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Analyzing Polarization in Social Media: Method and Application to Tweets on 21 Mass Shootings

机译:分析社交媒体的极化:21次大规模枪支推文的方法和应用

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We provide an NLP framework to uncover four linguistic dimensions of political polarization in social media: topic choice, framing, affect and illoculionary force. We quantify these aspects with existing lexical methods, and propose clustering of tweet embeddings as a means to identify salient topics for analysis across events: human evaluations show that our approach generates more cohesive topics than traditional LDA-based models. We apply our methods to study 4.4M tweets on 21 mass shootings. We provide evidence that the discussion of these events is highly polarized politically and that this polarization is primarily driven by partisan differences in framing rather than topic choice. We identify framing devices, such as grounding and the contrasting use of the terms "terrorist" and "crazy", that contribute to polarization. Results pertaining to topic choice, affect and illocutionary force suggest that Republicans focus more on the shooter and event-specific facts (news) while Democrats focus more on the victims and call for policy changes. Our work contributes to a deeper understanding of the way group divisions manifest in language and to computational methods for studying them.
机译:我们在社会化媒体提供了一个NLP框架,政治两极化揪出4个语言学方面:选题,取景,影响和illoculionary力。我们这些方面与现有的词汇方法量化,并提出鸣叫的嵌入的集群作为一种手段,以确定整个事件分析突出的主题:人类的评估表明,我们的方法产生比传统的基于LDA的模型更具凝聚力的主题。我们应用我们的方法来研究4.4M鸣叫21个大规模射杀。我们提供的证据表明,这些事件的讨论是高度政治极化,这偏振方向被党派分歧的框架,而不是选题主要驱动。我们确定取景设备,如接地和对比用的术语“恐怖分子”和“疯狂的”,有助于极化。有关话题的选择结果,影响和言外之力认为,共和党更注重射手和事件的具体事实(新闻),而民主党更侧重于受害者,并呼吁政策变化。我们的工作有助于体现在语言方式组师更深入的了解,并为研究它们的计算方法。

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