Publication | Open Access
Neural network ensembles: combining multiple models for enhanced performance using a multistage approach
79
Citations
20
References
2004
Year
EngineeringMachine LearningMixture Of ExpertData ScienceData MiningPattern RecognitionClassifier EnsemblesNeural Network ClassifiersMultiple Classifier SystemStatisticsMulti-model SystemPredictive AnalyticsMultiple ModelsIntelligent ClassificationForecastingMultistage ApproachData ClassificationClassifier SystemNeural Network EnsemblesEnsemble Algorithm
Abstract: Neural network ensembles (sometimes referred to as committees or classifier ensembles) are effective techniques to improve the generalization of a neural network system. Combining a set of neural network classifiers whose error distributions are diverse can generate better results than any single classifier. In this paper, some methods for creating ensembles are reviewed, including the following approaches: methods of selecting diverse training data from the original source data set, constructing different neural network models, selecting ensemble nets from ensemble candidates and combining ensemble members' results. In addition, new results on ensemble combination methods are reported.
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