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Media Bias, the Social Sciences, and NLP: Automating Frame Analyses to Identify Bias by Word Choice and Labeling

机译:媒体偏见、社会科学和NLP:自动进行框架分析,通过词语选择和标签识别偏见

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Media bias can strongly impact the public perception of topics reported in the news. A difficult to detect, yet powerful form of slanted news coverage is called bias by word choice and labeling (WCL). WCL bias can occur, for example, when journalists refer to the same semantic concept by using different terms that frame the concept differently and consequently may lead to different assessments by readers, such as the terms "freedom fighters" and "terrorists," or "gun rights" and "gun control." In this research project, I aim to devise methods that identify instances of WCL bias and estimate the frames they induce, e.g., not only is "terrorists" of negative polarity but also ascribes to aggression and fear. To achieve this, I plan to research methods using natural language processing and deep learning while employing models and using analysis concepts from the social sciences, where researchers have studied media bias for decades. The first results indicate the effectiveness of this interdisciplinary research approach. My vision is to devise a system that helps news readers to become aware of the differences in media coverage caused by bias.
机译:媒体偏见会强烈影响公众对新闻报道主题的看法。一种很难发现但却强有力的倾斜新闻报道形式被称为词汇选择和标签偏见(WCL)。例如,当记者使用不同的术语来描述同一个语义概念时,可能会产生WCL偏见,从而导致读者做出不同的评估,例如“自由战士”和“恐怖分子”,或“枪支权利”和“枪支控制”在这个研究项目中,我的目标是设计方法,识别WCL偏见的实例,并估计它们所引发的框架,例如,不仅是负极性的“恐怖分子”,而且还归因于攻击和恐惧。为了实现这一点,我计划研究使用自然语言处理和深度学习的方法,同时使用社会科学的模型和分析概念,研究人员已经在社会科学领域研究了几十年的媒体偏见。第一个结果表明了这种跨学科研究方法的有效性。我的愿景是设计一个系统,帮助新闻读者意识到偏见造成的媒体报道差异。

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