COMPARISON OF DEEP NEURAL NETWORKSAND RANDOM FOREST ALGORITHMS FOR MULTICLASS STUNTING PREDICTION IN TODDLERS

WULAN SRI LESTARI and YUNI MARLINA SARAGIH and CAROLINE (2024) COMPARISON OF DEEP NEURAL NETWORKSAND RANDOM FOREST ALGORITHMS FOR MULTICLASS STUNTING PREDICTION IN TODDLERS. TEKNIKA(JURNAL TEKNOLOGI INFORMASI DAN KOMUNIKASI), 13 (3). pp. 412-417. ISSN 2549-8045

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Abstract

Stunting in toddlers is a serious global health issue, with long-term impacts on physical growth and cognitive development. To address this problem more effectively, it is crucial not only to identify whether a child is stunted but also to predict the severity of the condition. Multiclass stunting prediction offers deeper insights into a child’s condition, enabling more precise and targeted interventions. This study aims to compare the performance of multiclass stunting prediction models using two machine learning algorithms: Deep Neural Networks and Random Forest. The research process involved data collection, preprocessing, as well as model development and testing. The results show that the Random Forest model achieved 100% accuracy in training and 99.92% accuracy in testing, while the Deep Neural Networks model achieved 93.49% accuracy in training and 93.21% in testing. Both models demonstrated strong performance in multiclass stunting prediction, with Random Forest proving superior in terms of accuracy compared to Deep Neural Networks

Item Type: Article
Divisions: Lembaga Penelitian dan Pengabdian kepada Masyarakat (LPPM) > Artikel > Fakultas Informatika
Depositing User: Adi Kurniawan
Date Deposited: 20 Mar 2025 10:45
Last Modified: 25 Mar 2025 02:30
URI: https://repository.mikroskil.ac.id/id/eprint/3911

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