2024
DOI: 10.3390/math12111709
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Imbalanced Data Classification Based on Improved Random-SMOTE and Feature Standard Deviation

Ying Zhang,
Li Deng,
Bo Wei

Abstract: Oversampling techniques are widely used to rebalance imbalanced datasets. However, most of the oversampling methods may introduce noise and fuzzy boundaries for dataset classification, leading to the overfitting phenomenon. To solve this problem, we propose a new method (FSDR-SMOTE) based on Random-SMOTE and Feature Standard Deviation for rebalancing imbalanced datasets. The method first removes noisy samples based on the Tukey criterion and then calculates the feature standard deviation reflecting the degree … Show more

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