The rate of approximation of Gaussian radial basis neural networks in continuous function space

Authors
Citation
Xie, Ting Fan, The rate of approximation of Gaussian radial basis neural networks in continuous function space, Acta mathematica Sinica. English series (Print) , 29(2), 2013, pp. 295-302
ISSN journal
14398516
Volume
29
Issue
2
Year of publication
2013
Pages
295 - 302
Database
ACNP
SICI code
Abstract
There have been many studies on the dense theorem of approximation by radial basis feedforword neural networks, and some approximation problems by Gaussian radial basis feedforward neural networks (GRBFNs) in some special function space have also been investigated. This paper considers the approximation by the GRBFNs in continuous function space. It is proved that the rate of approximation by GRNFNs with n d neurons to any continuous function f defined on a compact subset K . .d can be controlled by .(f,n .1/2), where .(f, t) is the modulus of continuity of the function f.