Classification of Big Data Stunting Using Support Vector Regression Method at Stella Maris Medan Maternity Hospital

This study aims to classify big data related to stunting using the Support Vector Regression (SVR) method at Stella Maris Maternity Hospital, Medan. Stunting, a condition of impaired growth in children due to chronic malnutrition and repeated infections, affects physical and cognitive development. W...

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Bibliographic Details
Published inIndonesian Journal of Artificial Intelligence and Data Mining Vol. 7; no. 2; p. 497
Main Authors Chen, Kelvin, Adriansyah, R. A. Fattah, Juliandy, Carles, Sinaga, Frans Mikael, Liko, Frederick, Angkasa, Aswin
Format Journal Article
LanguageEnglish
Published 01.08.2024
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Summary:This study aims to classify big data related to stunting using the Support Vector Regression (SVR) method at Stella Maris Maternity Hospital, Medan. Stunting, a condition of impaired growth in children due to chronic malnutrition and repeated infections, affects physical and cognitive development. With increasing health data, big data processing methods are essential for accurate information. SVR was chosen for handling high-dimensional and non-linear data, providing precise results. The study uses medical information, nutritional history, and socio-economic factors collected from hospital patients. The research process includes data collection, pre-processing to address missing values and outliers, normalization, and SVR application. Final results use SVR with Voting Classifier combining Support Vector Classifier (SVC), Random Forest (RF), and Gradient Boosting (GB), achieving an accuracy of 91.67%. This approach effectively identifies main stunting factors, aiding clinical decision-making and intervention programs. The study showcases big data and machine learning's potential in healthcare, serving as a model for improving health services and monitoring children's health conditions.
ISSN:2614-3372
2614-6150
DOI:10.24014/ijaidm.v7i2.31112