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Structural Data De-anonymization: Quantification, Practice, and Implications

机译:结构数据去匿名化:量化,实践和含义

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In this paper, we study the quantification, practice, and implications of structural data (e.g., social data, mobility traces) De-Anonymization (DA). First, we address several open problems in structural data DA by quantifying perfect and (1-ε)-perfect structural data DA, where ε is the error tolerated by a DA scheme. To the best of our knowledge, this is the first work on quantifying structural data DA under a general data model, which closes the gap between structural data DA practice and theory. Second, we conduct the first large-scale study on the de-anonymizability of 26 real world structural datasets, including Social Networks (SNs), Collaborations Networks, Communication Networks, Autonomous Systems, and Peer-to-Peer networks. We also quantitatively show the conditions for perfect and (1 - ε)-perfect DA of the 26 datasets. Third, following our quantification, we design a practical and novel single-phase cold start Optimization based DA (ODA) algorithm. Experimental analysis of ODA shows that about 77.7%-83.3% of the users in Gowalla (2M users and 1M edges) and 86.9% - 95.5% of the users in Google+ (4.7M users and 90.8M edges) are deanonymizable in different scenarios, which implies optimization based DA is implementable and powerful in practice. Finally, we discuss the implications of our DA quantification and ODA and provide some general suggestions for future secure data publishing.
机译:在本文中,我们研究了结构数据(例如,社交数据,移动迹线)的量化,实践和含义(例如,社交数据,移动迹线)解义(DA)。首先,通过量化完美和(1-ε)-perfect结构数据DA来解决结构数据DA中的几个打开问题,其中ε是由DA方案容忍的误差。据我们所知,这是在一般数据模型下定量结构数据DA的第一个工作,缩短了结构数据DA实践与理论之间的差距。其次,我们对26个现实世界结构数据集的脱匿语义进行第一个大规模研究,包括社交网络(SNS),协作网络,通信网络,自主系统和对等网络。我们还定量地显示了26个数据集的完美和(1 - ε)-PERFECT DA的条件。第三,在我们的量化之后,我们设计了一种基于DA(ODA)算法的实用和新型的单相冷启动优化。 ODA的实验分析表明,Gowalla(2M用户和1M边缘)约77.7%-83.3%的用户和Google+(4.7M用户和90.8M边缘)的86.9% - 95.5%的用户在不同的场景中是Deanonymizable,这意味着基于优化的DA可实现和强大的实践。最后,我们讨论了我们DA量化和官方发展援助的影响,并为将来的安全数据发布提供了一些一般建议。

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