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(l, m, d) — anonymity : A resisting similarity attack model for multiple sensitive attributes

机译:(L,M,D) - 匿名:多敏感属性的抵抗相似性攻击模型

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摘要

Preserving privacy is extremely important in data publishing. The existing privacy-preserving models are mostly oriented to single sensitive attribute, can not be applied to multiple sensitive attributes situation. Moreover, they do not consider the semantic similarity between sensitive attribute values, and may be vulnerable to similarity attack. In this paper, we propose a (l, m, d)-anonymity model for multiple sensitive attributes similarity attack, where m is the dimension of the sensitive attributes. This model uses the semantic hierarchical tree to analyze and compute the semantic dissimilarity between sensitive attribute values, and each equivalence class must exist at least l sensitive attribute values that satisfy d-different on each dimension sensitive attribute. Meanwhile, in order to make the published data highly available, our model adopts the distance-based measurement method to divide the equivalence class. We carry out extensive experiments to certify the (1, m, d)-anonymity model can significantly reduce the probability of sensitive information leakage and protect individual privacy more effectively.
机译:保留隐私在数据出版中非常重要。现有的隐私保留模型主要导向为单个敏感属性,不能应用于多个敏感属性情况。此外,它们不考虑敏感属性值之间的语义相似性,并且可能易于相似攻击。在本文中,我们提出了一种(L,M,D) - 用于多个敏感属性相似性攻击的匿名模型,其中M是敏感属性的维度。此模型使用语义层次结构树分析并计算敏感属性值之间的语义异化,并且每个等效类必须至少存在满足每个维度敏感属性的D-Suft的L敏感属性值。同时,为了使已发布的数据具有高可用的数据,我们的模型采用基于距离的测量方法来划分等价类。我们进行了广泛的实验,以证明(1,M,D) - 异常模型可以显着降低敏感信息泄漏的可能性,更有效地保护个人隐私。

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