Constructive learning algorithms are an efficient way to train feedforward neural networks. Some of their features, such as the automatic definition of the neural network (NN) architecture and its fast training, promote their high adaptive capacity, as well as allow for skipping the usual pre-training phase, known as model selection. However, such advantages usually come with the price of lower accuracy rates, when compared to those obtained with conventional NN learning approaches. This is, perhaps, the reason for conventional NN training algorithms being preferred over constructive NN (CoNN) algorithms. Aiming at enhancing CoNN accuracy performance and, as a result, making them a competitive choice for machine learning based applications,...
Since the discovery of the back-propagation method, many modified and new algorithms have been propo...
AbstractThis paper investigates the functional invariance of neural network learning methods incorpo...
The feed-forward neural network (FNN) has drawn great interest in many applications due to its unive...
In this paper, we review neural networks, models of neural networks, methods for selecting neural ne...
In recent years, multi-layer feedforward neural networks have been popularly used for pattern classi...
The theory of Neural Networks (NNs) has witnessed a striking progress in the past fifteen years. The...
The goal of data mining is to solve various problems dealing with knowledge extraction from huge amo...
In this dissertation the problem of the training of feedforward artificial neural networks and its a...
The training of multilayer perceptron is generally a difficult task. Excessive training times and la...
A comprehensive review on the problem of choosing a suitable activation function for the hidden laye...
Constructive algorithms have proved to be powerful methods for training feedforward neural networks....
[[abstract]]In non-batch learning systems, an index called plasticity is needed to indicate how easy...
Master theses deals with Constructive Neural newtorks. First part describes neural networks and core...
Abstract—We develop, in this brief, a new constructive learning algorithm for feedforward neural net...
The generalization ability of artificial neural networks (ANNs) is greatly dependent on their archit...
Since the discovery of the back-propagation method, many modified and new algorithms have been propo...
AbstractThis paper investigates the functional invariance of neural network learning methods incorpo...
The feed-forward neural network (FNN) has drawn great interest in many applications due to its unive...
In this paper, we review neural networks, models of neural networks, methods for selecting neural ne...
In recent years, multi-layer feedforward neural networks have been popularly used for pattern classi...
The theory of Neural Networks (NNs) has witnessed a striking progress in the past fifteen years. The...
The goal of data mining is to solve various problems dealing with knowledge extraction from huge amo...
In this dissertation the problem of the training of feedforward artificial neural networks and its a...
The training of multilayer perceptron is generally a difficult task. Excessive training times and la...
A comprehensive review on the problem of choosing a suitable activation function for the hidden laye...
Constructive algorithms have proved to be powerful methods for training feedforward neural networks....
[[abstract]]In non-batch learning systems, an index called plasticity is needed to indicate how easy...
Master theses deals with Constructive Neural newtorks. First part describes neural networks and core...
Abstract—We develop, in this brief, a new constructive learning algorithm for feedforward neural net...
The generalization ability of artificial neural networks (ANNs) is greatly dependent on their archit...
Since the discovery of the back-propagation method, many modified and new algorithms have been propo...
AbstractThis paper investigates the functional invariance of neural network learning methods incorpo...
The feed-forward neural network (FNN) has drawn great interest in many applications due to its unive...