Performance Analysis of Diabetes Mellitus Using Machine Learning Techniques

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Kandala Srujana Kumari et.al

Abstract

Diabetes is a common disease in the human body caused by a set of metabolic disorders in which blood sugar levels are very long. It affects various organs in the human body and destroys many-body systems, especially the kidneys and kidneys. Early detection can save lives. To achieve this goal, this study focuses specifically on the use of machine learning techniques for many risk factors associated with this disease. Technical training methods achieve effective results by creating predictive models based on medical diagnostic data collected on Indian sugar. Learning from such data can help in predicting diabetics. In this study, we used four popular machine learning algorithms, namely Support Vector Machine (SVM), Naive Bayes (NB), Near Neighbor K (KNN), and Decision Tree C4.5 (DT), based on statistical data. people. adults in sugar. , preview. The results of our experiments show that the C4.5 solution tree has greater accuracy compared to other machine learning methods.

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How to Cite
et.al, K. S. K. (2021). Performance Analysis of Diabetes Mellitus Using Machine Learning Techniques. Turkish Journal of Computer and Mathematics Education (TURCOMAT), 12(6), 225–230. Retrieved from https://turcomat.org/index.php/turkbilmat/article/view/1297
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