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Personal Privacy Metric based on Public Social Network Data

机译:基于公共社交网络数据的个人隐私度量

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Attackers can exploit the published data of the social network by the technology of big data analysis to find the user's privacy without any permission or friendship. In this paper, to solve the problem of privacy metric under the undefined background knowledge, we derive a new metric to quantify the privacy in the complex network circumstances which is inspired by a theory named set pair analysis, meanwhile we put forward a privacy measurement model based on that. At last, we carry out an experiment with the open data in social network. The result shows that the proposed method can achieve the goal of privacy measures under the uncertain background knowledge.
机译:攻击者可以通过大数据分析技术利用社交网络发布的数据,以找到用户的隐私,没有任何许可或友谊。在本文中,为了解决未定义的背景知识下的隐私度量问题,我们推出了一种新的指标来量化在复杂的网络环境中,这是由名为Bir分析的理论启发的复杂网络环境中的隐私,同时我们提出了隐私测量模型基于此。最后,我们在社交网络中进行了一个开放数据的实验。结果表明,该方法可以在不确定的背景知识下实现隐私措施的目标。

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