Simchon Almog, Brady William J, Van Bavel Jay J
Department of Psychology, Ben-Gurion University of the Negev, POB 653, Beer Sheva 8410501, Israel.
School of Psychological Science, University of Bristol, BS8 1TU, Bristol, UK.
PNAS Nexus. 2022 Mar 10;1(1):pgac019. doi: 10.1093/pnasnexus/pgac019. eCollection 2022 Mar.
The affective animosity between the political left and right has grown steadily in many countries over the past few years, posing a threat to democratic practices and public health. There is a rising concern over the role that "bad actors" or trolls may play in the polarization of online networks. In this research, we examined the processes by which trolls may sow intergroup conflict through polarized rhetoric. We developed a dictionary to assess online polarization by measuring language associated with communications that display partisan bias in their diffusion. We validated the polarized language dictionary in 4 different contexts and across multiple time periods. The polarization dictionary made out-of-set predictions, generalized to both new political contexts (#BlackLivesMatter) and a different social media platform (Reddit), and predicted partisan differences in public opinion polls about COVID-19. Then we analyzed tweets from a known Russian troll source ( = 383,510) and found that their use of polarized language has increased over time. We also compared troll tweets from 3 countries ( = 79,833) and found that they all utilize more polarized language than regular Americans ( = 1,507,300) and trolls have increased their use of polarized rhetoric over time. We also find that polarized language is associated with greater engagement, but this association only holds for politically engaged users (both trolls and regular users). This research clarifies how trolls leverage polarized language and provides an open-source, simple tool for exploration of polarized communications on social media.
在过去几年里,许多国家政治左派和右派之间的情感敌意一直在稳步增长,对民主实践和公共卫生构成威胁。人们越来越担心“不良行为者”或网络喷子在网络两极分化中可能扮演的角色。在这项研究中,我们考察了网络喷子可能通过极端化言论引发群体间冲突的过程。我们开发了一个词典,通过测量与在传播中表现出党派偏见的交流相关的语言来评估网络两极分化。我们在4种不同情境和多个时间段内验证了这个极端化语言词典。这个两极分化词典做出了超出既定范围的预测,推广到了新的政治情境(#黑人的命也是命)和不同的社交媒体平台(Reddit),并预测了关于新冠疫情的民意调查中的党派差异。然后我们分析了来自一个已知的俄罗斯网络喷子来源的推文(n = 383,510),发现他们对极端化语言的使用随时间增加。我们还比较了3个国家的网络喷子推文(n = 79,833),发现他们都比普通美国用户(n = 1,507,300)更多地使用极端化语言,并且网络喷子随着时间增加了他们对极端化言论的使用。我们还发现极端化语言与更高的参与度相关,但这种关联只适用于政治参与度高的用户(包括网络喷子和普通用户)。这项研究阐明了网络喷子如何利用极端化语言,并提供了一个开源的、简单的工具来探索社交媒体上的极端化交流。