通过生活满意度、人类发展和信息通信技术发展理解社区流动:一种数据挖掘方法

Gunawan
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引用次数: 0

摘要

之前的研究调查了社区流动性,以了解Covid-19病例的传播,特别是在最初的几个月。本研究的目的是通过社会措施来解释社区流动。选择社会生活满意度指数、人类发展指数和信息通信技术发展指数三个综合指标作为解释社区流动的社会相关指标。数据挖掘方法采用Knime分析平台作为软件,跨行业数据挖掘标准流程作为流程框架。该分析使用谷歌流动性报告从2020年7月到2021年8月的数据,涵盖了印度尼西亚34个省份的流动性波动。利用k-medoids算法进行聚类分析,将各省分为高迁移率和低迁移率两类。研究结果表明,省际人口流动波动与社会生活满意度指数、人类发展指数和信息通信技术发展指数存在相关性。巴厘、日惹、雅加达、廖内四省的人口流动、人类发展指数和信息通信技术发展指数较高。该研究为解释人员流动的因素提供了证据,从而丰富了关于人员流动和新冠肺炎大流行社会影响的文献。这一发现也加强了在国家层面上将数据挖掘应用于社会研究的文献。但是,这一结论的推广是有限的,因为分析只包括印度尼西亚的数据。这项研究可以扩展到其他国家,以在各国得出更普遍的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding Community Mobility through Life Satisfaction, Human Development, and ICT Development: a Data Mining Approach
Prior studies have investigated community mobility to understand the spread of Covid-19 cases, especially during the early months. The goal of this study was to explain community mobility through social measures. Three composite measures, namely the social life satisfaction index, human development index, and ICT development index, were selected as social-related measures to explain community mobility. The data mining approach was adopted using the Knime Analytical Platform as the software and the Cross-Industry Standard Process for Data Mining as a process framework. The analysis covered the mobility fluctuation among 34 provinces in Indonesia using the data from Google Mobility Report from July 2020 to August 2021. Cluster analysis with the k-medoids algorithm grouped provinces into higher and lower mobility provinces. The findings indicated an association between mobility fluctuation among provinces and the social life satisfaction index, human development index, and ICT development index. Four provinces, namely Bali, Yogyakarta, Jakarta, and Riau Islands, had higher mobility, human development index, and ICT development index. The study provides evidence of factors explaining human mobility and thus enriches the literature on human mobility and the social impact of the Covid-19 pandemic. The finding also enhances the literature on applying data mining to social research at a country level. However, the generalization of this finding is limited as the analysis covers Indonesian data only. This study could be extended to other countries to arrive at more generalizable results across countries.
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