Over the past few years, there has been a substantial effort towards automated detection of fake news on social media platforms. Existing research has modeled the structure, style, content, and patterns in dissemination of online posts, as well as the demographic traits of users who interact with them. However, no attention has been directed towards modeling the properties of online communities that interact with the posts. In this work, we propose a novel social context-aware fake news detection framework, SAFER, based on graph neural networks (GNNs). The proposed framework aggregates information with respect to: 1) the nature of the content disseminated, 2) content-sharing behavior of users, and 3) the social network of those users. We furthermore perform a systematic comparison of several GNN models for this task and introduce novel methods based on relational and hyperbolic GNNs, which have not been previously used for user or community modeling within NLP. We empirically demonstrate that our framework yields significant improvements over existing text-based techniques and achieves state-of-the-art results on fake news datasets from two different domains.
翻译:过去几年来,为在社交媒体平台上自动检测假消息做出了大量努力; 现有的研究模拟了在线日志传播的结构、风格、内容和模式,以及与这些日志互动的用户的人口特征; 然而,没有注意对与这些日志互动的在线社群的特性进行建模; 在这项工作中,我们提出一个新的社会背景认识假消息检测框架,即SAFER,以图示神经网络为基础; 拟议的框架汇总了以下方面的信息:(1) 所传播内容的性质;(2) 用户的内容共享行为;(3) 这些用户的社会网络;我们还系统地比较了这项工作的若干GNN模式,并采用了基于关系型和双曲型GNNN的新方法,这些方法以前没有在NLP内用于用户或社区建模。 我们从经验上表明,我们的框架大大改进了现有的基于文本的技术,并在两个不同领域虚假新闻数据集上取得了最新的结果。