International audienceFeedforward neural networks have wide applicability in various disciplines of science due to their universal approximation property. Some authors have shown that single hidden layer feedforward neural networks (SLFNs) with fixed weights still possess the universal approximation property provided that approximated functions are univariate. But this phenomenon does not lay any restrictions on the number of neurons in the hidden layer. The more this number, the more the probability of the considered network to give precise results. In this note, we constructively prove that SLFNs with the fixed weight 1 and two neurons in the hidden layer can approximate any continuous function on a compact subset of the real line. The ap...
This paper discusses the function approximation properties of the \u27Gelenbe\u27 random neural netw...
In this dissertation, we have investigated the representational power of multilayer feedforward neur...
Copyright © 2013 F. Zeng and Y. Tang.This is an open access article distributed under the Creative C...
International audienceWe algorithmically construct a two hidden layer feedforward neural network (TL...
It is well known that Artificial Neural Networks are universal approximators. The classical result ...
AbstractApproximation properties of the MLP (multilayer feedforward perceptron) model of neural netw...
In this thesis we summarise several results in the literature which show the approximation capabilit...
AbstractApproximation properties of the MLP (multilayer feedforward perceptron) model of neural netw...
AbstractNeural networks are widely used in many applications including astronomical physics,image pr...
International audienceIn this paper we demonstrate that finite linear combinations of compositions o...
In this article, we present a multiyariate two-layer feedforward neural networks that approximate co...
AbstractNeural networks are widely used in many applications including astronomical physics,image pr...
In this paper, we present a review of some recent works on approximation by feedforward neural netwo...
In this paper, we present a review of some recent works on approximation by feedforward neural netwo...
In this paper, we present a review of some recent works on approximation by feedforward neural netwo...
This paper discusses the function approximation properties of the \u27Gelenbe\u27 random neural netw...
In this dissertation, we have investigated the representational power of multilayer feedforward neur...
Copyright © 2013 F. Zeng and Y. Tang.This is an open access article distributed under the Creative C...
International audienceWe algorithmically construct a two hidden layer feedforward neural network (TL...
It is well known that Artificial Neural Networks are universal approximators. The classical result ...
AbstractApproximation properties of the MLP (multilayer feedforward perceptron) model of neural netw...
In this thesis we summarise several results in the literature which show the approximation capabilit...
AbstractApproximation properties of the MLP (multilayer feedforward perceptron) model of neural netw...
AbstractNeural networks are widely used in many applications including astronomical physics,image pr...
International audienceIn this paper we demonstrate that finite linear combinations of compositions o...
In this article, we present a multiyariate two-layer feedforward neural networks that approximate co...
AbstractNeural networks are widely used in many applications including astronomical physics,image pr...
In this paper, we present a review of some recent works on approximation by feedforward neural netwo...
In this paper, we present a review of some recent works on approximation by feedforward neural netwo...
In this paper, we present a review of some recent works on approximation by feedforward neural netwo...
This paper discusses the function approximation properties of the \u27Gelenbe\u27 random neural netw...
In this dissertation, we have investigated the representational power of multilayer feedforward neur...
Copyright © 2013 F. Zeng and Y. Tang.This is an open access article distributed under the Creative C...