Improving the estimation of long-term international emigration at local authority level Joshua Turner Population Statistics Research Unit (PSRU) Local.

Slides:



Advertisements
Similar presentations
Personalisation Workforce Building a workforce to deliver personalised adult social care Presented by Bernie Flaherty Divisional Director, Adult Social.
Advertisements

Improved Methods for Population and Migration Estimates ONS Centre for Demography May 2007.
Update on Population Statistics Research Projects Jonny Tinsley, Population Statistics Research Unit
Improving Migration and Population Statistics: Mid-Year Estimates Office for National Statistics Centre for Demography.
Administrative Data Sources ONS Centre for Demography.
Christchurch Spitalfields 12 February Long Street workshops, Old Street Long Street workshops, Old Street Wood Wharf aspirational, E14.
Data Management and Analysis Migration and Diversity in London BSPS Day Seminar City Hall 2 nd May 2006 Senior Research and Statistical Analyst Ethnic.
Population Estimates Jonathan Swan, ONS Mid-year population estimates The ONS mid-year population estimates: ●At national level for England, Wales ●At.
Housing benefit changes The impact in London West London Lead Members for Housing 16 th November 2010 Nigel Minto Head.
Upward and onward A study of Scots out-migration from a global city from a global city Allan Findlay, Donald Houston, Colin Mason, David McCollum and Richard.
A model-based approach for estimating international emigration for local authorities Brian Foley, Office for National Statistics BSPS day meeting London.
Internal Migration Research Update Kostas Loukas, Population Statistics Research Unit
Identifying new migrant populations in UK cities David Owen and Audrey Lenoël.
Changing subnational fertility trends in England and Wales Nicola Tromans, Dr Julie Jefferies and Eva Natamba Fertility Analysis Unit, ONS Centre for Demography.
N ORTHERN I RELAND Latest trends and estimates in long-term migration 17 th September 2013.
Update on the Demography of London LSE Lent Seminar Series th March 2013 Ms Baljit Bains.
Changes to Internal Migration methodology for English Subnational Population Projections Robert Fry & Lucy Abrahams.
SE London Housing Partnership – an introduction and an overview Mark Baigent London Borough of Greenwich.
Joint UNECE/Eurostat Work Session on Migration Statistics 3 March, 2008, Geneva, Switzerland Selected methods to improve emigration estimates MEASURING.
Sophos Anti Virus Stewart Duncan Technical Manager.
Emerging communities in Merton. Merton Population Profile 2001 Census population th smallest population in London Source 2001 Census
Becoming Canadian Citizens: Intent, process and outcome Kelly Tran, Tina Chui: Statistics Canada Stan Kustec, Martha Justus: Citizenship and Immigration.
A Cluster view of quality using the General Practice Outcome Standards and Framework 5 th July 2012.
UK Official Statistics on Migration: Current Methods & Future Plans Emma Wright Office for National Statistics, UK.
Understanding Population Trends and Processes WHAT HAPPENS WHEN INTERNATIONAL MIGRANTS SETTLE? ETHNIC GROUP POPULATION TRENDS AND PROJECTIONS FOR UK LOCAL.
1 1 BSPS Seminar, GLA May 2 nd 2006 Professor Philip Rees Dr Peter Boden Estimating London’s New Migrant Population.
The micro-geography of UK demographic change Paul Norman School of Geography, University of Leeds understanding population trends and processes.
Migration and the Pursuit of Graduate Jobs Migration and the Pursuit of Graduate Jobs by Irene Mosca Robert E. Wright Department of Economics University.
Internal migration flows in Northern Ireland: exploring patterns and motivations in a divided society Gemma Catney PhD Research Student Centre for Spatial.
How many Eastern Europeans have moved to Northern Ireland? BSPS Conference September 2007 Dr David Marshall NISRA.
Migration Statistics Improvement Programme – Overview of Phase 2 ONS Centre for Demography.
National Statistics Quality Review on International Migration Estimates Update on taking forward the recommendations of the review Emma Wright & Giles.
2011 CENSUS Coverage Assessment – What’s new? OWEN ABBOTT.
Black, Minority Ethnic and Refugee Communities and Dementia Reflections from Implementing The National Dementia Strategy in London David Truswell Senior.
