The Shapes of the Fourth Estate During the Pandemic: Profiling COVID-19
News Consumption in Eight Countries
- URL: http://arxiv.org/abs/2308.01453v1
- Date: Wed, 2 Aug 2023 22:00:37 GMT
- Title: The Shapes of the Fourth Estate During the Pandemic: Profiling COVID-19
News Consumption in Eight Countries
- Authors: Cai Yang, Lexing Xie, Siqi Wu
- Abstract summary: We measure the average but also the distribution of audience political leanings for different media across different countries.
We focus on geolocated users from eight countries, profile user leaning distribution for each country, and analyze bridging users who have interactions across multiple countries.
This study contributes a new set of media bias estimates by averaging the leaning scores of users who share the URLs from media domains.
- Score: 11.9136268069059
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: News media is often referred to as the Fourth Estate, a recognition of its
political power. New understandings of how media shape political beliefs and
influence collective behaviors are urgently needed in an era when public
opinion polls do not necessarily reflect election results and users influence
each other in real-time under algorithm-mediated content personalization. In
this work, we measure not only the average but also the distribution of
audience political leanings for different media across different countries. The
methodological components of these new measures include a high-fidelity
COVID-19 tweet dataset; high-precision user geolocation extraction; and user
political leaning estimated from the within-country retweet networks involving
local politicians. We focus on geolocated users from eight countries, profile
user leaning distribution for each country, and analyze bridging users who have
interactions across multiple countries. Except for France and Turkey, we
observe consistent bi-modal user leaning distributions in the other six
countries, and find that cross-country retweeting behaviors do not oscillate
across the partisan divide. More importantly, this study contributes a new set
of media bias estimates by averaging the leaning scores of users who share the
URLs from media domains. Through two validations, we find that the new average
audience leaning scores strongly correlate with existing media bias scores.
Lastly, we profile the COVID-19 news consumption by examining the audience
leaning distribution for top media in each country, and for selected media
across all countries. Those analyses help answer questions such as: Does center
media Reuters have a more balanced audience base than partisan media CNN in the
US? Does far-right media Breitbart attract any left-leaning readers in any
countries? Does CNN reach a more balanced audience base in the US than in the
UK?
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