Loading [MathJax]/extensions/MathMenu.js
Universal approximation bounds for superpositions of a sigmoidal function | IEEE Journals & Magazine | IEEE Xplore

Universal approximation bounds for superpositions of a sigmoidal function


Abstract:

Approximation properties of a class of artificial neural networks are established. It is shown that feedforward networks with one layer of sigmoidal nonlinearities achiev...Show More

Abstract:

Approximation properties of a class of artificial neural networks are established. It is shown that feedforward networks with one layer of sigmoidal nonlinearities achieve integrated squared error of order O(1/n), where n is the number of nodes. The approximated function is assumed to have a bound on the first moment of the magnitude distribution of the Fourier transform. The nonlinear parameters associated with the sigmoidal nodes, as well as the parameters of linear combination, are adjusted in the approximation. In contrast, it is shown that for series expansions with n terms, in which only the parameters of linear combination are adjusted, the integrated squared approximation error cannot be made smaller than order 1/n/sup 2/d/ uniformly for functions satisfying the same smoothness assumption, where d is the dimension of the input to the function. For the class of functions examined, the approximation rate and the parsimony of the parameterization of the networks are shown to be advantageous in high-dimensional settings.<>
Published in: IEEE Transactions on Information Theory ( Volume: 39, Issue: 3, May 1993)
Page(s): 930 - 945
Date of Publication: 06 August 2002

ISSN Information:

No metrics found for this document.

Usage
Select a Year
2025

View as

Total usage sinceJan 2011:5,342
020406080JanFebMarAprMayJunJulAugSepOctNovDec634277000000000
Year Total:182
Data is updated monthly. Usage includes PDF downloads and HTML views.
Contact IEEE to Subscribe

References

References is not available for this document.