Rumor detection has become an emerging and active research field in recent years. At the core is to model the rumor characteristics inherent in rich information, such as propagation patterns in social network and semantic patterns in post content, and differentiate them from the truth. However, existing works on rumor detection fall short in modeling heterogeneous information, either using one single information source only (e.g. social network, or post content) or ignoring the relations among multiple sources (e.g. fusing social and content features via simple concatenation). Therefore, they possibly have drawbacks in comprehensively understanding the rumors, and detecting them accurately. In this work, we explore contrastive self-supervised learning on heterogeneous information sources, so as to reveal their relations and characterize rumors better. Technically, we supplement the main supervised task of detection with an auxiliary self-supervised task, which enriches post representations via post self-discrimination. Specifically, given two heterogeneous views of a post (i.e. representations encoding social patterns and semantic patterns), the discrimination is done by maximizing the mutual information between different views of the same post compared to that of other posts. We devise cluster-wise and instance-wise approaches to generate the views and conduct the discrimination, considering different relations of information sources. We term this framework as Self-supervised Rumor Detection (SRD). Extensive experiments on three real-world datasets validate the effectiveness of SRD for automatic rumor detection on social media.
翻译:近些年来,传闻探测已成为一个新兴和活跃的研究领域。核心是模拟丰富信息的传闻特征,如社交网络的传播模式和邮递内容的语义模式等,并将之与事实区分开来。然而,关于传闻探测的现有工作在建模异同信息模型方面有缺陷,要么仅使用单一的信息源(如社交网络或邮编内容),要么忽视多种来源之间的关系(如通过简单的共产化传播社交和内容特征)。因此,在全面理解流言并准确地发现流言方面,它们可能存在缺陷。在这项工作中,我们探索不同信息来源的对比性自我监督学习,以揭示其关系并更好地描述流言。在技术上,我们用辅助性自我监督任务来补充主要受监督的检测任务,这通过事后自我歧视来丰富事后的表述。具体地说,鉴于对一个职位的两种差异性观点(即描述社会模式和语义模式),歧视的发生方式是最大限度地利用同一职位的不同观点与其他文章的不同观点的自我监督自我监督自我监督的学习方式。我们设计了SBroudal-views the lady lady lady-s lady lady lady lady lades lady lady-s