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A Probabilistic Approach to Mitigate Composition Attacks on Privacy in Non-Coordinated Environments

机译:非协调环境中缓解隐私组合攻击的概率方法

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摘要

Organizations share data about individuals to drive business and comply with law and regulation. However, an adversary may expose confidential information by tracking an individual across disparate data publications using quasi-identifying attributes (e.g., age, geocode and sex) associated with the records. Various studies have shown that well-established privacy protection models (e.g., k-anonymity and its extensions) fail to protect an individual’s privacy against this “composition attack”. This type of attack can be thwarted when organizations coordinate prior to data publication, but such a practice is not always feasible. In this paper, we introduce a probabilistic model called (d, α)-linkable, which mitigates composition attack without coordination. The model ensures that d confidential values are associated with a quasi-identifying group with a likelihood of α. We realize this model through an efficient extension to k-anonymization and use extensive experiments to show our strategy significantly reduces the likelihood of a successful composition attack and can preserve more utility than alternative privacy models, such as differential privacy.
机译:组织共享有关个人的数据以推动业务发展并遵守法律法规。但是,对手可以通过使用与记录相关联的准标识属性(例如年龄,地理编码和性别)跟踪不同数据出版物中的个人,从而暴露机密信息。各种研究表明,完善的隐私保护模型(例如,k-匿名性及其扩展名)无法保护个人隐私免遭这种“组合攻击”。当组织在数据发布之前进行协调时,可以阻止这种类型的攻击,但是这种做法并不总是可行的。在本文中,我们介绍了一种称为(d,α)-可链接的概率模型,该模型可在没有协调的情况下减轻合成攻击。该模型确保d个机密值与可能性为α的准识别组相关联。我们通过有效地扩展到k匿名化来实现此模型,并使用大量实验表明我们的策略大大降低了成功进行构图攻击的可能性,并且可以比其他隐私模型(例如差分隐私)保留更多的实用性。

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