Colocations of spatial clusters among different industries

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computational urban science Pub Date : 2023-11-06 DOI:10.1007/s43762-023-00107-9
Ryo Inoue, Shino Shiode, Narushige Shiode
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Abstract

Abstract Spatial colocation has been studied in many contexts including locations of urban facilities, industry entities and businesses. However, identifying colocations among a small number of facilities and establishments holds the risk of introducing false positive in that such a spatial arrangement may have occurred by chance. To account for the association between a group of facilities that frequently colocate with each other, this study proposes a two-step approach consisting of identifying statistically significant clusters of each facility type using the False Discovery Rate (FDR) controlling procedure, and subsequently measuring the colocation of those clusters with the frequent-pattern-growth (FP-growth) algorithm. Empirical analysis of 6 million business and industrial establishments across Japan suggests that 10 out of 86 industry types form clear colocations and their colocations form a multi-layered, cascading structure. The number of layers in the multi-layered structure reflect the city size and the strength of the association between the colocated clusters of industries. These patterns illustrate the utility of detecting colocation of clusters towards understanding the agglomeration of different businesses. The proposed method can be applied to other contexts that would benefit from investigations into how different types of spatial features can be linked with each other and how they form colocations.
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不同产业间的空间集群配置
空间区位的研究涉及城市设施、工业实体和企业的区位。然而,在少数设施和场所之间确定同一地点有引入假阳性的风险,因为这种空间安排可能是偶然发生的。为了解释一组经常相互搭配的设施之间的关联,本研究提出了一种两步方法,包括使用错误发现率(FDR)控制程序识别每种设施类型的统计显著集群,然后使用频率模式增长(FP-growth)算法测量这些集群的搭配。对日本600万家商业和工业机构的实证分析表明,在86个行业类型中,有10个行业类型形成了明确的搭配,并且它们的搭配形成了多层次的级联结构。多层结构的层数反映了城市规模和产业集群之间的关联强度。这些模式说明了检测集群的托管对理解不同业务的聚集的效用。所提出的方法可以应用于其他背景,这些背景将受益于研究不同类型的空间特征如何相互联系以及它们如何形成搭配。
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