Title of article :
Error Bounds for Approximation with Neural Networks Original Research Article
Author/Authors :
Martin Burger، نويسنده , , Andreas Neubauer، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Abstract :
In this paper we prove convergence rates for the problem of approximating functions f by neural networks and similar constructions. We show that the rates are the better the smoother the activation functions are, provided that f satisfies an integral representation. We give error bounds not only in Hilbert spaces but also in general Sobolev spaces Wm, r(Ω). Finally, we apply our results to a class of perceptrons and present a sufficient smoothness condition on f guaranteeing the integral representation.
Keywords :
* error bounds , * neural networks , * nonlinear function approximation
Journal title :
Journal of Approximation Theory
Journal title :
Journal of Approximation Theory