同词异义:广播媒体的语义两极分化:语言预测网络公共话语的两极分化

Xi Ding, Michael A. Horning, E. H. Rho
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引用次数: 1

摘要

近十年来,随着网络新闻的发展,关于政治话语和新闻消费的实证研究主要集中在过滤气泡和回音室现象上。然而,最近,学者们揭示了有关这种现象影响的有限证据,导致一些人认为,新闻受众之间的党派隔离不能仅仅通过在线新闻消费来完全解释,传统传统媒体的作用可能在围绕时事的公共话语两极分化中同样突出。在这项工作中,我们通过调查广播新闻媒体语言和社交媒体话语之间的关系,将分析范围扩大到包括在线和更传统的媒体。通过分析十年来CNN和Fox新闻的封闭字幕(210万发言人转)以及Twitter的主题对应话语,我们提供了一个新的框架来测量美国两大广播网络之间的语义极化,以展示这些网点之间的语义极化是如何演变的(研究1),达到顶峰(研究2),并影响了过去十年中Twitter上的党派讨论(研究3)。我们的研究结果表明,在两个渠道之间讨论主题重要关键词的方式上,两极分化急剧增加,特别是在2016年之后,总体峰值出现在2020年。2020年,这两个电视台在截然不同的语境中讨论相同的话题,以至于在语境中讨论相同的关键词时几乎没有任何语言重叠。此外,我们在规模上证明,广播媒体语言中的这种党派分歧如何显著地影响Twitter上的语义极性趋势(反之亦然),第一次进行经验联系,在线讨论如何受到电视媒体的影响。我们展示了关于电视上类似新闻事件的对立媒体叙述的语言特征如何增加在线党派话语的水平。为此,我们的工作对电视媒体极化如何在阻碍而不是支持在线民主话语方面发挥重要作用具有启示意义。
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Same Words, Different Meanings: Semantic Polarization in Broadcast Media Language Forecasts Polarity in Online Public Discourse
With the growth of online news over the past decade, empirical studies on political discourse and news consumption have focused on the phenomenon of filter bubbles and echo chambers. Yet recently, scholars have revealed limited evidence around the impact of such phenomenon, leading some to argue that partisan segregation across news audiences can- not be fully explained by online news consumption alone and that the role of traditional legacy media may be as salient in polarizing public discourse around current events. In this work, we expand the scope of analysis to include both online and more traditional media by investigating the relationship between broadcast news media language and social media discourse. By analyzing a decade’s worth of closed captions (2.1 million speaker turns) from CNN and Fox News along with topically corresponding discourse from Twitter, we pro- vide a novel framework for measuring semantic polarization between America’s two major broadcast networks to demonstrate how semantic polarization between these outlets has evolved (Study 1), peaked (Study 2) and influenced partisan discussions on Twitter (Study 3) across the last decade. Our results demonstrate a sharp increase in polarization in how topically important keywords are discussed between the two channels, especially after 2016, with overall highest peaks occurring in 2020. The two stations discuss identical topics in drastically distinct contexts in 2020, to the extent that there is barely any linguistic overlap in how identical keywords are contextually discussed. Further, we demonstrate at-scale, how such partisan division in broadcast media language significantly shapes semantic polarity trends on Twitter (and vice-versa), empirically linking for the first time, how online discussions are influenced by televised media. We show how the language characterizing opposing media narratives about similar news events on TV can increase levels of partisan dis- course online. To this end, our work has implications for how media polarization on TV plays a significant role in impeding rather than supporting online democratic discourse.
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