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Towards Identity Disclosure Control in Private Hypergraph Publishing

机译:走向私人超图发布中的身份披露控制

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Identity disclosure control (IDC') on complex data has attracted increasing interest in security and database communities. Most existing work focuses on preventing identity disclosure in graphs that describes pairwise relations between data entities. Many data analysis applications need information about multi-relations among entities, which can be well represented with hypergraphs. However, the IDC problem has been little studied in publishing hypergraphs due to the diversity of hypergraph information which may expose to many types of background knowledge attacks. In this paper, we introduce a novel attack model with the properties of hyperedge rank as background knowledge, and formalize the rank-based hypergraph anonymization (RHA) problem. We propose an algorithm running in near-quadratic time on hypergraph size for rank anonymization which we show to be NP-hard, and in the meanwhile, maintaining data utility for community detection. We also show how to construct the hypergraph under the anonymized properties to protect a hypergraph from rank-based attacks. The performances of the methods have been validated by extensive experiments on real-world datasets. Our rank-based attack model and algorithms for rank anonymization and hypergraph construction are, to our best knowledge, the first systematic study for private hypergraph publishing.
机译:对复杂数据的身份公开控制(IDC')引起了人们对安全性和数据库社区越来越大的兴趣。现有的大多数工作集中于防止描述数据实体之间成对关系的图形中的身份泄露。许多数据分析应用程序需要有关实体之间的多重关系的信息,这些信息可以用超图很好地表示。但是,由于超图信息的多样性可能暴露于许多类型的背景知识攻击中,因此在发布超图中很少研究IDC问题。在本文中,我们介绍了一种以超边距等级为背景知识的新型攻击模型,并将基于等级的超图匿名化(RHA)问题形式化。我们提出了一种在超图大小上近二次时间运行的算法,用于秩匿名化,该算法显示为NP难的,同时保持了用于社区检测的数据实用性。我们还展示了如何在匿名属性下构造超图,以保护超图免受基于等级的攻击。该方法的性能已通过对真实数据集的大量实验得到验证。就我们所知,我们用于排名匿名化和超图构建的基于等级的攻击模型和算法是针对私人超图发布的第一个系统研究。

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