The Spatial Proximity and Connectivity (SPC) Method for Measuring and Analyzing Residential Segregation
September 11, 2015 Β· Declared Dead Β· π Sociological methodology
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Authors
Elizabeth Roberto
arXiv ID
1509.03678
Category
physics.soc-ph
Cross-listed
cs.SI,
stat.ME
Citations
48
Venue
Sociological methodology
Last Checked
3 months ago
Abstract
In recent years, there has been increasing attention to the spatial dimensions of residential segregation, such as the spatial arrangement of segregated neighborhoods and the geographic scale or relative size of segregated areas. However, the methods used to measure segregation do not incorporate features of the built environment, such as the road connectivity between locations or the physical barriers that divide groups. This article introduces the Spatial Proximity and Connectivity (SPC) method for measuring and analyzing segregation. The SPC method addresses the limitations of current approaches by taking into account how the physical structure of the built environment affects the proximity and connectivity of locations. In this article, I describe the method and its application for studying segregation and spatial inequality more broadly. I demonstrate one such application-analyzing the impact of physical barriers on residential segregation-with a stylized example and an empirical analysis of racial segregation in Pittsburgh, PA. The SPC method contributes to scholarship on residential segregation by capturing the effect of an important yet understudied mechanism of segregation-the connectivity, or physical barriers, between locations-on the level and spatial pattern of segregation, and enables further consideration of the role of the built environment in segregation processes.
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