Forecasting Daily COVID-19 Case Counts Using Aggregate Mobility Statistics

Author:

Boru BulutORCID,Gursoy M. Emre

Abstract

The COVID-19 pandemic has impacted the whole world profoundly. For managing the pandemic, the ability to forecast daily COVID-19 case counts would bring considerable benefit to governments and policymakers. In this paper, we propose to leverage aggregate mobility statistics collected from Google’s Community Mobility Reports (CMRs) toward forecasting future COVID-19 case counts. We utilize features derived from the amount of daily activity in different location categories such as transit stations versus residential areas based on the time series in CMRs, as well as historical COVID-19 daily case and test counts, in forecasting future cases. Our method trains optimized regression models for different countries based on dynamic and data-driven selection of the feature set, regression type, and time period that best fit the country under consideration. The accuracy of our method is evaluated on 13 countries with diverse characteristics. Results show that our method’s forecasts are highly accurate when compared to the real COVID-19 case counts. Furthermore, visual analysis shows that the peaks, plateaus and general trends in case counts are also correctly predicted by our method.

Publisher

MDPI AG

Subject

Information Systems and Management,Computer Science Applications,Information Systems

Reference53 articles.

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2. WHO (2022, September 15). WHO Coronavirus (COVID-19) Dashboard 2022. Available online: https://covid19.who.int/.

3. Google (2022, September 15). COVID-19 Community Mobility Reports. Available online: https://www.google.com/covid19/mobility/.

4. Aktay, A., Bavadekar, S., Cossoul, G., Davis, J., Desfontaines, D., Fabrikant, A., Gabrilovich, E., Gadepalli, K., Gipson, B., and Guevara, M. (2020). Google COVID-19 community mobility reports: Anonymization process description (version 1.1). arXiv.

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