Jing Elise, Ahn Yong-Yeol
Center for Complex Networks and Systems Research, Luddy School of Informatics, Computing, and Engineering, Indiana University, Bloomington, IN 47408 USA.
Present Address: Sirius XM, 1221 Avenue of the Americas 37th Floor, New York, NY 10020 USA.
EPJ Data Sci. 2021;10(1):53. doi: 10.1140/epjds/s13688-021-00308-4. Epub 2021 Oct 30.
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 construct their narrative frameworks which individual posts source from. Leveraging a dataset of tweets from the politicians in the U.S., including the ex-president, members of Congress, and state governors, we found that the Democrats' narrative tends to be more concerned with the pandemic as well as financial and social support, while the Republicans discuss more about other political entities such as China. We then perform an automatic framing analysis to characterize the ways in which they frame their narratives, where we found that the Democrats emphasize the government's role in responding to the pandemic, and the Republicans emphasize the roles of individuals and support for small businesses. Finally, we present a semantic role analysis that uncovers the important characters and relationships in their narratives as well as how they facilitate a membership categorization process. Our findings concretely expose the gaps in the "elusive consensus" between the two parties. Our methodologies may be applied to computationally study narratives in various domains.
The online version contains supplementary material available at 10.1140/epjds/s13688-021-00308-4.
新冠疫情是一场全球危机,它考验着每个社会,并凸显了地方政治在危机应对中的关键作用。在美国,民主党和共和党在疫情相关叙述上存在强烈的党派分歧,这导致了个体行为的两极分化以及各地区政策采纳的差异。如此案例以及大多数重大社会问题所表明的那样,高度两极分化的叙事框架助长了这类叙述。要理解两极分化及其他社会分歧,剖析这些不同的叙述至关重要。在此,以民主党和共和党关于疫情的政治社交媒体帖子为案例研究,我们证明计算方法的组合能够为构建其各自帖子来源的叙述框架的不同背景、框架、人物及关系提供有用见解。利用来自美国政客(包括前总统、国会议员和州长)的推文数据集,我们发现民主党人的叙述往往更关注疫情以及财政和社会支持,而共和党人更多地讨论诸如中国等其他政治实体。然后我们进行自动框架分析以刻画他们构建叙述的方式,在此过程中我们发现民主党人强调政府在应对疫情中的作用,而共和党人强调个人的作用以及对小企业的支持。最后,我们呈现了一项语义角色分析,该分析揭示了他们叙述中的重要人物和关系以及这些人物和关系如何促成成员分类过程。我们的研究结果具体揭示了两党之间“难以捉摸的共识”中的差距。我们的方法可应用于对各个领域叙述的计算研究。
在线版本包含可在10.1140/epjds/s13688 - 021 - 00308 - 4获取的补充材料。