Autores
Yáñez Márquez Cornelio
López Yáñez Itzamá
Título Evolutive Improvement of Parameters in an Associative Classifier
Tipo Revista
Sub-tipo JCR
Descripción IEEE Latin America Transactions
Resumen This paper presents an effective method to improve some of the parameters in an associative classifier, thus increasing its performance. This is accomplished using the simplicity and symmetry of the differential evolution metaheuristic. When modifying some parameters contained in the Gamma associative classifier, which is a novel associative model for pattern classification, this model have been found to be more efficient in the correct discrimination of objects; experimental results show that applying evolutionary algorithms models the desired efficiency and robustness of the classifier model is achieved. In this first approach, improving the Gamma associative classifier is achieved by applying the differential evolution algorithm.
Observaciones doi:10.1109/TLA.2015.7112014 ** Drive: Evolutive-improvement_2015
Lugar
País Brasil
No. de páginas 1550-1555
Vol. / Cap. Vol. 13, No. 5
Inicio 2015-05-01
Fin
ISBN/ISSN