SlideShare a Scribd company logo
1 of 23
Automated zone design
David Martin – NCRM online training resources, slides
to accompany video recorded 21 April 2016
What are zones?
• Divisions of geographical space, usually defined in
terms of polygons - often though of as just shaded
areas on a map
• Usually represented by a single polygon, although
sometimes islands or separate parts
• regions, counties, local authorities, wards, electoral
districts, constituencies, states (US), communes
(France), mesh blocks (Australia), postcode sectors,
output areas (UK)
Example – 2011 census output
areas (England and Wales)
• Key characteristics
• Mean population size 325 persons
• Always having more than 100 persons and 40
households
• Many based on 2001 Census Output Areas
• Matching as far as possible to unit postcodes
• Control over shape and social homogeneity
• Used for the publication of small area census statistics
Contains National Statistics data © Crown copyright and database right 2016
Contains OS data © Crown copyright and database right 2016
Mapping from http://datashine.org.uk
Contains National Statistics data © Crown copyright and database right 2016
Contains OS data © Crown copyright and database right 2016
Mapping from http://datashine.org.uk
Contains National Statistics data © Crown copyright and database right 2016
Contains OS data © Crown copyright and database right 2016
Contains National Statistics data © Crown copyright and database right 2016
Contains OS data © Crown copyright and database right 2016
Mapping from http://datashine.org.uk
Contains National Statistics data © Crown copyright and database right 2016
Contains OS data © Crown copyright and database right 2016
Mapping from http://datashine.org.uk
What is zone design?
• Choice of the number and configuration of zones
• If used to count statistical units (persons,
households), determines which units will be
aggregated
• Disclosure control: ensuring sufficiently large
populations
• Different combinations of historical, administrative
processes or an algorithm
• May be result of very careful consideration or a
relatively arbitrary process
So why does it matter?
• Depending on the purpose, size and position of
boundaries may matter in many different ways
• Geographers know this as the “Modifiable Areal
Unit Problem” (Openshaw, 1984)
• Comprises “scale” and “aggregation” problems
• The same phenomenon when applied to the
manipulation of electoral boundaries is known as
Gerrymandering
A vote is held in 35 (square) neighbourhoods
15 neighbourhoods vote green; 20 vote blue
Arranged in 5 constituencies, blue wins all 5
But with these 5 constituencies, green wins 4, blue wins 1
With these 3 constituencies, green wins 2, blue wins 1
This 7 constituency solution reflects the exact proportion at
the neighbourhood level, green wins 3, blue wins 4
Scale and aggregation problems
• Scale problem: how many constituencies
• Aggregation problem: which configuration of
boundaries, at a given scale
• Gerrymandering and “postcode lottery” issues are
real world consequences of zone design decisions
• Whether design of zones is actually a “problem”
depends on the intended purpose
Impact on statistical relationships
• Way in which counts are grouped may have a direct
impact on measures such as election results
• Configuration of zone boundaries also affects
observed relationships between variables and thus
ecological associations
• Different relationships hold at different
geographical scales, but also for different
aggregations at the same scale
Correlation between Townsend deprivation score and Townsend components and
SMR LLTI 0–64 by mean zone population (under 65)
Source:CockingsandMartin(2005)
Variation in correlations between Townsend deprivation score and SMR LLTI 0–
64 at specific mean zone population (under 65)
Source:CockingsandMartin(2005)
Summary
• Zones used for many statistical and policy purposes
• Zone design can have big impacts on research and
everyday life
• Researchers who use zone-based data need to
understand the methods by which zones have been
created
• Where appropriate, consider designing own zones
appropriate to research objectives
• Particular significance in ensuring confidentiality of
aggregated data
References
• Cockings, S. and Martin, D. (2005) Zone design for
environment and health studies using pre-
aggregated data Social Science and Medicine 60,
2729-2742
• Openshaw, S. (1984) The modifiable areal unit
problem Concepts and Techniques in Modern
Geography No. 38 Geo Books, Norwich
Introduction automated zone design

More Related Content

Viewers also liked

Anonymisation decision making framework
Anonymisation decision making frameworkAnonymisation decision making framework
Anonymisation decision making frameworkUniversity of Southampton
 
