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ONS Small Area Population Estimates Project

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led to setting up of Neighbourhood Statistics. requirement for small area population ... Key postcoded data sources. Patient registers - Health Authorities ... – PowerPoint PPT presentation

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Title: ONS Small Area Population Estimates Project


1
ONS Small Area Population Estimates Project
  • Andy Bates
  • Office for National Statistics

2
Project background
  • National Strategy for Neighbourhood Renewal
  • led to setting up of Neighbourhood Statistics
  • requirement for small area population estimates
  • ONS Population Statistics Review September 1998
  • found unmet user need for small area population
    estimates

3
Purpose of the project
  • To investigate the feasibility of producing
    an authoritative set of small area population
    estimates that would be available on a nationally
    consistent basis (England and Wales)
  • which methods and data sources?
  • what geography?
  • what age/sex breakdown?
  • how accurate?
  • constrained to ONS LA mid-year estimates

4
Methods - key points
  • Potential methods identified and short listed
  • Averaging estimates may improve accuracy
  • Constraining smaller estimates to larger ones may
    improve accuracy
  • Method performance depends on data used and the
    characteristics of an area

5
Short listed methods
  • Apportionment
  • Additive/ratio change
  • Cohort component (ageing on element)
  • Combination of above (hybrids)

6
Key postcoded data sources
  • Patient registers - Health Authorities
  • Births and deaths - Registrars
  • Prisoners - Home Office
  • Dwellings - Council Tax lists, Postcode Address
    File

7
Key aggregated data sources
  • Child benefit - formerly DWP, now Inland Revenue
  • Retirement benefits - DWP
  • Electorate - Electoral registers
  • UK Armed Forces - Defence Analytical Services
    Agency

8
Data sources - key points
  • Need to consider data quality
  • Datasets ideally need to be available nationally
    and cover sub-populations
  • Potential for smoothing datasets over time
  • Could borrow strength by combining different
    datasets

9
Administrative data analysis
  • Patient Registers (adjusted) 2.9m (5.5) above
    the MYEs
  • Electorate (adjusted) 0.9m (2.0) below the MYEs
  • Child Benefit (adjusted) 101,000 (1.0) below the
    MYEs
  • Older persons 132,000 (1.6) below the MYEs

10
Patient Register comparison with MYEs
11
Patient Register comparison with MYEs
12
Evaluation criteria
  • Acceptable
  • Adaptable
  • Data available
  • Good quality estimates
  • Robust
  • Minimal burden on data suppliers
  • Easy to explain/not too complex
  • Takes account of population sub-groups
  • Timely to produce
  • Value for money

13
Evaluation stages
  • Data comparison with 2001 derived ward MYEs
  • Analyse data according to ward area type - ward
    categorisation
  • Create test estimates using different data/method
    combinations
  • Evaluate test estimates

14
Ward categorisation
  • Purpose - to help evaluate administrative data
    and estimates
  • How? By categorising wards according to a number
    of characteristics eg
  • small population size
  • high proportion of young adults in population
  • student areas
  • areas with high levels of in and out-migration
  • inner urban areas..

15
Ward categorisation
Inner Urban (population density)
16
Ward categorisation
Full-time Students 19-22
17
Ward categorisation
Unemployment
18
Ward categorisation
Non-White Ethnic Groups
19
Ward categorisation
International in-migrants
20
Conclusion
  • Research is ongoing
  • Recommendation on suitable ward methodology
    March/April 2004
  • Investigation to be done for producing estimates
    for other geographies

21
Small Area Estimation
  • Jane Longhurst
  • Office for National Statistics

22
Outline
  • The small area problem
  • ONS research and development
  • Implementation of methods
  • Dissemination of estimates
  • Future work

23
Requirements for Small Area Information
  • Assessment and allocation of resources
  • Policy development and review
  • Planning service provision
  • General economic and social research

24
The Small Area Problem
  • Surveys provide reliable national/regional
    estimates
  • BUT For local areas the sample size is small or
    zero
  • Administrative/census data is available for all
    local areas
  • BUT information not generally appropriate

25
Model-based Estimation
  • Model the relationship between survey data and
    administrative/census data for the sampled areas
  • Use the model specification with
    census/administrative data to produce estimates
    for all areas

26
Research and Development
  • ONS set up Small Area Estimation Project, SAEP
  • To research and develop a generic methodology for
    small area estimation from household based
    surveys
  • Methodology developed to cater for clustered
    design form of most UK household surveys
  • Research project established for estimating
    unemployment levels and rates
  • Developed data framework

27
Implementation
  • Unemployment
  • Labour Force Survey, Claimant Count
  • Income
  • Family Resources Survey, Census and Admin data
    sources
  • Crime
  • British Crime Survey, Feasibility study

28
Map showing UA/LADs where LFS direct estimates of
ILO unemployment can be published.
29
ILO Unemployment
  • We provide estimates of two measures of interest
  • total ILO unemployed population
  • ILO unemployment rate - proportion of
    economically active population who are unemployed
  • 95 confidence intervals
  • We provide estimates for
  • period 95/96 to 99/00
  • UAs and LADs for England, Wales and Scotland

30
Map showing modelled UA/LAD estimates of ILO
unemployment.
31
Income
  • We provide estimates of
  • average weekly household income
  • gross and net - unequivalised
  • net before and after housing costs - equivalised
  • 95 confidence intervals
  • We provide estimates for
  • period 98/99
  • wards for England, Wales and Scotland

32
Validation
  • Internal validation
  • External validation
  • Methodological validation
  • Validation with other data sources
  • Validation with users

33
Dissemination
  • Publication as experimental statistics
  • Estimates, CIs and documentation
  • Metadata
  • User guidance
  • Technical reports

34
Future Plans
  • Update ILO estimates with re-weighted LFS data
  • Produce income estimates for 01/02
  • Extend work on BCS
  • Develop methods for other variables for NeSS
  • Ongoing research
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