Public Perception of the German COVID-19 Contact-Tracing App
Corona-Warn-App
- URL: http://arxiv.org/abs/2104.10550v1
- Date: Wed, 21 Apr 2021 14:17:38 GMT
- Title: Public Perception of the German COVID-19 Contact-Tracing App
Corona-Warn-App
- Authors: Felix Beierle, Uttam Dhakal, Caroline Cohrdes, Sophie Eicher,
R\"udiger Pryss
- Abstract summary: In Germany, the related app is called Corona-Warn-App, and by end of 2020, it had 22.8 million downloads.
Contact tracing is a promising approach for containing the spread of the novel coronavirus.
Based on app reviews and tweets, we are analyzing the public perception of Corona-Warn-App.
- Score: 0.16332728502735247
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Several governments introduced or promoted the use of contact-tracing apps
during the ongoing COVID-19 pandemic. In Germany, the related app is called
Corona-Warn-App, and by end of 2020, it had 22.8 million downloads. Contact
tracing is a promising approach for containing the spread of the novel
coronavirus. It is only effective if there is a large user base, which brings
new challenges like app users unfamiliar with using smartphones or apps. As
Corona-Warn-App is voluntary to use, reaching many users and gaining a positive
public perception is crucial for its effectiveness. Based on app reviews and
tweets, we are analyzing the public perception of Corona-Warn-App. We collected
and analyzed all 78,963 app reviews for the Android and iOS versions from
release (June 2020) to beginning of February 2021, as well as all original
tweets until February 2021 containing #CoronaWarnApp (43,082). For the reviews,
the most common words and n-grams point towards technical issues, but it
remains unclear, to what extent this is due to the app itself, the used
Exposure Notification Framework, system settings on the user's phone, or the
user's misinterpretations of app content. For Twitter data, overall, based on
tweet content, frequent hashtags, and interactions with tweets, we conclude
that the German Twitter-sphere widely reports adopting the app and promotes its
use.
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