SlideShare ist ein Scribd-Unternehmen logo
1 von 21
A geodemographic classification of London primary schools Anne Gibbs, John Stillwell & Linda See 14th April 2010
Structure of the presentation Aim of the research Research questions Methodology The Classification What it reveals: the performance of different types of schools Further research
Why Classify? There is a complex set of relationships between schools, neighbourhoods and performance.  Pupil populations are particularly diverse in London.  Classifying schools by their pupil populations: creates some order out of the chaos; enhances understanding by highlighting similarities and differences between schools; has potential to be used as a benchmarking tool by policy makers and managers; provides a framework for further research from both geographical and educational perspectives.
The Database Spring Census 2007 All pupils in maintained primary schools in London Reception to Year 6 Derive new variables e.g. % of mobile pupils in Year 6 English & Maths Levels ,[object Object]
medium
highGeoConvert ,[object Object]
matching to Lower Layer Super   Output Areas (LSOAs)The Database Key Stage 2 Results  Edubase IDACI / LSOA Area Classification
Ethnicity of London Primary Pupils Base population = total number of pupils in the school in the statutory years of Reception to Year 6
Socio-economic variables 1 % eligible for Free School Meals (FSM)  % with English as an Additional Language (EAL) Base population = total number of pupils in the            school in the statutory years of Reception to Year 6 (except for mobility rate, where base is Year 6 only)
% FSM Pupils (quartiles)
% EAL Pupils (quartiles)
Socio-economic variables 2 % eligible for Free School Meals (FSM) % with English as an Additional Language (EAL) % with Special Educational Needs (SEN) % of 2006/7 Year 6 pupils who entered their school after the beginning of Year 5 (MOBILE) Base population = total number of pupils in the            school in the statutory years of Reception to Year 6 (except for mobility rate, where base is Year 6 only)
Correlations between variables All correlations are significant at the 1% level of confidence
Deriving the Schools Classification k-means algorithm in SPSS; distribution of many variables skewed, so the data was range-standardised; ran clustering routine for n=4 to n=22 clusters giving 19 alternative classifications; alternatives assessed for homogeneity and evenness of cluster size, using standardised data; short listing of classifications with 7,10,14 & 16 clusters.
Final Selection     More detailed assessment of ‘short listed’ solutions using 3 measures of cluster validity: Selection of 14-cluster solution
A 5              9 2 B 13 C 14  1  8 3 10   6 11 12 7 D 4 The Schools Classification: Visualisation White British		      Mixed ethnicity                       Non-white / EAL Well-off / stable                  Mobile                         Needy  Source: After Harris et al. (2005) Figure 6.3, p.170.
Cluster profiles: Group D
Cluster profiles: Group A
Cluster profiles: Group B
Cluster profiles: Group C
Super Groups by LEA

Weitere ähnliche Inhalte

Was ist angesagt?

Hscollege expectations
Hscollege expectationsHscollege expectations
Hscollege expectations
chelslab
 
Using geographical micro-data to measure segregation at the scale of competin...
Using geographical micro-data to measure segregation at the scale of competin...Using geographical micro-data to measure segregation at the scale of competin...
Using geographical micro-data to measure segregation at the scale of competin...
Rich Harris
 

Was ist angesagt? (8)

Sherif presentation richard nurse new template
Sherif presentation richard nurse new templateSherif presentation richard nurse new template
Sherif presentation richard nurse new template
 
Research Impact Roadshow
Research Impact RoadshowResearch Impact Roadshow
Research Impact Roadshow
 
Research Summaries: An Evolving Tool in the KMb Tool Box
Research Summaries: An Evolving Tool in the KMb Tool BoxResearch Summaries: An Evolving Tool in the KMb Tool Box
Research Summaries: An Evolving Tool in the KMb Tool Box
 
10 1 Mioko Saito
10 1 Mioko Saito10 1 Mioko Saito
10 1 Mioko Saito
 
Hscollege expectations
Hscollege expectationsHscollege expectations
Hscollege expectations
 
The Evolving Role of the Library in Institutional and Faculty Assessment
The Evolving Role of the Library in Institutional and Faculty AssessmentThe Evolving Role of the Library in Institutional and Faculty Assessment
The Evolving Role of the Library in Institutional and Faculty Assessment
 
Using geographical micro-data to measure segregation at the scale of competin...
Using geographical micro-data to measure segregation at the scale of competin...Using geographical micro-data to measure segregation at the scale of competin...
Using geographical micro-data to measure segregation at the scale of competin...
 
