In this thesis we summarise several results in the literature which show the approximation capabilities of multilayer feedforward artificial neural networks. We show that multilayer feedforward artificial neural networks are capable of approximating continuous and measurable functions from Rn to R to any degree of accuracy under certain conditions. In particular making use of the Stone-Weierstrass and Hahn-Banach theorems, we show that a multilayer feedforward artificial neural network can approximate any continuous function to any degree of accuracy, by using either an arbitrary squashing function or any continuous sigmoidal function for activation. Making use of the Stone-Weirstrass Theorem again, we extend these approximation capabilitie...
Approximation of highly nonlinear functions is an important area of computational intelligence. The ...
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 thesis we summarise several results in the literature which show the approximation capabilit...
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...
Several researchers characterized the activation functions under which multilayer feedforward networ...
Several researchers characterized the activation function under which multilayer feedforward network...
Several researchers characterized the activation functions under which multilayer feedforward networ...
Several researchers characterized the activation function under which multilayer feedforward network...
In this dissertation, we have investigated the representational power of multilayer feedforward neur...
We define a neural network in infinite dimensional spaces for which we can show the universal approx...
AbstractApproximation properties of the MLP (multilayer feedforward perceptron) model of neural netw...
Approximation of highly nonlinear functions is an important area of computational intelligence. The ...
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 thesis we summarise several results in the literature which show the approximation capabilit...
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...
Several researchers characterized the activation functions under which multilayer feedforward networ...
Several researchers characterized the activation function under which multilayer feedforward network...
Several researchers characterized the activation functions under which multilayer feedforward networ...
Several researchers characterized the activation function under which multilayer feedforward network...
In this dissertation, we have investigated the representational power of multilayer feedforward neur...
We define a neural network in infinite dimensional spaces for which we can show the universal approx...
AbstractApproximation properties of the MLP (multilayer feedforward perceptron) model of neural netw...
Approximation of highly nonlinear functions is an important area of computational intelligence. The ...
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...