Comparison of Diabetes Diseases Classification Models Using Logistic Regression Abd Random Forest Algorithms

Nabila, Putri (2024) Comparison of Diabetes Diseases Classification Models Using Logistic Regression Abd Random Forest Algorithms. Faktor Exacta, 17 (3). ISSN 2502-339X

[thumbnail of 1. Judul_240053_20416255201050_Putri Nabila.pdf] Text
1. Judul_240053_20416255201050_Putri Nabila.pdf

Download (377kB)
[thumbnail of 2. Daftar Isi_240053_20416255201050_Putri Nabila.pdf] Text
2. Daftar Isi_240053_20416255201050_Putri Nabila.pdf

Download (40kB)
[thumbnail of 3. Artikel Utama_240053_20416255201050_Putri Nabila.pdf] Text
3. Artikel Utama_240053_20416255201050_Putri Nabila.pdf
Restricted to Registered users only

Download (260kB)
[thumbnail of 4. Lampiran_240053_20416255201050_Putri Nabila.pdf] Text
4. Lampiran_240053_20416255201050_Putri Nabila.pdf
Restricted to Registered users only

Download (601kB)

Abstract

Diabetes is a lifelong chronic disease that disrupts blood sugar regulation. Diabetes is a life-threatening condition that, if left untreated, can lead to death and other health problems. Several medical tests, including the glycated hemoglobin (A1C) test, blood sugar test, oral glucose tolerance test, and fasting blood sugar test, can be used to detect diabetes. According to statistics, high glucose levels are one of the problems associated with diabetes. This study aims to categorize patients into diabetic and non-diabetic groups using specific diagnostic metrics included in the dataset. 1500 patient records with 9 attributes and 2 classes were used by the researchers. The study used machine learning techniques, including Logistic Regression and Random Forest, along with Confusion Matrix and Receiver Operating Characteristics (ROC) assessment. The Random Forest method produced results of 97% accuracy, 97% precision, 100% recall, and 98% f1-score, indicating that the accuracy level seems good but can still be improved. Based on the accuracy findings, Random Forest is the most effective strategy of Logistic Regression.

Keywords: Classification Confussion Matrix Diabetes, Machine Learning ROC Curve

Item Type: Article
Subjects: T Technology > T Technology (General)
Divisions: Faculty of Engineering, Science and Mathematics > School of Electronics and Computer Science
Depositing User: Pustakawan UBP Karawang
Date Deposited: 31 Oct 2025 03:35
Last Modified: 31 Oct 2025 03:35
URI: http://repository.ubpkarawang.ac.id/id/eprint/4837

Actions (login required)

View Item
View Item