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UEU » Proceeding » Teknik Informatika
Posted by [email protected] at 24/01/2022 14:21:46  •  451 Views


PERFORMANSI K-NN, J48, NAIVE BAYES DAN REGRESI LOGISTIK SEBAGAI ALGORITMA PENGKLASIFIKASI DIABETES

Created by :
Agung Mulyo Widodo ( 0021017305 )
Yanathifal Salsabila Anggraeni; Nizirwan Anwar; Arief Ichwani; Binastya Anggara Sekti



SubjectPENYAKIT KRONIS
KLASIFIKASI
ALGORITMA
Alt. Subject CHRONIC DISEASES
CLASSIFICATION
ALGORITHM
KeywordDiabetes
K-NN
J48
Naive Bayes
Logistics regression

Description:

Diabetes is a chronic disease characterized by high blood sugar (glucose) levels. This disease is often found in adults who are elderly, but this disease can also attack people who are still young. Along with advances in machine learning technology to support decision makers, many predictive models are made of whether a person can be classified as diabetic or not by using certain algorithms. In this study, a prediction model was made whether a person is classified as diabetic or not, based on parameters/variables, namely weight, height, cholesterol levels, fasting sugar, non-fasting sugar, uric acid levels and gender. Prediction model is made using K-NN, J48 (based on decision tree), Naive Bayes and logistic regression classification algorithms. Then a performance analysis was carried out on the testing results of each of these algorithms, and it was found that the K-NN algorithm produced a prediction model with the highest accuracy compared to the three algorithms used in this study.

Date Create:24/01/2022
Type:Text
Format:pdf
Language:Indonesian
Identifier:UEU-Proceeding-14_0116
Collection ID:14_0116


Source :
Prosiding Seminar Nasional Sistem Informasi dan Teknologi (SISFOTEK) ke 5 Tahun 2021

Relation Collection:
Fakultas Ilmu Komputer

Coverage :
Civitas Akademika Universitas Esa Unggul

Rights :
@2022 Perpustakaan Universitas Esa Unggul


Publication URL :
https://digilib.esaunggul.ac.id/performansi-knn-j48-naive-bayes-dan-regresi-logistik-sebagai-algoritma-pengklasifikasi-diabetes-23077.html




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[ Link of Contents]
  1. PERFORMANSI K-NN, J48, NAIVE BAYES DAN REGRESI LOGISTIK SEBAGAI ALGORITMA PENGKLASIFIKASI DIABETES
    https://seminar.iaii.or.id/index.php/SISFOTEK/article/view/253

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Bayes , Diabetes , J48 , K-NN , Logistics , Logistics regression , Naive , Naive Bayes , regression



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