A First Look at COVID-19 Messages on WhatsApp in Pakistan
- URL: http://arxiv.org/abs/2011.09145v2
- Date: Thu, 19 Nov 2020 05:45:58 GMT
- Title: A First Look at COVID-19 Messages on WhatsApp in Pakistan
- Authors: R. Tallal Javed, Mirza Elaaf Shuja, Muhammad Usama, Junaid Qadir,
Waleed Iqbal, Gareth Tyson, Ignacio Castro, and Kiran Garimella
- Abstract summary: COVID-19 has prompted extensive online discussions, creating an infodemic' on social media platforms such as WhatsApp and Twitter.
We present the first analysis of COVID-19 discourse on public WhatsApp groups from Pakistan.
- Score: 6.336355456383468
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The worldwide spread of COVID-19 has prompted extensive online discussions,
creating an `infodemic' on social media platforms such as WhatsApp and Twitter.
However, the information shared on these platforms is prone to be unreliable
and/or misleading. In this paper, we present the first analysis of COVID-19
discourse on public WhatsApp groups from Pakistan. Building on a large scale
annotation of thousands of messages containing text and images, we identify the
main categories of discussion. We focus on COVID-19 messages and understand the
different types of images/text messages being propagated. By exploring user
behavior related to COVID messages, we inspect how misinformation is spread.
Finally, by quantifying the flow of information across WhatsApp and Twitter, we
show how information spreads across platforms and how WhatsApp acts as a source
for much of the information shared on Twitter.
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