Título Evolutionary q-Gaussian radial basis function neural networks for multiclassification
Autores FERNÁNDEZ NAVARRO, FRANCISCO DE ASÍS, Hervás-Martínez C. , Gutiérrez P.A. , CARBONERO RUZ, MARIANO
Publicación externa No
Medio Neural Netw
Alcance Article
Naturaleza Científica
Cuartil JCR 1
Cuartil SJR 2
Impacto JCR 2.18200
Impacto SJR 0.83500
Web https://www.scopus.com/inward/record.uri?eid=2-s2.0-79960893968&doi=10.1016%2fj.neunet.2011.03.014&partnerID=40&md5=06d893543899f10980bd629c27e28bbd
Fecha de publicacion 01/01/2011
ISI 000294397200012
Scopus Id 2-s2.0-79960893968
DOI 10.1016/j.neunet.2011.03.014
Abstract This paper proposes a radial basis function neural network (RBFNN), called the q-Gaussian RBFNN, that reproduces different radial basis functions (RBFs) by means of a real parameter q. The architecture, weights and node topology are learnt through a hybrid algorithm (HA). In order to test the overall performance, an experimental study with sixteen data sets taken from the UCI repository is presented. The q-Gaussian RBFNN was compared to RBFNNs with Gaussian, Cauchy and inverse multiquadratic RBFs in the hidden layer and to other probabilistic classifiers, including different RBFNN design methods, support vector machines (SVMs), a sparse classifier (sparse multinomial logistic regression, SMLR) and a non-sparse classifier (regularized multinomial logistic regression, RMLR). The results show that the q-Gaussian model can be considered very competitive with the other classification methods. © 2011 Elsevier Ltd.
Palabras clave Classification methods; Data sets; Design method; Experimental studies; Gaussians; Hidden layers; Hybrid algorithms; Multi-classification; Multinomial logistic regression; Multiquadratics; Probabilist
Miembros de la Universidad Loyola

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