Title Evolutionary learning by a sensitivity-accuracy approach for multi-class problems
Authors MARTÍNEZ ESTUDILLO, FRANCISCO JOSÉ, Gutiérrez P.A. , Hervás C. , Fernández J.C.
External publication No
Means IEEE Congr. Evol. Comput., CEC
Scope Capítulo de un Libro
Nature Científica
Web https://www.scopus.com/inward/record.uri?eid=2-s2.0-55749111868&doi=10.1109%2fCEC.2008.4631003&partnerID=40&md5=109e3e57ae7d8dead688405970591b66
Publication date 01/01/2008
Scopus Id 2-s2.0-55749111868
DOI 10.1109/CEC.2008.4631003
Abstract Performance evaluation is decisive when improving classifiers. Accuracy alone is insufficient because it cannot capture the myriad of contributing factors differentiating the performances of two different classifiers and approaches based on a multi-objective perspective are hindered by the growing of the Pareto optimal front as the number of classes increases. This paper proposes a new approach to deal with multi-class problems based on the accuracy (C) and minimum sensitivity (S) given by the lowest percentage of examples correctly predicted to belong to each class. From this perspective, we compare different fitness functions (accuracy, C, entropy, E, sensitivity, S, and area, A) in an evolutionary scheme. We also present a two stage evolutionary algorithm with two sequential fitness functions, the entropy for the first step and the area for the second step. This methodology is applied to solve six benchmark classification problems. The two-stage approach obtains promising results and achieves a high classification rate level in the global dataset with an acceptable level of accuracy for each class. © 2008 IEEE.
Keywords Boolean functions; Classifiers; Evolutionary algorithms; Function evaluation; Learning systems; Probability density function; Sequential switching; Benchmark classifications; Classification rates; Con
Universidad Loyola members

Change your preferences Manage cookies