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Comparing Three Data Mining Algorithms for Identifying the Associated Risk Factors of Type 2 Diabetes

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Academic year: 2020

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Figure

Fig. 1. The importance of input variables in MLR (A), ANN (B), and SVM (C) models.
Fig. 2. ROC curves of the SVM, ANN, and MLR models in testing dataset.

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