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Analyzing Political Bias and Unfairness in News Articles at Different Levels of Granularity

机译:在不同粒度水平的新闻文章中分析政治偏见和不公平

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Media organizations bear great reponsibility because of their considerable influence on shaping beliefs and positions of our society. Any form of media can contain overly biased content, e.g., by reporting on political events in a selective or incomplete manner. A relevant question hence is whether and how such form of imbalanced news coverage can be exposed. The research presented in this paper addresses not only the automatic detection of bias but goes one step further in that it explores how political bias and unfairness are manifested linguistically. In this regard we utilize a new corpus of 6964 news articles with labels derived from adfontesmedia.com and develop a neural model for bias assessment. By analyzing this model on article excerpts, we find insightful bias patterns at different levels of text granularity, from single words to the whole article discourse.
机译:媒体组织由于他们对塑造信仰和社会的职位而受到相当大的影响。任何形式的媒体都可以包含过于偏见的内容,例如,通过以选择性或​​不完整的方式报告政治事件。因此,有关的问题是是否可以暴露这种形式的不平衡新闻报道。本文提出的研究不仅可以自动检测偏见,而且进一步进一步逐步探讨了政治偏见和不公平性如何表现出语言。在这方面,我们利用了6964条新闻文章的新语料库,该文章具有衍生自AdfontesMedia.com的标签,并为偏见评估制定神经模型。通过分析文章摘录的这种模型,我们在不同级别的文本粒度下发现了富有识别的偏见模式,从单个单词到整个文章话语。

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