应用 K-Means 聚类法对德利士当地区登革热(DHF)的传播进行分组

Erica Melysa Sembiring
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引用次数: 1

摘要

DBD是一种传播迅速的疾病。通常,如果有一个地区受到登革热的影响,它很可能传播给该地区的其他人。由于DBD患者人数众多,因此需要收集大量数据,并对这些数据进行处理,例如将DBD患者数据分组,目的是将病媒控制重点放在易患DBD的地区。该领域将是开展与处理DBD有关的社会化的主要优先领域。数据挖掘是从大型数据库仓库中获取有用信息的一系列过程。数据挖掘过程中用于查找组或识别组的功能之一是聚类。聚类方法有两种,即分层聚类和非分层聚类,通常称为Kmeans。K-Means聚类首先确定聚类的数量。对数据进行分组后得到的结果以Deli Serdang DBD潜力最高的地区的形式出现。采用聚类方法进行计算,可以帮助解决德里塞当县在DBD患者数据分类方面仍然需要手工完成的问题
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Penerapan K-Means Clustering Untuk Pengelompokan Penyebaran Demam Berdarah Dengue (DBD) Di Kabupaten Deli Serdang
DBD is a disease that spread rapidly. Usually if there is an area affected by dengue fever, it is likely to spread to other people in the area. Due to the large number of DBD sufferers, so much data is collected and processing needs to be done on these data, such as the grouping of DBD sufferers data with the aim of focusing vector control in areas that are vulnerable to DBD. The area will be the main priority to carry out socialization related to the handling of DBD. Data mining is a series of processes to get useful information from large database warehouses. One function of the data mining process for finding groups or group identification is Clustering. There are two types of clustering methods, namely hierarchical clustering and non-hierarchical clustering, commonly called Kmeans. K-Means Clustering begins by determining the number of clusters first. The results obtained from grouping the data are in the form of areas that have the highest DBD potential in Deli Serdang. By using clustering method to do calculations, it can help solve problems in Deli Serdang Regency in classifying the data of DBD sufferers which is still done manually
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