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K-lsomorphism: Privacy Preserving Network Publication against Structural Attacks

机译:K-Lsomorphism:隐私保护网络出版物对抗结构攻击

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Serious concerns on privacy protection in social networks have been raised in recent years; however, research in this area is still in its infancy. The problem is challenging due to the diversity and complexity of graph data, on which an adversary can use many types of background knowledge to conduct an attack. One popular type of attacks as studied by pioneer work [2] is the use of embedding subgraphs. We follow this line of work and identify two realistic targets of attacks, namely, Nodelnfo and Linklnfo. Our investigations show hat fc-isomorphism, or anonymization by forming k pairwise isomorphic subgraphs, is both sufficient and necessary for the protection. The problem is shown to be NP-hard. We devise a number of techniques to enhance the anonymization efficiency while retaining the data utility. A compound vertex ID mechanism is also introduced for privacy preservation over multiple data releases. The satisfactory performance on a number of real datasets, including HEP-Th, EUemail and LiveJournal, illustrates that the high symmetry of social networks is very helpful in mitigating the difficulty of the problem.
机译:近年来提出了对社交网络隐私保护的严重关切;然而,在这一领域的研究仍处于初期阶段。由于图形数据的多样性和复杂性,问题是挑战,对手可以使用许多类型的背景知识来进行攻击。由先锋工作研究的一种流行的攻击[2]是使用嵌入子图。我们遵循这一行工作,并确定了两个逼真的攻击目标,即Nodelnfo和Linklnfo。我们的调查显示Hat Fc-Ismorphism,或通过形成k成对同构子图来匿名化,既足够且必要的保护。问题显示为NP-HARD。我们设计了许多技术,以提高匿名化效率,同时保留数据实用程序。还引入了复合顶点ID机制,用于多个数据版本上的隐私保存。在包括Hep-th,Euemail和Livejournal的许多真实数据集上的令人满意的性能说明了社交网络的高对称性非常有助于缓解问题的困难。

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