Newsalyze:新闻文章中针对人的偏见的有效沟通

Felix Hamborg, Kim Heinser, Anastasia Zhukova, K. Donnay, Bela Gipp
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引用次数: 2

摘要

媒体偏见及其极端形式——假新闻——可以决定性地影响公众舆论。特别是在报道政策问题时,倾斜的新闻报道可能会强烈影响社会决策,例如在民主选举中。本文为解决这一问题做出了三方面的贡献。首先,我们提出了一个偏见识别系统,它结合了自然语言理解的最先进方法。其次,我们设计了偏见敏感的可视化,将新闻文章中的偏见传达给非专家新闻消费者。第三,我们的主要贡献是一项大规模的用户研究,该研究在接近日常新闻消费的环境中测量偏见意识,例如,我们向受访者提供新闻概述和个别文章。我们不仅测量可视化对受访者偏见意识的影响,而且我们还可以通过采用联合设计来确定可视化对单个组件的影响。我们的偏见敏感概述强烈而显著地提高了受访者的偏见意识。我们的研究进一步表明,我们的内容驱动识别方法可以检测到由于个别新闻文章中存在实质性偏见而产生的类似倾斜新闻文章组。相比之下,先前审查的工作只是促进了偏见的可见性,例如,通过区分左翼和右翼的出口。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Newsalyze: Effective Communication of Person-Targeting Biases in News Articles
Media bias and its extreme form, fake news, can decisively affect public opinion. Especially when reporting on policy issues, slanted news coverage may strongly influence societal decisions, e.g., in democratic elections. Our paper makes three contributions to address this issue. First, we present a system for bias identification, which combines state-of-the-art methods from natural language understanding. Second, we devise bias-sensitive visualizations to communicate bias in news articles to non-expert news consumers. Third, our main contribution is a large-scale user study that measures bias-awareness in a setting that approximates daily news consumption, e.g., we present respondents with a news overview and individual articles. We not only measure the visualizations' effect on respondents' bias-awareness, but we can also pinpoint the effects on individual components of the visualizations by employing a conjoint design. Our bias-sensitive overviews strongly and significantly increase bias-awareness in respondents. Our study further suggests that our content-driven identification method detects groups of similarly slanted news articles due to substantial biases present in individual news articles. In contrast, the reviewed prior work rather only facilitates the visibility of biases, e.g., by distinguishing left- and right-wing outlets.
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