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Activity graphs: Spatial graphs as a framework for quantifying individual mobility

Activity graphs: Spatial graphs as a framework for quantifying individual mobility
Activity graphs: Spatial graphs as a framework for quantifying individual mobility
Human mobility is poorly captured by existing methods which employ simple measures to quantify human mobility patterns. This paper develops spatial graph-based methods to quantify patterns of human mobility – termed activity graphs. Activity graphs are constructed with anchors representing activity locations and edges connecting anchors representing movement between anchors. We first perform a factor analysis to identify four primary dimensions of mobility that can be derived from activity graphs: quantity, extent, connectedness, and clustering. A case study with GPS tracking data from a sample of UK-based workers is then used to demonstrate how activity graphs can be applied in practice, and how new dimensions of mobility captured by activity graphs may lead to new insights about mobility behaviour. We provide several promising new areas for future work where activity graphs can be further extended to address increasingly sophisticated spatial questions around individual mobility. Our analysis fits within the time-geographic framework presented by Hägerstrand and our results highlight opportunities for continued research motivated by issues emphasized by Hägerstrand in his seminal work.
GPS, daily mobility, spatial analysis, spatial graph, time geography
1435-5930
377-402
Long, Jed
7cd45613-cfdc-427d-9c10-8beebaea1598
Lee, Jinhyung
90adf597-aacd-4550-bacf-46250f042dda
Reuschke, Darja
224493ce-38bc-455d-9341-55f8555e7e13
Long, Jed
7cd45613-cfdc-427d-9c10-8beebaea1598
Lee, Jinhyung
90adf597-aacd-4550-bacf-46250f042dda
Reuschke, Darja
224493ce-38bc-455d-9341-55f8555e7e13

Long, Jed, Lee, Jinhyung and Reuschke, Darja (2023) Activity graphs: Spatial graphs as a framework for quantifying individual mobility. Journal of Geographical Systems, 25 (3), 377-402. (doi:10.1007/s10109-023-00405-0).

Record type: Article

Abstract

Human mobility is poorly captured by existing methods which employ simple measures to quantify human mobility patterns. This paper develops spatial graph-based methods to quantify patterns of human mobility – termed activity graphs. Activity graphs are constructed with anchors representing activity locations and edges connecting anchors representing movement between anchors. We first perform a factor analysis to identify four primary dimensions of mobility that can be derived from activity graphs: quantity, extent, connectedness, and clustering. A case study with GPS tracking data from a sample of UK-based workers is then used to demonstrate how activity graphs can be applied in practice, and how new dimensions of mobility captured by activity graphs may lead to new insights about mobility behaviour. We provide several promising new areas for future work where activity graphs can be further extended to address increasingly sophisticated spatial questions around individual mobility. Our analysis fits within the time-geographic framework presented by Hägerstrand and our results highlight opportunities for continued research motivated by issues emphasized by Hägerstrand in his seminal work.

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Accepted/In Press date: 9 January 2023
e-pub ahead of print date: 24 February 2023
Published date: July 2023
Additional Information: Funding Information: This study was funded by the European Research Council, the Starting Grant WORKANDHOME (ERC- 2014-STG 639403). JL is supported by funding from the Natural Sciences and Engineering Research Council of Canada. Publisher Copyright: © 2023, The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.
Keywords: GPS, daily mobility, spatial analysis, spatial graph, time geography

Identifiers

Local EPrints ID: 475759
URI: http://eprints.soton.ac.uk/id/eprint/475759
ISSN: 1435-5930
PURE UUID: 71a7845e-7cd8-4071-9a04-2e1b932b10b4
ORCID for Darja Reuschke: ORCID iD orcid.org/0000-0001-6961-1801

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Date deposited: 27 Mar 2023 16:53
Last modified: 17 Mar 2024 03:41

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Contributors

Author: Jed Long
Author: Jinhyung Lee
Author: Darja Reuschke ORCID iD

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