Geographically Varying Correlates of Car Non-Ownership in Census Output Areas of England, 2001

DOI

Abstract copyright UK Data Service and data collection copyright owner.

Standard indexes of poverty and deprivation are rarely sensitive to how the causes and consequences of deprivation have different impacts depending upon where a person lives. More geographically minded approaches are alert to spatial variations but are also difficult to compute using desktop PCs. The aim of the ESRC sponsored project was to develop a method of spatial analysis known as ‘geographically weighted regression’ (GWR) to run in the high power computing environment offered by ‘Grid computation’ and e-social science. GWR, like many other methods of spatial analysis, is characterised by multiple repeat testing as the data are divided into geographical regions and also randomly redistributed many times to simulate the likelihood that the results obtained from the analysis are actually due to chance. Each of these tests requires computer time so, given a large dataset such as the UK Census statistics, running the analysis on a standard machine can take a long time! Fortunately, the computational grid is not standard but offers the possibility to speed up the process by running GWR’s sequences of calibration, analysis and non-parametric simulation in parallel. An output is a model of the geographically varying correlates of car non-ownership fitted for the 165,665 Census Output Areas in England. Specifically, a geographically weighted regression of the relationship between the proportion of households without a car (or van) in 2001 (the dependent variable), and the following predictor variables: proportion of persons of working age unemployed; proportion of households in public housing; proportion of households that are lone parent households; proportion of persons 16 or above that are single; and proportion of persons that are white British. Note - the file does not contain Census 2001 data, only National Grid references and regression coefficients. Further information is available from the Grid Enabled Spatial Regression Models (With Application to Deprivation Indices) web page.

Main Topics:

Investigating the spatially varying correlates of car non-ownership using GWR.

No sampling (total universe)

Secondary analysis of Census 2001 data.

Compilation or synthesis of existing material

Identifier
DOI http://doi.org/10.5255/UKDA-SN-6100-1
Metadata Access https://datacatalogue.cessda.eu/oai-pmh/v0/oai?verb=GetRecord&metadataPrefix=oai_ddi25&identifier=3cf33f238aa678a1aa1f5e02a6dc64712fba46432a0b410d7747d8a03188ad93
Provenance
Creator Harris, R., University of Bristol, School of Geographical Sciences; Grose, D., Lancaster University, Centre for e-Science
Publisher UK Data Service
Publication Year 2009
Funding Reference Economic and Social Research Council
Rights Copyright R. Harris; <p>The Data Collection is available to UK Data Service registered users subject to the <a href="https://ukdataservice.ac.uk/app/uploads/cd137-enduserlicence.pdf" target="_blank">End User Licence Agreement</a>.</p><p>Commercial use of the data requires approval from the data owner or their nominee. The UK Data Service will contact you.</p>
OpenAccess true
Representation
Language English
Resource Type Numeric
Discipline Economics; Social and Behavioural Sciences
Spatial Coverage England