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Journal ArticleOpen Access

CUSBoost: Cluster-Based Under-Sampling with Boosting for Imbalanced Classification

Author Affiliations
United International University
Year2017
Citations63

Abstract

Class imbalance classification is a demanding research problem in the context of machine learning and its applications, as most of the real-life datasets are often imbalanced in nature. Existing learning algorithms maximise the classification accuracy by correctly classifying the majority class, but misclassify the minority class. The challenge lies in that the minority class instances represent the data of greater interest than the majority class instances in real-life applications. Recently, several techniques based on sampling methods (under-sampling and oversampling of the majority and minority class respectively), cost-sensitive learning methods, and ensemble learning have been used in the literature for classifying imbalanced datasets. In this paper, we present a new clustering-based under-sampling approach with boosting (AdaBoost) algorithm, called CUSBoost, for effective…
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