Title :
Automatic parameters selection for radial basis function networks and experimental analysis
Author :
Jifu Nong ; Fujin Tan
Author_Institution :
Coll. of Sci., Guangxi Univ. for Nat., Nanning, China
Abstract :
This paper proposes a generic criterion that defines the optimum number of basis functions for radial basis function (RBF) neural networks. The generalization performance of an RBF network relates to its prediction capability on independent test data. This performance gives a measure of the quality of the chosen model. An RBF network with an overly restricted basis gives poor predictions on new data, since the model has too little flexibility. By contrast, an RBF network with too many basis functions also gives poor generalization performance since it is too flexible and fits too much of the noise on the training data. Bias and variance are complementary quantities, and it is necessary to assign the number of basis function optimally in order to achieve the best compromise between them. In this paper we use Stein´s unbiased risk estimator to derive an analytical criterion for assigning the appropriate number of basis functions. Two cases of known and unknown noise have been considered and the efficacy of this criterion in both situations is illustrated experimentally. The paper also shows an empirical comparison between this method and two well known classical methods, cross validation and the Bayesian information criterion, BIC.
Keywords :
belief networks; generalisation (artificial intelligence); parameter estimation; radial basis function networks; risk analysis; BIC; Bayesian information criterion; RBF neural networks; Stein unbiased risk estimator; analytical criterion; automatic parameter selection; complementary quantities; experimental analysis; generalization performance; generic criterion; independent test data; prediction capability; radial basis function neural networks; training data; Complexity theory; Data models; Noise; Radial basis function networks; Training; Training data; Vectors; Bayesian Information Criterion; Model Selection; RBF Network; Stein Unbiased Risk Estimator;
Conference_Titel :
Control and Decision Conference (CCDC), 2013 25th Chinese
Conference_Location :
Guiyang
Print_ISBN :
978-1-4673-5533-9
DOI :
10.1109/CCDC.2013.6561297