论文标题
通过双向图卷积网络在社交媒体上检测到谣言
Rumor Detection on Social Media with Bi-Directional Graph Convolutional Networks
论文作者
论文摘要
由于传播新信息的性质,社交媒体一直在公共场合迅速发展,这导致谣言流传。同时,在社交媒体中发现这种大量信息的谣言正在成为一个艰巨的挑战。因此,采用了一些深度学习方法来通过传播方式来发现谣言,例如递归神经网络(RVNN)等。但是,这些深度学习方法只考虑了深层传播的模式,而忽略了谣言检测中广泛分散的结构。实际上,传播和分散是谣言的两个关键特征。在本文中,我们提出了一种新型的双向图模型,称为双向图卷积网络(BI-GCN),以通过在自上而下和自下而上的谣言传播来探索这两种特征。它利用自上而下的谣言传播的GCN来学习谣言传播的模式,以及具有相反的谣言扩散图的GCN,以捕获谣言传播的结构。此外,来自源柱的信息涉及GCN的每一层,以增强谣言根源的影响。令人鼓舞的几个基准的经验结果证实了拟议方法比最新方法的优越性。
Social media has been developing rapidly in public due to its nature of spreading new information, which leads to rumors being circulated. Meanwhile, detecting rumors from such massive information in social media is becoming an arduous challenge. Therefore, some deep learning methods are applied to discover rumors through the way they spread, such as Recursive Neural Network (RvNN) and so on. However, these deep learning methods only take into account the patterns of deep propagation but ignore the structures of wide dispersion in rumor detection. Actually, propagation and dispersion are two crucial characteristics of rumors. In this paper, we propose a novel bi-directional graph model, named Bi-Directional Graph Convolutional Networks (Bi-GCN), to explore both characteristics by operating on both top-down and bottom-up propagation of rumors. It leverages a GCN with a top-down directed graph of rumor spreading to learn the patterns of rumor propagation, and a GCN with an opposite directed graph of rumor diffusion to capture the structures of rumor dispersion. Moreover, the information from the source post is involved in each layer of GCN to enhance the influences from the roots of rumors. Encouraging empirical results on several benchmarks confirm the superiority of the proposed method over the state-of-the-art approaches.