Abstract

Measuring and forecasting migration patterns has important implications for understanding broader population trends, for designing policy effectively and for allocating resources. However, data on migration and mobility are often lacking, and those that do exist are not available in a timely manner. Social media data offer new opportunities to provide more up-to-date demographic estimates and to complement more traditional data sources. Facebook’s Advertising Platform, for example, is a potentially rich data source of demographic information that is regularly updated. However, Facebook’s users are not representative of the underlying population. This paper proposes a statistical framework to combine social media data with traditional survey data to produce timely ‘nowcasts’ of migrant stocks by state in the United States. The model incorporates bias adjustment of Facebook data, and a pooled principal component time series approach, to account for correlations across age, time and space. We use the model to estimate and project migrants from Mexico, India and Germany, three migrant groups with varying levels and trends of migration in the US. By comparing short-term projections with data from the American Community Survey, we show that the model predictions outperform alternatives that rely solely on either social media or survey data.

Highlights

  • Accurate, reliable, and timely estimates of migration indicators, such as flows and stocks, are crucial for understanding population dynamics and demographic change, for designing effective economic, social and health policies, and for supporting migrants and their families

  • This paper proposes a statistical framework to combine social media data from Facebook, with traditional survey data from the American Community Survey (ACS), in order to produce timely ‘nowcasts’ of migrant stocks by state in the United States

  • Equations 11–15 relate to the ACS time series model

Read more

Summary

Introduction

Reliable, and timely estimates of migration indicators, such as flows and stocks, are crucial for understanding population dynamics and demographic change, for designing effective economic, social and health policies, and for supporting migrants and their families. Data on migration from traditional sources, such as censuses, surveys or administrative registers, are often insufficient Even when these sources exist, the data available may lack the granularity of information required to understand migration trends, or are not released in a manner that is timely enough to monitor changes in trends. The lack of good-quality data on migration is a global problem, with data sparsity issues prevalent in both developed and developing countries (Landau and Achiume 2017) This has prompted scholars to investigate the use of other types of data to monitor migration trends. In the first effort to tackle global trends, Zagheni and Weber (2012) linked the geographic locations of IP addresses of Yahoo! emails to the user’s self-reported demographic data to estimate age- and sex-specific migration flows in a large number of countries around the world

Objectives
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call