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Title: Dynamics of Ideological Biases of Social Media Users
Humanity for centuries has perfected skills of interpersonal interactions and evolved patterns that enable people to detect lies and deceiving behavior of others in face-to-face settings. Unprecedented growth of people’s access to mobile phones and social media raises an important question: How does this new technology influence people’s interactions and support the use of traditional patterns? In this article, we answer this question for homophily-driven patterns in social media. In our previous studies, we found that, on a university campus, changes in student opinions were driven by the desire to hold popular opinions. Here, we demonstrate that the evolution of online platform-wide opinion groups is driven by the same desire. We focus on two social media: Twitter and Parler, on which we tracked the political biases of their users. On Parler, an initially stable group of Right-biased users evolved into a permanent Right-leaning echo chamber dominating weaker, transient groups of members with opposing political biases. In contrast, on Twitter, the initial presence of two large opposing bias groups led to the evolution of a bimodal bias distribution, with a high degree of polarization. We capture the movement of users from the initial to final bias groups during the tracking period. We also show that user choices are influenced by side-effects of homophily. Users entering the platform attempt to find a sufficiently large group whose members hold political biases within the range sufficiently close to their own. If successful, they stabilize their biases and become permanent members of the group. Otherwise, they leave the platform. We believe that the dynamics of users’ behavior uncovered in this article create a foundation for technical solutions supporting social groups on social media and socially aware networks  more » « less
Award ID(s):
2214216
PAR ID:
10523343
Author(s) / Creator(s):
; ;
Publisher / Repository:
IEEE Press
Date Published:
Journal Name:
IEEE Communications Magazine
Volume:
62
Issue:
5
ISSN:
0163-6804
Page Range / eLocation ID:
36 to 42
Subject(s) / Keyword(s):
political polarization of Social Media users dynamics of user's political bias evolution stable state of polarization
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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