Grouping The Regencies/Cities in Indonesia Based on Expenditure Groups Inflation Value Using DBSCAN Method

Meliani Putri, Dony Permana, Syafriandi Syafriandi, Zilrahmi
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Abstract

Inflation is one of the important problems faced by a country in achieving economic goals and targets. The amount of inflation is measured using the Consumer Price Index for eleven expenditure groups in 90 regencies/cities in Indonesia. The occurrence of differences in inflation rates between regencies/cities in Indonesia will affect Indonesia's national inflation. The purpose of this research is to grouping regencies/cities based on expenditure groups inflation value and to identify the characteristics of the resulting groups. DBSCAN is a density-based non-hierarchical cluster method that can be used in data conditions that contain outliers. The data used in this study is secondary data obtained from the publication of the Badan Pusat Statistik Republic of Indonesia (BPS RI) regarding inflation by expenditure group. The analysis includes outlier detection, grouping using the DBSCAN method, performing cluster validation with silhouette coefficient, and identifying the characteristics of the clusters formed. Based on the grouping that has been done, two clusters are produced with a silhouette coefficient value of 0.65. The resulting cluster is cluster 0 in the form of a noise cluster consisting of 3 regencies/cities with regencies/cities that have a high category expenditure group inflation rate. Cluster 1 consisting of 87 regencies/cities is a cluster with regencies/cities that have a low category expenditure group inflation rate.
使用DBSCAN方法基于支出组通货膨胀值对印度尼西亚的县/城市进行分组
通货膨胀是一个国家在实现经济目标和指标时面临的重要问题之一。通货膨胀的数额是用消费者价格指数来衡量的,涉及印度尼西亚90个县/城市的11个支出类别。印度尼西亚各县/城市之间通货膨胀率的差异将影响印度尼西亚的全国通货膨胀。本研究的目的是根据支出组的通货膨胀值对县/城市进行分组,并确定结果组的特征。DBSCAN是一种基于密度的非分层聚类方法,可用于包含离群值的数据条件。本研究中使用的数据是从印度尼西亚共和国统计局(BPS RI)关于支出组通货膨胀的出版物中获得的二手数据。分析包括异常值检测,使用DBSCAN方法进行分组,使用轮廓系数进行聚类验证,以及识别所形成的聚类的特征。根据已完成的分组,生成两个剪影系数值为0.65的聚类。由此产生的聚类是聚类0,其形式为噪声聚类,由3个具有高类别支出组通货膨胀率的摄政区/城市组成。由87个摄政/城市组成的集群1是一个具有较低类别支出组通胀率的摄政/城市集群。
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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