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Geographical Ways of looking at segregation

Geographical Ways of looking at segregation. Rich Harris, University of Bristol, UK School of Geographical Sciences & Centre for Market and Public Organisation. Outline. Focus on two opportunities Modelling micro data geographically Mapping school catchment areas to identify polarization

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Geographical Ways of looking at segregation

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  1. Geographical Ways oflooking at segregation Rich Harris, University of Bristol, UK School of Geographical Sciences &Centre for Market and Public Organisation

  2. Outline • Focus on two opportunities • Modelling micro data geographically • Mapping school catchment areas to identify polarization • Building geographical models • Example of Geographically Weighted Regression • Common framework for analysis • “R” • Open source software for computing and statistics • http://cran.r-project.org/

  3. Outline • Focus on two opportunities • Modelling micro data geographically • Mapping school catchment areas to identify polarization • Building geographical models • Example of Geographically Weighted Regression • Common framework for analysis

  4. School “choice” & Social segregation?

  5. Ethnic polarization?

  6. Geographical perspective • Economic theory and government policy suggest schools operate within local markets to attract pupils and funding. • However, there is a deficit of understanding about the scales and configurations of those admission spaces. • Whilst competition for pupils and for school places is assumed to operate at some localised scale, the actual geographies of the markets, where they overlap and where they might be changing are generally unknown. • Aim: To understand processes of polarization in the context of the local markets within which schools operate. • Task: To use micro-data to model those markets

  7. The data • PLASC • Pupil Level Annual Census Returns • Data on all pupils in primary (and secondary) schools in England • 2005/6 data • Information on state educated primary school students (5-11 years old) • 'Self-identified' ethnic category collected from parents when students enrol • Also records postcode unit of pupils' homes • Which they school they attend • School type (selective? Faith school?) • Measure of deprivation (take a free school meal)?

  8. Defining ‘core catchments’ • Imagine centring a polygon at (mid-x, mid-y) based on the residential postcodes of pupils attending a school • Let the polygon grow outwards

  9. The direction of growth is determined as that which returns highest n1 / n2 • where n1 is number of pupils in area going to the school • n2 is all pupils in the area (go to any school) • Measuring prevalence

  10. Continues until a certain proportion of all pupils who attend the school are enclosed… • p = 0.30

  11. Continues until a certain proportion of all pupils who attend the school are enclosed… • p = 0.40

  12. Continues until a certain proportion of all pupils who attend the school are enclosed… • p = 0.50 • Catchment is then defined as the convex hull for pupils of school within the search area.

  13. London

  14. Evidence of polarisation • Are particular social (ethnic) groups travelling further to school ‘than they need to’? • Are there (primary) schools with an intake not representative of the local community? • Are there (primary) schools with shared admission spaces but where one has a very different intake to the other? • Study region: London

  15. Evidence of polarisation • Are particular social (ethnic) groups travelling further to school ‘than they need to’? • Are there (primary) schools with an intake not representative of the local community? • Are there (primary) schools with shared admission spaces but where one has a very different intake to the other? • Study region: London

  16. Defining ‘Near’ • Define as being near to a pupil any primary school that has a core catchment that includes the pupil’s residential postcode • Here the pupil has three near schools

  17. Proportion attending any near school(target catchment p=0.50) LONDON

  18. Evidence of polarisation • Are particular social (ethnic) groups travelling further to school ‘than they need to’? • Are there (primary) schools with an intake not representative of the local community? • Are there (primary) schools with shared admission spaces but where one has a very different intake to the other? • Study region: London

  19. Pairwise Comparisons • Look inside the catchments • Expected intake VsActual ethnic profile of each school • Compare the profiles of locally ‘competing schools’ • ones that overlap (strongly) in terms of their core catchment areas

  20. Visual Summary (LONDON) • Consider those schools with highest expected % Black Caribbean

  21. Visual Summary (LONDON) • Consider those schools with highest expected % Bangladeshi

  22. Outline • Focus on two opportunities • Modelling micro data geographically • Mapping school catchment areas to identify polarization • Building geographical models • Example of Geographically Weighted Regression • Common framework for analysis

  23. Example

  24. Example

  25. Global regression model (n = 31 378 )

  26. But… Geographical variation in the“Asian” coefficient

  27. Geographically Weighted Regression • What is it? • Extension of regression model • Allows model to vary over space • How it works... Regression Point Data Points

  28. Summary of GWR model

  29. Geographical variation in the“Asian” coefficient

  30. Outline • Focus on two opportunities • Modelling micro data geographically • Mapping school catchment areas to identify polarization • Building geographical models • Example of Geographically Weighted Regression • Common framework for analysis

  31. Framework for analysis • “R” • Open source software for statistical computing • Available at CRAN • http://cran.r-project.org/ • WUN GIS Academy • eSeminars about Spatial analysis in ‘R’ • http://www.wun.ac.uk/ggisa/

  32. Thank you!

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