COVID-19 concern in cyberspace predicts human reduced dispersal in the real world: Meta-regression analysis of time series relationships across U.S. states and 115 countries/territories☆
Autor: | Mac Zewei Ma |
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Jazyk: | angličtina |
Rok vydání: | 2021 |
Předmět: |
Reduced dispersal
Government Behavioral immune system theory Index (economics) Google trends COVID-19 Article Parasite-stress theory of sociality Human-Computer Interaction Geography Arts and Humanities (miscellaneous) Case fatality rate Pandemic Biological dispersal Meta-regression Cyberspace Time series data General Psychology Sociality Demography |
Zdroj: | Computers in Human Behavior |
ISSN: | 0747-5632 |
Popis: | On the basis of parasite-stress theory of sociality and behavioral immune system theory, this research examined how concerns regarding the Coronavirus disease 2019 (COVID-19) in cyberspace (i.e., online search volume for coronavirus-related keywords) would predict human reduced dispersal in the real world (i.e., human mobility trends throughout the pandemic) between January 05, 2020 and May 22, 2021. Multiple regression analyses controlling for COVID-19 cases per million, case fatality rate, death-thought accessibility, government stringency index, yearly trends, season, religious holidays, and reduced dispersal in the preceding week were conducted. Meta-regression analysis of the multiple regression results showed that when there were high levels of COVID-19 concerns in cyberspace in a given week, the amount of time people spent at home increased from the previous week across American states (Study 1) and 115 countries/territories (Study 2). Across studies, the associations between COVID-19 concerns and reduced dispersal were stronger in areas of higher historical risks of infectious-disease contagion. Compared with actual coronavirus threat, COVID-19 concerns in cyberspace had significantly larger effects on predicting human reduced dispersal in the real world. Thus, online query data have invaluable implications for predicting large-scale behavioral changes in response to life-threatening events in the real world and are indispensable for COVID-19 surveillance. |
Databáze: | OpenAIRE |
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