DocumentCode :
1396393
Title :
Logistic Regression by Means of Evolutionary Radial Basis Function Neural Networks
Author :
Gutiérrez, Pedro Antonio ; Hervás-Martínez, César ; Martínez-Estudillo, Francisco J.
Author_Institution :
Dept. of Comput. Sci. & Numerical Anal., Univ. of Cordoba, Córdoba, Spain
Volume :
22
Issue :
2
fYear :
2011
Firstpage :
246
Lastpage :
263
Abstract :
This paper proposes a hybrid multilogistic methodology, named logistic regression using initial and radial basis function (RBF) covariates. The process for obtaining the coefficients is carried out in three steps. First, an evolutionary programming (EP) algorithm is applied, in order to produce an RBF neural network (RBFNN) with a reduced number of RBF transformations and the simplest structure possible. Then, the initial attribute space (or, as commonly known as in logistic regression literature, the covariate space) is transformed by adding the nonlinear transformations of the input variables given by the RBFs of the best individual in the final generation. Finally, a maximum likelihood optimization method determines the coefficients associated with a multilogistic regression model built in this augmented covariate space. In this final step, two different multilogistic regression algorithms are applied: one considers all initial and RBF covariates (multilogistic initial-RBF regression) and the other one incrementally constructs the model and applies cross validation, resulting in an automatic covariate selection [simplelogistic initial-RBF regression (SLIRBF)]. Both methods include a regularization parameter, which has been also optimized. The methodology proposed is tested using 18 benchmark classification problems from well-known machine learning problems and two real agronomical problems. The results are compared with the corresponding multilogistic regression methods applied to the initial covariate space, to the RBFNNs obtained by the EP algorithm, and to other probabilistic classifiers, including different RBFNN design methods [e.g., relaxed variable kernel density estimation, support vector machines, a sparse classifier (sparse multinomial logistic regression)] and a procedure similar to SLIRBF but using product unit basis functions. The SLIRBF models are found to be competitive when compared with the corresponding multilogistic regression methods and the - BFEP method. A measure of statistical significance is used, which indicates that SLIRBF reaches the state of the art.
Keywords :
covariance analysis; learning (artificial intelligence); maximum likelihood estimation; probability; radial basis function networks; regression analysis; EP algorithm; RBF covariates; RBF neural network; RBF transformations; RBFNN design methods; SLIRBF; agronomical problems; attribute space; augmented covariate space; automatic covariate selection; benchmark classification; cross validation; evolutionary programming algorithm; evolutionary radial basis function neural networks; hybrid multilogistic methodology; initial covariates; logistic regression literature; machine learning problems; maximum likelihood optimization method; multilogistic regression algorithms; multilogistic regression methods; multilogistic regression model; nonlinear transformations; probabilistic classifiers; product unit basis functions; radial basis function covariates; regularization parameter; relaxed variable kernel density estimation; simplelogistic initial-RBF regression; sparse classifier; sparse multinomial logistic regression; statistical significance; support vector machines; Algorithm design and analysis; Artificial neural networks; Kernel; Logistics; Maximum likelihood estimation; Support vector machines; Training; Artificial neural networks; classification; evolutionary algorithms; evolutionary programming; logistic regression; radial basis function neural networks; Algorithms; Artificial Intelligence; Logistic Models; Mathematical Computing; Neural Networks (Computer); Pattern Recognition, Automated; Regression Analysis; Software Design; Software Validation;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2010.2093537
Filename :
5659484
Link To Document :
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