An artificial neural network is a biologically-inspired system that can be trained to perform computations. Recently, techniques from machine learning have trained neural networks to perform a variety of tasks. It can be shown that any continuous function can be approximated by an artificial neural network with arbitrary precision. This is known as the universal approximation theorem. In this thesis, we will introduce neural networks and one of the first versions of this theorem, due to Cybenko. He modeled artificial neural networks using sigmoidal functions and used tools from measure theory and functional analysis
It is well known that Artificial Neural Networks are universal approximators. The classical result ...
A feedforward neural net with d input neurons and with a single hidden layer of n neurons is given b...
A feedforward neural net with d input neurons and with a single hidden layer of n neurons is given b...
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...
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...
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...
This is Chapter 2 of Part 1 of the book titled "Deep Learning": a nine-part easy-to-grasp textbook w...
Here we study the univariate quantitative approximation of real and complex valued continuous functi...
We define a neural network in infinite dimensional spaces for which we can show the universal approx...
AbstractNeural networks are widely used in many applications including astronomical physics,image pr...
It is shown that in a Banach space X satisfying mild conditions, for an infinite, independent subset...
It is well known that Artificial Neural Networks are universal approximators. The classical result ...
A feedforward neural net with d input neurons and with a single hidden layer of n neurons is given b...
A feedforward neural net with d input neurons and with a single hidden layer of n neurons is given b...
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...
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...
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...
This is Chapter 2 of Part 1 of the book titled "Deep Learning": a nine-part easy-to-grasp textbook w...
Here we study the univariate quantitative approximation of real and complex valued continuous functi...
We define a neural network in infinite dimensional spaces for which we can show the universal approx...
AbstractNeural networks are widely used in many applications including astronomical physics,image pr...
It is shown that in a Banach space X satisfying mild conditions, for an infinite, independent subset...
It is well known that Artificial Neural Networks are universal approximators. The classical result ...
A feedforward neural net with d input neurons and with a single hidden layer of n neurons is given b...
A feedforward neural net with d input neurons and with a single hidden layer of n neurons is given b...