News consumption and social media regulations policy
- URL: http://arxiv.org/abs/2106.03924v1
- Date: Mon, 7 Jun 2021 19:26:32 GMT
- Title: News consumption and social media regulations policy
- Authors: Gabriele Etta, Matteo Cinelli, Alessandro Galeazzi, Carlo Michele
Valensise, Mauro Conti, Walter Quattrociocchi
- Abstract summary: We analyze two social media that enforced opposite moderation methods, Twitter and Gab, to assess the interplay between news consumption and content regulation.
Our results show that the presence of moderation pursued by Twitter produces a significant reduction of questionable content.
The lack of clear regulation on Gab results in the tendency of the user to engage with both types of content, showing a slight preference for the questionable ones which may account for a dissing/endorsement behavior.
- Score: 70.31753171707005
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Users online tend to consume information adhering to their system of beliefs
and to ignore dissenting information. During the COVID-19 pandemic, users get
exposed to a massive amount of information about a new topic having a high
level of uncertainty. In this paper, we analyze two social media that enforced
opposite moderation methods, Twitter and Gab, to assess the interplay between
news consumption and content regulation concerning COVID-19. We compare the two
platforms on about three million pieces of content analyzing user interaction
with respect to news articles. We first describe users' consumption patterns on
the two platforms focusing on the political leaning of news outlets. Finally,
we characterize the echo chamber effect by modeling the dynamics of users'
interaction networks. Our results show that the presence of moderation pursued
by Twitter produces a significant reduction of questionable content, with a
consequent affiliation towards reliable sources in terms of engagement and
comments. Conversely, the lack of clear regulation on Gab results in the
tendency of the user to engage with both types of content, showing a slight
preference for the questionable ones which may account for a
dissing/endorsement behavior. Twitter users show segregation towards reliable
content with a uniform narrative. Gab, instead, offers a more heterogeneous
structure where users, independently of their leaning, follow people who are
slightly polarized towards questionable news.
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