Video stimulated reflection, recall and dialogue-introduction to methods
Video stimulated reflection, recall and dialogue-introduction to methodsVideo stimulated reflection, recall and dialogue-introduction to methods
Video stimulated reflection, recall and dialogue-introduction to methodsUniversity of Southampton
 
Creative research methods: Transformative research frameworks
Creative research methods: Transformative research frameworksCreative research methods: Transformative research frameworks
Creative research methods: Transformative research frameworksUniversity of Southampton
 
Creative research methods: Arts-based methods
Creative research methods: Arts-based methodsCreative research methods: Arts-based methods
Creative research methods: Arts-based methodsUniversity of Southampton
 
An introduction to Jupyter Notebooks for Social Science research
An introduction to Jupyter Notebooks for Social Science researchAn introduction to Jupyter Notebooks for Social Science research
An introduction to Jupyter Notebooks for Social Science researchUniversity of Southampton
 
Creative research methods: Research using technology
Creative research methods: Research using technologyCreative research methods: Research using technology
Creative research methods: Research using technologyUniversity of Southampton
 
Goodness of fit statistics poisson regression
Goodness of fit statistics poisson regressionGoodness of fit statistics poisson regression
Goodness of fit statistics poisson regressionUniversity of Southampton
 
Poisson regression models for count data
Poisson regression models for count dataPoisson regression models for count data
Poisson regression models for count dataUniversity of Southampton
 
Diagnostic in poisson regression models
Diagnostic in poisson regression modelsDiagnostic in poisson regression models
Diagnostic in poisson regression modelsUniversity of Southampton
 
Structural equation modeling in amos
Structural equation modeling in amosStructural equation modeling in amos
Structural equation modeling in amosBalaji P
 
Basics of Structural Equation Modeling
Basics of Structural Equation ModelingBasics of Structural Equation Modeling
Basics of Structural Equation Modelingsmackinnon
 

Viewers also liked (18)

Statistical discolosure control
Statistical discolosure controlStatistical discolosure control
Statistical discolosure control
 
Anonymisation theory and practice
Anonymisation theory and practiceAnonymisation theory and practice
Anonymisation theory and practice
 
Anonymisation decision making framework
Anonymisation decision making frameworkAnonymisation decision making framework
Anonymisation decision making framework
 
Video stimulated reflection, recall and dialogue-introduction to methods
Video stimulated reflection, recall and dialogue-introduction to methodsVideo stimulated reflection, recall and dialogue-introduction to methods
Video stimulated reflection, recall and dialogue-introduction to methods
 
Creative research methods: Transformative research frameworks
Creative research methods: Transformative research frameworksCreative research methods: Transformative research frameworks
Creative research methods: Transformative research frameworks
 
Research ethics: Ethical theories
Research ethics: Ethical theoriesResearch ethics: Ethical theories
Research ethics: Ethical theories
 
Creative research methods: Arts-based methods
Creative research methods: Arts-based methodsCreative research methods: Arts-based methods
Creative research methods: Arts-based methods
 
An introduction to Jupyter Notebooks for Social Science research
An introduction to Jupyter Notebooks for Social Science researchAn introduction to Jupyter Notebooks for Social Science research
An introduction to Jupyter Notebooks for Social Science research
 
Research Ethics: Ethical practice
Research Ethics: Ethical practiceResearch Ethics: Ethical practice
Research Ethics: Ethical practice
 
Creative research methods: Research using technology
Creative research methods: Research using technologyCreative research methods: Research using technology
Creative research methods: Research using technology
 
Research ethics: Ethical principles
Research ethics: Ethical principlesResearch ethics: Ethical principles
Research ethics: Ethical principles
 
Introduction to Data Linkage
Introduction to Data LinkageIntroduction to Data Linkage
Introduction to Data Linkage
 
Goodness of fit statistics poisson regression
Goodness of fit statistics poisson regressionGoodness of fit statistics poisson regression
Goodness of fit statistics poisson regression
 
Poisson regression models for count data
Poisson regression models for count dataPoisson regression models for count data
Poisson regression models for count data
 
Diagnostic in poisson regression models
Diagnostic in poisson regression modelsDiagnostic in poisson regression models
Diagnostic in poisson regression models
 
Structural Equation Modelling (SEM) Part 1
Structural Equation Modelling (SEM) Part 1Structural Equation Modelling (SEM) Part 1
Structural Equation Modelling (SEM) Part 1
 