Migration data for South Yorkshire What’s available and what does it tell us?
Secondary data Relevance: A-Level Case study: 2011 UK census Topic: Geographical skills.
Monitoring UK internal migration in the twenty-first century John Stillwell Centre for Interaction Data Estimation and Research (CIDER), School of Geography,
The derivations of London boroughs’ names in spite of the march of its history. Ekaterina Kotova 7 “A” form School № 10.
MOPAC CHALLENGE QUARTERLY PEFORMANCE OF THE MPS APRIL 2013.
1 Measuring Quality Issues Associated with Internal Migration Estimates Joanne Clements, Amir Islam, Ruth Fulton & Jane Naylor Demographics Methods Centre.
The Retention of Graduate Human Capital: An Analysis of Graduate Migration Flows in and out of Scotland by Alessandra Faggian University of Southampton.
Register-based migration statistics and using additional administrative data sources Barica Razpotnik Statistical Office of the Republic of Slovenia UNECE.
Plausibility Ranges for Population Estimates Focusing on ranges for children.
Brian Durrant Chief Executive, LGfL  Other LGfL Services  LGfL Finances.
Map of London SURREY BERKSHIRE BUCKS HERTFORDSHIRE ESSEX KENT.
General Register Office for S C O T L A N D information about Scotland's people BSPS Review of migration methods using health registrations Nick.
An Improved Method for Estimating Immigration to Local Authorities in England and Wales Nigel Swier British Society of Population Studies (BSPS) Conference.
General Register Office for S C O T L A N D information about Scotland's people Comparison between NHSCR and Community health index sources of migration.
General Register Office for S C O T L A N D information about Scotland's people Household Estimates and Projections Esther Roughsedge General Register.
1 Understanding and Measuring Uncertainty Associated with the Mid-Year Population Estimates Joanne Clements Ruth Fulton Alison Whitworth.
Modelling international migration to produce local level estimates Ruth Fulton Office for National Statistics.
New challenges for Social statistics, EurostatLuxemburg, 23 September 2008 New approach to migration statistics in Lithuania NEW APPROACH TO MIGRATION.
Jonathan Smith and Cal Ghee Migration Statistics Improvement, ONSCD Centre for Demography Improving internal migration estimates of students.
2014-based National Population Projections Paul Vickers Office for National Statistics 2 December 2015.
Beyond 2011 Administrative data sources and low-level aggregate models for producing population counts.
Estimating migration in a region of the UK – the potential of administrative data sources UNECE meeting - Edinburgh 20 Nov 2006 Robert Beatty.
Building pride in Cumbria Do not use fonts other than Arial for your presentations Cumbria - Recent Trends: International Migration Cumbria Intelligence.
Public Health Outcomes Framework (PHOF) update August 2015 London briefing London Knowledge and Intelligence Service, 4 August 2015.
Methodology of estimating the annual number of usual resident population in Latvia Baiba Zukula Deputy Director of Social Statistics Department Central.
1 “ Stop Before the Op: The short-term benefits of preoperative smoking cessation in London ” Dr Bobbie Jacobson OBE Director
2021 Census Topic Consultation Statistics User Forum 17 June 2015 Ann Blake, ONS.
“The Health Inequalities Targets What do they mean for London?” Justine Fitzpatrick David Hofman Dr Bobbie Jacobson Leading on Health Intelligence for.
Statistical Research Update Becky Tinsley Louise Morris.
Measuring Internal Migration: Comparing Census and Administrative Data
Building on the Migration Statistics Improvement Programme
How demographics and the economic downturn are affecting the way we live LSE Seminar: 1 July 2013 Neil McDonald: Visiting Fellow CCHPR.
Pan-London employment projects Helping long-term unemployed people back to work Yolande Burgess Strategy Director: Young People’s Education & Skills,
Beyond 2011 Administrative data sources and low-level aggregate models for producing population estimates.
RECONSIDERING POLAR4 BY INSTITUTIONAL MISSION GROUP: Russell Group POLAR An examination of POLAR3 for London as background and a reworking of POLAR4 for.
Presentation transcript:

