User Identification in Online Social Networks using Graph Transformer Networks

K. N. P. Kumar, M. Gavrilova
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引用次数: 1

Abstract

The problem of user recognition in online social networks is driven by the need for higher security. Previous recognition systems have extensively employed content-based features and temporal patterns to identify and represent distinctive characteristics within user profiles. This work reveals that semantic textual analysis and a graph representation of the user’s social network can be utilized to develop a user identification system. A graph transformer network architecture is proposed for the closed-set node identification task, leveraging the weighted social network graph as input. Users retweeting, mentioning, or replying to a target user’s tweet are considered neighbors in the social network graph and connected to the target user. The proposed user identification system outperforms all state-of-the-art systems. Moreover, we validate its performance on three publicly available datasets.
基于图转换网络的在线社交网络用户识别
在线社交网络中的用户识别问题是由更高的安全性需求所驱动的。以前的识别系统广泛采用基于内容的特征和时间模式来识别和表示用户配置文件中的独特特征。这项工作表明,语义文本分析和用户社交网络的图形表示可以用来开发用户识别系统。针对闭集节点识别问题,提出了一种利用加权社会网络图作为输入的图变换网络架构。转发、提及或回复目标用户tweet的用户在社交网络图中被视为邻居,并与目标用户相连。拟议的用户识别系统优于所有最先进的系统。此外,我们在三个公开可用的数据集上验证了它的性能。
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