Title :
Best Approximation of Gaussian Neural Networks With Nodes Uniformly Spaced
Author :
Mulero-Martínez, Juan Ignacio
Author_Institution :
Univ. Politecnica de Cartagena, Cartagena
Abstract :
This paper is aimed at exposing the reader to certain aspects in the design of the best approximants with Gaussian radial basis functions (RBFs). The class of functions to which this approach applies consists of those compactly supported in frequency. The approximative properties of uniqueness and existence are restricted to this class. Functions which are smooth enough can be expanded in Gaussian series converging uniformly to the objective function. The uniqueness of these series is demonstrated by the context of the orthonormal basis in a Hilbert space. Furthermore, the best approximation to a given band-limited function from a truncated Gaussian series is analyzed by an energy-based argument. This analysis not only gives a theoretical proof concerned with the existence of best approximations but addresses the problems of architectural selection. Specifically, guidance for selecting the variance and the oversampling parameters is provided for practitioners.
Keywords :
Gaussian processes; polynomial approximation; radial basis function networks; sampling methods; Gaussian neural network; Gaussian radial basis function; Gaussian series; Hilbert space; energy-based argument; oversampling parameter; polynomial approximation; Best approximation; Gaussian radial basis functions (RBFs); existence; functions band-limited in frequency; sampling theory; truncation; uniqueness; Computer Simulation; Neural Networks (Computer); Nonlinear Dynamics; Normal Distribution; Pattern Recognition, Automated;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2007.905851