Modeling Political Activism around Gun Debate via Social Media
- URL: http://arxiv.org/abs/2205.00308v1
- Date: Sat, 30 Apr 2022 17:17:08 GMT
- Title: Modeling Political Activism around Gun Debate via Social Media
- Authors: Yelena Mejova, Jisun An, Gianmarco De Francisci Morales, Haewoon Kwak
- Abstract summary: We employ social media signals to examine the predictors of offline political activism, at both population and individual level.
We show that it is possible to classify the stance of users on the gun issue, especially when network information is available.
- Score: 16.571752603108344
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The United States have some of the highest rates of gun violence among
developed countries. Yet, there is a disagreement about the extent to which
firearms should be regulated. In this study, we employ social media signals to
examine the predictors of offline political activism, at both population and
individual level. We show that it is possible to classify the stance of users
on the gun issue, especially accurately when network information is available.
Alongside socioeconomic variables, network information such as the relative
size of the two sides of the debate is also predictive of state-level gun
policy. On individual level, we build a statistical model using network,
content, and psycho-linguistic features that predicts real-life political
action, and explore the most predictive linguistic features. Thus, we argue
that, alongside demographics and socioeconomic indicators, social media
provides useful signals in the holistic modeling of political engagement around
the gun debate.
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