AbstractThere have been many studies on the simultaneous approximation capability of feed-forward neural networks (FNNs). Most of these, however, are only concerned with the density or feasibility of performing simultaneous approximations. This paper considers the simultaneous approximation of algebraic polynomials, employing Taylor expansion and an algebraic constructive approach, to construct a class of FNNs which realize the simultaneous approximation of any smooth multivariate function and all of its derivatives. We also present an upper bound on the approximation accuracy of the FNNs, expressed in terms of the modulus of continuity of the functions to be approximated
Abstract—It has been known for some years that the uniform-density problem for forward neural networ...
Here we study the multivariate quantitative approximation of real valued continuous multivariate fun...
This paper deals with the approximation of both a function and its derivative by feedforward neural ...
AbstractThere have been many studies on the simultaneous approximation capability of feed-forward ne...
Abstract. In this paper, we study the simultaneous approximation to functions in Cm[0, 1] by neural ...
We consider the approximation of smooth multivariate functions in C(R^d) by feedforward neural netwo...
We consider the approximation of smooth multivariate functions in C(IR d ) by feedforward neural n...
In this article, we present a multiyariate two-layer feedforward neural networks that approximate co...
Abstract—We consider the approximation of smooth multivari-ate functions in C(IRd) by feedforward ne...
http://www.springerlink.com/This paper presents a preliminary study on the nonlinear approximation c...
Here we study the multivariate quantitative constructive approximation of real and complex valued co...
International audienceIn this paper we demonstrate that finite linear combinations of compositions o...
http://www.springerlink.com/This paper presents a preliminary study on the nonlinear approximation c...
A class of Soblove type multivariate function is approximated by feedforward network with one hidden...
Here we study the multivariate quantitative approximation of real valued continuous multivariate fun...
Abstract—It has been known for some years that the uniform-density problem for forward neural networ...
Here we study the multivariate quantitative approximation of real valued continuous multivariate fun...
This paper deals with the approximation of both a function and its derivative by feedforward neural ...
AbstractThere have been many studies on the simultaneous approximation capability of feed-forward ne...
Abstract. In this paper, we study the simultaneous approximation to functions in Cm[0, 1] by neural ...
We consider the approximation of smooth multivariate functions in C(R^d) by feedforward neural netwo...
We consider the approximation of smooth multivariate functions in C(IR d ) by feedforward neural n...
In this article, we present a multiyariate two-layer feedforward neural networks that approximate co...
Abstract—We consider the approximation of smooth multivari-ate functions in C(IRd) by feedforward ne...
http://www.springerlink.com/This paper presents a preliminary study on the nonlinear approximation c...
Here we study the multivariate quantitative constructive approximation of real and complex valued co...
International audienceIn this paper we demonstrate that finite linear combinations of compositions o...
http://www.springerlink.com/This paper presents a preliminary study on the nonlinear approximation c...
A class of Soblove type multivariate function is approximated by feedforward network with one hidden...
Here we study the multivariate quantitative approximation of real valued continuous multivariate fun...
Abstract—It has been known for some years that the uniform-density problem for forward neural networ...
Here we study the multivariate quantitative approximation of real valued continuous multivariate fun...
This paper deals with the approximation of both a function and its derivative by feedforward neural ...