Aligning Course Outcomes, Instructional Resources, and Assessment: Cross-Disc...
Aligning Course Outcomes, Instructional Resources, and Assessment: Cross-Disc...Aligning Course Outcomes, Instructional Resources, and Assessment: Cross-Disc...
Aligning Course Outcomes, Instructional Resources, and Assessment: Cross-Disc...
 

Ähnlich wie A geodemographic classification of London primary schools

S moreno curriculum alignment
S moreno curriculum alignmentS moreno curriculum alignment
S moreno curriculum alignment
Sandra Moreno
 

Ähnlich wie A geodemographic classification of London primary schools (20)

2016 SSLMA Award Presentation
2016 SSLMA Award Presentation 2016 SSLMA Award Presentation
2016 SSLMA Award Presentation
 
Michelle Annette Cloud, PhD Dissertation Defense, Dr. William Allan Kritsonis...
Michelle Annette Cloud, PhD Dissertation Defense, Dr. William Allan Kritsonis...Michelle Annette Cloud, PhD Dissertation Defense, Dr. William Allan Kritsonis...
Michelle Annette Cloud, PhD Dissertation Defense, Dr. William Allan Kritsonis...
 
Dr. W.A. Kritsonis, Dissertation Chair for Dr. Steven Norfleet
Dr. W.A. Kritsonis, Dissertation Chair for Dr. Steven NorfleetDr. W.A. Kritsonis, Dissertation Chair for Dr. Steven Norfleet
Dr. W.A. Kritsonis, Dissertation Chair for Dr. Steven Norfleet
 
Dr. Michelle Annette Cloud, PhD Dissertation Defense, Dr. William Allan Krits...
Dr. Michelle Annette Cloud, PhD Dissertation Defense, Dr. William Allan Krits...Dr. Michelle Annette Cloud, PhD Dissertation Defense, Dr. William Allan Krits...
Dr. Michelle Annette Cloud, PhD Dissertation Defense, Dr. William Allan Krits...
 
Franklin, bobby analysis of dropout predictors schooling v5 n1 2014
Franklin, bobby analysis of dropout predictors   schooling v5 n1 2014Franklin, bobby analysis of dropout predictors   schooling v5 n1 2014
Franklin, bobby analysis of dropout predictors schooling v5 n1 2014
 
Franklin, bobby analysis of dropout predictors schooling v5 n1 2014
Franklin, bobby analysis of dropout predictors   schooling v5 n1 2014Franklin, bobby analysis of dropout predictors   schooling v5 n1 2014
Franklin, bobby analysis of dropout predictors schooling v5 n1 2014
 
School_Quality_Guide_2014_EMS_X125
School_Quality_Guide_2014_EMS_X125School_Quality_Guide_2014_EMS_X125
School_Quality_Guide_2014_EMS_X125
 
Dr. William Allan Kritsonis & Steven Norfleet
Dr. William Allan Kritsonis & Steven NorfleetDr. William Allan Kritsonis & Steven Norfleet
Dr. William Allan Kritsonis & Steven Norfleet
 
Dr. William Kritsonis, Dissertation Chair
Dr. William Kritsonis, Dissertation ChairDr. William Kritsonis, Dissertation Chair
Dr. William Kritsonis, Dissertation Chair
 
Carn Paper On Participatory action research
Carn Paper On Participatory action researchCarn Paper On Participatory action research
Carn Paper On Participatory action research
 
Arthur petterway #1
Arthur petterway #1Arthur petterway #1
Arthur petterway #1
 
CARN paper on action research as professional development
CARN paper on action research as professional developmentCARN paper on action research as professional development
CARN paper on action research as professional development
 
Dr. Arthur L. Petterway, National FORUM Journals
Dr. Arthur L. Petterway, National FORUM JournalsDr. Arthur L. Petterway, National FORUM Journals
Dr. Arthur L. Petterway, National FORUM Journals
 
Vision Project Preview: College Participation
Vision Project Preview: College ParticipationVision Project Preview: College Participation
Vision Project Preview: College Participation
 
Improving the efficiency in education
Improving the efficiency in educationImproving the efficiency in education
Improving the efficiency in education
 
Barry Mcgaw, Australia
Barry Mcgaw, AustraliaBarry Mcgaw, Australia
Barry Mcgaw, Australia
 
A Framework for Examining Tailored Longitudinal Data to Advance Institutional...
A Framework for Examining Tailored Longitudinal Data to Advance Institutional...A Framework for Examining Tailored Longitudinal Data to Advance Institutional...
A Framework for Examining Tailored Longitudinal Data to Advance Institutional...
 
