One still open question in the area of research of multi-layer feedforward neural networks is concerning the number of neurons in its hidden layer(s). Especially in real life applications, this problem is often solved by heuristic methods. In this work an effective way to dynamically determine the number of hidden units in a three-layer feedforward neural network for function approximation is proposed
In this paper we characterize incremental approximation of discrete functions by using one-hidden-la...
In this paper, we present a review of some recent works on approximation by feedforward neural netwo...
We propose a constructive approach to building single-hidden-layer neural networks for nonlinear fun...
One still open question in the area of research of multi-layer feedforward neural networks is concer...
This paper examines the capacity of feedforward neural networks (NNs) to approximate certain functio...
This paper examines the capacity of feedforward neural networks (NNs) to approximate certain functio...
In this dissertation, we have investigated the representational power of multilayer feedforward neur...
International audienceWe algorithmically construct a two hidden layer feedforward neural network (TL...
Neural Networks are widely noticed to provide a nonlinear function approximation method. In order to...
The number of required hidden units is statistically estimated for feedforward neural networks that ...
<p>We used a similar network with 68 input units (one unit per classification feature) and ten hidde...
AbstractIt is shown that the general approximation property of feed-forward multilayer perceptron ne...
This paper applies a recently developed neural network called plausible neural network (PNN) to func...
The architectures of Artificial Neural Networks (ANN) are based on the problem domain and it is appl...
International audienceFeedforward neural networks have wide applicability in various disciplines of ...
In this paper we characterize incremental approximation of discrete functions by using one-hidden-la...
In this paper, we present a review of some recent works on approximation by feedforward neural netwo...
We propose a constructive approach to building single-hidden-layer neural networks for nonlinear fun...
One still open question in the area of research of multi-layer feedforward neural networks is concer...
This paper examines the capacity of feedforward neural networks (NNs) to approximate certain functio...
This paper examines the capacity of feedforward neural networks (NNs) to approximate certain functio...
In this dissertation, we have investigated the representational power of multilayer feedforward neur...
International audienceWe algorithmically construct a two hidden layer feedforward neural network (TL...
Neural Networks are widely noticed to provide a nonlinear function approximation method. In order to...
The number of required hidden units is statistically estimated for feedforward neural networks that ...
<p>We used a similar network with 68 input units (one unit per classification feature) and ten hidde...
AbstractIt is shown that the general approximation property of feed-forward multilayer perceptron ne...
This paper applies a recently developed neural network called plausible neural network (PNN) to func...
The architectures of Artificial Neural Networks (ANN) are based on the problem domain and it is appl...
International audienceFeedforward neural networks have wide applicability in various disciplines of ...
In this paper we characterize incremental approximation of discrete functions by using one-hidden-la...
In this paper, we present a review of some recent works on approximation by feedforward neural netwo...
We propose a constructive approach to building single-hidden-layer neural networks for nonlinear fun...