基于图形数据库的社交媒体虚假用户检测

Yichun Zhao, Jens Weber
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引用次数: 1

摘要

社交媒体已经成为人们日常生活的重要组成部分,因为它为用户提供了与人联系,与朋友互动,与他人分享个人内容以及收集信息的便利。然而,这也为虚假用户创造了机会。如果不被发现,社交媒体上的假用户可能会被认为是受欢迎和有影响力的。他们可能会传播虚假信息或假新闻,使其看起来真实,操纵真实用户做出某些决定。在计算机科学中,社交网络可以看作是一个图,它是一种数据结构,节点是社交媒体用户,边是用户之间的连接。图形数据可以存储在图形数据库中,以便进行有效的数据分析。在本文中,我们建议使用图形数据库来实现更高的可伸缩性,以适应更大的图形。随机森林分类器提取中心性度量作为特征,以高精度、召回率和准确性成功检测假用户。特别是与以往的研究相比,我们取得了可喜的成果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Fake Users on Social Media with a Graph Database
Social media has become a major part of people’s daily lives as it provides users with the convenience to connect with people, interact with friends, share personal content with others, and gather information. However, it also creates opportunities for fake users. Fake users on social media may be perceived as popular and influential if not detected. They might spread false information or fake news by making it look real, manipulating real users into making  certain decisions. In computer science, a social network can be treated as a graph, which is a data structure consisting of nodes being the social media users, and edges being the connections between users. Graph data can be stored in a graph database for efficient data analysis. In this paper, we propose using a graph database to achieve an increased scalability to accommodate larger graphs. Centrality measures as features were extracted for the random forest classifier to successfully detect fake users with high precision, recall, and accuracy. We have achieved promising results especially when compared with previous studies.   
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