Social media has been rapidly developing in the public sphere due to its ease of spreading new information, which leads to the circulation of rumors. However, detecting rumors from such a massive amount of information is becoming an increasingly arduous challenge. Previous work generally obtained valuable features from propagation information. It should be noted that most methods only target the propagation structure while ignoring the rumor transmission pattern. This limited focus severely restricts the collection of spread data. To solve this problem, the authors of the present study are motivated to explore the regionalized propagation patterns of rumors. Specifically, a novel region-enhanced deep graph convolutional network (RDGCN) that enhances the propagation features of rumors by learning regionalized propagation patterns and trains to learn the propagation patterns by unsupervised learning is proposed. In addition, a source-enhanced residual graph convolution layer (SRGCL) is designed to improve the graph neural network (GNN) oversmoothness and increase the depth limit of the rumor detection methods-based GNN. Experiments on Twitter15 and Twitter16 show that the proposed model performs better than the baseline approach on rumor detection and early rumor detection.
翻译:社会媒体在公共领域迅速发展,因为其容易传播新信息,从而导致流言的传播。然而,从如此大量的信息中发现流言正日益成为一项艰巨的挑战。以往的工作通常从传播信息中获得宝贵的特征。应当指出,大多数方法仅针对传播结构,而忽视传言传播模式。这种有限的重点严重限制了传播数据的收集。为解决这一问题,本研究报告的作者们积极探索流言的区域化传播模式。具体而言,一个创新的、区域强化的深图集网络(RDGCN),通过学习区域化传播模式和通过不受监督的学习培训学习传播模式来强化流言的传播特征。此外,还提出了一种来源强化的残余图象共变层(SRGCL),目的是改进图象网络超高的光度,并增加基于流言探测方法的深度限制。Twitter15和Twitter16实验显示,拟议的模型比对流言探测和早期谣言探测的基线方法要好。