Constructive Approximation by Superposition of Sigmoidal Functions

Authors

  • D. Costarelli & R. Spigler

DOI:

https://doi.org/10.4208/ata.2013.v29.n2.8

Keywords:

Sigmoidal functions, multivariate approximation, $L^p$ approximation, neural networks, radial basis functions.

Abstract

In this paper, a constructive theory is developed for approximating functions of one or more variables by superposition of sigmoidal functions. This is done in the uniform norm as well as in the $L^p$ norm. Results for the simultaneous approximation, with the same order of accuracy, of a function and its derivatives (whenever these exist), are obtained. The relation with neural networks and radial basis functions approximations is discussed. Numerical examples are given for the purpose of illustration.

Published

2013-06-05

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Section

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How to Cite

Constructive Approximation by Superposition of Sigmoidal Functions. (2013). Analysis in Theory and Applications, 29(2), 169-196. https://doi.org/10.4208/ata.2013.v29.n2.8