采用棉兰市- medoids聚类算法(棉兰市卫生服务中心)

Bambang Riyanto
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引用次数: 6

摘要

卫生局负责指导和登记每个地区的腹泻患者,然后评估该地区受腹泻影响最严重的地区。直接到现场检查发现,最根本的原因是环境不干净,比如沟渠里有太多的垃圾,导致雨季洪水泛滥。卫生办公室还鼓励社区保持环境清洁,让人们熟悉在吃饭前用肥皂洗手,清洁后用这样简单的事情,预计将有助于减少棉兰市的腹泻患者。K-Medoids聚类是一种类似于K-Means的聚类算法。这两种算法的区别在于K-Medoids或PAM算法使用对象作为代表(medoid)作为每个聚类的聚类中心,而K-Means使用均值(mean)作为聚类中心。关键词:腹泻,服务办公室,数据挖掘,K-Medoids算法
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PENERAPAN ALGORITMA K-MEDOIDS CLUSTERING UNTUK PENGELOMPOKKAN PENYEBARAN DIARE DI KOTA MEDAN (STUDI KASUS: KANTOR DINAS KESEHATAN KOTA MEDAN)
The health office is in charge of instructing and registering diarrhea sufferers in each region, then the area will be evaluated which areas are most affected by diarrhea. And checking directly into the field revealed that the most basic cause was about the unclean environment such as trenches that were too much garbage, causing floods during the rainy season. The health office also encourages the community to always maintain environmental cleanliness and familiarize people to always wash their hands with soap before eating and after cleaning with simple things like this is expected to help reduce diarrhea sufferers in the city of Medan. K-Medoids Clustering is clustering algorithm which is similar to K-Means. The difference between these two algorithms is the K-Medoids or PAM algorithm uses the object as a representative (medoid) as the center of the cluster for each cluster, while the K-Means uses the mean (mean) as the center of the cluster.Keywords: Diarrhea, Service office, Data mining, K-Medoids Algorithm
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