Dr. William Allan Kritsonis, Dissertation Chair for Steven Norfleet, Disserta...
Dr. William Allan Kritsonis, Dissertation Chair for Steven Norfleet, Disserta...Dr. William Allan Kritsonis, Dissertation Chair for Steven Norfleet, Disserta...
Dr. William Allan Kritsonis, Dissertation Chair for Steven Norfleet, Disserta...
 
S moreno curriculum alignment
S moreno curriculum alignmentS moreno curriculum alignment
S moreno curriculum alignment
 
Alex Torrez, Dissertation Proposal, Dr. William Allan Kritsonis, PVAMU/Member...
Alex Torrez, Dissertation Proposal, Dr. William Allan Kritsonis, PVAMU/Member...Alex Torrez, Dissertation Proposal, Dr. William Allan Kritsonis, PVAMU/Member...
Alex Torrez, Dissertation Proposal, Dr. William Allan Kritsonis, PVAMU/Member...
 

Mehr von GISRUK conference

7B_3_Matterhorn on the horizon
7B_3_Matterhorn on the horizon7B_3_Matterhorn on the horizon
7B_3_Matterhorn on the horizon
GISRUK conference
 
7B_2_Topological consistent generalization of openstreetmap
7B_2_Topological consistent generalization of openstreetmap7B_2_Topological consistent generalization of openstreetmap
7B_2_Topological consistent generalization of openstreetmap
GISRUK conference
 
7A_4_Gps data collection setting for pedestrian activity modelling
7A_4_Gps data collection setting for pedestrian activity modelling7A_4_Gps data collection setting for pedestrian activity modelling
7A_4_Gps data collection setting for pedestrian activity modelling
GISRUK conference
 
5A_3_GIS based spatial modelling for improving the sustainability of aggregat...
5A_3_GIS based spatial modelling for improving the sustainability of aggregat...5A_3_GIS based spatial modelling for improving the sustainability of aggregat...
5A_3_GIS based spatial modelling for improving the sustainability of aggregat...
GISRUK conference
 
5A_1_Land evaluation techniques comparing fuzzy ahp with ideal point methods
5A_1_Land evaluation techniques comparing fuzzy ahp with ideal point methods5A_1_Land evaluation techniques comparing fuzzy ahp with ideal point methods
5A_1_Land evaluation techniques comparing fuzzy ahp with ideal point methods
GISRUK conference
 
4B_3_Automatically generating keywods for georeferenced imaged
4B_3_Automatically generating keywods for georeferenced imaged4B_3_Automatically generating keywods for georeferenced imaged
4B_3_Automatically generating keywods for georeferenced imaged
GISRUK conference
 
4B_1_How many volunteers does it take to map an area well
4B_1_How many volunteers does it take to map an area well4B_1_How many volunteers does it take to map an area well
4B_1_How many volunteers does it take to map an area well
GISRUK conference
 
4A_1_Uncertainty in the 2001 output area classification for the census of eng...
4A_1_Uncertainty in the 2001 output area classification for the census of eng...4A_1_Uncertainty in the 2001 output area classification for the census of eng...
4A_1_Uncertainty in the 2001 output area classification for the census of eng...
GISRUK conference
 
3A_4_Applying network analysis to quantify accessibility to urban greenspace ...
3A_4_Applying network analysis to quantify accessibility to urban greenspace ...3A_4_Applying network analysis to quantify accessibility to urban greenspace ...
3A_4_Applying network analysis to quantify accessibility to urban greenspace ...
GISRUK conference
 
3A_2_Modelling health-harming behaviours in a socially ranked geographic space
3A_2_Modelling health-harming behaviours in a socially ranked geographic space3A_2_Modelling health-harming behaviours in a socially ranked geographic space
3A_2_Modelling health-harming behaviours in a socially ranked geographic space
GISRUK conference
 
1A_3_A geodemographic classification of london primary schools
1A_3_A geodemographic classification of london primary schools1A_3_A geodemographic classification of london primary schools
1A_3_A geodemographic classification of london primary schools
GISRUK conference
 
