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We moved them to The National Archives website, to keep this website as responsive as possible.
Please note: all historical data is still on this website.
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Dewis pwnc arall neu clirio pob hidlydd.
The methods used to identify prisoners as a non-household population in the NHS Talking Therapies administrative dataset.
Developments of methods and data used in the dynamic population model
Methodological details for our analysis on how the quality of schools is linked with the imprisonment of young people, including the sample, logistic regression method and concepts used.
The Census 2021 Data Asset high-level design: exploring the feasibility of maintaining an anonymised person-level longitudinal data source based on Census 2021.
Methodology guidance on national and subnational mid-year population estimates for the UK and its constituent countries, which are broken down by administrative area, age, sex and components of population change.
How we checked and adjusted the estimates of the population for Census 2021 to improve their plausibility and consistency with other sources.
How we maximised the quality of Census 2021 population estimates during the processing and quality assurance of the final statistics.
Methodology for the validation of the Census 2021 population estimates for each local authority, as part of the wider quality assurance of the census data.
Developments in producing mid-2021 population estimates rolled forward from Census 2021, by local authority district, age, and sex. Includes method changes needed to roll forward the three months from Census Day to mid-year and discusses our ongoing challenges.
Explains how missing information for identifying someone as not in education, employment or training (NEET) is appropriated based on individual characteristics.