AbstractNeural networks are widely used in many applications including astronomical physics,image processing, recognition, robotics, and automated target tracking, etc. Their ability to approximate arbitrary functions is the main reason for this popularity. In this paper, we discuss the constructive approximation on the whole real line by a neural networks with a sigmoidal activation function and a fixed weight. Using the convolution method, we show neural network approximation with a fixed weight to a continuous function on a compact interval. Also, we demonstrate a computational work that shows good agreement with theory
Abstract. We prove that neural networks with a single hidden layer are capable of providing an optim...
AbstractApproximation properties of the MLP (multilayer feedforward perceptron) model of neural netw...
AbstractWe describe the configuration of an infinite set V of vectors in Rs, s ⩾ 1, for which the cl...
AbstractNeural networks are widely used in many applications including astronomical physics,image pr...
International audienceFeedforward neural networks have wide applicability in various disciplines of ...
An artificial neural network is a biologically-inspired system that can be trained to perform comput...
An artificial neural network is a biologically-inspired system that can be trained to perform comput...
An artificial neural network is a biologically-inspired system that can be trained to perform comput...
An artificial neural network is a biologically-inspired system that can be trained to perform comput...
Here we study the univariate quantitative approximation of real and complex valued continuous functi...
AbstractWe present a type of single-hidden layer feedforward neural networks with sigmoidal nondecre...
In this thesis we summarise several results in the literature which show the approximation capabilit...
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...
Copyright © 2013 F. Zeng and Y. Tang.This is an open access article distributed under the Creative C...
Abstract. We prove that neural networks with a single hidden layer are capable of providing an optim...
AbstractApproximation properties of the MLP (multilayer feedforward perceptron) model of neural netw...
AbstractWe describe the configuration of an infinite set V of vectors in Rs, s ⩾ 1, for which the cl...
AbstractNeural networks are widely used in many applications including astronomical physics,image pr...
International audienceFeedforward neural networks have wide applicability in various disciplines of ...
An artificial neural network is a biologically-inspired system that can be trained to perform comput...
An artificial neural network is a biologically-inspired system that can be trained to perform comput...
An artificial neural network is a biologically-inspired system that can be trained to perform comput...
An artificial neural network is a biologically-inspired system that can be trained to perform comput...
Here we study the univariate quantitative approximation of real and complex valued continuous functi...
AbstractWe present a type of single-hidden layer feedforward neural networks with sigmoidal nondecre...
In this thesis we summarise several results in the literature which show the approximation capabilit...
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...
Copyright © 2013 F. Zeng and Y. Tang.This is an open access article distributed under the Creative C...
Abstract. We prove that neural networks with a single hidden layer are capable of providing an optim...
AbstractApproximation properties of the MLP (multilayer feedforward perceptron) model of neural netw...
AbstractWe describe the configuration of an infinite set V of vectors in Rs, s ⩾ 1, for which the cl...