Gradient descent techniques such as back propagation have been used effectively to train neural network connection weights; however, in some applications gradient information may not be available. Biologically inspired genetic algorithms provide an alternative. Unfortunately, early attempts to use genetic algorithms to train connection weights demonstrated that exchanging genetic material between two parents with the crossover operator often leads to low performance children. This occurs because the genetic material is removed from the context in which it was useful due to incompatible feature-detector mappings onto hidden units. This paper explores an approach in which a traditional genetic algorithm using standard two-point crossover and ...
A Cascade Correlation Learning Architecture (CCLA) of neural networks is tested on the task of predi...
This thesis is divided into two parts: the first examines various extensions to Cascade-Correlation,...
Genetic algorithms and genetic programming are optimization methods in which potential solutions evo...
In this paper, we describe a genetic algorithm (GA) based approach for learning connection weights f...
Various schemes for combining genetic algorithms and neural networks have been proposed in recent ye...
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
A neural network may be considered as an adaptive system that progressively self-organizes in order ...
Abstract: "Cascade-Correlation is a new architecture and supervised learning algorithm for artificia...
In the last few years, there have been many works in the area of hybrid neural learning algorithms c...
Abstract: In this paper we present a simple modification of some cascade-correlation type constructi...
This paper presents my work on an implementation of an Artificial Neural Network trained with a Gene...
Abstract- This paper presents the learning of neural network parameters using a real-coded genetic a...
It has been demonstrated that genetic algorithms (GAs) can help search the global (or near global) o...
The Cascade-Correlation learning algorithm constructs a multi-layer artificial neural network as it ...
The Cascade-Correlation learning algorithm constructs a multi-layer artificial neural network as it ...
A Cascade Correlation Learning Architecture (CCLA) of neural networks is tested on the task of predi...
This thesis is divided into two parts: the first examines various extensions to Cascade-Correlation,...
Genetic algorithms and genetic programming are optimization methods in which potential solutions evo...
In this paper, we describe a genetic algorithm (GA) based approach for learning connection weights f...
Various schemes for combining genetic algorithms and neural networks have been proposed in recent ye...
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
A neural network may be considered as an adaptive system that progressively self-organizes in order ...
Abstract: "Cascade-Correlation is a new architecture and supervised learning algorithm for artificia...
In the last few years, there have been many works in the area of hybrid neural learning algorithms c...
Abstract: In this paper we present a simple modification of some cascade-correlation type constructi...
This paper presents my work on an implementation of an Artificial Neural Network trained with a Gene...
Abstract- This paper presents the learning of neural network parameters using a real-coded genetic a...
It has been demonstrated that genetic algorithms (GAs) can help search the global (or near global) o...
The Cascade-Correlation learning algorithm constructs a multi-layer artificial neural network as it ...
The Cascade-Correlation learning algorithm constructs a multi-layer artificial neural network as it ...
A Cascade Correlation Learning Architecture (CCLA) of neural networks is tested on the task of predi...
This thesis is divided into two parts: the first examines various extensions to Cascade-Correlation,...
Genetic algorithms and genetic programming are optimization methods in which potential solutions evo...