Jurnal Transformatika
Vol. 23 No. 1 (2025): July 2025

ALGORITMA RANDOM FOREST, DECISION TREE, DAN XGBOOST UNTUK KLASIFIKASI STUNTING PADA BALITA

Dhika Malita (Unknown)
DHIKA MALITA PUSPITA ARUM (Unknown)
KARTIKA IMAM SANTOSO (Unknown)
ANDRI TRIYONO (Unknown)
EKO SUPRIYADI (Unknown)
AGUS SUSILO NUGROHO (Unknown)
Widodo, Edi (Unknown)



Article Info

Publish Date
14 Jul 2025

Abstract

At the age of toddlers, children need special attention because their brains develop around 80%. Stunting is a form of long-term nutritional deficiency that occurs during the growth and development of children, which are marked with height that is not appropriate or less compared to children their age based on the standard WHO. This condition can adversely affect the cognitive development and health of children. Identifying toddlers who are at risk of experiencing stunting at an early stage is very important to reduce the adverse effects that can affect their quality of life in the future. Traditional methods are less effective in predicting stunting because they often ignore the complex factors that affect the nutritional status of toddlers. This study aims to classify stunting toddlers using Random Forest, Decision Tree, and Extreme Gradient Boost (XGBOOST) algorithms. The results obtained showed that the accuracy of the Random Forest algorithm received the highest accuracy of 99.72 %, Extreme Gradient Boost (XGBOOST) at 99.58 %, and Decision Tree received 98 87 %accuracy.

Copyrights © 2025






Journal Info

Abbrev

TRANSFORMATIKA

Publisher

Subject

Computer Science & IT

Description

Transformatika is a peer reviewed Journal in Indonesian and English published two issues per year (January and July). The aim of Transformatika is to publish high-quality articles of the latest developments in the field of Information Technology. We accept the article with the scope of Information ...