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1 Measuring Uncertainty in Population Estimates at Local Authority Level Ruth Fulton, Bex Newell, Dorothee Schneider
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2 Outline Project aim Overall method Method internal migration Method international migration Outputs
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3 Project aim Improve understanding, measurement and reporting of the quality of population estimates at LA level Obtain overall quality measures for annual population estimates at LA level
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4 Mid-Year Population Estimates Cohort component method Pop.(t) = pop.(t-1) + births + internal net migration Determining associated uncertainty is complex Mixed sources: Census, administrative sources, surveys Different estimation methods + international net migration – deaths
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5 Measuring uncertainty: Overall method -Components with biggest impact: 2001 Census-based estimate Internal migration International migration -Estimate distribution of error for component -Combine error estimates into overall quality measure for MYE at LA level Error (t) = error (t-1) + error (net internal migration) + error (net international migration)
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6 Internal migration Estimates based on GP registration data Sources of uncertainty in estimates related to: Migrants missing from GP register Time lags between moving and re-registration Double counting of school boarders
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7 Method for internal migration Benchmark approach Uses adjusted 2001 Census data as benchmark Applies model from 2001 to subsequent years Limitation – does not cover all quality issues
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8 Method for internal migration (ctd.) Movers in Census: those with other address one year ago Movers in PRDS: those with different addresses in two downloads Census data adjusted to be as similar to PRDS data as possible Compare observed number of migrants to a ‘true’ number of migrants Error represented by scaling factor of truth (Census)/PRDS
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9 Age pattern log(Census/PRDS) shows double counting of school boarders shows undercount of young male migrants
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10 Geographical variation - Scaling factors vary by area - Undercount in urban areas or areas with high proportion of students - Cluster analysis Mean log(Scaling Factors) Inflows
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11 Model Fit model to log of scaling factors of groups of LAs Obtain predicted values and residuals Error measure is obtained by simulating from this distribution
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12 Distribution of estimated inflows
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13 International migration Focuses on intentions-based IPS estimates Multi-stage approach to distribute to national estimates to lower levels of geography
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14 Produce error distribution for statistical error Bootstrapping approach Resampling IPS Resampling LFS (regional level) Reproduce estimation method with new samples International migration (ctd)
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15 Outputs Composite quality measure will be derived from the overall error distribution LAs will be banded based on this measure
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16 Questions? Contact dorothee.schneider@ons.gsi.gov.uk imps@ons.gsi.gov.uk
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