利用分类聚类技术检测社交网络中的克隆攻击

S. Kiruthiga, P. Kola Sujatha, A. Kannan
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引用次数: 20

摘要

社交网络(SN)是人们通过互联网与朋友互动的热门工具。用户花时间在facebook、Myspace和twitter等流行的社交网站上分享个人信息。克隆攻击是facebook的一种阴险的攻击。通常,攻击者会窃取一个人的图像和个人信息,并创建虚假的个人资料页面。一旦配置文件被克隆,他们就开始使用克隆的配置文件发送好友请求。如果真实用户的账户被屏蔽,他们通常会向他们的朋友发送新的好友请求。同时克隆了一个也向该人发送请求。当时,用户很难识别真假。在该系统中,基于用户动作时间段和用户点击模式检测克隆攻击,以寻找克隆的个人资料与facebook真实个人资料的相似度。利用余弦相似度和Jaccard索引提高了用户间相似度的性能。
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Detecting cloning attack in Social Networks using classification and clustering techniques
Social Networks (SN) are popular among the people to interact with their friends through the internet. Users spending their time in popular social networking sites like facebook, Myspace and twitter to share the personal information. Cloning attack is one of the insidious attacks in facebook. Usually attackers stole the images and personal information about a person and create the fake profile pages. Once the profile gets cloned they started to send a friend request using the cloned profile. Incase if the real users account gets blocked, they used to send a new friend request to their friends. At the same time cloned one also sending the request to the person. At that time it was hard to identify the real one for users. In the proposed system the clone attack is detected based on user action time period and users click pattern to find the similarity between the cloned profile and real one in facebook. Using Cosine similarity and Jaccard index the performance of the similarity between the users is improved.
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