Structural equation modeling in amos
Structural equation modeling in amosStructural equation modeling in amos
Structural equation modeling in amos
 
Basics of Structural Equation Modeling
Basics of Structural Equation ModelingBasics of Structural Equation Modeling
Basics of Structural Equation Modeling
 

Similar to Introduction automated zone design

Customer Knowledge
Customer KnowledgeCustomer Knowledge
Customer KnowledgeLFG
 
A. Alasia, Self-contained Labour Areas as a potential standard geography for ...
A. Alasia, Self-contained Labour Areas as a potential standard geography for ...A. Alasia, Self-contained Labour Areas as a potential standard geography for ...
A. Alasia, Self-contained Labour Areas as a potential standard geography for ...Istituto nazionale di statistica
 
TCI 2015 Cluster Mapping: Pattern in Irish National and Regional Economic Act...
TCI 2015 Cluster Mapping: Pattern in Irish National and Regional Economic Act...TCI 2015 Cluster Mapping: Pattern in Irish National and Regional Economic Act...
TCI 2015 Cluster Mapping: Pattern in Irish National and Regional Economic Act...TCI Network
 
Revised SWUC Slides
Revised SWUC SlidesRevised SWUC Slides
Revised SWUC SlidesParul S.
 
Location, Location, Location: Leveraging Interactive Maps, Administrative, an...
Location, Location, Location: Leveraging Interactive Maps, Administrative, an...Location, Location, Location: Leveraging Interactive Maps, Administrative, an...
Location, Location, Location: Leveraging Interactive Maps, Administrative, an...soder145
 
Location, Location, Location
Location, Location, LocationLocation, Location, Location
Location, Location, Locationsoder145
 
Geodemographics: Open tools and mehtods
Geodemographics: Open tools and mehtodsGeodemographics: Open tools and mehtods
Geodemographics: Open tools and mehtodsDr Muhammad Adnan
 
2015 Information Forum - Ken Bowers
2015 Information Forum - Ken Bowers2015 Information Forum - Ken Bowers
2015 Information Forum - Ken BowersMcrpc Staff
 
Zip Code Tabulation Level Data: The Answer to Enrolling the Remaining Uninsur...
Zip Code Tabulation Level Data: The Answer to Enrolling the Remaining Uninsur...Zip Code Tabulation Level Data: The Answer to Enrolling the Remaining Uninsur...
Zip Code Tabulation Level Data: The Answer to Enrolling the Remaining Uninsur...soder145
 
An introduction to 2011 Census geography
An introduction to 2011 Census geographyAn introduction to 2011 Census geography
An introduction to 2011 Census geographyJames Crone
 
IDMA/Experian Presentation: Justin Gleeson, AIRO
IDMA/Experian Presentation: Justin Gleeson, AIRO IDMA/Experian Presentation: Justin Gleeson, AIRO
IDMA/Experian Presentation: Justin Gleeson, AIRO Justin Gleeson
 
Location, Location, Location: Leveraging Interactive Maps, Administrative and...
Location, Location, Location: Leveraging Interactive Maps, Administrative and...Location, Location, Location: Leveraging Interactive Maps, Administrative and...
Location, Location, Location: Leveraging Interactive Maps, Administrative and...soder145
 
A. Bates, Results of the experience in the UK using Travel to Work Areas, an...
A. Bates,  Results of the experience in the UK using Travel to Work Areas, an...A. Bates,  Results of the experience in the UK using Travel to Work Areas, an...
A. Bates, Results of the experience in the UK using Travel to Work Areas, an...Istituto nazionale di statistica
 
On the social scientific value of transactional data
On the social scientific value of transactional dataOn the social scientific value of transactional data
On the social scientific value of transactional dataBen Anderson
 
Not forgetting the forests for the trees: The art and science of useful impac...
Not forgetting the forests for the trees: The art and science of useful impac...Not forgetting the forests for the trees: The art and science of useful impac...
Not forgetting the forests for the trees: The art and science of useful impac...World Agroforestry (ICRAF)
 

Similar to Introduction automated zone design (20)

Customer Knowledge
Customer KnowledgeCustomer Knowledge
Customer Knowledge
 
A. Alasia, Self-contained Labour Areas as a potential standard geography for ...
A. Alasia, Self-contained Labour Areas as a potential standard geography for ...A. Alasia, Self-contained Labour Areas as a potential standard geography for ...
A. Alasia, Self-contained Labour Areas as a potential standard geography for ...
 
