The detection of fake news often requires sophisticated reasoning skills, such as logically combining information by considering word-level subtle clues. In this paper, we move towards fine-grained reasoning for fake news detection by better reflecting the logical processes of human thinking and enabling the modeling of subtle clues. In particular, we propose a fine-grained reasoning framework by following the human information-processing model, introduce a mutual-reinforcement-based method for incorporating human knowledge about which evidence is more important, and design a prior-aware bi-channel kernel graph network to model subtle differences between pieces of evidence. Extensive experiments show that our model outperforms the state-of-the-art methods and demonstrate the explainability of our approach.
翻译:检测假新闻往往需要复杂的推理技巧,例如逻辑上通过考虑字级微妙线索将信息合并起来。 在本文中,我们转向精确的推理,通过更好地反映人类思维的逻辑过程和促成细微线索的建模来进行假新闻探测。 特别是,我们建议了一个精细的推理框架,遵循人类信息处理模型,引入一种基于相互强化的方法,以纳入人类知识,其中哪些证据更重要,并设计一个事先意识到的双通道内核图象网络,以模拟各种证据之间的微妙差异。 广泛的实验表明,我们的模型超越了最先进的方法,并展示了我们方法的可解释性。