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From 2026, we intend to introduce grocery scanner data into our consumer price statistics. This methodology article gives an overview of the data and methods we will use.
Quality and Methodology Information for avoidable mortality in the UK, detailing the strengths and limitations of these data, methods used and data uses and users.
Quality and methodology information for Explore local statistics, our digital service to find out more about local areas across the UK. Includes strengths and limitations, methods, and data uses and users.
Quality and Methodology Information for mid-year admin-based population estimates (ABPEs) for England and Wales, detailing the strengths and limitations of the data, methods used, and data uses and users.
Quality and Methodology Information for the Annual Business Survey, detailing the strengths and limitations of the data, methods used and data uses and users.
Background information to the Annual Business Survey (ABS)
Known quality information affecting sexual orientation and gender identity data from Census 2021 in England and Wales to help users correctly interpret the statistics.
Discovery Part 3 research into the feasibility of a multi-mode design for the Crime Survey for England and Wales (CSEW).
Quality and Methodology Information for childbearing in England and Wales, detailing strengths and limitations of the data, methods used, and data uses and users.
Developing a machine learning method to identify and classify members of the adult social care workforce in England from Census 2021 write-in responses.