The COVID-19 Infodemic: The complex task of elevating signal and eliminating noise
Because of the influx of tweets about the COVID-19 pandemic on twitter, physicians created health-cares speciific microcommunities to be able to share research and information with each other. This paper studies the content of the tweets in these communities, categorizing them as well as looking at how much of it is noise.
0
1
Tags
CSCW (Computer-supported cooperative work)
Computing Sciences
Related
A large-scale COVID-19 Twitter chatter dataset for open scientific research - an international collaboration
Examining risk and crisis communications of government agencies and stakeholders during early-stages of COVID-19 on Twitter
#Covid4Rheum: an analytical twitter study in the time of the COVID-19 pandemic
Social Media and the New World of Scientific Communication During the COVID-19 Pandemic
Experts and authorities receive disproportionate attention on Twitter during the COVID-19 crisis
Mining Physicians’ Opinions on Social Media to Obtain Insights Into COVID-19: Mixed Methods Analysis
The COVID-19 Infodemic: The complex task of elevating signal and eliminating noise
Characterization of the #Radiology Twitter Conversation During the Global COVID-19 Pandemic
Tracking the Twitter attention around the research efforts on the COVID-19 pandemic
Emergency Medicine Influencers’ Twitter Use During the COVID-19 Pandemic: A Mixed-methods Analysis
World leaders’ usage of Twitter in response to the COVID-19 pandemic: a content analysis