The dissemination of fake news on social networks has drawn public need for effective and efficient fake news detection methods. Generally, fake news on social networks is multi-modal and has various connections with other entities such as users and posts. The heterogeneity in both news content and the relationship with other entities in social networks brings challenges to designing a model that comprehensively captures the local multi-modal semantics of entities in social networks and the global structural representation of the propagation patterns, so as to classify fake news effectively and accurately. In this paper, we propose a novel Transformer-based model: HetTransformer to solve the fake news detection problem on social networks, which utilises the encoder-decoder structure of Transformer to capture the structural information of news propagation patterns. We first capture the local heterogeneous semantics of news, post, and user entities in social networks. Then, we apply Transformer to capture the global structural representation of the propagation patterns in social networks for fake news detection. Experiments on three real-world datasets demonstrate that our model is able to outperform the state-of-the-art baselines in fake news detection.
翻译:社交网络上虚假新闻的传播引起了公众对于有效和高效的假新闻检测方法的需求。一般而言,社交网络上的假新闻是多式的,与用户和文章等其他实体有着各种联系。新闻内容和与社交网络中其他实体的关系的多样性给设计一个全面捕捉社交网络中实体的本地多式语义以及全球传播模式结构代表的模型带来了挑战,从而有效和准确地对假新闻进行分类。在本文中,我们提出了一个新的基于变换器的模型:HetTransext解决社交网络上的假新闻检测问题,它利用变换器的编码解码器结构来捕捉新闻传播模式的结构信息。我们首先捕捉到社交网络中新闻、邮政和用户实体的本地混杂语义。然后,我们应用变换器来捕捉社交网络中传播模式的全球结构代表,以便进行假新闻检测。三个真实世界数据集的实验表明,我们的模型能够超越假新闻检测中的最新基线。