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Thursday, April 15 • 3:45pm - 4:00pm
Accuracy of diabetes patient determination: Prediction made from sugar levels using machine learning

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Authors:Sujatha Krishnananthan Puvanendran Sanjeeth Rukshani Puvanendran
Abstract:This Study focuses on the prediction of the Diabetic Patients through the sugar levels. The Dataset is analyzed using the data mining techniques such as feature extraction, associate rule mining and classification. The Fast Blood Sugar (FBS) and Post-Prandial Blood Sugar (PPBS) sugar levels are selected as the important features, identification of a rule depending on the selected feature is identified and the performance metric for three classifiers is analyzed based on the selected attributes and choose the classifier with high accuracy. Classification algorithms like Random forest, Decision Tree (J48), and Naïve-Bayes are utilized to identify the patients with diabetes disease. The performance of these tech-niques is considered using the factors relating the accuracy from the applied tech-niques. The Accuracy is seeming to be higher for Naïve Bayes. The outcomes acquired demonstrated that Naïve Bayes outflanks from different strategies with most noteworthy precision of 74.8%.

Paper Presenters

Thursday April 15, 2021 3:45pm - 4:00pm BST
Virtual Room A Las Vegas, Nevada, USA