Implementation of K-Means Clustering on Poverty Indicators in Indonesia

S. Annas, B. Poerwanto, Sapriani Sapriani, Muhammad Fahmuddin S
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引用次数: 2

Abstract

This study aims to cluster all districts/cities in Indonesia related to poverty indicators. The attributes used are poverty gap index and poverty severity index. The data used comes from BPS. The method used is K-Means clustering, and the results show that by using the elbow and silhouette index methods, the optimal number of clusters is 2, where for cluster 1, it can be defined as a cluster with an area with a high poverty gap index and poverty severity index compared to cluster 2. As a result, cluster 1 has 42 districts/cities, and 472 for cluster 2.
在印度尼西亚实施k -均值聚类的贫困指标
这项研究的目的是将印度尼西亚与贫困指标有关的所有地区/城市集中起来。使用的属性是贫困差距指数和贫困严重指数。使用的数据来自BPS。采用K-Means聚类方法,结果表明,使用肘形指数和轮廓指数方法,聚类的最优数量为2个,其中对于聚类1,可以定义为其所在区域的贫困差距指数和贫困严重程度指数高于聚类2。因此,集群1有42个区/市,集群2有472个区/市。
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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