Dancing to the Partisan Beat: A First Analysis of Political Communication on TikTok
April 11, 2020 Β· Declared Dead Β· π Web Science Conference
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Authors
Juan Carlos Medina Serrano, Orestis Papakyriakopoulos, Simon Hegelich
arXiv ID
2004.05478
Category
cs.SI: Social & Info Networks
Citations
220
Venue
Web Science Conference
Last Checked
4 months ago
Abstract
TikTok is a video-sharing social networking service, whose popularity is increasing rapidly. It was the world's second-most downloaded app in 2019. Although the platform is known for having users posting videos of themselves dancing, lip-syncing, or showcasing other talents, user-videos expressing political views have seen a recent spurt. This study aims to perform a primary evaluation of political communication on TikTok. We collect a set of US partisan Republican and Democratic videos to investigate how users communicated with each other about political issues. With the help of computer vision, natural language processing, and statistical tools, we illustrate that political communication on TikTok is much more interactive in comparison to other social media platforms, with users combining multiple information channels to spread their messages. We show that political communication takes place in the form of communication trees since users generate branches of responses to existing content. In terms of user demographics, we find that users belonging to both the US parties are young and behave similarly on the platform. However, Republican users generated more political content and their videos received more responses; on the other hand, Democratic users engaged significantly more in cross-partisan discussions.
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