Digital trace data presents an opportunity for promptly monitoring shifts in migrant populations. This contribution aims to determine whether the number of European migrants in the United Kingdom (UK) declined between March 2019 and March 2020, using weekly estimates derived from the Facebook Advertising Platform. The collected data is disaggregated according to age, level of education, and country of origin. To examine the fluctuation in the number of migrants, a simple Bayesian trend model is employed, incorporating indicator variables for age, education, and country. The Facebook data indicates a downward trend in the number of European migrants residing in the UK. This result is further confirmed by the data from the Labour Force Survey. Notably, the outcomes reveal that in the run-up to Brexit, the most significant decline occurred among the age group of 20 to 29 years old – the largest migrant group – and the tertiary educated. This analyses could not be implemented with traditional data sources such as the Labour Force Survey, because this level of disaggregation is not provided. However, there are also important limitations associated with digital trace data, such as algorithm changes and representativeness. These limitations need to be addressed by employing sound statistical methodologies. Nevertheless, this research shows the potential of digital trace data in anticipating migration trends at a timely granularity and informing policymakers.

Assessing Timely Migration Trends Through Digital Traces: A Case Study of the UK Before Brexit / Rampazzo, Francesco; Bijak, Jakub; Vitali, Agnese; Weber, Ingmar; Zagheni, Emilio. - In: INTERNATIONAL MIGRATION REVIEW. - ISSN 0197-9183. - 2024:(2024). [10.1177/01979183241247009]

Assessing Timely Migration Trends Through Digital Traces: A Case Study of the UK Before Brexit

Vitali, Agnese;
2024-01-01

Abstract

Digital trace data presents an opportunity for promptly monitoring shifts in migrant populations. This contribution aims to determine whether the number of European migrants in the United Kingdom (UK) declined between March 2019 and March 2020, using weekly estimates derived from the Facebook Advertising Platform. The collected data is disaggregated according to age, level of education, and country of origin. To examine the fluctuation in the number of migrants, a simple Bayesian trend model is employed, incorporating indicator variables for age, education, and country. The Facebook data indicates a downward trend in the number of European migrants residing in the UK. This result is further confirmed by the data from the Labour Force Survey. Notably, the outcomes reveal that in the run-up to Brexit, the most significant decline occurred among the age group of 20 to 29 years old – the largest migrant group – and the tertiary educated. This analyses could not be implemented with traditional data sources such as the Labour Force Survey, because this level of disaggregation is not provided. However, there are also important limitations associated with digital trace data, such as algorithm changes and representativeness. These limitations need to be addressed by employing sound statistical methodologies. Nevertheless, this research shows the potential of digital trace data in anticipating migration trends at a timely granularity and informing policymakers.
2024
Rampazzo, Francesco; Bijak, Jakub; Vitali, Agnese; Weber, Ingmar; Zagheni, Emilio
Assessing Timely Migration Trends Through Digital Traces: A Case Study of the UK Before Brexit / Rampazzo, Francesco; Bijak, Jakub; Vitali, Agnese; Weber, Ingmar; Zagheni, Emilio. - In: INTERNATIONAL MIGRATION REVIEW. - ISSN 0197-9183. - 2024:(2024). [10.1177/01979183241247009]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/411610
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