(k, d)-core anonymity: structural anonymization of massive networks

Roland Assam, Marwan Hassani, M. Brysch, T. Seidl
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引用次数: 16

Abstract

Networks entail vulnerable and sensitive information that pose serious privacy threats. In this paper, we introduce, k-core attack, a new attack model which stems from the k-core decomposition principle. K-core attack undermines the privacy of some state-of-the-art techniques. We propose a novel structural anonymization technique called (k, Δ)-Core Anonymity, which harnesses the k-core attack and structurally anonymizes small and large networks. In addition, although real-world social networks are massive in nature, most existing works focus on the anonymization of networks with less than one hundred thousand nodes. (k, Δ)-Core Anonymity is tailored for massive networks. To the best of our knowledge, this is the first technique that provides empirical studies on structural network anonymization for massive networks. Using three real and two synthetic datasets, we demonstrate the effectiveness of our technique on small and large networks with up to 1.7 million nodes and 17.8 million edges. Our experiments reveal that our approach outperforms a state-of-the-art work in several aspects.
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(k, d)-核心匿名:大规模网络的结构性匿名化
网络包含易受攻击和敏感的信息,构成严重的隐私威胁。本文介绍了基于k核分解原理的一种新的攻击模型——k核攻击。k核攻击破坏了一些最先进技术的隐私。我们提出了一种新的结构匿名技术,称为(k, Δ)-核心匿名,它利用k -Core攻击并对小型和大型网络进行结构匿名。此外,尽管现实世界的社交网络本质上是庞大的,但大多数现有的工作都集中在小于10万个节点的网络的匿名化上。(k, Δ)-核心匿名是为大规模网络量身定制的。据我们所知,这是第一个为大规模网络提供结构化网络匿名化实证研究的技术。使用三个真实数据集和两个合成数据集,我们证明了我们的技术在拥有多达170万个节点和1780万个边的小型和大型网络上的有效性。我们的实验表明,我们的方法在几个方面优于最先进的工作。
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