Partitional Clustering of Underdeveloped Area Infrastructure with Unsupervised Learning Approach: A Case Study in the Island of Java, Indonesia

IF 0.5 Q4 REGIONAL & URBAN PLANNING
B. Otok, A. Suharsono, Purhadi Purhadi, R. E. Standsyah, Harun Al Azies
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引用次数: 1

Abstract

This study attempted to identify underdeveloped areas in regencies/cities on the island of Java, Indonesia, based on a number of infrastructure indicators. An unsupervised learning approach was used to perform partition clustering with the K-Means, K-Medoids, and CLARA methods. In addition to technically obtaining clustering results and conducting a performance comparison of the three unsupervised learning methods, another objective of this research was to map the clustering results to make it easier to recognize the characteristics of the regions indicated as underdeveloped areas, which should be absolute priorities for infrastructure development. It was found that the best clustering method was the CLARA method, with a connectivity coefficient of 7.4794 and a Dunn’s index value of 0.1042. The partition clustering of regencies/cities on Java Island using the CLARA method based on infrastructure indicators resulted in 99 regencies/cities included in the cluster of areas with underdeveloped infrastructure, while 12 regencies/cities were included in the cluster of areas with developing infrastructure, and 8 regencies/cities were included in the cluster of areas with developed infrastructure.
用无监督学习方法对欠发达地区基础设施进行分区聚类:以印度尼西亚爪哇岛为例
本研究试图根据一些基础设施指标,确定印度尼西亚爪哇岛各行政区/城市的欠发达地区。使用无监督学习方法,使用K-Means、K-Medoid和CLARA方法进行分区聚类。除了从技术上获得聚类结果并对三种无监督学习方法进行性能比较外,本研究的另一个目的是绘制聚类结果图,使其更容易识别被指示为欠发达地区的地区的特征,这应该是基础设施发展的绝对优先事项。研究发现,最佳的聚类方法是CLARA方法,其连通性系数为7.4794,Dunn指数值为0.1042。根据基础设施指标,使用CLARA方法对爪哇岛的县/城市进行分区聚类,结果99个县/城市被纳入基础设施不发达地区集群,12个县/市被纳入基础建设发展地区集群,8个县/市被纳入基础设施发达的地区集群。
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来源期刊
Journal of Regional and City Planning
Journal of Regional and City Planning REGIONAL & URBAN PLANNING-
CiteScore
1.50
自引率
0.00%
发文量
16
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