Application of K-Means Algorithm for Cluster Analysis on Poverty of Provinces in Indonesia

ComTech Pub Date : 2016-06-01 DOI:10.21512/COMTECH.V7I2.2254
A. D. Sano, Hendro Nindito
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引用次数: 21

Abstract

The objective of this study was to apply cluster analysis or also known as clustering on poverty data of provinces all over Indonesia.The problem was that the decision makers such as central government, local government and non-government organizations, which involved in poverty problems, needed a tool to support decision-making process related to social welfare problems. The method used in the cluster analysis was kmeans algorithm. The data used in this study were drawn from Badan Pusat Statistik (BPS) or Central Bureau of Statistics on 2014.Cluster analysis in this study took characteristics of data such as absolute poverty of each province, relative number or percentage of poverty of each province, and the level of depth index poverty of each province in Indonesia. Results of cluster analysis in this study are presented in the form of grouping of clusters' members visually. Cluster analysis in the study can be used to identify more quickly and efficiently on poverty chart of all provinces all over Indonesia. The results of such identification can be used by policy makers who have interests of eradicating the problems associated with poverty and welfare distribution in Indonesia, ranging from government organizations, non-governmental organizations, and also private organizations.
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K-Means算法在印尼省贫困聚类分析中的应用
本研究的目的是应用聚类分析或也称为聚类对印度尼西亚各省的贫困数据。问题是,涉及贫穷问题的中央政府、地方政府和非政府组织等决策者需要一种工具来支持与社会福利问题有关的决策过程。聚类分析采用kmeans算法。本研究使用的数据来自2014年巴丹市中央统计局(BPS)。本研究的聚类分析采用了印度尼西亚各省的绝对贫困、各省的相对贫困数量或百分比、各省的深度指数贫困水平等数据特征。本研究的聚类分析结果以聚类成员分组的形式直观地呈现出来。研究中的聚类分析可以更快速有效地识别印度尼西亚各省的贫困图表。政府组织、非政府组织和私人组织等决策者可以利用这种鉴定的结果,他们有兴趣消除印度尼西亚与贫穷和福利分配有关的问题。
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发文量
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审稿时长
16 weeks
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