Enhancing Rumor Detection in Social Media Using Dynamic Propagation Structures

Shuai Wang, Qingchao Kong, Yuqi Wang, Lei Wang
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引用次数: 4

Abstract

Social media, such as Facebook and Twitter, has become one of the most important channels for information dissemination. However, these social media platforms are often misused to spread rumors, which has brought about severe social problems, and consequently, there are urgent needs for automatic rumor detection techniques. Existing work on rumor detection concentrates more on the utilization of textual features, but diffusion structure itself can provide critical propagating information in identifying rumors. Previous works which have considered structural information, only utilize limited propagation structures. Moreover, few related research has considered the dynamic evolution of diffusion structures. To address these issues, in this paper, we propose a Neural Model using Dynamic Propagation Structures (NM-DPS) for rumor detection in social media. Firstly, we propose a partition approach to model the dynamic evolution of propagation structure and then use temporal attention based neural model to learn a representation for the dynamic structure. Finally, we fuse the structure representation and content features into a unified framework for effective rumor detection. Experimental results on two real-world social media datasets demonstrate the salience of dynamic propagation structure information and the effectiveness of our proposed method in capturing the dynamic structure.
利用动态传播结构增强社交媒体谣言检测
Facebook、Twitter等社交媒体已经成为最重要的信息传播渠道之一。然而,这些社交媒体平台经常被滥用来传播谣言,这带来了严重的社会问题,因此,迫切需要谣言自动检测技术。现有的谣言检测工作更多地集中在对文本特征的利用上,而传播结构本身可以为谣言识别提供关键的传播信息。以往的研究考虑了结构信息,只利用了有限的传播结构。此外,很少有相关研究考虑扩散结构的动态演化。为了解决这些问题,在本文中,我们提出了一个使用动态传播结构(NM-DPS)的神经模型来检测社交媒体中的谣言。首先,我们提出了一种划分方法来模拟传播结构的动态演变,然后使用基于时间注意的神经模型来学习动态结构的表示。最后,我们将结构表征和内容特征融合成一个统一的框架,用于有效的谣言检测。在两个真实社交媒体数据集上的实验结果证明了动态传播结构信息的显著性以及我们所提出的方法在捕获动态结构方面的有效性。
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