TCI 2015 Cluster Mapping: Pattern in Irish National and Regional Economic Act...
TCI 2015 Cluster Mapping: Pattern in Irish National and Regional Economic Act...TCI 2015 Cluster Mapping: Pattern in Irish National and Regional Economic Act...
TCI 2015 Cluster Mapping: Pattern in Irish National and Regional Economic Act...
 
Revised SWUC Slides
Revised SWUC SlidesRevised SWUC Slides
Revised SWUC Slides
 
Location, Location, Location: Leveraging Interactive Maps, Administrative, an...
Location, Location, Location: Leveraging Interactive Maps, Administrative, an...Location, Location, Location: Leveraging Interactive Maps, Administrative, an...
Location, Location, Location: Leveraging Interactive Maps, Administrative, an...
 
Location, Location, Location
Location, Location, LocationLocation, Location, Location
Location, Location, Location
 
Geodemographics: Open tools and mehtods
Geodemographics: Open tools and mehtodsGeodemographics: Open tools and mehtods
Geodemographics: Open tools and mehtods
 
2015 Information Forum - Ken Bowers
2015 Information Forum - Ken Bowers2015 Information Forum - Ken Bowers
2015 Information Forum - Ken Bowers
 
Longitudunal studies for policy impact
Longitudunal studies for policy impactLongitudunal studies for policy impact
Longitudunal studies for policy impact
 
Zip Code Tabulation Level Data: The Answer to Enrolling the Remaining Uninsur...
Zip Code Tabulation Level Data: The Answer to Enrolling the Remaining Uninsur...Zip Code Tabulation Level Data: The Answer to Enrolling the Remaining Uninsur...
Zip Code Tabulation Level Data: The Answer to Enrolling the Remaining Uninsur...
 
An Introduction to 2011 Census Geography
An Introduction to 2011 Census GeographyAn Introduction to 2011 Census Geography
An Introduction to 2011 Census Geography
 
An introduction to 2011 Census geography
An introduction to 2011 Census geographyAn introduction to 2011 Census geography
An introduction to 2011 Census geography
 
IDMA/Experian Presentation: Justin Gleeson, AIRO
IDMA/Experian Presentation: Justin Gleeson, AIRO IDMA/Experian Presentation: Justin Gleeson, AIRO
IDMA/Experian Presentation: Justin Gleeson, AIRO
 
Vector.pdf
Vector.pdfVector.pdf
Vector.pdf
 
Location, Location, Location: Leveraging Interactive Maps, Administrative and...
Location, Location, Location: Leveraging Interactive Maps, Administrative and...Location, Location, Location: Leveraging Interactive Maps, Administrative and...
Location, Location, Location: Leveraging Interactive Maps, Administrative and...
 
A. Bates, Results of the experience in the UK using Travel to Work Areas, an...
A. Bates,  Results of the experience in the UK using Travel to Work Areas, an...A. Bates,  Results of the experience in the UK using Travel to Work Areas, an...
A. Bates, Results of the experience in the UK using Travel to Work Areas, an...
 
Machine learning and Satellite Images
Machine learning and Satellite ImagesMachine learning and Satellite Images
Machine learning and Satellite Images
 
On the social scientific value of transactional data
On the social scientific value of transactional dataOn the social scientific value of transactional data
On the social scientific value of transactional data
 
5.pdf
5.pdf5.pdf
5.pdf
 
Not forgetting the forests for the trees: The art and science of useful impac...
Not forgetting the forests for the trees: The art and science of useful impac...Not forgetting the forests for the trees: The art and science of useful impac...
Not forgetting the forests for the trees: The art and science of useful impac...
 

