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MWMOTE--Majority Weighted Minority Oversampling Technique for Imbalanced Data Set Learning

Author Affiliations
Bangladesh University of Engineering and Technology, University of Birmingham, University of Fukui
Published InIEEE Transactions on Knowledge and Data Engineering
Year2012
Citations1,141

Abstract

Imbalanced learning problems contain an unequal distribution of data samples among different classes and pose a challenge to any classifier as it becomes hard to learn the minority class samples. Synthetic oversampling methods address this problem by generating the synthetic minority class samples to balance the distribution between the samples of the majority and minority classes. This paper identifies that most of the existing oversampling methods may generate the wrong synthetic minority samples in some scenarios and make learning tasks harder. To this end, a new method, called Majority Weighted Minority Oversampling TEchnique (MWMOTE), is presented for efficiently handling imbalanced learning problems. MWMOTE first identifies the hard-to-learn informative minority class samples and assigns them weights according to their euclidean distance…
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