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Journal ArticleOpen Access

Bagging and Boosting Negatively Correlated Neural Networks

Author Affiliations
State University of New York, Bangladesh University of Engineering and Technology, Stony Brook University, University of Science and Technology of China, ...
Published InIEEE Transactions on Systems Man and Cybernetics Part B (Cybernetics)
Year2008
Citations87

Abstract

In this paper, we propose two cooperative ensemble learning algorithms, i.e., NegBagg and NegBoost, for designing neural network (NN) ensembles. The proposed algorithms incrementally train different individual NNs in an ensemble using the negative correlation learning algorithm. Bagging and boosting algorithms are used in NegBagg and NegBoost, respectively, to create different training sets for different NNs in the ensemble. The idea behind using negative correlation learning in conjunction with the bagging/boosting algorithm is to facilitate interaction and cooperation among NNs during their training. Both NegBagg and NegBoost use a constructive approach to automatically determine the number of hidden neurons for NNs. NegBoost also uses the constructive approach to automatically determine the number of NNs for the ensemble. The two algorithms…
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