DATA MINING APPLICATION FOR CLUSTERING COVID-19 SPREAD AREAS IN DKI JAKARTA USING THE K-MEANS ALGORITHM

Turkamun Adi Kurniawan, T.W. Wisjhnuadji, Habib Kholil Al Hanif
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Abstract

Coronavirus Disease 2019 (coronavirus disease2019, abbreviated as COVID-19) is an infectious disease caused by SARS-Cov-2, a type of coronavirus. Covid-19 patients can experience fever, dry batik, and difficulty breathing. The infection spreads from one person to another through a splash (droplet) from the respiratory tract produced when coughing or sneezing.  The number of residents until 2019 reached 11,063,324 people spread across 6 cities consisting of 44 districts and 267 urban villages, making Covid-19 easy to spread. To be able to see the area of spread of Covid-19, it is necessary to group based on the attributes used consisting of Suspect Cases, Probable, Cases, Close Contacts, Confirmed Cases and Deaths. In this study, to cluster the data, the K-Means method and the Euclidean distance measurement method were used. This study produced a prototype application for grouping data on the distribution of Covid-19 patients. The result of the implementation of the K-Means Algorithm is that the Covid-19 spread cluster in DKI Jakarta is divided into 3 (three) clusters, namely cluster 1, cluster 2 and cluster 3. Cluster 1 is a medium case zone, Cluster 2 is a high case zone and Cluster 3 is a low case zone.
基于k-means算法的数据挖掘在雅加达dki COVID-19传播区聚类中的应用
冠状病毒病2019(冠状病毒病2019,简称COVID-19)是一种由冠状病毒SARS-Cov-2引起的传染病。Covid-19患者可能会出现发烧、蜡染干燥和呼吸困难的症状。这种感染通过咳嗽或打喷嚏时呼吸道产生的飞溅物(飞沫)从一个人传播到另一个人。截至2019年,居民人数达到11063324人,分布在由44个区和267个城中村组成的6个城市,很容易传播。为了能够看到Covid-19的传播区域,有必要根据使用的属性进行分组,包括疑似病例、可能病例、病例、密切接触者、确诊病例和死亡病例。本研究采用K-Means方法和欧氏距离测量方法对数据进行聚类。这项研究产生了一个关于Covid-19患者分布分组数据的原型应用程序。实施K-Means算法的结果是,将雅加达DKI的Covid-19传播聚类分为3(3)个聚类,即聚类1、聚类2和聚类3。集群1是中等病例区,集群2是高病例区,集群3是低病例区。
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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