Improving the estimation of long-term international emigration at local authority level Joshua Turner Population Statistics Research Unit (PSRU) Local Insight Reference Panels 1

Session Topics Brief Background Work so far Preliminary results: Impact of changes Current work Next steps 2

Brief Background 3

Importance of Emigration Birmingham Source: Population Estimates for UK, England and Wales, Scotland and Northern Ireland, Mid-2011 and Mid-2012, ONS Mid-2011 Population1,074,283 Births+17,636 Deaths-8,028 International In-Migration+11,710 International Out-Migration-7,002 Movers to elsewhere in UK-45,503 Movers from elsewhere in UK+42,338 Mid-2012 Population1,085,417 4

Brief Background No datasets with robust counts of emigration at Local Authority level Current method uses a model-based approach 5

Stepwise Model Stepwise model Relationship between IPS LA Level Emigration Estimates (3 Year Average) Predictor Variable 1 Variable 2 Variable i Variable 3 Variable 4 Variable 5 Predictor Variable 1 Variable 2 Variable 4 Variable 3 6

Predictor Variables Census 2011 Number of hostels (+) Number of people of North American country of birth (+) Number of people of Oceania country of birth (+) Number of people of African country of birth (+) Annual Population Survey (APS) Number of people aged 16+ in employment (-) Migrant Worker Scan (MWS) Number of in-migrants of EU8 nationality (+) 7

Poisson Regression Model Emigration estimates constrained to IPS totals Poisson Regression Model IPS LA Level Emigration Estimates (3 Year Average) Predictor Variable 1 Variable 2 Variable 4 Variable 3 8

ABDCEABCDE New Migration Geographies (NMGos) 9 REGION Z NMGO 1NMGO 2 ABDCE Local Authority NMGo Region Cluster Analysis

Constraining Emigration Estimates REGION Z NMGO 1NMGO 2 10,5007,5003,0004,0002,000 ABDCE Local Authority NMGo Region 6,00021,000 Predicted Estimates Final Estimates 10,0007,1432,8573,3331,667 20,0005,000 25,000 Emigrants 10

Work Carried Out So Far 11 Updating the Emigration Methodology Investigate a Non-Modelling Approach Update the Current Method

Explored a non-modelling approach Greater use of administrative data sources Closely similar to the immigration method o BUT unlike the immigration method, there are no datasets which directly count emigration at Local Authority level The Non-Modelling Approach 12

Non-Modelling Approach: Streaming Migrants IPS England and Wales National Emigration Estimate Reason for Migration Study E.g.  Higher Education Statistics Agency (HESA) Student Record Work E.g.  Lifetime Labour Market Database (L2) Other Children E.g.  Patient Register Data System (PRDS) 13

Lifetime Labour Market Database (L2) o 1% sample of records on the National Insurance and Pay as You Earn System (NPS) o Economic activity o 12 months or more of economic inactivity as an indicator of possible emigration IPS ‘Other’ Category o Out-migrants coded as ‘Other’ when free-text answer related to ‘Work’ or ‘Study’ reason Non-Modelling Approach: Data sources 14

Promising results, however... o Improvements in data sources needed o Timing considerations need more development Research and results will help inform how we update the current emigration model Source: Emigration user update August 2014, ONS Non-Modelling Approach: On pause 15

Updating the Current Model Part 1: Removal of NMGos Part 2: Preliminary Results Part 3: Investigating Predictor Variables 16

