IMPLEMENTASI MACHINE LEARNING MENGGUNAKAN METODE CASE BASED REASONING UNTUK DIAGNOSA GIZI BURUK PADA ANAK

Yuliana Yuliana, Listra Firgia, Vera Wati
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引用次数: 1

Abstract

Malnutrition is a problem experienced by children in Indonesia, one of which is stunting. The role of Community Health Center is needed in overcoming malnutrition rates in toddlers. This research was conducted by implementing machine learning using the case-based reasoning method to diagnose malnutrition in children. This research aims to reduce stunting experienced by the community around Bengkayang Regency. The purpose of this study was to determine the diagnosis of malnutrition in children at the Bengkayang Health Center. The output of this study is to be able to diagnose malnutrition in children using the case-based reasoning method and the system designed is used as a reference for addressing child development. The variables used in implementing the system are name, age, gender, height, and weight. Then the learning machine looks for the closest case to see the value closest to the stunting problem, so the result is the same. In solving cases by calculating the similarity value, it was found that the new case had similarities with case 04 which was diagnosed with Scurvy Vitamin Deficiency with a similarity value of 0.545454545 or 54.54%.
实现机器学习方法使用基于案例的分析方法诊断儿童营养不良
营养不良是印尼儿童面临的一个问题,其中之一就是发育迟缓。在克服幼儿营养不良率方面,需要社区保健中心发挥作用。本研究通过使用基于案例的推理方法实现机器学习来诊断儿童营养不良。本研究旨在减少本阳县周边社区的发育迟缓现象。本研究的目的是确定在Bengkayang卫生中心对儿童营养不良的诊断。本研究的结果是能够使用基于案例的推理方法诊断儿童营养不良,设计的系统可作为解决儿童发展问题的参考。实现系统时使用的变量有姓名、年龄、性别、身高和体重。然后,学习机寻找最接近的情况,看最接近发育不良问题的值,所以结果是一样的。在求解病例时,计算相似值,发现新病例与诊断为坏血病维生素缺乏症的病例04有相似度,相似值分别为0.54545454545和54.54%。
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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