Measuring COVID-19 Related Media Consumption on Twitter
- URL: http://arxiv.org/abs/2309.08866v1
- Date: Sat, 16 Sep 2023 04:01:45 GMT
- Title: Measuring COVID-19 Related Media Consumption on Twitter
- Authors: Cai Yang
- Abstract summary: Social media platforms have provided essential updates regarding the pandemic.
Online communications with media outlets remain unexplored on an international scale.
This thesis presents the first-of-its-kind study on media consumption on COVID-19 across countries.
- Score: 2.746705315038595
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The COVID-19 pandemic has been affecting the world dramatically ever since
2020. The minimum availability of physical interactions during the lockdown has
caused more and more people to turn to online activities on social media
platforms. These platforms have provided essential updates regarding the
pandemic, serving as bridges for communications. Research on studying these
communications on different platforms emerges during the meantime. Prior
studies focus on areas such as topic modeling, sentiment analysis and
prediction tasks such as predicting COVID-19 positive cases, misinformation
spread, etc. However, online communications with media outlets remain
unexplored on an international scale. We have little knowledge about the
patterns of the media consumption geographically and their association with
offline political preference. We believe addressing these questions could help
governments and researchers better understand human behaviors during the
pandemic. In this thesis, we specifically investigate the online consumption of
media outlets on Twitter through a set of quantitative analyses. We make use of
several public media outlet datasets to extract media consumption from tweets
collected based on COVID-19 keyword matching. We make use of a metric
"interaction" to quantify media consumption through weighted Twitter
activities. We further construct a matrix based on it which could be directly
used to measure user-media consumption in different granularities. We then
conduct analyses on the United States level and global level. To the best of
our knowledge, this thesis presents the first-of-its-kind study on media
consumption on COVID-19 across countries, it sheds light on understanding how
people consume media outlets during the pandemic and provides potential
insights for peer researchers.
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