Visual analytics of spatial interaction patterns for pandemic decision support
Author:
D. Guo a
| Affiliation: | a Department of Geography, University of South Carolina, Columbia, USA |
DOI:
10.1080/13658810701349037
Publication Frequency:
12 issues per year
Published in:
International Journal of Geographical Information Science,
Volume
21,
Issue
8
January
2007
, pages 859
- 877
Subjects:
Cartography;
Computer Science (General);
Earth Sciences;
Geographic Information Systems;
Location Based Services;
Navigation;
Systems & Computer Architecture of Databases;
Topography;
Transport Geography;
Formats available:
HTML
(English)
:
PDF
(English)
Previously published as:
International journal of geographical information systems
(0269-3798,
1362-3087)
until 1996
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Abstract
Population mobility, i.e. the movement and contact of individuals across geographic space, is one of the essential factors that determine the course of a pandemic disease spread. This research views both individual-based daily activities and a pandemic spread as spatial interaction problems, where locations interact with each other via the visitors that they share or the virus that is transmitted from one place to another. The research proposes a general visual analytic approach to synthesize very large spatial interaction data and discover interesting (and unknown) patterns. The proposed approach involves a suite of visual and computational techniques, including (1) a new graph partitioning method to segment a very large interaction graph into a moderate number of spatially contiguous subgraphs (regions); (2) a reorderable matrix, with regions 'optimally' ordered on the diagonal, to effectively present a holistic view of major spatial interaction patterns; and (3) a modified flow map, interactively linked to the reorderable matrix, to enable pattern interpretation in a geographical context. The implemented system is able to visualize both people's daily movements and a disease spread over space in a similar way. The discovered spatial interaction patterns provide valuable insight for designing effective pandemic mitigation strategies and supporting decision-making in time-critical situations.
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| Keywords: Spatial data mining; Visual analytics; Spatial interaction; Graph partitioning; Pandemic; Decision support |
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