Approaches combining genetic algorithms and neural networks have received a great deal of attention in recent years. As a result, much work has been reported in two major areas of neural network design: training and topology optimisation. This paper focuses on the key issues associated with the problem of pruning a multilayer perceptron using genetic algorithms and simulated annealing. The study presented considers a number of aspects associated with network training that may alter the behaviour of a stochastic topology optimiser. Enhancements are discussed that can improve topology searches. Simulation results for the two mentioned stochastic optimisation methods applied to non-linear system identification are presented and compared with a...
Choosing a suitable topology for a neural network, given an application, is a difficult problem. Usu...
: A notorious problem in the application of neural networks is to find a small suitable topology. Hi...
The default multilayer neural network topology is a fully in-terlayer connected one. This simplistic...
In this paper we present a new approach for automatic topology optimization of backpropagation netwo...
For many applications feedforward neural networks have proved to be a valuable tool. Although the ba...
Abstract – Training a neural network is a difficult optimization problem because of numerous local m...
The multilayer perceptron has a large wide of classification and regression applications in many fie...
The multilayer perceptron has a large wide of classification and regression applications in many fie...
This work introduces an alternative algorithm, simulated annealing, to minimize the prediction error...
The present work investigates the applicability of Genetic Algorithms (GA) to the problem of signal ...
This work introduces an alternative algorithm, simulated annealing, to minimize the prediction error...
[[abstract]]Many studies have mapped a bit-string genotype using a genetic algorithm to represent ne...
. For many applications feedforward neural networks have proved to be a valuable tool. Although the ...
Abstract: The artificial neural networks (ANN) have proven their efficiency in several applications:...
The architecture of an artificial neural network has a great impact on the generalization power. M...
Choosing a suitable topology for a neural network, given an application, is a difficult problem. Usu...
: A notorious problem in the application of neural networks is to find a small suitable topology. Hi...
The default multilayer neural network topology is a fully in-terlayer connected one. This simplistic...
In this paper we present a new approach for automatic topology optimization of backpropagation netwo...
For many applications feedforward neural networks have proved to be a valuable tool. Although the ba...
Abstract – Training a neural network is a difficult optimization problem because of numerous local m...
The multilayer perceptron has a large wide of classification and regression applications in many fie...
The multilayer perceptron has a large wide of classification and regression applications in many fie...
This work introduces an alternative algorithm, simulated annealing, to minimize the prediction error...
The present work investigates the applicability of Genetic Algorithms (GA) to the problem of signal ...
This work introduces an alternative algorithm, simulated annealing, to minimize the prediction error...
[[abstract]]Many studies have mapped a bit-string genotype using a genetic algorithm to represent ne...
. For many applications feedforward neural networks have proved to be a valuable tool. Although the ...
Abstract: The artificial neural networks (ANN) have proven their efficiency in several applications:...
The architecture of an artificial neural network has a great impact on the generalization power. M...
Choosing a suitable topology for a neural network, given an application, is a difficult problem. Usu...
: A notorious problem in the application of neural networks is to find a small suitable topology. Hi...
The default multilayer neural network topology is a fully in-terlayer connected one. This simplistic...