Penerapan Metode K-Means dalam Klasterisasi Status Desa terhadap Keluarga Beresiko Stunting

None Dayla May Cytry, Sarjon Defit, Gunadi Nurcahyo
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Abstract

The Indonesian government issued Presidential Regulation of the Republic of Indonesia Number 72 of 2021 concerning the acceleration of stunting reduction with a prevalence target of 14% by 2024. Stunting has now become a national issue and is of particular concern to the government to overcome the risks it poses. One action that can be taken to prevent stunting is to provide intervention to families at risk of stunting. This intervention is carried out in the form of clustering of sub-districts or villages consisting of babies under two years (baduta), babies under five years (toddlers), and pregnant women with inadequate environmental aspects (sanitation and clean water). Based on this, this research aims to conduct a cluster analysis of sub-districts or villages that are at risk of stunting. The cluster analysis method uses the K-Mean algorithm with reference to 3 clusters, namely low, medium, and high. This research uses a dataset of 71 sub-districts or villages that are at risk of stunting. The research results show that the performance of the K-Means method in cluster analysis produces 32 low-risk sub-districts or villages, with a percentage of 45.07%, 36 medium risks with a percentage of 50.70%, and 3 high risk with a percentage of 4. 23%. Based on these results, this research can contribute to the relevant government in dealing with the spread of stunting
从何而来?从何而来
印度尼西亚政府发布了2021年第72号印度尼西亚共和国总统条例,该条例涉及加快减少发育迟缓,到2024年将患病率降低14%的目标。发育迟缓现在已经成为一个全国性的问题,是政府特别关注的问题,以克服它带来的风险。预防发育迟缓可采取的一项行动是向有发育迟缓风险的家庭提供干预。这一干预措施以街道或村庄集群的形式进行,由两岁以下的婴儿(baduta)、五岁以下的婴儿(幼儿)和环境条件(卫生设施和清洁水)不足的孕妇组成。在此基础上,本研究旨在对存在发育迟缓风险的街道或村庄进行聚类分析。聚类分析方法采用K-Mean算法,参考低、中、高3个聚类。这项研究使用了71个面临发育迟缓风险的街道或村庄的数据集。研究结果表明,聚类分析中K-Means方法的表现产生了32个低风险街道或村庄,占45.07%,36个中等风险街道或村庄,占50.70%,3个高风险街道或村庄,占4%。23%。基于这些结果,本研究可以为相关政府应对发育迟缓的蔓延提供帮助
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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