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CIARP
2009
Springer

Neural Network Ensembles from Training Set Expansions

14 years 5 months ago
Neural Network Ensembles from Training Set Expansions
Abstract. In this work we propose a new method to create neural network ensembles. Our methodology develops over the conventional technique of bagging, where multiple classifiers are trained using a single training data set by generating multiple bootstrap samples from the training data. We propose a new method of sampling using the k-nearest neighbor density estimates. Our sampling technique gives rise to more variability in the data sets than by bagging. We validate our method by testing on several real data sets and show that our method outperforms bagging.
Debrup Chakraborty
Added 24 Jul 2010
Updated 24 Jul 2010
Type Conference
Year 2009
Where CIARP
Authors Debrup Chakraborty
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