Disinformation and fake news have posed detrimental effects on individuals and society in recent years, attracting broad attention to fake news detection. The majority of existing fake news detection algorithms focus on mining news content and/or the surrounding exogenous context for discovering deceptive signals; while the endogenous preference of a user when he/she decides to spread a piece of fake news or not is ignored. The confirmation bias theory has indicated that a user is more likely to spread a piece of fake news when it confirms his/her existing beliefs/preferences. Users' historical, social engagements such as posts provide rich information about users' preferences toward news and have great potential to advance fake news detection. However, the work on exploring user preference for fake news detection is somewhat limited. Therefore, in this paper, we study the novel problem of exploiting user preference for fake news detection. We propose a new framework, UPFD, which simultaneously captures various signals from user preferences by joint content and graph modeling. Experimental results on real-world datasets demonstrate the effectiveness of the proposed framework. We release our code and data as a benchmark for GNN-based fake news detection: https://github.com/safe-graph/GNN-FakeNews.
翻译:近年来,假消息和假新闻对个人和社会产生了有害影响,吸引了对假新闻探测的广泛关注。现有的假新闻探测算法大多侧重于挖掘新闻内容和(或)周围外在环境,以发现欺骗性信号;虽然当用户决定传播假新闻时,忽视了用户的内在偏好;确认偏差理论表明,当用户确认其现有的信仰/参考时,更可能传播假新闻。用户的历史、社交活动,例如文章,提供了用户偏好新闻的丰富信息,并具有推动假新闻探测的巨大潜力。然而,探索用户偏好假新闻探测的工作有些有限。因此,我们在本文件中研究了利用用户偏好假新闻探测的新问题。我们提出了一个新的框架,即UPFDD,通过联合内容和图形模型同时捕捉用户偏好的各种信号。真实世界数据集的实验结果显示了拟议框架的有效性。我们发布了我们的代码和数据,作为基于GNNN的假新闻探测基准:https://github.com/safegraphygraphy。