Multi-Class Imbalance Classification of Diabetes Cases Using Light Gradient Boosting Machine
Penulis/Author
Indah Manfaati Nur (1); Prof. Dr.rer.nat. Dedi Rosadi, S.Si.,, M.Sc. (2); Prof. Dr. Abdurakhman, S.Si., M.Si. (3)
Tanggal/Date
24 2024
Kata Kunci/Keyword
Abstrak/Abstract
Diabetes is the third leading cause of death in Indonesia. Diabetes
is considered a silent killer because it kills slowly and triggers various
complications of chronic diseases in the body of the sufferer. Early detection
of diabetes is very important to reduce the risk of more serious health
problems and reduce the country's socio-economic losses in diabetes
management. Machine learning classification is an alternative method that
can be used for early detection of diabetes by predicting category labels from
observed data. This study aims to classify diabetes using the Light Gradient
Boosting Machine (LGBM) method with Synthetic Minority Oversampling
Technique of Nominal and Continuous (SMOTENC). The SMOTENC
oversampling method is used to handle the imbalance problem in the dataset
used, while the LGBM method is used for multi-class classification of
diabetes. The results showed that by applying the SMOTENC technique, a
more balanced data distribution was obtained, so that when used in the
classification process using LGBM, it resulted in high model performance.
Based on the confusion matrix, the accuracy value is 90%.
Level
Internasional
Status
Dokumen Karya
No
Judul
Tipe Dokumen
Aksi
1
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