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Public discourse and sentiment during the COVID-19 pandemic: using Latent Dirichlet Allocation for topic modeling on Twitter (2005.08817v3)

Published 18 May 2020 in cs.SI, cs.CL, and cs.CY

Abstract: The study aims to understand Twitter users' discourse and psychological reactions to COVID-19. We use machine learning techniques to analyze about 1.9 million Tweets (written in English) related to coronavirus collected from January 23 to March 7, 2020. A total of salient 11 topics are identified and then categorized into ten themes, including "updates about confirmed cases," "COVID-19 related death," "cases outside China (worldwide)," "COVID-19 outbreak in South Korea," "early signs of the outbreak in New York," "Diamond Princess cruise," "economic impact," "Preventive measures," "authorities," and "supply chain." Results do not reveal treatments and symptoms related messages as prevalent topics on Twitter. Sentiment analysis shows that fear for the unknown nature of the coronavirus is dominant in all topics. Implications and limitations of the study are also discussed.

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Authors (6)
  1. Jia Xue (10 papers)
  2. Junxiang Chen (9 papers)
  3. Chen Chen (752 papers)
  4. Sijia Li (33 papers)
  5. Tingshao Zhu (16 papers)
  6. ChengDa Zheng (2 papers)
Citations (11)