Visualizing urban social change with Self-Organizing Maps: Toronto neighbourhoods, 1996–2006

Change in the socio-economic status of urban neighbourhoods is a complex phenomenon with multiple space, time, and attribute dimensions. The objective of this research was to explore the use of a Self-Organizing Map (SOM) to visualize patterns of urban social change. In a case study, we collected, o...

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Veröffentlicht in:Habitat international 2015-01, Vol.45 (2), p.92-98
Hauptverfasser: Lee, Andrew C.-D., Rinner, Claus
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description Change in the socio-economic status of urban neighbourhoods is a complex phenomenon with multiple space, time, and attribute dimensions. The objective of this research was to explore the use of a Self-Organizing Map (SOM) to visualize patterns of urban social change. In a case study, we collected, organized, and joined data from the 1996, 2001, and 2006 Canadian Census for the City of Toronto. Urban neighbourhoods were represented by Census tracts. The SOM translates multi-dimensional data into two-dimensional graphical patterns of neighbourhood socio-economic status. These were associated with patterns in geographic space. Spatio-temporal change was represented by trajectories in the SOM. The study identified trends of decreasing neighbourhood diversity and shifts in the dynamics of urban social change in Toronto. The proposed methodology could assist with strategic planning of urban development and efficient resource allocation that fits with local needs. •Self-Organizing Maps (SOMs) represent multi-dimensional data graphically.•SOMs support the visualization of magnitude and direction of urban change.•Toronto's neighbourhoods have become less diverse over the last decade.•The areas with the greatest changes in neighbourhood socio-economic status are shifting within the city.
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subjects Canada
Geographic information system
Geographical information systems
Methodology
Neighbourhood trajectory
Resource allocation
Self-organizing map
Social change
Socio-economic status
Space-time-attribute data
Urban change
title Visualizing urban social change with Self-Organizing Maps: Toronto neighbourhoods, 1996–2006
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