9B_1_Trust in web gis a preliminary investigation of the environment agencys ...
9B_1_Trust in web gis a preliminary investigation of the environment agencys ...9B_1_Trust in web gis a preliminary investigation of the environment agencys ...
9B_1_Trust in web gis a preliminary investigation of the environment agencys ...
GISRUK conference
 
9A_2_Automatic classification of retail spaces from a large scale topographc ...
9A_2_Automatic classification of retail spaces from a large scale topographc ...9A_2_Automatic classification of retail spaces from a large scale topographc ...
9A_2_Automatic classification of retail spaces from a large scale topographc ...
GISRUK conference
 
9A_1_On automatic mapping of environmental data using adaptive general regres...
9A_1_On automatic mapping of environmental data using adaptive general regres...9A_1_On automatic mapping of environmental data using adaptive general regres...
9A_1_On automatic mapping of environmental data using adaptive general regres...
GISRUK conference
 

Mehr von GISRUK conference (20)

8A_1_To vote or not to vote
8A_1_To vote or not to vote8A_1_To vote or not to vote
8A_1_To vote or not to vote
 
7B_3_Matterhorn on the horizon
7B_3_Matterhorn on the horizon7B_3_Matterhorn on the horizon
7B_3_Matterhorn on the horizon
 
7B_2_Topological consistent generalization of openstreetmap
7B_2_Topological consistent generalization of openstreetmap7B_2_Topological consistent generalization of openstreetmap
7B_2_Topological consistent generalization of openstreetmap
 
7A_4_Gps data collection setting for pedestrian activity modelling
7A_4_Gps data collection setting for pedestrian activity modelling7A_4_Gps data collection setting for pedestrian activity modelling
7A_4_Gps data collection setting for pedestrian activity modelling
 
5A_3_GIS based spatial modelling for improving the sustainability of aggregat...
5A_3_GIS based spatial modelling for improving the sustainability of aggregat...5A_3_GIS based spatial modelling for improving the sustainability of aggregat...
5A_3_GIS based spatial modelling for improving the sustainability of aggregat...
 
5A_1_Land evaluation techniques comparing fuzzy ahp with ideal point methods
5A_1_Land evaluation techniques comparing fuzzy ahp with ideal point methods5A_1_Land evaluation techniques comparing fuzzy ahp with ideal point methods
5A_1_Land evaluation techniques comparing fuzzy ahp with ideal point methods
 
4B_3_Automatically generating keywods for georeferenced imaged
4B_3_Automatically generating keywods for georeferenced imaged4B_3_Automatically generating keywods for georeferenced imaged
4B_3_Automatically generating keywods for georeferenced imaged
 
4B_1_How many volunteers does it take to map an area well
4B_1_How many volunteers does it take to map an area well4B_1_How many volunteers does it take to map an area well
4B_1_How many volunteers does it take to map an area well
 
4A_1_Uncertainty in the 2001 output area classification for the census of eng...
4A_1_Uncertainty in the 2001 output area classification for the census of eng...4A_1_Uncertainty in the 2001 output area classification for the census of eng...
4A_1_Uncertainty in the 2001 output area classification for the census of eng...
 
3A_4_Applying network analysis to quantify accessibility to urban greenspace ...
3A_4_Applying network analysis to quantify accessibility to urban greenspace ...3A_4_Applying network analysis to quantify accessibility to urban greenspace ...
3A_4_Applying network analysis to quantify accessibility to urban greenspace ...
 
3A_2_Modelling health-harming behaviours in a socially ranked geographic space
3A_2_Modelling health-harming behaviours in a socially ranked geographic space3A_2_Modelling health-harming behaviours in a socially ranked geographic space
3A_2_Modelling health-harming behaviours in a socially ranked geographic space
 
1A_3_A geodemographic classification of london primary schools
1A_3_A geodemographic classification of london primary schools1A_3_A geodemographic classification of london primary schools
1A_3_A geodemographic classification of london primary schools
 
UK Map Challenge Aidan Slingsby
UK Map Challenge   Aidan SlingsbyUK Map Challenge   Aidan Slingsby
UK Map Challenge Aidan Slingsby
 
SP_4 Supporting spatial negotiations in land use planning
SP_4 Supporting spatial negotiations in land use planningSP_4 Supporting spatial negotiations in land use planning
SP_4 Supporting spatial negotiations in land use planning
 
SP_3 Automatic identification of high streets and classification of urban lan...
SP_3 Automatic identification of high streets and classification of urban lan...SP_3 Automatic identification of high streets and classification of urban lan...
SP_3 Automatic identification of high streets and classification of urban lan...
 
