2024
DOI: 10.3233/jifs-235213
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Imbalance data: The application of RUS FCM K-RBFNN Smote with XGBoost in the elderly well-being identification

Gan Liu,
Guirong Qi,
Sanyu Wan

Abstract: Imbalanced data is a serious binary classification difficulty in forecasting the well-being of the elderly. This paper improves the Smote algorithm from the algorithm and sample dimensions to tackle the issue of imbalanced distribution of questionnaire data. The k-means Smote is combined with RBFNN as K-RBFNN Smote in the algorithm dimension and add FCM link to resample the minority set in the sample dimension as FCM K-RBFNN Smote. In order to improve the generalization of models, the RUS module is added to th… Show more

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