论文标题
通过隐藏的影响和群体行为在社交媒体上识别协调的帐户
Identifying Coordinated Accounts on Social Media through Hidden Influence and Group Behaviours
论文作者
论文摘要
社交媒体上的虚假信息运动涉及从恶意帐户到操纵公众舆论的协调活动,已经变得越来越普遍。现有的检测协调帐户的方法要么对协调行为做出非常严格的假设,要么需要在协调组中揭示的一部分恶意帐户才能检测其余部分。为了解决这些缺点,我们提出了一个生成模型,AMDN-hage(具有隐藏帐户组估计的细心混合密度网络),该模型基于时间点过程(TPP)和高斯混合模型(GMM)共同对帐户活动和隐藏的组行为进行建模,以捕获协调的固有特征,并且群体必须强烈影响每个人的活动。为了应对优化提出的模型的挑战,我们提供了一种具有融合理论保证的双层优化算法。我们验证了拟议的方法和培训算法对从Twitter收集的现实世界社交网络数据的有效性,该数据与俄罗斯互联网研究机构的协调运动有关,以2016年美国总统选举为目标,并确定与COVID-19的协调运动。利用学识渊博的模型,我们发现协调账户对之间的平均影响是最高的。在Covid-19中,我们发现了协调的群体扩散反疫苗接种,反对掩盖的阴谋表明大流行是骗局和政治骗局。
Disinformation campaigns on social media, involving coordinated activities from malicious accounts towards manipulating public opinion, have become increasingly prevalent. Existing approaches to detect coordinated accounts either make very strict assumptions about coordinated behaviours, or require part of the malicious accounts in the coordinated group to be revealed in order to detect the rest. To address these drawbacks, we propose a generative model, AMDN-HAGE (Attentive Mixture Density Network with Hidden Account Group Estimation) which jointly models account activities and hidden group behaviours based on Temporal Point Processes (TPP) and Gaussian Mixture Model (GMM), to capture inherent characteristics of coordination which is, accounts that coordinate must strongly influence each other's activities, and collectively appear anomalous from normal accounts. To address the challenges of optimizing the proposed model, we provide a bilevel optimization algorithm with theoretical guarantee on convergence. We verified the effectiveness of the proposed method and training algorithm on real-world social network data collected from Twitter related to coordinated campaigns from Russia's Internet Research Agency targeting the 2016 U.S. Presidential Elections, and to identify coordinated campaigns related to the COVID-19 pandemic. Leveraging the learned model, we find that the average influence between coordinated account pairs is the highest.On COVID-19, we found coordinated group spreading anti-vaccination, anti-masks conspiracies that suggest the pandemic is a hoax and political scam.