Jurnal Simetris
Vol 15, No 1 (2024): JURNAL SIMETRIS VOLUME 15 NO 1 TAHUN 2024

Metode Machine Learning untuk Klasifikasi Data Gizi Balita dengan Algoritma Naïve Bayes, KNN dan Decision Tree

Ramadhani, Ramadhani (Unknown)
Ramadhanu, Ramadhanu (Unknown)



Article Info

Publish Date
03 Jun 2024

Abstract

Stunting in toddlers is a serious health problem, Stunting is a term used to describe the delay in physical development of children from conception or formation to the age of 2 years, resulting in height lower than their chronological age. Stunting in toddlers can be caused by socioeconomic conditions, maternal nutrition during pregnancy, infant diseases, and inadequate infant nutritional intake. Infectious diseases are the most direct and common cause of growth failure in young children, and effective strategies are needed to reduce risk factors for developmental delays in children under the age of five. The method to overcome this problem is a machine learning (ML) classification method that uses Naive Bayes, KNN and Decision Tree algorithms to classify nutritional data of young children, thus helping to overcome developmental delays, early intervention. The result of this study is the highest precision poor naïve bayes algorithm performance found in the malnutrition category at 38% and recall there are two categories that cannot be identified. The KNN algorithm has one category of nutritional risk that cannot be identified precision and recall, KNN is higher than naïve bayes at 40%. The Decision Tree looks normal and has 48% accuracy, with better recall and precision than Naive Bayes and KNN

Copyrights © 2024






Journal Info

Abbrev

simet

Publisher

Subject

Computer Science & IT

Description

Jurnal Simetris terbit dua kali dalam satu tahun, yaitu untuk periode April dan periode November. Naskah yang diajukan adalah karya ilmiah orisinal penulis dalam bidang teknik elektro, teknik mesin atau ilmu komputer, yang belum pernah diterbitkan dan tidak sedang diajukan untuk diterbitan di ...