In this paper, we apply genetic algorithms to the automatic generation of neural networks as well as the biological inspiration of neural networks to successfully adapt to environments. The network produced by this method can be customized for a special objective because the network is selected by the objective function. The final goal in designing a classifier is to achieve the best performance for a given classification. It has been observed that some methods of combining networks consistently outperform a single network. Therefore, we also investigate the performance of combining multiple evolving neural networks. Financial and medical data are used to test the network\u27s performance
Jin Y, Sendhoff B, Körner E. Simultaneous Generation of Accurate and Interpretable Neural Network Cl...
Abstract—In this paper we introduce a novel approach for classifier and feature selection in a multi...
The aim of this work is the genetic design of neural networks, which are able to classify within var...
This paper presents my work on an implementation of an Artificial Neural Network trained with a Gene...
Abstract- In order to develop effective evolutionary artificial neural networks (EANNs) we have to a...
The ensemble of evolving neural networks, which employs neural networks and genetic algorithms, is d...
This research is to develop a biologically inspired hybrid intelligent system - evolving neural netw...
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
The primary aim of this research is to develop an intelligent system for online data mining for clas...
Neuro-genetic systems, a particular type of evolving systems, have become a very important topic of ...
The performance of the neural network classifier significantly depends on its architecture and gener...
This thesis deals with evolutionary and genetic algorithms and the possible ways of combining them. ...
This thesis proposes the use of a genetic algorithm (GA) to optimize the accuracy of a convolutional...
This paper describes the use of an evolutionary design system known as GANNET to synthesize the stru...
International audienceA developmental model of an artificial neuron is presented. In this model, a p...
Jin Y, Sendhoff B, Körner E. Simultaneous Generation of Accurate and Interpretable Neural Network Cl...
Abstract—In this paper we introduce a novel approach for classifier and feature selection in a multi...
The aim of this work is the genetic design of neural networks, which are able to classify within var...
This paper presents my work on an implementation of an Artificial Neural Network trained with a Gene...
Abstract- In order to develop effective evolutionary artificial neural networks (EANNs) we have to a...
The ensemble of evolving neural networks, which employs neural networks and genetic algorithms, is d...
This research is to develop a biologically inspired hybrid intelligent system - evolving neural netw...
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
The primary aim of this research is to develop an intelligent system for online data mining for clas...
Neuro-genetic systems, a particular type of evolving systems, have become a very important topic of ...
The performance of the neural network classifier significantly depends on its architecture and gener...
This thesis deals with evolutionary and genetic algorithms and the possible ways of combining them. ...
This thesis proposes the use of a genetic algorithm (GA) to optimize the accuracy of a convolutional...
This paper describes the use of an evolutionary design system known as GANNET to synthesize the stru...
International audienceA developmental model of an artificial neuron is presented. In this model, a p...
Jin Y, Sendhoff B, Körner E. Simultaneous Generation of Accurate and Interpretable Neural Network Cl...
Abstract—In this paper we introduce a novel approach for classifier and feature selection in a multi...
The aim of this work is the genetic design of neural networks, which are able to classify within var...