Data science research into fake news has gathered much momentum in recent years, arguably facilitated by the emergence of large public benchmark datasets. While it has been well-established within media studies that gender bias is an issue that pervades news media, there has been very little exploration into the relationship between gender bias and fake news. In this work, we provide the first empirical analysis of gender bias vis-a-vis fake news, leveraging simple and transparent lexicon-based methods over public benchmark datasets. Our analysis establishes the increased prevalance of gender bias in fake news across three facets viz., abundance, affect and proximal words. The insights from our analysis provide a strong argument that gender bias needs to be an important consideration in research into fake news.
翻译:最近几年,对假新闻的数据科学研究取得了很大势头,这可以说是大型公共基准数据集的出现所促成的。虽然媒体研究中已经充分证实,性别偏见是一个贯穿于新闻媒体的问题,但对性别偏见和假新闻之间的关系却很少进行探讨。在这项工作中,我们首次对与假新闻的性别偏见进行了经验分析,利用简单和透明的基于词汇的方法来取代公共基准数据集。我们的分析证实,在三个方面,即丰度、影响和近似字词的假新闻中,性别偏见的先验程度有所提高。我们的分析发现,在研究假新闻时,性别偏见必须成为重要考虑因素。