Remove the Intermediate Geography – New Migration Geography (NMGo) Local Authority population size used in the model to account for area differences (as a rate) Constraining to the IPS- based region level estimates Intermediate (NMGo) Local Authority Regional Part 1: Removing NMGos 17

Reviewed: Research Review Group (ONS Panel of Experts) Consultation with University of Southampton Approved: Removing NMGos Poisson regression method Using LA population size to account for area differences Part 1: Removing NMGos 18

Part 2: Preliminary Results Removing the NMGos 19

Without NMGo Model & Current Model 20 Birmingham Wandsworth Newham Tower Hamlets Camden Manchester Ealing Brent Haringey Lambeth Lewisham Hackney Southwark Richmond upon Thames Kensington & Chelsea Westminster Hammersmith & Fulham City of London Cardiff Oxford Leeds

Birmingham Wandsworth Newham Tower Hamlets Camden Manchester Ealing Brent Haringey Lambeth Lewisham Hackney Southwark Richmond upon Thames Kensington & Chelsea Westminster Hammersmith & Fulham City of London Cardiff Oxford Leeds IPS LA Outflows & Current Model 21 City of Bristol Stafford

Birmingham Wandsworth Newham Tower Hamlets Camden Manchester Ealing Brent Haringey Lambeth Lewisham Hackney Southwark Richmond upon Thames Kensington & Chelsea Westminster Hammersmith & Fulham City of London Cardiff Oxford Leeds IPS LA Outflows & Without NMGo Model 22 City of Bristol Stafford

IPS Outflow – London Region (2012): 102,683 Case Study: London NMGos ModelNMGoPredictedConstrained Current ModelLOI126,50225,351 LOI226,62325,510 LOI324,25323,133 LOI417,13416,404 LOI512,94012,286 Without NMGo Model LOI126,21325,047 LOI223,16422,134 LOI320,29619,396 LOI427,36726,153 LOI510,4149,952 23

NMGo Case Study: LOI3 (Predicted) 24

NMGo Case Study: LOI3 (Final) 25

NMGo Case Study: LOI4 (Predicted) 26

NMGo Case Study: LOI4 (Final) 27

Part 3: Investigating Predictor Variables 28

Project is currently researching potential predictor variables:  Less reliance on Census data  Greater use of administrative data sources  More intuitive  Using ‘manual selection’ of predictor variables  Data sources investigated thoroughly at LA level Part 3: Investigating Predictor Variables 29

University of Southampton consultations approve: Stepwise and manual selection of predictor variables But ensure no correlation between predictor variables and LA population size Part 3: Investigating Predictor Variables 30

Data sources which are being explored include: Patient Register Database HESA Student Record HESA Destination of Leavers Survey Lifetime Labour Market Database (L2) Migrant Worker Scan English School Census Welsh School Census Annual Population Survey Home Office Crime Statistics Part 3: Investigating Predictor Variables 31

Population aged 64 and over Students (aged 20 to 25) of Non-UK nationality in their final year of study Students (aged 20 to 25) of Non-EU nationality in their final year of study Students of Non-EU nationality in their final year of study In-migrants of EU8 nationality registering for a National Insurance number Employed individuals, aged 16 and over Long-term international in-migration flows Short-term international in-migration flows Household with accommodation owned outright Household with accommodation owned with a mortgage Higher/further education students of non-UK nationality Part 3: Possible Predictor Variables 32

Next Steps 1)Continuing research into updating the method 2)Assessment and comparisons 3)Review of changes by RRG and University of Southampton 4)Further consultations with users 33

Key Points  Non-modelling approach on pause  Emigration method updated: 1)Removing NMGos 2)Updating Predictor Variables  Impacts of updates are being investigated 34

What other local data sources should we be exploring? What are your thoughts on the ‘manual selection’ of predictor variables? 35

Thank You for Listening 36