Nowcasting migration using statistics of online queries

Автор: Tsapenko Irina P., Yurevich Maksim A.

Журнал: Economic and Social Changes: Facts, Trends, Forecast @volnc-esc-en

Рубрика: Theoretical and methodological issues

Статья в выпуске: 1 т.15, 2022 года.

Бесплатный доступ

Due to international migration’s growing importance in modern countries’ lives, there is an increasing need for reliable and relevant forecasts of this process, especially in today’s turbulent world. However, established migration forecasting procedures suffer from a number of limitations, against which innovative approaches based on big data, notably online searches made by potential migrants, offer many advantages. Because of their novelty, such tools have not yet revealed their full explanatory and predictive properties. The work explores the possibility of using these tools to predict the population flows within the post-Soviet space. We hypothesize that there is a statistical relationship between online queries about migration to Russia made by residents of Kyrgyzstan, Tajikistan and Uzbekistan and subsequent human flows from these countries to Russia. The hypothesis was tested using the migration statistics of Rosstat, the Federal State Statistics Service of the Russian Federation, Google Trends data on search intensity, and Yandex Wordstat service of word matching for validation of search images. As a result of correlation and regression, we found a moderate dependence of the dynamics of human flows on previous queries, which is most evident at a lag of 6-9 months and at zero lag. Obtaining more accurate results in this and similar studies is hindered by the initial limited predictability of migration behavior due to its contextual, sometimes situational and irrational nature, as well as “noisiness” of statistics of queries and often the flows themselves. The search for universal algorithms of determination of relations between queries and migration flows is seen as the main direction of research in this field.

Еще

Migration, forecasting, big data, online queries, search images, modeling, Russia, central asia

