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Using Radial Basis Function Networks for Function Approximation and Classification
Author(s) -
Yue Wu,
Hui Wang,
Biaobiao Zhang,
Ke-Lin Du
Publication year - 2012
Publication title -
isrn applied mathematics
Language(s) - English
Resource type - Journals
eISSN - 2090-5572
pISSN - 2090-5564
DOI - 10.5402/2012/324194
Subject(s) - radial basis function , hierarchical rbf , radial basis function network , computer science , function approximation , artificial intelligence , basis (linear algebra) , perceptron , nonlinear system , artificial neural network , function (biology) , multilayer perceptron , mathematical optimization , machine learning , algorithm , mathematics , physics , geometry , quantum mechanics , evolutionary biology , biology
The radial basis function (RBF) network has its foundation in the conventional approximation theory. It has the capability of universal approximation. The RBF network is a popular alternative to the well-known multilayer perceptron (MLP), since it has a simpler structure and a much faster training process. In this paper, we give a comprehensive survey on the RBF network and its learning. Many aspects associated with the RBF network, such as network structure, universal approimation capability, radial basis functions, RBF network learning, structure optimization, normalized RBF networks, application to dynamic system modeling, and nonlinear complex-valued signal processing, are described. We also compare the features and capability of the two models.

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