Identifying how COVID-19-related misinformation reacts to the announcement of the UK national lockdown: An interrupted time-series study

Green, M. et al. (2021) Identifying how COVID-19-related misinformation reacts to the announcement of the UK national lockdown: An interrupted time-series study. Big Data and Society, 8(1), pp. 1-13. (doi: 10.1177/20539517211013869)

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Abstract

COVID-19 is unique in that it is the first global pandemic occurring amidst a crowded information environment that has facilitated the proliferation of misinformation on social media. Dangerous misleading narratives have the potential to disrupt ‘official’ information sharing at major government announcements. Using an interrupted time-series design, we test the impact of the announcement of the first UK lockdown (8–8.30 p.m. 23 March 2020) on short-term trends of misinformation on Twitter. We utilise a novel dataset of all COVID-19-related social media posts on Twitter from the UK 48 hours before and 48 hours after the announcement (n = 2,531,888). We find that while the number of tweets increased immediately post announcement, there was no evidence of an increase in misinformation-related tweets. We found an increase in COVID-19-related bot activity post-announcement. Topic modelling of misinformation tweets revealed four distinct clusters: ‘government and policy’, ‘symptoms’, ‘pushing back against misinformation’ and ‘cures and treatments’.

Item Type:Articles
Keywords:Social media, Twitter, misinformation, COVID-19, bots.
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Rossini, Dr Patricia
Authors: Green, M., Musi, E., Rowe, F., Charles, D., Pollock, F. D., Kypridemos, C., Morse, A., Rossini, P., Tulloch, J., Davies, A., Dearden, E., Maheswaran, H., Singleton, A., Vivancos, R., and Sheard, S.
College/School:College of Social Sciences > School of Social and Political Sciences > Politics
Journal Name:Big Data and Society
Publisher:SAGE Publications
ISSN:2053-9517
ISSN (Online):2053-9517
Published Online:09 May 2021
Copyright Holders:Copyright © 2021 The Author
First Published:First published in Big Data and Society 8(1):1-13
Publisher Policy:Reproduced under a Creative Commons licence

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