9B_1_Trust in web gis a preliminary investigation of the environment agencys ...
9B_1_Trust in web gis a preliminary investigation of the environment agencys ...9B_1_Trust in web gis a preliminary investigation of the environment agencys ...
9B_1_Trust in web gis a preliminary investigation of the environment agencys ...
 
9A_2_Automatic classification of retail spaces from a large scale topographc ...
9A_2_Automatic classification of retail spaces from a large scale topographc ...9A_2_Automatic classification of retail spaces from a large scale topographc ...
9A_2_Automatic classification of retail spaces from a large scale topographc ...
 
9A_1_On automatic mapping of environmental data using adaptive general regres...
9A_1_On automatic mapping of environmental data using adaptive general regres...9A_1_On automatic mapping of environmental data using adaptive general regres...
9A_1_On automatic mapping of environmental data using adaptive general regres...
 
8B_4_Exploring the usability of geographic information
8B_4_Exploring the usability of geographic information8B_4_Exploring the usability of geographic information
8B_4_Exploring the usability of geographic information
 
8B_2_Using sound to represent uncertainty in address locations
8B_2_Using sound to represent uncertainty in address locations8B_2_Using sound to represent uncertainty in address locations
8B_2_Using sound to represent uncertainty in address locations
 

A geodemographic classification of London primary schools

  • 1. A geodemographic classification of London primary schools Anne Gibbs, John Stillwell & Linda See 14th April 2010
  • 2. Structure of the presentation Aim of the research Research questions Methodology The Classification What it reveals: the performance of different types of schools Further research
  • 3. Why Classify? There is a complex set of relationships between schools, neighbourhoods and performance. Pupil populations are particularly diverse in London. Classifying schools by their pupil populations: creates some order out of the chaos; enhances understanding by highlighting similarities and differences between schools; has potential to be used as a benchmarking tool by policy makers and managers; provides a framework for further research from both geographical and educational perspectives.
  • 4.
  • 6.
  • 7. matching to Lower Layer Super Output Areas (LSOAs)The Database Key Stage 2 Results Edubase IDACI / LSOA Area Classification
  • 8. Ethnicity of London Primary Pupils Base population = total number of pupils in the school in the statutory years of Reception to Year 6
  • 9. Socio-economic variables 1 % eligible for Free School Meals (FSM) % with English as an Additional Language (EAL) Base population = total number of pupils in the school in the statutory years of Reception to Year 6 (except for mobility rate, where base is Year 6 only)
  • 10. % FSM Pupils (quartiles)
  • 11. % EAL Pupils (quartiles)
  • 12. Socio-economic variables 2 % eligible for Free School Meals (FSM) % with English as an Additional Language (EAL) % with Special Educational Needs (SEN) % of 2006/7 Year 6 pupils who entered their school after the beginning of Year 5 (MOBILE) Base population = total number of pupils in the school in the statutory years of Reception to Year 6 (except for mobility rate, where base is Year 6 only)
  • 13. Correlations between variables All correlations are significant at the 1% level of confidence
  • 14. Deriving the Schools Classification k-means algorithm in SPSS; distribution of many variables skewed, so the data was range-standardised; ran clustering routine for n=4 to n=22 clusters giving 19 alternative classifications; alternatives assessed for homogeneity and evenness of cluster size, using standardised data; short listing of classifications with 7,10,14 & 16 clusters.
  • 15. Final Selection More detailed assessment of ‘short listed’ solutions using 3 measures of cluster validity: Selection of 14-cluster solution
  • 16. A 5 9 2 B 13 C 14 1 8 3 10 6 11 12 7 D 4 The Schools Classification: Visualisation White British Mixed ethnicity Non-white / EAL Well-off / stable Mobile Needy Source: After Harris et al. (2005) Figure 6.3, p.170.
  • 22. Contextual Performance Ranking of Clusters(indexed to global average = 100)
  • 23. Possible Future Research Classification as a framework for more detailed analysis of relationship between schools and their neighbourhoods. Classification as a framework for more work on mobility and its impact on educational attainment. Potential for use as a benchmarking tool or as a sampling frame for qualitative research. Feasibility of an online system. Updating the Classification.