Diagnosis of Diabetes Using Naïve Bayes Classifier Method
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Keywords

Diabetes
Naïve Bayes Classifier
Data Mining

How to Cite

Ardhian Nisaa , T. ., Maya Ningrum , S. ., & Adha Haque , B. . (2024). Diagnosis of Diabetes Using Naïve Bayes Classifier Method. IJDASEA (International Journal of Data Science, Engineering, and Analytics), 1(1), 22–29. https://doi.org/10.33005/ijdasea.v1i1.26

Abstract

Not a few people suffer from diabetes, diabetes is usually caused by genetic inheritance from parents and grandparents. Not only from heredity but many criteria or characteristics can determine a person has diabetes. This research was conducted by looking for a dataset on Kaggle that contains criteria for someone diagnosed or undiagnosed with diabetes such as age, gender, weakness, polyuria, polydipsia, and others. Furthermore, from these criteria, predictions are calculated using the Naive Bayes classification method where this method is one of the data mining techniques. This prediction calculation uses the Python programming language. From these criteria, each criterion is grouped with similarities and the results of the program that have been made can diagnose someone with diabetes. The prediction calculations that have been carried out have resulted in 90% accuracy, 93% precision, 89% recall, 92% specificity, and 91% F1-Score.

https://doi.org/10.33005/ijdasea.v1i1.26
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Copyright (c) 2024 Tasya Ardhian Nisaa , Shavira Maya Ningrum , Berlianda Adha Haque