The paper demonstrates performance enhancement using selective cloning on evolutionary neural network over the conventional genetic algorithm and neural back propagation algorithm for data classification. Introduction of selective cloning improves the convergence rate of the genetic algorithm without compromising on the classification errors. The selective cloning is tested on five data sets. The Iris data problem is used as a bench-mark to compare the selective cloning technique with the conventional GA and the back-propagation algorithm. For comparative analysis, same neural network architecture is used for both the back propagation and the genetic algorithms. The selective cloning approach is based on the schema theorem. By using selecti...
In this paper, the ability of genetic algorithms in designing artificial neural network (ANN) is inv...
The GMDH MIA algorithm is modified by the use of selection procedure from genetic algorithms and inc...
In this paper, the ability of genetic algorithms in designing artificial neural network (ANN) is inv...
This paper presents a comparative analysis of linear genetic programming and artificial neural netwo...
The GMDH MIA algorithm is modified by the use of selection procedure from genetic algorithms and inc...
The aim of this work is the genetic design of neural networks, which are able to classify within var...
In this study an attempt is being made to encode the architecture of a neural network in a chromosom...
It is extremely challenging to design a machine learning algorithm that is able to generate tolerabl...
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
A cellular neural network (CNN) is an information processing system with a large scale nonlinear ana...
The classification is a one of the most indispensable domains in the data mining and machine learnin...
The correct classification of individuals is extremely important for the preservation of genetic var...
<p>That is distinct that dynamic mutation rate or reduction idea for mutation operator is more<br> b...
Most advances on the Evolutionary Algorithm optimisation of Neural Network are on recurrent neural n...
This thesis starts with a brief introduction to neural networks and the tuning of neural networks us...
In this paper, the ability of genetic algorithms in designing artificial neural network (ANN) is inv...
The GMDH MIA algorithm is modified by the use of selection procedure from genetic algorithms and inc...
In this paper, the ability of genetic algorithms in designing artificial neural network (ANN) is inv...
This paper presents a comparative analysis of linear genetic programming and artificial neural netwo...
The GMDH MIA algorithm is modified by the use of selection procedure from genetic algorithms and inc...
The aim of this work is the genetic design of neural networks, which are able to classify within var...
In this study an attempt is being made to encode the architecture of a neural network in a chromosom...
It is extremely challenging to design a machine learning algorithm that is able to generate tolerabl...
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
A cellular neural network (CNN) is an information processing system with a large scale nonlinear ana...
The classification is a one of the most indispensable domains in the data mining and machine learnin...
The correct classification of individuals is extremely important for the preservation of genetic var...
<p>That is distinct that dynamic mutation rate or reduction idea for mutation operator is more<br> b...
Most advances on the Evolutionary Algorithm optimisation of Neural Network are on recurrent neural n...
This thesis starts with a brief introduction to neural networks and the tuning of neural networks us...
In this paper, the ability of genetic algorithms in designing artificial neural network (ANN) is inv...
The GMDH MIA algorithm is modified by the use of selection procedure from genetic algorithms and inc...
In this paper, the ability of genetic algorithms in designing artificial neural network (ANN) is inv...