A framework for estimating migrant stocks using digital traces and survey data: an application in the United Kingdom
A framework for estimating migrant stocks using digital traces and survey data: an application in the United Kingdom
An accurate estimation of international migration is hampered by a lack of timely and comprehensive data, and by the use of different definitions and measures of migration in different countries. In an effort to address this situation, we complement traditional data sources for the United Kingdom with social media data: our aim is to understand whether information from digital traces can help measure international migration. The Bayesian framework proposed is used to combine data from the Labour Force Survey (LFS) and the Facebook Advertising Platform to study the number of European migrants in the United Kingdom, with the aim of producing more accurate estimates of the numbers of European migrants. The overarching model is divided into a Theory-Based Model of migration and a Measurement Error Model. We review the quality of the LFS and Facebook data, paying particular attention to the biases of these sources. The results indicate visible yet uncertain differences between model estimates using the Bayesian framework and individual sources. Sensitivity analysis techniques are used to evaluate the quality of the model. The advantages and limitations of this approach, which can be applied in other contexts, are discussed. We cannot necessarily trust any individual source, but combining them through modeling offers valuable insights.
2193–2218
Rampazzo, Francesco
7e4ebb71-5131-4fb7-8657-3e62b2b8a2c0
Bijak, Jakub
e33bf9d3-fca6-405f-844c-4b2decf93c66
Vitali, Agnese
56acb6b8-5161-4106-9e73-20712840d675
Weber, Ingmar
97525388-15d0-415f-beeb-4ccf91a61ffa
Zagheni, Emilio
1cd352ff-9ba4-4cef-8a03-8ae89c58768e
1 December 2021
Rampazzo, Francesco
7e4ebb71-5131-4fb7-8657-3e62b2b8a2c0
Bijak, Jakub
e33bf9d3-fca6-405f-844c-4b2decf93c66
Vitali, Agnese
56acb6b8-5161-4106-9e73-20712840d675
Weber, Ingmar
97525388-15d0-415f-beeb-4ccf91a61ffa
Zagheni, Emilio
1cd352ff-9ba4-4cef-8a03-8ae89c58768e
Rampazzo, Francesco, Bijak, Jakub, Vitali, Agnese, Weber, Ingmar and Zagheni, Emilio
(2021)
A framework for estimating migrant stocks using digital traces and survey data: an application in the United Kingdom.
Demography, 58 (6), .
(doi:10.1215/00703370-9578562).
Abstract
An accurate estimation of international migration is hampered by a lack of timely and comprehensive data, and by the use of different definitions and measures of migration in different countries. In an effort to address this situation, we complement traditional data sources for the United Kingdom with social media data: our aim is to understand whether information from digital traces can help measure international migration. The Bayesian framework proposed is used to combine data from the Labour Force Survey (LFS) and the Facebook Advertising Platform to study the number of European migrants in the United Kingdom, with the aim of producing more accurate estimates of the numbers of European migrants. The overarching model is divided into a Theory-Based Model of migration and a Measurement Error Model. We review the quality of the LFS and Facebook data, paying particular attention to the biases of these sources. The results indicate visible yet uncertain differences between model estimates using the Bayesian framework and individual sources. Sensitivity analysis techniques are used to evaluate the quality of the model. The advantages and limitations of this approach, which can be applied in other contexts, are discussed. We cannot necessarily trust any individual source, but combining them through modeling offers valuable insights.
Text
Manuscript
- Accepted Manuscript
More information
Accepted/In Press date: 22 March 2021
e-pub ahead of print date: 9 November 2021
Published date: 1 December 2021
Identifiers
Local EPrints ID: 448283
URI: http://eprints.soton.ac.uk/id/eprint/448283
ISSN: 0070-3370
PURE UUID: d9ffea6c-c950-47f7-8992-8a80ae7a9cd4
Catalogue record
Date deposited: 19 Apr 2021 16:30
Last modified: 17 Mar 2024 03:18
Export record
Altmetrics
Contributors
Author:
Francesco Rampazzo
Author:
Agnese Vitali
Author:
Ingmar Weber
Author:
Emilio Zagheni
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics