Ensemble Classifiers and Their Applications: A Review

  IJCTT-book-cover
 
International Journal of Computer Trends and Technology (IJCTT)          
 
© 2014 by IJCTT Journal
Volume-10 Number-1
Year of Publication : 2014
Authors : Akhlaqur Rahman , Sumaira Tasnim
DOI :  10.14445/22312803/IJCTT-V10P107

MLA

Akhlaqur Rahman , Sumaira Tasnim."Ensemble Classifiers and Their Applications: A Review". International Journal of Computer Trends and Technology (IJCTT) V10(1):31-35, April 2014. ISSN:2231-2803. www.ijcttjournal.org. Published by Seventh Sense Research Group.

Abstract -
Ensemble classifier refers to a group of individual classifiers that are cooperatively trained on data set in a supervised classification problem. In this paper we present a review of commonly used ensemble classifiers in the literature. Some ensemble classifiers are also developed targeting specific applications. We also present some application driven ensemble classifiers in this paper.

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Keywords
Ensemble classifier, Multiple classifier systems, Mixture of experts