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Short-term Forecasting of the COVID-19 Pandemic using Google Trends Data: Evidence from 158 Countries
Author(s) -
Dean Fantazzini
Publication year - 2020
Publication title -
ssrn electronic journal
Language(s) - English
Resource type - Journals
ISSN - 1556-5068
DOI - 10.2139/ssrn.3671005
Subject(s) - covid-19 , pandemic , granger causality , econometrics , term (time) , lag , complement (music) , computer science , sample (material) , causality (physics) , economics , actuarial science , outbreak , medicine , pathology , virology , quantum mechanics , physics , disease , infectious disease (medical specialty) , computer network , chemistry , biochemistry , chromatography , complementation , gene , phenotype
The ability of Google Trends data to forecast the number of new daily cases and deaths of COVID-19 is examined using a dataset of 158 countries. The analysis includes the computations of lag correlations between confirmed cases and Google data, Granger causality tests, and an out-of-sample forecasting exercise with 18 competing models with a forecast horizon of 14 days ahead. This evidence shows that Google-augmented models outperform the competing models for most of the countries. This is significant because Google data can complement epidemiological models during difficult times like the ongoing COVID-19 pandemic, when official statistics maybe not fully reliable and/or published with a delay. Moreover, real-time tracking with online-data is one of the instruments that can be used to keep the situation under control when national lockdowns are lifted and economies gradually reopen.

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