The ensemble of evolving neural networks, which employs neural networks and genetic algorithms, is developed for classification problems in data mining. This network meets data mining requirements such as smart architecture, user interaction, and performance. The evolving neural network has a smart architecture in that it is able to select inputs from the environment and controls its topology. A built-in objective function of the network offers user interaction for customized classification. The bagging technique, which uses a portion of the training set in multiple networks, is applied to the ensemble of evolving neural networks in order to improve classification performance. The ensemble of evolving neural networks is tested by various da...
We propose a new method for training an ensemble of neural networks. A population of networks is cre...
We present an automatic method, based on a neural network ensemble, for extracting multiple, diverse...
This chapter presents the state of the art in classifier ensembles and their comparative performance...
Artificial neural networks(ANNs) are computing models for information processing and pattern identif...
The performance of the neural network classifier significantly depends on its architecture and gener...
The primary aim of this research is to develop an intelligent system for online data mining for clas...
This research is to develop a biologically inspired hybrid intelligent system - evolving neural netw...
Speciation is an important concept in evolutionary computation. It refers to an enhancements of evol...
In this paper, we apply genetic algorithms to the automatic generation of neural networks as well as...
AbstractNeural network ensemble is a learning paradigm where many neural networks are jointly used t...
The purpose of this paper is to investigate a Multi-Objective Evolutionary Algorithm (MOEA) for opti...
Ensemble classifiers are approaches which train multiple classifiers and fuse their decisions to pro...
Ensemble Methods (EMs) are sets of models that combine their decisions, or their learning algorithms...
In the last decades ensemble learning has established itself as a valuable strategy within the compu...
This paper presents an approach to the problem of binary classification using ensemble neural networ...
We propose a new method for training an ensemble of neural networks. A population of networks is cre...
We present an automatic method, based on a neural network ensemble, for extracting multiple, diverse...
This chapter presents the state of the art in classifier ensembles and their comparative performance...
Artificial neural networks(ANNs) are computing models for information processing and pattern identif...
The performance of the neural network classifier significantly depends on its architecture and gener...
The primary aim of this research is to develop an intelligent system for online data mining for clas...
This research is to develop a biologically inspired hybrid intelligent system - evolving neural netw...
Speciation is an important concept in evolutionary computation. It refers to an enhancements of evol...
In this paper, we apply genetic algorithms to the automatic generation of neural networks as well as...
AbstractNeural network ensemble is a learning paradigm where many neural networks are jointly used t...
The purpose of this paper is to investigate a Multi-Objective Evolutionary Algorithm (MOEA) for opti...
Ensemble classifiers are approaches which train multiple classifiers and fuse their decisions to pro...
Ensemble Methods (EMs) are sets of models that combine their decisions, or their learning algorithms...
In the last decades ensemble learning has established itself as a valuable strategy within the compu...
This paper presents an approach to the problem of binary classification using ensemble neural networ...
We propose a new method for training an ensemble of neural networks. A population of networks is cre...
We present an automatic method, based on a neural network ensemble, for extracting multiple, diverse...
This chapter presents the state of the art in classifier ensembles and their comparative performance...