Constructive Approximation by Superposition of Sigmoidal Functions
DOI:
https://doi.org/10.4208/ata.2013.v29.n2.8Keywords:
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.
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2013-06-05
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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