Using the Google Places API and Google Trends Data to Develop High Frequency Indicators of Economic Activity

Author/Editor:

Paul A Austin ; Marco Marini ; Alberto Sanchez ; Chima Simpson-Bell ; James Tebrake

Publication Date:

December 17, 2021

Electronic Access:

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Summary:

As the pandemic heigthened policymakers’ demand for more frequent and timely indicators to assess economic activities, traditional data collection and compilation methods to produce official indicators are falling short—triggering stronger interest in real time data to provide early signals of turning points in economic activity. In this paper, we examine how data extracted from the Google Places API and Google Trends can be used to develop high frequency indicators aligned to the statistical concepts, classifications, and definitions used in producing official measures. The approach is illustrated by use of Google data-derived indicators that predict well the GDP trajectories of selected countries during the early stage of COVID-19. To this end, we developed a methodological toolkit for national compilers interested in using Google data to enhance the timeliness and frequency of economic indicators.

Series:

Working Paper No. 2021/295

Subject:

Frequency:

regular

English

Publication Date:

December 17, 2021

ISBN/ISSN:

9781616355432/1018-5941

Stock No:

WPIEA2021295

Pages:

47

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