CLASSIFICATION OF THE NUTRITION STATUS TODDLER USING THE SVM METHOD (CASE STUDY: BANJARAGUNG VILLAGE, BARENG, JOMBANG)

Eko Prasetyo, Rahmawati Febrifyaning Tias, Efilah Risqi Maulana
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Abstract

Improving the health status of children under five is very necessary in determining the next generation of the Indonesian nation. One of the efforts that can be realized is to maintain the nutrition of children under five in the community. Balanced nutrition can increase immunity and increase intelligence so as to make normal growth. In social life, nutritional status is obtained through anthropometric measurements at a posyandu where people generally use the BB/U index or body weight compared to age to determine the nutritional status of toddlers. This study aims to make it easier to identify the nutritional status of toddlers using Data Mining with Support Vector Machine (SVM). system built with PHP programming language and postgreSQL database. This study uses data on 314 toddlers in 4 groups of posyandu in the village. The data was tested 2 times, the first with a 50:50 comparison and the second 70:30 for training data and testing data. The results showed an accuracy of 96% and 98%, in other words, SVM was categorized as good for testing the nutritional status of children under five.
基于支持向量机的幼儿营养状况分类(以banjaragung村barareng、jombang为例)
改善五岁以下儿童的健康状况对于确定印度尼西亚民族的下一代是非常必要的。其中一个可以实现的努力是维持社区五岁以下儿童的营养。均衡的营养可以增强免疫力,提高智力,使其正常生长。在社会生活中,营养状况是通过人体测量来获得的,人们通常使用BB/U指数或体重与年龄的比较来确定幼儿的营养状况。本研究旨在利用支持向量机(SVM)数据挖掘技术更容易地识别幼儿的营养状况。系统采用PHP编程语言和postgreSQL数据库构建。本研究使用了该村4组posyandu的314名幼儿的数据。数据测试了2次,第一次是50:50的对比,第二次是70:30的训练数据和测试数据。结果表明,SVM的准确率分别为96%和98%,也就是说,SVM可以很好地测试5岁以下儿童的营养状况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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