论文标题
Greener:新闻媒体分析的图形神经网络
GREENER: Graph Neural Networks for News Media Profiling
论文作者
论文摘要
我们研究了网络上新闻媒体的报告和偏见的事实的问题。这是一个与虚假信息和“假新闻”检测有关的重要但研究不足的问题,但与查看单个文章或个人主张相比,它以更粗的粒度解决了问题。这很有用,因为它允许提前介绍整个媒体。与以前的工作不同,主要集中在文本上(例如,〜在目标网站发表的文章或其社交媒体个人资料或Wikipedia中的文本描述上),这里的主要重点是建模基于受众的重叠基于媒体媒体之间的相似性。这是出于同义考虑的动机,即〜人们与具有相似兴趣的人建立联系的趋势,我们扩展到了媒体,假设类似的用户将阅读类似类型的媒体。特别是,我们提出了Greener(新闻媒体分析的图形神经网络),该模型基于受众的观众重叠构建媒体间连接图,然后使用图形神经网络来表示每种媒体。我们发现,这种表示对于预测新闻媒体媒体的事实和偏见非常有用,从而比在两个数据集上报告的最先进结果方面得到了改善。当通过新闻文章,Twitter,YouTube,Facebook和Wikipedia获得的常规使用的表示形式增强时,预测准确性可改善这两个任务的2.5-27宏观F1点。
We study the problem of profiling news media on the Web with respect to their factuality of reporting and bias. This is an important but under-studied problem related to disinformation and "fake news" detection, but it addresses the issue at a coarser granularity compared to looking at an individual article or an individual claim. This is useful as it allows to profile entire media outlets in advance. Unlike previous work, which has focused primarily on text (e.g.,~on the text of the articles published by the target website, or on the textual description in their social media profiles or in Wikipedia), here our main focus is on modeling the similarity between media outlets based on the overlap of their audience. This is motivated by homophily considerations, i.e.,~the tendency of people to have connections to people with similar interests, which we extend to media, hypothesizing that similar types of media would be read by similar kinds of users. In particular, we propose GREENER (GRaph nEural nEtwork for News mEdia pRofiling), a model that builds a graph of inter-media connections based on their audience overlap, and then uses graph neural networks to represent each medium. We find that such representations are quite useful for predicting the factuality and the bias of news media outlets, yielding improvements over state-of-the-art results reported on two datasets. When augmented with conventionally used representations obtained from news articles, Twitter, YouTube, Facebook, and Wikipedia, prediction accuracy is found to improve by 2.5-27 macro-F1 points for the two tasks.