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Privacy-Preserving Publishing of Multilevel Utility-Controlled Graph Datasets

机译:多级实用程序控制图数据集的隐私保留发布

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摘要

Conventional private data publication schemes are targeted at publication of sensitive datasets either after the k-anonymization process or through differential privacy constraints. Typically these schemes are designed with the objective of retaining as much utility as possible for the aggregate queries while ensuring the privacy of the individual records. Such an approach, though suitable for publishing aggregate information as public datasets, is inapplicable when users have different levels of access to the same data. We argue that existing schemes either result in increased disclosure of private information or lead to reduced utility when some users have more access privileges than the others. In this article, we present an anonymization framework for publishing large datasets with the goals of providing different levels of utility to the users based on their access privilege levels. We design and implement our proposed multilevel utility-controlled anonymization schemes in the context of large association graphs considering three levels of user utility, namely, (1) users having access to only the graph structure, (2) users having access to the graph structure and aggregate query results, and (3) users having access to the graph structure, aggregate query results, and individual associations. Our experiments on real large association graphs show that the proposed techniques are effective and scalable and yield the required level of privacy and utility for each user privacy and access privilege level.
机译:传统的私有数据发布方案在k-匿名化进程或通过差异隐私约束之后以敏感数据集的发布。通常,这些方案的目的是在确保各个记录的隐私的同时将尽可能多的实用性保留尽可能多的实用性。这种方法虽然适合将聚合信息发布为公共数据集,但是当用户有不同的访问级别对相同数据的级别时不可应用。我们认为现有方案,其要么导致私人信息的披露增加,或者当某些用户比其他用户有更多的访问权限时,导致效用。在本文中,我们为基于其访问权限级别提供了向用户提供不同级别的实用程序的目标来发布大型数据集的匿名框架。我们在考虑三个级别的用户实用程序的大型关联图的上下文中设计和实现我们提出的多级实用控制匿名化方案,即(1)用户访问图形结构的(2)用户访问图形结构的用户并聚合查询结果,(3)访问图形结构,聚合查询结果和单个关联的用户。我们对真正的大关联图的实验表明,所提出的技术是有效和可扩展的,并为每个用户隐私和访问权限级别产生所需的隐私和实用程序。

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