2019
DOI: 10.1080/13467581.2019.1627215
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Research on the correlation between pedestrian density and street spatial characteristics of commercial blocks in downtown area: a case study on Shanghai Tianzifang

Abstract: Taking Shanghai Tianzifang as an example, this study attempted to utilize theories, such as the Space Syntax Theory, to build a multivariate model with street spatial characteristics as variables, and investigate the correlation between street spatial characteristics and pedestrian density in commercial blocks using multivariate regression analyses of the variables in this model. This study inspected two aspects of spatial characteristics of street space. First, in terms of commercial use characteristics, this… Show more

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Cited by 16 publications
(18 citation statements)
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“…In order to contribute specific measures to allow the efficient planning of land uses in cities, the research team proposes a methodology that allows the minimum number of variables that significantly affect pedestrian volumes in a given area to be obtained. To this end, a multivariable spatial regression model was considered (Anselin, 2006) to combine the calculation methodologies put forward by Song (2007), Lee (2017) and Fang (2019), and the variables indicated in points 2 to 4 in the articles by Jacobs (1961), Cervero (1997), Frank (2006), Cerin (2013), Ewing (2013), Sung (2015) and Hamidi (2019).…”
Section: Measuring Spatial Data In Urbanmentioning
confidence: 99%
See 1 more Smart Citation
“…In order to contribute specific measures to allow the efficient planning of land uses in cities, the research team proposes a methodology that allows the minimum number of variables that significantly affect pedestrian volumes in a given area to be obtained. To this end, a multivariable spatial regression model was considered (Anselin, 2006) to combine the calculation methodologies put forward by Song (2007), Lee (2017) and Fang (2019), and the variables indicated in points 2 to 4 in the articles by Jacobs (1961), Cervero (1997), Frank (2006), Cerin (2013), Ewing (2013), Sung (2015) and Hamidi (2019).…”
Section: Measuring Spatial Data In Urbanmentioning
confidence: 99%
“…However, not all variables can be employed in these models because collinearity exists in some variables (Feuillet, 2016). Therefore, multiple linear regression and principal component analyses are carried out to reduce significant variables (Fang, 2019). In these studies, the variance inflation factor is used as an indicator of collinearity among variables, and any over a high value are ruled out.…”
mentioning
confidence: 99%
“…In previous work, the authors conducted quantitative research on a specific street (Tianzifang) and examined the association between the spatial characteristics of this street and pedestrian flow density (Kai et al 2019). But in this paper, the authors attempted to focus the research perspective on the street constituent elements at a more microscopic level.…”
Section: Research Background and Purposementioning
confidence: 99%
“…There have been previous studies on multielement correlations in this context. Fang et al (2019) analyzed the spatial characteristics of Tianzifang, Shanghai using such theories as spatial syntax; they assigned values to spatial characteristics including store density, the overflow rate of storefront spaces, building entrance-exit density, the degree of integration, building height, and distance from block entrances to explore the relationship between spatial characteristics and pedestrian density via multiple regression analysis. Zhang, Chen, and Shen (2015) quantitatively analyzed the correlation between the spatial elements of traditional mountain settlements as per the figureground relation, street interface type, vertical site characteristics, street scale, and other factors.…”
Section: Previous Researchmentioning
confidence: 99%