Короткий адрес: https://sciup.org/147237318

IDR: 147237318

Список литературы Nowcasting migration using statistics of online queries

  • Acostamadiedo E. et al. (2020). Assessing Immigration Scenarios for the European Union in 2030 – Relevant, Realistic and Reliable? Geneva: IOM and e Hague: NIDI.
  • Albertinelli A. et al. (2020). Forecasting asylum-related migration to the European Union, and bridging the gap between evidence and policy. Migration Policy Practice, X(4), 35–41.
  • Beduschi A. (2018). The big data of international migration: Opportunities and challenges for states under international human rights law. Georgetown Journal of International Law, 49, 982–1017.
  • Bengtsson L. et al. (2011). Improved response to disasters and outbreaks by tracking population movements with mobile phone network data: A postearthquake geospatial study in Haiti. PLoS Med, 8(8), e1001083.
  • Bijak J. (2016). Migration forecasting: Beyond the limits of uncertainty. IOM’s GMDAC Data Briefing Series, 6, 7. Available at: gmdac.iom.int/gmdac-databriefing-migration-forecasting-beyondlimits-uncertainty
  • Bijak J., Czaika M. (2020). Assessing Uncertain Migration Futures: A Typology of the Unknown. QuantMig Project Deliverable D1.1. University of Southampton and Danube University Krems. Available at https://www.quantmig.eu/res/files/QuantMig%20D1.1%20Uncertain%20Migration%20Futures%20V1.1%2030Jun2020.pdf
  • Bijak J., Czaika M. (2020). Black swans and grey rhinos: Migration policy under uncertainty. Migration Policy Practice, 2020, X(4), 14–18. Available at: https://publications.iom.int/books/migration-policy-practice-vol-x-number-4-september-december-2020
  • Blazquez D., Domenech J. (2018). Big data sources and methods for social and economic analyses. Technological Forecasting and Social Change, 130, 99–113.
  • Bohme M. et al. (2020). Searching for a better life: Predicting international migration with online search keywords. Journal of Development Economics, 142, 14. DOI:10.1016/j.jdeveco.2019.04.002
  • Carammia M., Dumont J. (2018) Can we anticipate future migration flows? OECD/EASO Migration Policy Debate, 16, 9.
  • Carling J. (2017). How does migration arise? In: McAuliffe M., Klein Solomon M. (Conveners) Ideas to Inform International Cooperation on Safe, Orderly and Regular Migration. Geneva: IOM, 19–26.
  • Choi H., Varian H. (2012). Predicting the present with Google Trends. Predicting. The Economic Record, 88 (June), 2–9. DOI: 10.1111/j.1475-4932.2012.00809.x
  • Chudinovskikh O.S., Stepanova A.V. (2020). On the quality of the federal statistical observation of migration processes. Demograficheskoe obozrenie=Demographic Review, 7(1), 54–82 (in Russian).
  • Connor P. (2017). The Digital Footprint of Europe’s Refugees. Pew Research Center. Available at: https://www.pewresearch.org/global/wp-content/uploads/sites/2/2017/06/Pew-Research-Center_Digital-Footprint-of-Europes-Refugees_Full-Report_06.08.2017.pdf
  • Hawelka B. et al. (2014). Geo-located Twitter was proxy for global mobility patterns. Cartography and Geographic Information Science, 41(3), 260–271.
  • Lifshits M.L. (2016). Forecasting of the global migration situation based on the analysis of net migration in the countries. Prikladnaya ekonometrika=Applied Econometrics, 41, 96–122 (in Russian).
  • Malysheva D.B. (2017). Migration processes in Central Asian countries. In: A.B. Krylov (Ed.) Postsovetskie gosudarstva: 25 let nezavisimogo razvitiya. T. 1 [Post-Soviet States: 25 years of Independent Development. Vol. 1]. Moscow: IMEMO RAS.
  • Rango M. (2015). How big data can help migrants, World Economic Forum, 2 (October 5, 2015), Available at: https://www.weforum.org/agenda/2015/10/how-big-data-can-help-migrants/
  • Sîrbu A. et al. (2021). Human migration: The big data perspective. International Journal of Data Science and Analytics, 11, 341–360. DOI: 10.1007/s41060-020-00213-5
  • Sohst R. et al. (2020). The Future of Migration to Europe: A Systematic Review of the Literature on Migration Scenarios and Forecasts. Geneva: IOM and Hague: NIDI.
  • Sohst R., Tjaden J. (2020). Forecasting migration: A policy guide to common approaches and models. Migration Policy Practice, 4, 8–13.
  • Spyratos S. et al. (2019). Quantifying international human mobility patterns using Facebook Network data. PLoS One, 14(10), e0224134. https://doi.org/10.1371/journal.pone.0224134
  • Stewart I. et al. (2019). Rock, rap, or reggaeton? Assessing mexican immigrants’ cultural assimilation using Facebook data. In: WWW ‘19. NY: Association for Computing Machinery, 3258–3264. DOI: 10.1145/3308558.3313409
  • Struijs P. et al. (2014). Official statistics and big data. Big Data & Society, April–June, 1–6. DOI: 10.1177/2053951714538417
  • Szczepanikova A., Van Criekinge T. (2018). The Future of Migration in the European Union: Future Scenarios and Tools to Stimulate Forward-Looking Discussions. Luxembourg: Publications Office of the European Union. DOI: 10.2760/000622
  • Tjaden J. et al. (2021). Tale of high expectations, promising results and a long road ahead. Available at: https://medium.com/@UNmigration/using-big-data-to-forecast-migration-8c8e64703559
  • Tjaden J., Auer D., Laczko F. (2019). Linking migration intentions with flows: Evidence and potential use. International Migration, 57(1), 36–57. DOI: 10.1111/imig.12502
  • Tkachenko A.A., Ginoyan A.B. (2018). Evaluation of the migration potential of the CIS countries based on the model of international migration. Voprosy Statistiki, 25(11), 46–56 (in Russian).
  • Wanner P. (2021). How well can we estimate immigration trends using Google data? Quality & Quantity, 55, 1181–1202. DOI: 10.1007/s11135-020-01047-w
  • Wilson T. (2017). Can international migration forecasting be improved? The case of Australia. Migration Letters, 14(2), 285–299. DOI: 10.33182/ml.v14i2.333
  • Wladyka D. (2017). Queries to google search as predictors of migration flows from Latin America to Spain. Journal of Population and Social Studies, 2017, 25(4), 312–327. DOI: 10.25133/JPSSv25n4.002
  • Yurevich M.A. (2021). Inflation expectations and inflation: Nowcasting and forecasting. Journal of Economic Regulation, 12(2), 22–35 (in Russian).
  • Yurevich M.A., Ekimova N.A., Balatskii E.V. (2020). Digital transformation of economics. Informatsionnoe obshchestvo=Information Society, 2, 39–47 (in Russian).
  • Zagheni E., Weber I. (2012). You are where you e-mail: Using e-mail data to estimate international migration rates. In: WebSci ‘12: Proceedings of the 4th Annual ACM Web Science Conference. New York: Association for Computing Machinery, 348–351. DOI: 10.1145/2380718.2380764
  • Zagheni E., Weber I., Gummadi K. (2017). Leveraging Facebook’s advertising platform to monitor stocks of migrants. Population and Development Review, 43, 721–734. https://doi.org/10.1111/padr.12102
Еще
Статья научная