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Identifying Partisan Slant in News Articles and Twitter During Political Crises

机译:识别政治危机期间新闻文章和Twitter中的党派倾向

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In this paper, we are interested in understanding the interrelationships between mainstream and social media in forming public opinion during mass crises, specifically in regards to how events are framed in the mainstream news and on social networks and to how the language used in those frames may allow to infer political slant and partisanship. We study the lingual choices for political agenda setting in mainstream and social media by analyzing a dataset of more than 40M tweets and more than 4M news articles from the mass protests in Ukraine during 2013-2014-known as "Euromaidan"-and the post-Euromaidan conflict between Russian, pro-Russian and Ukrainian forces in eastern Ukraine and Crimea. We design a natural language processing algorithm to analyze at scale the linguistic markers which point to a particular political leaning in online media and show that political slant in news articles and Twitter posts can be inferred with a high level of accuracy. These findings allow us to better understand the dynamics of partisan opinion formation during mass crises and the interplay between mainstream and social media in such circumstances.
机译:在本文中,我们有兴趣了解在大规模危机期间形成主流舆论的主流媒体与社交媒体之间的相互关系,特别是关于主流新闻和社交网络中事件的框架以及这些框架中使用的语言可能如何允许推断出政治倾向和党派立场。我们通过分析2013-2014年乌克兰大规模抗议活动(称为“ Euromaidan”)中的4000万条以上推文和400万条以上新闻报道的数据集,研究了主流和社交媒体在政治议程设定中的语言选择,以及乌克兰东部和克里米亚的俄罗斯,亲俄罗斯和乌克兰部队之间的Euromaidan冲突。我们设计了一种自然语言处理算法,可以大规模分析指向网络媒体中特定政治倾向的语言标记,并表明可以以较高的准确性推断新闻文章和Twitter帖子中的政治倾向。这些发现使我们能够更好地理解大规模危机期间党派观点形成的动态以及在这种情况下主流媒体与社交媒体之间的相互作用。

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