The Department of Geoinformatics, University of Seoul, Seoul, 02504, Republic of Korea.
Sci Rep. 2023 Aug 24;13(1):13889. doi: 10.1038/s41598-023-40937-5.
This study explores the clusters of closed restaurants in Seoul in response to the COVID-19 pandemic using the relative risk surface (RRS). The RRS developed based on kernel density estimation provides alternative perspectives for finding the cluster by combining different control and case events. Specifically, the varying impacts on diverse types of restaurants are examined by comparing the densities of closed casual restaurants and cafes. The clusters of closed businesses following the COVID-19 outbreak are subsequently explored through a comparison of the densities of the closed businesses preceding the outbreak. Furthermore, this analysis estimates the clusters of declined commercial areas after the pandemic outbreak based on the comparison between the densities of opened and closed restaurants. Finally, the specific time and region of the clusters are explored using space-time RRS. The analysis results effectively demonstrate various aspects of the closed restaurant clusters. For example, in the central business areas, the densities of closed cafes have decreased after the pandemic outbreak, and the density of closed cafes is significantly higher than that of opened cafes. This study would contribute to the literature on spatial data analysis and urban policy support in response to future epidemics.
本研究使用相对风险表面(RRS)探讨了 COVID-19 大流行背景下首尔关闭餐厅的集聚情况。该 RRS 基于核密度估计开发,通过结合不同的控制和案例事件,为发现聚类提供了替代视角。具体而言,通过比较关闭的休闲餐厅和咖啡馆的密度,检验了不同类型餐厅受到的不同影响。通过比较大流行前和大流行后关闭企业的密度,随后探讨了 COVID-19 爆发后关闭企业的集聚情况。此外,本分析还根据开业和关闭餐厅的密度比较,估算了大流行爆发后商业区域下降的集聚情况。最后,使用时空 RRS 探索了聚类的具体时间和区域。分析结果有效地展示了关闭餐厅聚类的各个方面。例如,在中心商务区,大流行爆发后关闭咖啡馆的密度有所下降,且关闭咖啡馆的密度明显高于开业咖啡馆的密度。本研究将有助于空间数据分析和应对未来流行病的城市政策支持方面的文献。