Data Mining Model For Designing Diagnostic Applications Inflammatory Liver Disease

Hepatitis is an infectious disease that is a public health problem that affects morbidity, mortality, public health status, life expectancy, and other socio-economic impacts. Early diagnosis of hepatitis is very important so that it can be treated and treated quickly. In this study, the authors will...

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Main Authors: Omar Pahlevi, Amrin Amrin
Format: Article
Language:English
Published: Politeknik Ganesha Medan 2020-10-01
Series:Sinkron
Subjects:
Online Access:https://jurnal.polgan.ac.id/index.php/sinkron/article/view/10589
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spelling doaj-914dc2a0b4bf4b40896032df744381612020-11-25T04:00:36ZengPoliteknik Ganesha MedanSinkron2541-044X2541-20192020-10-0151515710.33395/sinkron.v5i1.10589568Data Mining Model For Designing Diagnostic Applications Inflammatory Liver DiseaseOmar Pahlevi0Amrin Amrin1Universitas Bina Sarana Informatika, IndonesiaUniversitas Bina Sarana Informatika, IndonesiaHepatitis is an infectious disease that is a public health problem that affects morbidity, mortality, public health status, life expectancy, and other socio-economic impacts. Early diagnosis of hepatitis is very important so that it can be treated and treated quickly. In this study, the authors will apply and compare several data mining classification methods, including the C4.5 algorithm, Naïve Bayes, and k-Nearest Neighbor to diagnose hepatitis, then compare which of the three methods is the most accurate. Based on the results of measuring the performance of the three models using the Cross Validation, Confusion Matrix and ROC Curve methods, it is known that the C4.5 method is the best method with an accuracy of 70.99% and an under the curva (AUC) value of 0.950, then the k-Nearest Neighbor method with accuracy of 67.19% and the value under the curve (AUC) 0.873, then the naïve Bayes method with an accuracy rate of 66.14% and a value under the curve (AUC) of 0.742.https://jurnal.polgan.ac.id/index.php/sinkron/article/view/10589c4.5, naïve bayes, k-nearest neighbor, confusion matrix, roc curva
collection DOAJ
language English
format Article
sources DOAJ
author Omar Pahlevi
Amrin Amrin
spellingShingle Omar Pahlevi
Amrin Amrin
Data Mining Model For Designing Diagnostic Applications Inflammatory Liver Disease
Sinkron
c4.5, naïve bayes, k-nearest neighbor, confusion matrix, roc curva
author_facet Omar Pahlevi
Amrin Amrin
author_sort Omar Pahlevi
title Data Mining Model For Designing Diagnostic Applications Inflammatory Liver Disease
title_short Data Mining Model For Designing Diagnostic Applications Inflammatory Liver Disease
title_full Data Mining Model For Designing Diagnostic Applications Inflammatory Liver Disease
title_fullStr Data Mining Model For Designing Diagnostic Applications Inflammatory Liver Disease
title_full_unstemmed Data Mining Model For Designing Diagnostic Applications Inflammatory Liver Disease
title_sort data mining model for designing diagnostic applications inflammatory liver disease
publisher Politeknik Ganesha Medan
series Sinkron
issn 2541-044X
2541-2019
publishDate 2020-10-01
description Hepatitis is an infectious disease that is a public health problem that affects morbidity, mortality, public health status, life expectancy, and other socio-economic impacts. Early diagnosis of hepatitis is very important so that it can be treated and treated quickly. In this study, the authors will apply and compare several data mining classification methods, including the C4.5 algorithm, Naïve Bayes, and k-Nearest Neighbor to diagnose hepatitis, then compare which of the three methods is the most accurate. Based on the results of measuring the performance of the three models using the Cross Validation, Confusion Matrix and ROC Curve methods, it is known that the C4.5 method is the best method with an accuracy of 70.99% and an under the curva (AUC) value of 0.950, then the k-Nearest Neighbor method with accuracy of 67.19% and the value under the curve (AUC) 0.873, then the naïve Bayes method with an accuracy rate of 66.14% and a value under the curve (AUC) of 0.742.
topic c4.5, naïve bayes, k-nearest neighbor, confusion matrix, roc curva
url https://jurnal.polgan.ac.id/index.php/sinkron/article/view/10589
work_keys_str_mv AT omarpahlevi dataminingmodelfordesigningdiagnosticapplicationsinflammatoryliverdisease
AT amrinamrin dataminingmodelfordesigningdiagnosticapplicationsinflammatoryliverdisease
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