Determining network size used to require various ad hoc rules of thumb. In recent years, several researchers proposed methods to handle this problem with as little human intervention as possible. Among these, the cascade-correlation learning architecture is probably the most popular. Despite its promising empirical performance, this heuristically derived method does not have strong theoretical support. In this paper, we analyze the problem of learning in constructive neural networks from a Hilbert space point of view. A novel objective function for training new hidden units using a greedy approach is derived. More importantly, we prove that a network so constructed incrementally still preserves the universal approximation property with resp...
Constructive algorithms have proved to be powerful methods for training feedforward neural networks....
Neural networks (NNs) have been experimentally shown to be quite effective in many applications. Thi...
In order to scale to problems with large or continuous state-spaces, reinforcement learning algorith...
Abstract: In this paper we present a simple modification of some cascade-correlation type constructi...
In recent years, multi-layer feedforward neural networks have been popularly used for pattern classi...
Single hidden layer neural networks with supervised learning have been successfully applied to appro...
It is often difficult to predict the optimal neural network size for a particular application. Const...
It is often difficult to predict the optimal neural network size for a particular application, Const...
AbstractApproximation properties of the MLP (multilayer feedforward perceptron) model of neural netw...
Abstract—We develop, in this brief, a new constructive learning algorithm for feedforward neural net...
Constructive learning algorithms are important because they address two practical difficulties of le...
It is well known that Artificial Neural Networks are universal approximators. The classical result ...
It is often difficult to predict the optimal neural network size for a particular application. Const...
This paper presents a constructive neural network with sigmoidal units and multiplication units, whi...
In this paper, we present a review of some recent works on approximation by feedforward neural netwo...
Constructive algorithms have proved to be powerful methods for training feedforward neural networks....
Neural networks (NNs) have been experimentally shown to be quite effective in many applications. Thi...
In order to scale to problems with large or continuous state-spaces, reinforcement learning algorith...
Abstract: In this paper we present a simple modification of some cascade-correlation type constructi...
In recent years, multi-layer feedforward neural networks have been popularly used for pattern classi...
Single hidden layer neural networks with supervised learning have been successfully applied to appro...
It is often difficult to predict the optimal neural network size for a particular application. Const...
It is often difficult to predict the optimal neural network size for a particular application, Const...
AbstractApproximation properties of the MLP (multilayer feedforward perceptron) model of neural netw...
Abstract—We develop, in this brief, a new constructive learning algorithm for feedforward neural net...
Constructive learning algorithms are important because they address two practical difficulties of le...
It is well known that Artificial Neural Networks are universal approximators. The classical result ...
It is often difficult to predict the optimal neural network size for a particular application. Const...
This paper presents a constructive neural network with sigmoidal units and multiplication units, whi...
In this paper, we present a review of some recent works on approximation by feedforward neural netwo...
Constructive algorithms have proved to be powerful methods for training feedforward neural networks....
Neural networks (NNs) have been experimentally shown to be quite effective in many applications. Thi...
In order to scale to problems with large or continuous state-spaces, reinforcement learning algorith...