Characterizing Partisan Political Narrative Frameworks about COVID-19 on Twitter
Elise Jing, Yong-Yeol Ahn

TL;DR
This study analyzes partisan political narratives about COVID-19 on Twitter, revealing distinct framing, characters, and relationships used by Democrats and Republicans, and providing insights into polarization through computational methods.
Contribution
It introduces a computational framework combining framing and semantic role analysis to dissect partisan narratives, highlighting differences in focus and character roles.
Findings
Democrats focus on pandemic response and social support.
Republicans emphasize political entities like China.
Distinct framing and character roles characterize each party's narrative.
Abstract
The COVID-19 pandemic is a global crisis that has been testing every society and exposing the critical role of local politics in crisis response. In the United States, there has been a strong partisan divide between the Democratic and Republican party's narratives about the pandemic which resulted in polarization of individual behaviors and divergent policy adoption across regions. As shown in this case, as well as in most major social issues, strongly polarized narrative frameworks facilitate such narratives. To understand polarization and other social chasms, it is critical to dissect these diverging narratives. Here, taking the Democratic and Republican political social media posts about the pandemic as a case study, we demonstrate that a combination of computational methods can provide useful insights into the different contexts, framing, and characters and relationships that…
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Taxonomy
TopicsSocial Media and Politics · Computational and Text Analysis Methods · Misinformation and Its Impacts
