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Estimation of privacy risk through centrality metrics

机译:通过集中度指标估算隐私风险

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摘要

Users are not often aware of privacy risks and disclose information in online social networks. They do not consider the audience that will have access to it or the risk that the information continues to spread and may reach an unexpected audience. Moreover, not all users have the same perception of risk. To overcome these issues, we propose a Privacy Risk Score (PRS) that: (1) estimates the reachability of an user’s sharing action based on the distance between the user and the potential audience; (2) is described in levels to adjust to the risk perception of individuals; (3) does not require the explicit interaction of individuals since it considers information flows; and (4) can be approximated by centrality metrics for scenarios where there is no access to data about information flows. In this case, if there is access to the network structure, the results show that global metrics such as closeness have a high degree of correlation with PRS. Otherwise, local and social centrality metrics based on ego-networks provide a suitable approximation to PRS. The results in real social networks confirm that local and social centrality metrics based on degree perform well in estimating the privacy risk of users.
机译:用户通常不会意识到隐私风险,并会在在线社交网络中披露信息。他们不考虑可以访问的受众,也不考虑信息继续传播并可能到达意外受众的风险。而且,并非所有用户都具有相同的风险感知。为了克服这些问题,我们提出了隐私风险评分(PRS),该评分:(1)根据用户与潜在受众之间的距离来估算用户共享操作的可达性; (2)描述水平以适应个人的风险感知; (3)因为考虑了信息流,所以不需要个人的明确交互; (4)对于无法访问有关信息流的数据的情况,可以通过集中度度量来近似。在这种情况下,如果可以访问网络结构,则结果表明诸如度量标准之类的全局度量与PRS具有高度的相关性。否则,基于自我网络的本地和社会集中度指标将为PRS提供合适的近似值。真实社交网络中的结果证实,基于程度的本地和社交中心度指标在估计用户的隐私风险方面表现良好。

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