DocumentCode :
3564308
Title :
Weighted bag hybrid multiple classifier machine for boosting prediction accuracy
Author :
Chakraborty, Dwaipayan ; Saha, Sankhadip ; Dutta, Oindrilla
Author_Institution :
Dept. of Electron.&Instru. Eng., NetajiSubhash Eng. Coll., Kolkata, India
fYear :
2014
Firstpage :
1
Lastpage :
6
Abstract :
Ensemblelearning of classifier has been a hot topic in pattern recognition problems for the last twenty years. This is because standalone classifier does not improve the performance when the dataset suffers from class imbalance.Ensemble learning is generally based on boosting and bagging techniques. Boostingcombines multiple classifiers of the same type, trained with weighted sample sets. Our aim is to improve the general boosting algorithm by usingdiversekinds of classifiers to build the ensemble of classifiers. Two different kinds of classifier - BP-MLP and RBFNN are considered for constructing the initial ensemble in our algorithm. Thestrategy is to assign an adaptive weight to the different types of classifiers based on their individual performancein order toboost a particular kind of classifier amongst the above two. Benchmark datasets from UCI repository are used for analysis which confirm that our method outperforms single type of learner based boosting.
Keywords :
learning (artificial intelligence); multilayer perceptrons; pattern classification; radial basis function networks; BP-MLP; RBFNN; VCI repository; bagging techniques; class imbalance; ensemble learning; learner based boosting; pattern recognition problems; prediction accuracy boosting; standalone classifier; weighted bag hybrid multiple classifier machine; Additives; Biological system modeling; Boosting; Glass; Multiple classifier machine; SAMME; UCI; boosting; ensemble;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
High Performance Computing and Applications (ICHPCA), 2014 International Conference on
Print_ISBN :
978-1-4799-5957-0
Type :
conf
DOI :
10.1109/ICHPCA.2014.7045346
Filename :
7045346
Link To Document :
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