Preserving structural properties in anonymization of social networks

A. Masoumzadeh, J. Joshi
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引用次数: 6

Abstract

A social network is a collection of social entities and the relations among them. Collection and sharing of such network data for analysis raise significant privacy concerns for the involved individuals, especially when human users are involved. To address such privacy concerns, several techniques, such as k-anonymity based approaches, have been proposed in the literature. However, such approaches introduce a large amount of distortion to the original social network graphs, thus raising serious questions about their utility for useful social network analysis. Consequently, these techniques may never be applied in practice. In this paper, we emphasize the use of network structural semantics in the social network analysis theory to address this problem. We propose an approach for enhancing anonymization techniques that preserves the structural semantics of the original social network by using the notion of roles and positions. We present experimental results that demonstrate that our approach can significantly help in preserving graph and social network theoretic properties of the original social networks, and hence improve utility of the anonymized data.
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在社交网络匿名化中保持结构属性
社会网络是社会实体及其相互关系的集合。收集和共享用于分析的此类网络数据会引起有关个人的重大隐私问题,特别是当涉及人类用户时。为了解决此类隐私问题,文献中提出了几种技术,例如基于k-匿名的方法。然而,这种方法对原始的社会网络图引入了大量的扭曲,从而对它们在有用的社会网络分析中的效用提出了严重的问题。因此,这些技术可能永远不会在实践中应用。在本文中,我们强调在社会网络分析理论中使用网络结构语义来解决这个问题。我们提出了一种增强匿名化技术的方法,该方法通过使用角色和位置的概念来保留原始社交网络的结构语义。我们提出的实验结果表明,我们的方法可以显着帮助保留原始社交网络的图和社会网络理论属性,从而提高匿名数据的效用。
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