More from University of Southampton

Generating SPSS training materials in StatJR
Generating SPSS training materials in StatJRGenerating SPSS training materials in StatJR
Generating SPSS training materials in StatJRUniversity of Southampton
 
Introduction to the Stat-JR software package
Introduction to the Stat-JR software packageIntroduction to the Stat-JR software package
Introduction to the Stat-JR software packageUniversity of Southampton
 
Multi level modelling- random coefficient models | Ian Brunton-Smith
Multi level modelling- random coefficient models | Ian Brunton-SmithMulti level modelling- random coefficient models | Ian Brunton-Smith
Multi level modelling- random coefficient models | Ian Brunton-SmithUniversity of Southampton
 
Multi level modelling - random intercept models | Ian Brunton Smith
Multi level modelling - random intercept models | Ian Brunton SmithMulti level modelling - random intercept models | Ian Brunton Smith
Multi level modelling - random intercept models | Ian Brunton SmithUniversity of Southampton
 
Introduction to multilevel modelling | Ian Brunton-Smith
Introduction to multilevel modelling | Ian Brunton-SmithIntroduction to multilevel modelling | Ian Brunton-Smith
Introduction to multilevel modelling | Ian Brunton-SmithUniversity of Southampton
 
Biosocial research:How to use biological data in social science research?
Biosocial research:How to use biological data in social science research?Biosocial research:How to use biological data in social science research?
Biosocial research:How to use biological data in social science research?University of Southampton
 
Integrating biological and social research data - Michaela Benzeval
Integrating biological and social research data - Michaela BenzevalIntegrating biological and social research data - Michaela Benzeval
Integrating biological and social research data - Michaela BenzevalUniversity of Southampton
 
Teaching research methods: pedagogy hooks
Teaching research methods: pedagogy hooksTeaching research methods: pedagogy hooks
Teaching research methods: pedagogy hooksUniversity of Southampton
 
Teaching research methods: pedagogy of methods learning
Teaching research methods: pedagogy of methods learningTeaching research methods: pedagogy of methods learning
Teaching research methods: pedagogy of methods learningUniversity of Southampton
 
Multilevel models:random coefficient models
Multilevel models:random coefficient modelsMultilevel models:random coefficient models
Multilevel models:random coefficient modelsUniversity of Southampton
 
Multilevel models:random intercept models
Multilevel models:random intercept modelsMultilevel models:random intercept models
Multilevel models:random intercept modelsUniversity of Southampton
 
Introduction to spatial interaction modelling
Introduction to spatial interaction modellingIntroduction to spatial interaction modelling
Introduction to spatial interaction modellingUniversity of Southampton
 
Survey questions and measurement error
Survey questions and measurement errorSurvey questions and measurement error
Survey questions and measurement errorUniversity of Southampton
 

More from University of Southampton (20)

Introduction to Survey Data Quality
Introduction to Survey Data Quality  Introduction to Survey Data Quality
Introduction to Survey Data Quality
 
Generating SPSS training materials in StatJR
Generating SPSS training materials in StatJRGenerating SPSS training materials in StatJR
Generating SPSS training materials in StatJR
 
Introduction to the Stat-JR software package
Introduction to the Stat-JR software packageIntroduction to the Stat-JR software package
Introduction to the Stat-JR software package
 
Multi level modelling- random coefficient models | Ian Brunton-Smith
Multi level modelling- random coefficient models | Ian Brunton-SmithMulti level modelling- random coefficient models | Ian Brunton-Smith
Multi level modelling- random coefficient models | Ian Brunton-Smith
 
Multi level modelling - random intercept models | Ian Brunton Smith
Multi level modelling - random intercept models | Ian Brunton SmithMulti level modelling - random intercept models | Ian Brunton Smith
Multi level modelling - random intercept models | Ian Brunton Smith
 
Introduction to multilevel modelling | Ian Brunton-Smith
Introduction to multilevel modelling | Ian Brunton-SmithIntroduction to multilevel modelling | Ian Brunton-Smith
Introduction to multilevel modelling | Ian Brunton-Smith
 
Biosocial research:How to use biological data in social science research?
Biosocial research:How to use biological data in social science research?Biosocial research:How to use biological data in social science research?
Biosocial research:How to use biological data in social science research?
 
Integrating biological and social research data - Michaela Benzeval
Integrating biological and social research data - Michaela BenzevalIntegrating biological and social research data - Michaela Benzeval
Integrating biological and social research data - Michaela Benzeval
 
Teaching research methods: pedagogy hooks
Teaching research methods: pedagogy hooksTeaching research methods: pedagogy hooks
Teaching research methods: pedagogy hooks
 
Teaching research methods: pedagogy of methods learning
Teaching research methods: pedagogy of methods learningTeaching research methods: pedagogy of methods learning
Teaching research methods: pedagogy of methods learning
 
