SMOTE-SVM for Handling Imbalanced Data in Obesity Classification

Obesity is a significant health issue associated with various chronic diseases, making its early classification critical for effective interventions. This study investigates the performance of Support Vector Machine (SVM) models with Radial Basis Function (RBF) and Linear kernels on imbalanced obesi...

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Published in:IJCCS (Indonesian Journal of Computing and Cybernetics Systems)
Main Authors: Muhammad Kunta Biddinika, Herman Yuliansyah, Dewi Soyusiawaty, Farhan Radhiansyah Razak
Format: Article
Language:English
Published: Universitas Gadjah Mada 2025-04-01
Subjects:
Online Access:https://jurnal.ugm.ac.id/ijccs/article/view/103994
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author Muhammad Kunta Biddinika
Herman Yuliansyah
Dewi Soyusiawaty
Farhan Radhiansyah Razak
author_facet Muhammad Kunta Biddinika
Herman Yuliansyah
Dewi Soyusiawaty
Farhan Radhiansyah Razak
author_sort Muhammad Kunta Biddinika
collection DOAJ
container_title IJCCS (Indonesian Journal of Computing and Cybernetics Systems)
description Obesity is a significant health issue associated with various chronic diseases, making its early classification critical for effective interventions. This study investigates the performance of Support Vector Machine (SVM) models with Radial Basis Function (RBF) and Linear kernels on imbalanced obesity datasets. To address data imbalance, Synthetic Minority Over-sampling Technique (SMOTE) and Random Undersampling (RUS) were applied. The results reveal that balancing techniques significantly enhance classification performance, with the Linear model achieving the highest accuracy of 96.54% when balanced using SMOTE. However, limitations include reduced recall for minority classes and potential overfitting risks. These findings underscore the importance of balancing techniques in health data classification and offer insights for further optimizing model performance. The study highlights the need for advanced data balancing strategies to improve predictive accuracy and equity across all classes.
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spelling doaj-art-e4f1d80fcec94ecfbbba35fb3ec0979e2025-09-24T08:04:29ZengUniversitas Gadjah MadaIJCCS (Indonesian Journal of Computing and Cybernetics Systems)1978-15202460-72582025-04-0119214115210.22146/ijccs.10399437490SMOTE-SVM for Handling Imbalanced Data in Obesity ClassificationMuhammad Kunta Biddinika0Herman Yuliansyah1Dewi Soyusiawaty2Farhan Radhiansyah Razak3Master Program of Informatics, Universitas Ahmad Dahlan, Yogyakarta, IndonesiaDepartment of Informatics, Universitas Ahmad Dahlan,Yogyakarta, IndonesiaDepartment of Informatics, Universitas Ahmad Dahlan,Yogyakarta, IndonesiaMaster Program of Informatics, Universitas Ahmad Dahlan, Yogyakarta, IndonesiaObesity is a significant health issue associated with various chronic diseases, making its early classification critical for effective interventions. This study investigates the performance of Support Vector Machine (SVM) models with Radial Basis Function (RBF) and Linear kernels on imbalanced obesity datasets. To address data imbalance, Synthetic Minority Over-sampling Technique (SMOTE) and Random Undersampling (RUS) were applied. The results reveal that balancing techniques significantly enhance classification performance, with the Linear model achieving the highest accuracy of 96.54% when balanced using SMOTE. However, limitations include reduced recall for minority classes and potential overfitting risks. These findings underscore the importance of balancing techniques in health data classification and offer insights for further optimizing model performance. The study highlights the need for advanced data balancing strategies to improve predictive accuracy and equity across all classes.https://jurnal.ugm.ac.id/ijccs/article/view/103994obesitysmoterusrbflinear
spellingShingle Muhammad Kunta Biddinika
Herman Yuliansyah
Dewi Soyusiawaty
Farhan Radhiansyah Razak
SMOTE-SVM for Handling Imbalanced Data in Obesity Classification
obesity
smote
rus
rbf
linear
title SMOTE-SVM for Handling Imbalanced Data in Obesity Classification
title_full SMOTE-SVM for Handling Imbalanced Data in Obesity Classification
title_fullStr SMOTE-SVM for Handling Imbalanced Data in Obesity Classification
title_full_unstemmed SMOTE-SVM for Handling Imbalanced Data in Obesity Classification
title_short SMOTE-SVM for Handling Imbalanced Data in Obesity Classification
title_sort smote svm for handling imbalanced data in obesity classification
topic obesity
smote
rus
rbf
linear
url https://jurnal.ugm.ac.id/ijccs/article/view/103994
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AT dewisoyusiawaty smotesvmforhandlingimbalanceddatainobesityclassification
AT farhanradhiansyahrazak smotesvmforhandlingimbalanceddatainobesityclassification