3.8 Proceedings Paper

Digital Footprints of International Migration on Twitter

Journal

ADVANCES IN INTELLIGENT DATA ANALYSIS XVIII, IDA 2020
Volume 12080, Issue -, Pages 274-286

Publisher

SPRINGER INTERNATIONAL PUBLISHING AG
DOI: 10.1007/978-3-030-44584-3_22

Keywords

International migration; Emigration; Big data; Twitter

Funding

  1. European Commission through the Horizon2020 European project SoBigData Research Infrastructure-Big Data and SocialMining Ecosystem [654024]
  2. Horizon2020 European project HumMingBird -Enhanced migration measures from a multidimensional perspective [870661]

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Studying migration using traditional data has some limitations. To date, there have been several studies proposing innovative methodologies to measure migration stocks and flows from social big data. Nevertheless, a uniform definition of a migrant is difficult to find as it varies from one work to another depending on the purpose of the study and nature of the dataset used. In this work, a generic methodology is developed to identify migrants within the Twitter population. This describes a migrant as a person who has the current residence different from the nationality. The residence is defined as the location where a user spends most of his/her time in a certain year. The nationality is inferred from linguistic and social connections to a migrant's country of origin. This methodology is validated first with an internal gold standard dataset and second with two official statistics, and shows strong performance scores and correlation coefficients. Our method has the advantage that it can identify both immigrants and emigrants, regardless of the origin/destination countries. The new methodology can be used to study various aspects of migration, including opinions, integration, attachment, stocks and flows, motivations for migration, etc. Here, we exemplify how trending topics across and throughout different migrant communities can be observed.

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