Data quality: total survey error
Data quality: total survey errorData quality: total survey error
Data quality: total survey error
 
better off living with parents
better off living with parentsbetter off living with parents
better off living with parents
 
Multilevel models:random coefficient models
Multilevel models:random coefficient modelsMultilevel models:random coefficient models
Multilevel models:random coefficient models
 
Multilevel models:random intercept models
Multilevel models:random intercept modelsMultilevel models:random intercept models
Multilevel models:random intercept models
 
Introduction to multilevel modelling
Introduction to multilevel modellingIntroduction to multilevel modelling
Introduction to multilevel modelling
 
How to write about research methods
How to write about research methodsHow to write about research methods
How to write about research methods
 
How to write about research methods
How to write about research methodsHow to write about research methods
How to write about research methods
 
Introduction to spatial interaction modelling
Introduction to spatial interaction modellingIntroduction to spatial interaction modelling
Introduction to spatial interaction modelling
 
Cognitive interviewing
Cognitive interviewingCognitive interviewing
Cognitive interviewing
 
Survey questions and measurement error
Survey questions and measurement errorSurvey questions and measurement error
Survey questions and measurement error
 

Recently uploaded

Solving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptxSolving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptxOH TEIK BIN
 
Presiding Officer Training module 2024 lok sabha elections
Presiding Officer Training module 2024 lok sabha electionsPresiding Officer Training module 2024 lok sabha elections
Presiding Officer Training module 2024 lok sabha electionsanshu789521
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)eniolaolutunde
 
The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13Steve Thomason
 
Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityGeoBlogs
 
Mastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionMastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionSafetyChain Software
 
Class 11 Legal Studies Ch-1 Concept of State .pdf
Class 11 Legal Studies Ch-1 Concept of State .pdfClass 11 Legal Studies Ch-1 Concept of State .pdf
Class 11 Legal Studies Ch-1 Concept of State .pdfakmcokerachita
 
Enzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdf
Enzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdfEnzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdf
Enzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdfSumit Tiwari
 
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Sapana Sha
 
Separation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesSeparation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesFatimaKhan178732
 
mini mental status format.docx
mini    mental       status     format.docxmini    mental       status     format.docx
mini mental status format.docxPoojaSen20
 
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17Celine George
 
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPTECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPTiammrhaywood
 
Introduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxIntroduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxpboyjonauth
 
Interactive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationInteractive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationnomboosow
 
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdfssuser54595a
 

Recently uploaded (20)

TataKelola dan KamSiber Kecerdasan Buatan v022.pdf
TataKelola dan KamSiber Kecerdasan Buatan v022.pdfTataKelola dan KamSiber Kecerdasan Buatan v022.pdf
TataKelola dan KamSiber Kecerdasan Buatan v022.pdf
 
Solving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptxSolving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptx
 
Presiding Officer Training module 2024 lok sabha elections
Presiding Officer Training module 2024 lok sabha electionsPresiding Officer Training module 2024 lok sabha elections
Presiding Officer Training module 2024 lok sabha elections
 
Model Call Girl in Tilak Nagar Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in Tilak Nagar Delhi reach out to us at 🔝9953056974🔝Model Call Girl in Tilak Nagar Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in Tilak Nagar Delhi reach out to us at 🔝9953056974🔝
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)
 
The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13
 
Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activity
 
Mastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionMastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory Inspection
 
Class 11 Legal Studies Ch-1 Concept of State .pdf
Class 11 Legal Studies Ch-1 Concept of State .pdfClass 11 Legal Studies Ch-1 Concept of State .pdf
Class 11 Legal Studies Ch-1 Concept of State .pdf
 
Enzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdf
Enzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdfEnzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdf
Enzyme, Pharmaceutical Aids, Miscellaneous Last Part of Chapter no 5th.pdf
 
Staff of Color (SOC) Retention Efforts DDSD
Staff of Color (SOC) Retention Efforts DDSDStaff of Color (SOC) Retention Efforts DDSD
Staff of Color (SOC) Retention Efforts DDSD
 
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
 
Separation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesSeparation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and Actinides
 
CĂłdigo Creativo y Arte de Software | Unidad 1
CĂłdigo Creativo y Arte de Software | Unidad 1CĂłdigo Creativo y Arte de Software | Unidad 1
CĂłdigo Creativo y Arte de Software | Unidad 1
 
mini mental status format.docx
mini    mental       status     format.docxmini    mental       status     format.docx
mini mental status format.docx
 
