Title
The time geography of segregation during working hours.
Abstract
While segregation is usually evaluated at the residential level, the recent influx of large streams of data describing urbanites' movement across the city allows to generate detailed descriptions of spatio-temporal segregation patterns across the activity space of individuals. For instance, segregation across the activity space is usually thought to be lower compared with residential segregation given the importance of social complementarity, among other factors, shaping the economies of cities. However, these new dynamic approaches to segregation convey important methodological challenges. This paper proposes a methodological framework to investigate segregation during working hours. Our approach combines three well-known mathematical tools: community detection algorithms, segregation metrics and random walk analysis. Using Santiago (Chile) as our model system, we build a detailed home-work commuting network from a large dataset of mobile phone pings and spatially partition the city into several communities. We then evaluate the probability that two persons at their work location will come from the same community. Finally, a randomization analysis of commuting distances and angles corroborates the strong segregation description for Santiago provided by the sociological literature. While our findings highlights the benefit of developing new approaches to understand dynamic processes in the urban environment, unveiling counterintuitive patterns such as segregation at our workplace also shows a specific example in which the exposure dimension of segregation is successfully studied using the growingly available streams of highly detailed anonymized mobile phone registries.
Year
DOI
Venue
2018
10.1098/rsos.180749
ROYAL SOCIETY OPEN SCIENCE
Keywords
Field
DocType
segregation,community detection,network analysis,urban dynamics
Data science,Complementarity (molecular biology),Counterintuitive,Ecology,Sociology,Urban environment,Model system,Time geography,Mobile phone,Network analysis
Journal
Volume
Issue
ISSN
5
10
2054-5703
Citations 
PageRank 
References 
1
0.37
8
Authors
3
Name
Order
Citations
PageRank
Teodoro Dannamann110.37
Boris Sotomayor-Gómez210.37
Horacio Samaniego311.05