Abstract

The spread of disinformation during the COVID-19 pandemic is largely associated with social media and online messengers. Viral disinformation disseminated in 2020–2021 was related to a wide range of topics that caused panic among people. Many false narratives emerged and attracted public interest over time, which mainly reflected the general public’s utmost belief in these topics. Text mining can be used to analyze the frequencies of keywords and topic-related vocabulary in order to track the changing focus of the public concerning online disinformation. In this paper, we present the results of a corpus-based study of Russian viral fake stories circulating during the first year of the COVID-19 pandemic. We propose a method for analyzing the central topics and dynamics of topical change in the context of the Russian COVID-19-fake story. In order to accomplish this objective, we make use of a set of tools to extract keywords, count their frequencies and analyze corresponding contexts. We apply these tools to the compiled specialized diachronic corpus of Russian viral false COVID-19-related stories. The obtained data is evaluated to determine the dynamic of topical shifts by tracking the changes in keyword frequencies as well as the use of other high-frequency corpus words. The findings of the work concerning topical fluctuations in the Russian viral COVID-19 disinformation agenda as well as given explanations for the identified drifts in public interest in the topics during the first year of the pandemic can contribute to developing effective strategies for combating the spread of fakes in the future.

Highlights

  • The Covid-19 pandemic has proven that online messengers and social networks have a great potential to make disinformation go viral

  • Due to overwhelming public interest and trust in such texts, the dissemination of disinformation was criminalized in Russia, and eventually, WhatsApp imposed a strict limit on the number of messages that can be forwarded as a measure to stop the viral spread of disinformation regarding Covid-19

  • We propose a quantitative method to measure the topical change in the Russian Covid-19 disinformation spread by counting word frequencies in diachronic collections of target data

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Summary

Introduction

The Covid-19 pandemic has proven that online messengers and social networks have a great potential to make disinformation go viral. In Russia, viral texts about Covid-19 and related issues did rounds on social networks and messaging platforms such as WhatsApp, Telegram and Viber. Many of the circulating texts contained false information about the symptoms and treatment of the new virus, the numbers of Covid-19 cases, the state of hospitals and upcoming governmentimposed restrictions. Due to overwhelming public interest and trust in such texts, the dissemination of disinformation was criminalized in Russia, and eventually, WhatsApp imposed a strict limit on the number of messages that can be forwarded as a measure to stop the viral spread of disinformation regarding Covid-19. According to a study on virus-related infodemic and its impact on public health (Islam et al 2020), more than 5,800 people around the world were admitted to hospital and at least 800 people died in 2020 as a result of false information on social media. Since the Covid-19 infodemic poses a real danger to human lives, it is necessary to study the texts containing the most

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