知识图谱的时间感知匿名化

IF 3 4区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Anh-Tu Hoang, Barbara Carminati, Elena Ferrari
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引用次数: 0

摘要

知识图(Knowledge graphs, KGs)在数据共享中扮演着重要的角色,因为它可以对用户属性及其关系进行建模。kg可以定制许多数据分析,例如选择敏感属性的分类,分析人员分析用户与敏感属性值(又称敏感值)之间的关联。为了保护用户的隐私,数据提供商对其KGs进行匿名化处理,并共享匿名版本。不幸的是,攻击者可以利用这些属性和关系,通过监视KG的一个或多个快照来推断敏感信息。为了解决这个问题,本文引入了(k, l)-顺序属性度((k, l)-sad),这是对kw-tad原理[10]的扩展,以确保重新识别的用户的敏感值足够多样化,即使攻击者监视所有发布的KGs,也不会以高于\(\frac{1}{l} \)的置信度推断出他们。我们开发了时间感知知识图匿名化算法来匿名化KG,使所有已发布的KG的匿名版本满足(k, l)-sad原则,同时保留匿名数据的效用。我们在四个实际数据集上进行了实验,以证明我们的建议的有效性,并将其与know -tad进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time-Aware Anonymization of Knowledge Graphs

Knowledge graphs (KGs) play an essential role in data sharing because they can model both users’ attributes and their relationships. KGs can tailor many data analyses, such as classification where a sensitive attribute is selected and the analyst analyzes the associations between users and the sensitive attribute’s values (aka sensitive values). Data providers anonymize their KGs and share the anonymized versions to protect users’ privacy. Unfortunately, an adversary can exploit these attributes and relationships to infer sensitive information by monitoring either one or many snapshots of a KG. To cope with this issue, in this paper, we introduce (k, l)-Sequential Attribute Degree ((k, l)-sad), an extension of the kw-tad principle[10], to ensure that sensitive values of re-identified users are diverse enough to prevent them from being inferred with a confidence higher than \(\frac{1}{l} \) even though adversaries monitor all published KGs. In addition, we develop the Time-Aware Knowledge Graph Anonymization Algorithm to anonymize KGs such that all published anonymized versions of a KG satisfy the (k, l)-sad principle, by, at the same time, preserving the utility of the anonymized data. We conduct experiments on four real-life datasets to show the effectiveness of our proposal and compare it with kw-tad.

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来源期刊
ACM Transactions on Privacy and Security
ACM Transactions on Privacy and Security Computer Science-General Computer Science
CiteScore
5.20
自引率
0.00%
发文量
52
期刊介绍: ACM Transactions on Privacy and Security (TOPS) (formerly known as TISSEC) publishes high-quality research results in the fields of information and system security and privacy. Studies addressing all aspects of these fields are welcomed, ranging from technologies, to systems and applications, to the crafting of policies.
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