以k -手段为准的RAPIDMINER实施(案例研究:本省麻疹预防)

Riyani Wulan Sari, Anjar Wanto, Agus Perdana Windarto
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引用次数: 41

摘要

麻疹是世界各地儿童死亡的原因之一,每年都在增加。虽然已经实施了麻疹免疫规划,但儿童麻疹的发病率仍然很高。本研究探讨了基于k均值方法的Rapidminer的实施(以各省幼儿麻疹免疫接种为例)。印度尼西亚幼儿麻疹病例的增加从未脱离过政府的关注。数据来源和研究来自中央统计局(BPS)。本研究使用的数据是2004-2017年的数据,包括34个省份。集群过程分为3(3)个集群,即高集群级(C1)、中集群级(C2)和低集群级(C3)。因此,以高聚集性省(C1)为基础的麻疹免疫病例评价为21个省,以中等聚集性省(C2)为基础的麻疹免疫病例评价为12个省,以低聚集性省(C3)为基础的麻疹免疫病例评价为1个省。聚集性结果可作为政府特别是各省的投入,使进入高聚集性的省份得到更多的重视,提高5岁以下儿童麻疹免疫的社会化程度。关键词:数据挖掘,麻疹,聚类,K-means
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IMPLEMENTASI RAPIDMINER DENGAN METODE K-MEANS (STUDY KASUS: IMUNISASI CAMPAK PADA BALITA BERDASARKAN PROVINSI)
Measles is one of the causes of death in children around the world which always increases every year. Although measles immunization programs have been implemented, the incidence of measles in children is still quite high. This study discusses the Implementation of Rapidminer with the K-Means Method (Case Study: Measles Immunization in Toddlers by Province). The increase in cases of measles in toddlers in Indonesia is a case that has never been separated from the government's attention. Data sources and research were obtained from the Central Statistics Agency (BPS). The data used in this study are data from 2004-2017 which consists of 34 provinces. The cluster process is divided into 3 (three) clusters, namely high cluster level (C1), medium cluster level (C2) and low cluster level (C3). So that the assessment for cases of immunization against measles based on high cluster province (C1) is 21 provinces for medium cluster (C2) of 12 provinces and for low cluster (C3) of 1 province. The results of the cluster can be used as input for the government, especially the provinces, so that provinces that enter the high cluster receive more attention and increase the socialization of measles immunization against children under five. Keywords: Data Mining, Measles, Clustering, K-means
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