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Robust Framework to Combine Diverse Classifiers Assigning Distributed Confidence to Individual Classifiers at Class Level

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dc.contributor.author Shehzad Khalid
dc.contributor.author Sannia Arshad
dc.contributor.author Sohail Jabbar
dc.contributor.author Seungmin Rho
dc.date.accessioned 2017-12-26T12:20:59Z
dc.date.available 2017-12-26T12:20:59Z
dc.date.issued 2014
dc.identifier.uri http://hdl.handle.net/123456789/5194
dc.description.abstract We have presented a classification framework that combines multiple heterogeneous classifiers in the presence of class label noise. An extension of m-Mediods based modeling is presented that generates model of various classes whilst identifying and filtering noisy training data. This noise free data is further used to learn model for other classifiers such asGMMand SVM.Aweight learning method is then introduced to learn weights on each class for different classifiers to construct an ensemble. For this purpose, we applied genetic algorithm to search for an optimal weight vector on which classifier ensemble is expected to give the best accuracy. The proposed approach is evaluated on variety of real life datasets. It is also compared with existing standard ensemble techniques such as Adaboost, Bagging, and Random Subspace Methods. Experimental results show the superiority of proposed ensemble method as compared to its competitors, especially in the presence of class label noise and imbalance classes. en_US
dc.language.iso en en_US
dc.publisher Bahria University Islamabad Campus en_US
dc.subject Department of Computer Engineering CE en_US
dc.title Robust Framework to Combine Diverse Classifiers Assigning Distributed Confidence to Individual Classifiers at Class Level en_US
dc.type Article en_US


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