70504
Abstract
Given that no one classification method is the best in all tasks, a variety of approaches have evolved to prevent poor performance due to mismatch of capabilities. One approach to overcome this problem is to determine when a method may be appropriate for a given problem. A second, more popular approach is to combine the capabilities of two or more classification methods. This paper provides some evidence that the combining of classifiers can yield more robust solutions.

Contact Information Ryan Benton
Email: rgb8817@cacs.louisiana.edu

Contact Information Miroslav Kubat
Email: mkubat@cacs.louisiana.edu

Contact Information Rasaiah Loganantharaj
Email: logan@cacs.louisiana.edu
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