Domain-Aware Federated Social Bot Detection with Multi-Relational Graph Neural Networks

Huailiang Peng, Yujun Zhang, Hao Sun, Xu Bai, Yangyang Li, Shuhai Wang
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引用次数: 7

Abstract

Social networks have been the widespread popular tools for communication and socialization, and it also been the ideal platform for bots to publish malicious information. Therefore, social bot detection is essential for the social network's security. Existing methods almost ignore the differences in bot behaviors in multiple domains. Thus, we first propose a DomainAware detection method with Multi-Relational Graph neural networks (DA-MRG) to improve detection performance. Specifically, DA-MRG constructs multi-relational graphs with users' features and relationships, obtains the user presentations with graph embedding and distinguishes bots from humans with domainaware classifiers. Meanwhile, considering the similarity between bot behaviors in different social networks, we believe that sharing data among them could boost detection performance. However, the data privacy of users needs to be strictly protected. To overcome the problem, we implement a study of federated learning framework for DA-MRG to achieve data sharing between different social networks and protect data privacy simultaneously. We conduct extensive experiments on TwiBot-20, and the results demonstrate that the proposed method can effectively achieve federated social bot detection.
基于多关系图神经网络的领域感知联邦社交机器人检测
社交网络一直是广泛流行的交流和社交工具,也是机器人发布恶意信息的理想平台。因此,社交机器人检测对于社交网络的安全至关重要。现有的方法几乎忽略了机器人在多个领域的行为差异。因此,我们首先提出了一种基于多关系图神经网络(DA-MRG)的DomainAware检测方法来提高检测性能。具体来说,DA-MRG构建了包含用户特征和关系的多关系图,通过图嵌入获得用户表示,并通过领域感知分类器区分机器人和人类。同时,考虑到不同社交网络中机器人行为的相似性,我们认为它们之间的数据共享可以提高检测性能。但是,用户的数据隐私需要得到严格的保护。为了克服这一问题,我们研究了一种用于DA-MRG的联邦学习框架,以实现不同社交网络之间的数据共享,同时保护数据隐私。我们在TwiBot-20上进行了大量的实验,结果表明该方法可以有效地实现联邦社交机器人检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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