AFFAN ASYRAFFI, -
(2025)
PENERAPAN ALGORITMA SUPPORT VECTOR MACHINE DALAM MENENTUKAN STATUS GIZI BALITA DI KOTA PEKANBARU.
Science, Technology and Communication Journal (SINTECHCOM), 5 (2).
pp. 27-36.
Abstract
ABSTRACT
Inadequate nutrition in toddlers can lead to health issues and adversely
affect their growth, development, and cognitive capabilities.
Consequently, it is essential to assess the nutritional status of toddlers to
ascertain their health level. This study seeks to ascertain the nutritional
health of toddlers utilizing the support vector machine (SVM)
methodology, taking into account body weight (BB), height (TB), age,
BB/TB ratio, Z-scores for BB/U, Z-scores for TB/U, and Z-scores for
BB/TB. The data of 1458 toddlers were evaluated using the knowledge
data discovery methodology. This study effectively categorized toddler
nutrition into six classifications including malnutrition, undernutrition,
adequate nutrition, overnutrition, risk of overnutrition, and obesity.
Utilizing the confusion matrix methodology with an 80% training data
to 20% test data ratio yields an accuracy of 89.04%. The SVM method is
effectively utilized to ascertain the nutritional condition of toddlers,
hence enhancing their growth and development.
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