Ma Jiachen, Liu Yong, Han Meng, Hu Chunqiang, Ju Zhaojie
IEEE Trans Neural Netw Learn Syst. 2024 Dec;35(12):18649-18660. doi: 10.1109/TNNLS.2023.3319661. Epub 2024 Dec 2.
With the rise of social media, the rapid spread of rumors online has resulted in numerous negative effects on society and the economy. The methods for rumor detection have attracted great interest from both academia and industry. Given the widespread effectiveness of contrastive learning, many graph contrastive learning models for rumor detection have been proposed by using the event propagation structure as graph data. However, the existing contrastive models usually treat the propagation structure of other events similar to the anchor events as negative samples. While this design choice allows for discriminative learning, on the other hand, it also inevitably pushes apart semantically similar samples and, thus, degrades model performance. In this article, we propose a novel propagation fusion model called propagation structure fusion model based on node-level contrastive learning (PFNC) for rumor detection based on node-level contrastive learning. PFNC first obtains three augmented propagation structures by masking the text of each node in the propagation structure randomly and perturbing some edges in the propagation structure based on the importance of edges. Then, PFNC applies the node-level contrastive learning method between every two augmented propagation structures to prevent the samples with similar propagation structure from far away. Finally, a convolutional neural network (CNN)-based model is proposed to capture the relevant information that is consistent and supplementary among three augmented propagation structures by regarding the propagation structure of the event as a color picture, three augmented propagation structures as color channels, and each node as a pixel. The experimental results on real datasets show that the PFNC significantly outperforms the state-of-the-art models for rumor detection.
随着社交媒体的兴起,谣言在网上迅速传播,给社会和经济带来了诸多负面影响。谣言检测方法引起了学术界和业界的极大兴趣。鉴于对比学习的广泛有效性,许多用于谣言检测的图对比学习模型已被提出,这些模型将事件传播结构用作图数据。然而,现有的对比模型通常将与锚定事件相似的其他事件的传播结构视为负样本。虽然这种设计选择允许进行判别式学习,但另一方面,它也不可避免地将语义相似的样本推开,从而降低模型性能。在本文中,我们基于节点级对比学习提出了一种新颖的传播融合模型,称为基于节点级对比学习的传播结构融合模型(PFNC),用于谣言检测。PFNC首先通过随机掩盖传播结构中每个节点的文本并根据边的重要性扰动传播结构中的一些边来获得三个增强的传播结构。然后,PFNC在每两个增强的传播结构之间应用节点级对比学习方法,以防止具有相似传播结构的样本远离。最后,提出了一种基于卷积神经网络(CNN)的模型,通过将事件的传播结构视为彩色图片、三个增强的传播结构视为颜色通道、每个节点视为像素,来捕捉三个增强的传播结构中一致且互补的相关信息。在真实数据集上的实验结果表明,PFNC在谣言检测方面显著优于当前最先进的模型。