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Auteurs principaux: Chi, Guanghua, Abel, Guy J., Johnston, Drew, Giraudy, Eugenia, Bailey, Mike
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2504.11691
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author Chi, Guanghua
Abel, Guy J.
Johnston, Drew
Giraudy, Eugenia
Bailey, Mike
author_facet Chi, Guanghua
Abel, Guy J.
Johnston, Drew
Giraudy, Eugenia
Bailey, Mike
contents Existing estimates of human migration are limited in their scope, reliability, and timeliness, prompting the United Nations and the Global Compact on Migration to call for improved data collection. Using privacy protected records from three billion Facebook users, we estimate country-to-country migration flows at monthly granularity for 181 countries, accounting for selection into Facebook usage. Our estimates closely match high-quality measures of migration where available but can be produced nearly worldwide and with less delay than alternative methods. We estimate that 39.1 million people migrated internationally in 2022 (0.63% of the population of the countries in our sample). Migration flows significantly changed during the COVID-19 pandemic, decreasing by 64% before rebounding in 2022 to a pace 24% above the pre-crisis rate. We also find that migration from Ukraine increased tenfold in the wake of the Russian invasion. To support research and policy interventions, we will release these estimates publicly through the Humanitarian Data Exchange.
format Preprint
id arxiv_https___arxiv_org_abs_2504_11691
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Measuring Global Migration Flows using Online Data
Chi, Guanghua
Abel, Guy J.
Johnston, Drew
Giraudy, Eugenia
Bailey, Mike
Computers and Society
Applications
Existing estimates of human migration are limited in their scope, reliability, and timeliness, prompting the United Nations and the Global Compact on Migration to call for improved data collection. Using privacy protected records from three billion Facebook users, we estimate country-to-country migration flows at monthly granularity for 181 countries, accounting for selection into Facebook usage. Our estimates closely match high-quality measures of migration where available but can be produced nearly worldwide and with less delay than alternative methods. We estimate that 39.1 million people migrated internationally in 2022 (0.63% of the population of the countries in our sample). Migration flows significantly changed during the COVID-19 pandemic, decreasing by 64% before rebounding in 2022 to a pace 24% above the pre-crisis rate. We also find that migration from Ukraine increased tenfold in the wake of the Russian invasion. To support research and policy interventions, we will release these estimates publicly through the Humanitarian Data Exchange.
title Measuring Global Migration Flows using Online Data
topic Computers and Society
Applications
url https://arxiv.org/abs/2504.11691