2024
DOI: 10.3390/app14135421
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An Undersampling Method Approaching the Ideal Classification Boundary for Imbalance Problems

Wensheng Zhou,
Chen Liu,
Peng Yuan
et al.

Abstract: Data imbalance is a common problem in most practical classification applications of machine learning, and it may lead to classification results that are biased towards the majority class if not dealt with properly. An effective means of solving this problem is undersampling in the borderline area; however, it is difficult to find the area that fits the classification boundary. In this paper, we present a novel undersampling framework, whereby the clustering of samples in the majority class is conducted and seg… Show more

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