论文标题
在线社交网络中的谣言立场分类:最新的,前景和未来的挑战
Rumor Stance Classification in Online Social Networks: The State-of-the-Art, Prospects, and Future Challenges
论文作者
论文摘要
互联网作为无处不在的技术的出现促进了社交媒体的快速发展,作为通信,内容共享和信息传播的领先的虚拟平台。尽管彻底改变了新闻传递给人们的方式,但这项技术也带来了不可避免的缺点。一个缺点是社交媒体平台加快谣言的传播,这可能引起怀疑和恐惧。因此,必须在广泛使用之前揭穿谣言。多年来,已经进行了许多研究以开发有效的谣言验证系统。此类研究的一个方面侧重于谣言立场分类,该分类涉及利用用户观点有关谣言帖子的任务,以更好地预测谣言的真实性。依靠谣言验证的用户立场已变得非常重要,因为它导致了模型性能的显着改善。在本文中,我们对复杂的在线社交网络(OSN)中的谣言立场分类进行了全面的文献综述。特别是,我们对这些方法进行了详尽的描述,并比较了它们的表现。此外,我们介绍了用于此目的的多个可用的数据集并突出显示其局限性。最后,讨论了挑战和未来的方向,以刺激进一步的相关研究工作。
The emergence of the Internet as a ubiquitous technology has facilitated the rapid evolution of social media as the leading virtual platform for communication, content sharing, and information dissemination. In spite of revolutionizing the way news is delivered to people, this technology has also brought along with itself inevitable demerits. One such drawback is the spread of rumors expedited by social media platforms, which may provoke doubt and fear. Therefore, it is essential to debunk rumors before their widespread use. Over the years, many studies have been conducted to develop effective rumor verification systems. One aspect of such studies focuses on rumor stance classification, which involves the task of utilizing user viewpoints regarding a rumorous post to better predict the veracity of a rumor. Relying on user stances in rumor verification has gained significant importance, for it has resulted in significant improvements in the model performance. In this paper, we conduct a comprehensive literature review of rumor stance classification in complex online social networks (OSNs). In particular, we present a thorough description of these approaches and compare their performances. Moreover, we introduce multiple datasets available for this purpose and highlight their limitations. Finally, challenges and future directions are discussed to stimulate further relevant research efforts.