Concluding remarks: Big Data is here to stayThe Billion Prices Project is just one example of the use of ‘Big Data’ sources in economics. Other examples include various types of web scraped data, such as labour and real estate information, data from mobile phones, satellite images as in Henderson et al. (2012), and many other sensors that are increasingly part of our daily lives.
For us, the greatest appeal of Big Data technologies is that they are finally providing economists (particularly in macro and international) with opportunities to stop treating the data as “given” and get personally involved with the data collection process.
This is something that was advocated for many years by prominent economists such as Griliches (1985, 1994).
While many governments have been active in searching for alternative data sources (Bean 2016[RB1] ), their use will require not only the will of policymakers or statisticians working on the field, but also the involvement of more economists and academics who can help identify the best ways to collect, treat, and use these new sources of information.
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