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OVM-OSN: an optimal validation model applied to detection of fake accounts on online social networks

机译:OVM-OSN:应用于在线社交网络上的假帐户的最佳验证模型

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摘要

Social network sites have millions of users, all sharing personal information in an unwilling manner with friends and contacts. The recent reports point out these networks are spread-through with millions of fake accounts, which affects the users' security and privacy. To overcome such issues, online social networks (OSNs) utilise the fake detection methods to preserve the user privacy and system reliability. Since, the fake account detection is very predominant and a crucial process in OSNs, in this paper, we propose an optimal validation model (OVM), which detects the fake accounts on OSNs, named as OVM-OSN. It is a simple yet efficient computational process for community detection. In OVM-OSN, we employ a novel community detection method utilising the multi-swarm fruit fly optimisation. Then, we use fuzzy-based decision model to differentiate the fake from normal accounts, which maximise the trustworthiness of online identities. Hence, this proposed OVM-OSN method is reliable even under link, node failure strategies and it is tested with Facebook and Google+ networks. Simulation results show the effectiveness of OVM-OSN method in terms of detection rate compared to the cooperative and adaptive decentralised identity validation model.
机译:社交网站有数百万用户,所有人都与朋友和联系人以不愿意的方式分享个人信息。最近的报告指出,这些网络是利用数百万的假账户来传播,这会影响用户的安全和隐私。为了克服这些问题,在线社交网络(OSN)利用虚假的检测方法来保护用户隐私和系统可靠性。由于虚假的帐户检测是非常主要的,并且在OSN中的一个重要过程中,在本文中,我们提出了一个最佳验证模型(OVM),它检测OSN上的假帐户,命名为OVM-OSN。它是一个简单而有效的社区检测的计算过程。在OVM-OSN中,我们采用了利用多群果蝇优化的新型社区检测方法。然后,我们使用基于模糊的决策模型来区分普通帐户的假,这最大限度地提高了在线身份的可信度。因此,即使在链接,节点故障策略和与Facebook和Google+网络测试中,这一提议的OVM-OSN方法也可靠。与合作和自适应分散的身份验证模型相比,仿真结果表明了OVM-OSN方法在检测率方面的有效性。

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