Classification of Stunting in Children Using the C4.5 Algorithm

Muhajir Yunus, M. K. Biddinika, Abdul Fadlil
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引用次数: 1

Abstract

Stunting is a disease caused by malnutrition in children, which results in slow growth. Generally, stunting is characterized by a lack of weight and height in young children. This study aims to classify stunting in children aged 0-60 months using the Decision Tree C4.5 method based on z-score calculations with a sample size of 224 records, consisting of 4 attributes and 1 label, namely Gender, Age, Weight, Height, and Nutritional Status. The results of the study obtained a C4.5 decision tree where the Age variable influenced the classification of stunting with the highest Gain Ratio of 0.185016337. Meanwhile, the evaluation of the model using the Confusion matrix resulted in the highest accuracy of 61.82% and AUC of 0.584.
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基于C4.5算法的儿童发育迟缓分类
发育迟缓是由儿童营养不良引起的一种疾病,导致发育迟缓。一般来说,发育迟缓的特点是幼儿体重和身高不足。本研究采用基于z-score计算的决策树C4.5方法对0-60月龄儿童发育迟缓进行分类,样本量为224条记录,包含4个属性和1个标签,分别是性别、年龄、体重、身高和营养状况。研究结果得到了一棵C4.5决策树,其中年龄变量影响发育迟缓的分类,其增益比最高为0.185016337。同时,使用混淆矩阵对模型进行评价,准确率最高为61.82%,AUC为0.584。
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审稿时长
12 weeks
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