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Understanding Public Sentiments, Opinions and Topics about COVID-19 using Twitter (2012.03039v1)

Published 5 Dec 2020 in cs.SI

Abstract: The COVID-19 pandemic has caused widespread devastation throughout the world. In addition to the health and economical impacts, there is an enormous emotional toll associated with the constant stress of daily life with the numerous restrictions in place to combat the pandemic. To better understand the impact of COVID-19, we proposed a framework that utilizes public tweets to derive the sentiments, emotions and discussion topics of the general public in various regions and across multiple timeframes. Using this framework, we study and discuss various research questions relating to COVID-19, namely: (i) how sentiments/emotions change during the pandemic? (ii) how sentiments/emotions change in relation to global events? and (iii) what are the common topics discussed during the pandemic?

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Authors (2)
  1. Jolin Shaynn-Ly Kwan (2 papers)
  2. Kwan Hui Lim (39 papers)
Citations (21)