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G-Model: A Novel Approach to Privacy-Preserving 1:M Microdata Publication

机译:G模型:一种用于保护隐私的新方法1:M微数据发布

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摘要

Public availability of electronic health records raises major privacy concerns, as that data contains confidential personal information of individuals. Publishing such data must be accompanied by appropriate privacy-preserving techniques to avoid or at least minimize privacy breaches. The task of privacy preservation becomes even more challenging when the data have multiple sensitive attributes (SAs). Privacy risks increase even further when an individual has multiple records (1:M) in a dataset, a rather typical situation with electronic health records (EHRs). To overcome these privacy issues, the methodologies known as 1:M generalization and l-anatomy have been proposed by the research community. However, these models fail to provide optimal privacy protection, data utility and security against certain types of attacks, such as gender-specific SA attacks. In this paper, we propose a generic 1:M data privacy model, called G-model, which provides guaranteed data privacy with high data utility and no information loss. Our G-model maintains separate groups and caches of male and female SAs, thus protecting privacy against gender-specific SA attacks. Furthermore, G-model avoids generalization, thus providing high data utility with no information loss. Experiments performed on three real-world datasets (Adult, Informs, and YouTube datasets) have shown that the proposed model is more efficient and better at privacy protection than the existing models from the literature.
机译:电子健康记录的公开可用性引起了人们对隐私的重大关注,因为该数据包含个人的机密个人信息。发布此类数据必须伴随适当的隐私保护技术,以避免或至少最大程度地减少侵犯隐私的行为。当数据具有多个敏感属性(SA)时,隐私保护的任务变得更加具有挑战性。当个人在数据集中具有多个记录(1:M)时,隐私风险会进一步增加,这是带有电子健康记录(EHR)的一种非常典型的情况。为了克服这些隐私问题,研究界已经提出了称为1:M泛化和l解剖的方法。但是,这些模型无法针对特定类型的攻击(例如针对性别的SA攻击)提供最佳的隐私保护,数据实用性和安全性。在本文中,我们提出了一种通用的1:M数据隐私模型,称为G模型,该模型提供了具有较高数据实用性且没有信息丢失的有保证的数据隐私。我们的G模型维护男性和女性SA的单独组和缓存,从而保护隐私免受特定性别的SA攻击。此外,G模型避免了泛化,从而提供了高数据实用性,而不会造成信息丢失。在三个真实世界的数据集(成人,信息和YouTube数据集)上进行的实验表明,与文献中的现有模型相比,所提出的模型在隐私保护方面更有效,更出色。

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