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Entangled footprints: Understanding urban neighbourhoods by measuring distance, diversity, and direction of flows in Singapore

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This repository contains the data and code for our paper:

Chen, Q., Chuang, I.-T. and Poorthuis, A. (2021) Entangled footprints: Understanding urban neighbourhoods by measuring distance, diversity, and direction of flows in Singapore. Computers, Computers, Environment and Urban Systems, 90, p. 101708. https://doi.org/10.1016/j.compenvurbsys.2021.101708

Introduction

Traditional approaches to human mobility analysis in Geography often rely on census or survey data that is resource-intensive to collect and often has a limited spatio-temporal scope. The advent of new technologies (e.g. geosocial media platforms) provides opportunities to overcome these limitations and, if properly leveraged, can yield more granular insights about human mobility. In this paper, we use an anonymized Twitter dataset collected in Singapore from 2012 to 2016 to investigate this potential to help understand the footprints of urban neighbourhoods from both a spatial and a relational perspective..

We construct home-to-destination networks of individual users based on their inferred home locations. In aggregated form, these networks allow us to analyze three specific mobility indicators at the neighbourhood level, namely the distance, diversity, and direction of urban interactions. By mapping these three indicators of the spatial footprint of each neighbourhood, we can capture the nuances in the position of individual neighbourhoods within the larger urban network. An exploratory spatial regression reveals that socio-economic characteristics (e.g. share of rental housing) and the built environment (i.e. land use) only partially explain these three indicators and a residual analysis points to the need to explicitly include each neighbourhood’s position within the transportation network in future work.

Content

This repository contains all the data and code needed to reproduce the results and figures in our paper. The detailed steps can be found in:

How to download or install

You can install this compendium as an R package, entangledfootprints, from GitHub with:

# install.packages("devtools")
remotes::install_github("spatialnetworkslab/entangledfootprints")

Licenses

Text + figures and data: CC-BY-4.0

Code: See the DESCRIPTION file