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Preventing Colluding Identity Clone Attacks in Online Social Networks

机译:防止在线社交网络中的勾结身份克隆攻击

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Nowadays, Online Social Networks (OSNs) has become one of the most common ways among people to facilitate communication. This has made it a target for attackers to steal information from influential users and has brought new forms of customized attacks for OSNs. Attackers take advantage of the user's trustworthiness when using OSN. This exploitation leads to attacks with a combination of both classical and modern threats. Specifically, colluding attackers have been taken advantage of many OSNs by creating fake profiles of friends of the target in the same OSN or others. Colluders impersonate their victims and ask friend requests to the target in the aim to infiltrate her private circle to steal information. These types of attacks are difficult to detect in OSNs because multiple malicious users may have a similar purpose to gain information from their targeted user. The purpose of this paper is to overcome this type of attack by addressing the problem of matching user profiles across multiple OSNs. Then, we will extract both features and text from a user's profile and build a classifier based on supervised learning techniques. Simulation and experimental results are provided to validate the accuracy of our findings.
机译:如今,在线社交网络(OSNS)已成为人们促进沟通的最常见方式之一。这使得攻击者从有影响力的用户窃取信息并为OSN带来了新的定制攻击形式的目标。攻击者使用OSN时利用用户的可信度。这种剥削导致攻击经典和现代威胁。具体而言,通过在同一个OSN或其他人中创造目标的伪装型材来利用许多奥斯人来利用许多奥斯人。勾演者冒充受害者,并要求朋友请求到目标,以旨在渗透她的私人圈来窃取信息。这些类型的攻击难以在OSN中检测,因为多个恶意用户可以具有类似的目的来获取来自目标用户的信息。本文的目的是通过解决多个OSNS匹配用户配置文件的问题来克服这种类型的攻击。然后,我们将从用户的配置文件中提取两个功能和文本,并根据监督学习技术构建分类器。提供了仿真和实验结果,以验证我们的研究结果的准确性。

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