Clustering Villages Based on Distance and Accessibility to Health Facilities Using the K-Means Method

Noviandi Noviandi, Stefanny Amalia Noviantika, Bambang Irawan
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Abstract

There are 47 very underdeveloped and 63 underdeveloped villages in Melawi regency. More than 50% of the villages have no health facilities, and the percentage of road lengths with good condition is only 20.53% in Melawi County. One of the most important factors influencing health problems is the physical aspect such as the availability of health facilities. In addition, the distance and easy access to health facilities also influence how quickly people are treated and vaccinated during the Covid 19 pandemic. The objective of this study is to determine the degree of accessibility of health facilities in villages by forming village clusters that are likely to be important to the government in ensuring treatment and distribution of Covid 19 vaccine. The clustering method used is the K-Means method with Euclidean spacing to calculate the spacing of the data and the Elbow method to determine the optimal number of clusters on the data, and the Silhouette coefficient evaluation method to test the degree of accuracy of the model created with K-Means. The results of the Elbow method showed the optimal number of clusters to be 2 clusters. Based on the results of the K-Means algorithm process, the clusters that have a larger average distance and access is rated as difficult are cluster 1 with 92 villages in it, and cluster 1 has a smaller average distance and access is relatively easy with 77 villages in it. The result of the evaluation with the silhouette coefficient is 0.299.
基于卫生设施距离和可及性的k -均值法村落聚类
马拉维摄政有47个非常不发达的村庄和63个不发达的村庄。50%以上的村庄没有卫生设施,在马拉威县,状况良好的道路长度百分比仅为20.53%。影响健康问题的最重要因素之一是物质方面,例如卫生设施的可用性。此外,在2019冠状病毒病大流行期间,卫生设施的距离和便利性也影响了人们获得治疗和接种疫苗的速度。本研究的目的是通过形成对政府在确保Covid - 19疫苗的治疗和分发方面可能很重要的村庄集群,来确定村庄卫生设施的可及性程度。聚类方法采用的是基于欧几里得间距的K-Means方法来计算数据的间距,采用Elbow方法来确定数据上的最优聚类数,采用Silhouette系数评价方法来检验用K-Means建立的模型的精度程度。肘部法的结果表明,最优聚类数为2个。根据K-Means算法过程的结果,平均距离较大且被评为难以访问的聚类是聚类1,有92个村庄,聚类1平均距离较小,访问相对容易,有77个村庄。剪影系数评价结果为0.299。
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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