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Recognizing Fake identities in Online Social Networks based on a Finite Automaton approach

机译:基于有限自动机方法识别在线社交网络中的虚假身份

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Online Social Networks (OSNs) are a great venue for scammers to impersonate the identities of users via creating fake profiles. Fake profiles are a popular tool for the intruders which can be used to carry out malicious activities such as impersonation attacks and harming persons' reputation and privacy in (OSN). Hence, recognizing the identities of fake profiles is one of the critical security problems in OSNs. In this paper, we proposed a detection mechanism called Fake Profiles Recognizer (FPR) for recognizing and detecting Fake Profiles in OSNs. The detection methodology in FPR is based on the functionality of Regular Expression and Deterministic Finite Automaton (DFA) approaches for recognizing the identity of profiles. We evaluated our detection system on three popular types of Online Social Networks: Facebook, Google+, and Twitter. The results explored high accuracy, efficiency, and low False Positive Rate of FPR mechanism in detecting the identities of Fake Profiles. In addition, our proposed detection mechanism achieved strong competitive results compared with other detection mechanisms in the literature.
机译:在线社交网络(OSN)是诈骗者通过创建虚假个人资料来冒充用户身份的理想场所。伪造的配置文件是入侵者的一种流行工具,可用于执行恶意活动,例如冒名顶替攻击和损害人的声誉和(OSN)隐私。因此,识别伪造的配置文件的身份是OSN中的关键安全问题之一。在本文中,我们提出了一种名为Fake Profiles Recognizer(FPR)的检测机制,用于识别和检测OSN中的Fake Profile。 FPR中的检测方法基于正则表达式和确定性有限自动机(DFA)方法的功能,用于识别配置文件的身份。我们在三种流行的在线社交网络类型上评估了我们的检测系统:Facebook,Google +和Twitter。结果探索了FPR机制在检测虚假轮廓身份方面的高精度,高效率和低误报率。此外,与文献中的其他检测机制相比,我们提出的检测机制取得了强大的竞争成果。

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