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Hybrid Methods for Class Imbalance Learning Employing Bagging with Sampling Techniques

Author Affiliations
United International University
Year2017
Citations49

Abstract

Class imbalance classification has become a dominant problem in supervised learning. The bias of majority class instances dominates in quantity over minority class instances in imbalanced datasets, which produce the suboptimal classification results for classifying the minority class instances. In the last decade, several methods including sampling techniques, cost-sensitive learning, and ensemble methods have been introduced for dealing with class imbalance classification. Among all the methods, the ensemble method performs better in compare with sampling and cost-sensitive learning. The ensemble learning uses sampling technique (either under-sampling or oversampling) with bagging or boosting algorithms. However, which sampling techniques will work better with ensemble learning to improve class imbalance is extremely depend on problem domains. In this paper, we propose two bagging…
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