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
Incoming and Outgoing Shipments in 1 STEP Using Odoo 17
 
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPTECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
 
Introduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxIntroduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptx
 
Interactive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationInteractive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communication
 
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
 

Introduction automated zone design

  • 1. Automated zone design David Martin – NCRM online training resources, slides to accompany video recorded 21 April 2016
  • 2. What are zones? • Divisions of geographical space, usually defined in terms of polygons - often though of as just shaded areas on a map • Usually represented by a single polygon, although sometimes islands or separate parts • regions, counties, local authorities, wards, electoral districts, constituencies, states (US), communes (France), mesh blocks (Australia), postcode sectors, output areas (UK)
  • 3. Example – 2011 census output areas (England and Wales) • Key characteristics • Mean population size 325 persons • Always having more than 100 persons and 40 households • Many based on 2001 Census Output Areas • Matching as far as possible to unit postcodes • Control over shape and social homogeneity • Used for the publication of small area census statistics
  • 4. Contains National Statistics data © Crown copyright and database right 2016 Contains OS data © Crown copyright and database right 2016 Mapping from http://datashine.org.uk
  • 5. Contains National Statistics data © Crown copyright and database right 2016 Contains OS data © Crown copyright and database right 2016 Mapping from http://datashine.org.uk
  • 6. Contains National Statistics data © Crown copyright and database right 2016 Contains OS data © Crown copyright and database right 2016
  • 7. Contains National Statistics data © Crown copyright and database right 2016 Contains OS data © Crown copyright and database right 2016 Mapping from http://datashine.org.uk
  • 8. Contains National Statistics data © Crown copyright and database right 2016 Contains OS data © Crown copyright and database right 2016 Mapping from http://datashine.org.uk
  • 9. What is zone design? • Choice of the number and configuration of zones • If used to count statistical units (persons, households), determines which units will be aggregated • Disclosure control: ensuring sufficiently large populations • Different combinations of historical, administrative processes or an algorithm • May be result of very careful consideration or a relatively arbitrary process
  • 10. So why does it matter? • Depending on the purpose, size and position of boundaries may matter in many different ways • Geographers know this as the “Modifiable Areal Unit Problem” (Openshaw, 1984) • Comprises “scale” and “aggregation” problems • The same phenomenon when applied to the manipulation of electoral boundaries is known as Gerrymandering
  • 11. A vote is held in 35 (square) neighbourhoods
  • 12. 15 neighbourhoods vote green; 20 vote blue
  • 13. Arranged in 5 constituencies, blue wins all 5
  • 14. But with these 5 constituencies, green wins 4, blue wins 1
  • 15. With these 3 constituencies, green wins 2, blue wins 1
  • 16. This 7 constituency solution reflects the exact proportion at the neighbourhood level, green wins 3, blue wins 4
  • 17. Scale and aggregation problems • Scale problem: how many constituencies • Aggregation problem: which configuration of boundaries, at a given scale • Gerrymandering and “postcode lottery” issues are real world consequences of zone design decisions • Whether design of zones is actually a “problem” depends on the intended purpose
  • 18. Impact on statistical relationships • Way in which counts are grouped may have a direct impact on measures such as election results • Configuration of zone boundaries also affects observed relationships between variables and thus ecological associations • Different relationships hold at different geographical scales, but also for different aggregations at the same scale
  • 19. Correlation between Townsend deprivation score and Townsend components and SMR LLTI 0–64 by mean zone population (under 65) Source:CockingsandMartin(2005)
  • 20. Variation in correlations between Townsend deprivation score and SMR LLTI 0– 64 at specific mean zone population (under 65) Source:CockingsandMartin(2005)
  • 21. Summary • Zones used for many statistical and policy purposes • Zone design can have big impacts on research and everyday life • Researchers who use zone-based data need to understand the methods by which zones have been created • Where appropriate, consider designing own zones appropriate to research objectives • Particular significance in ensuring confidentiality of aggregated data
  • 22. References • Cockings, S. and Martin, D. (2005) Zone design for environment and health studies using pre- aggregated data Social Science and Medicine 60, 2729-2742 • Openshaw, S. (1984) The modifiable areal unit problem Concepts and Techniques in Modern Geography No. 38 Geo Books, Norwich