Data Anonymization in Social Networks State of the Art, Exposure of Shortcomings and Discussion of New Innovations

Baida Ouafae, Ramdi Mariam, Louzar Oumaima, Lyhyaoui Abdelouahid
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引用次数: 6

Abstract

Privacy is a concern of social network users. Social networks are a source of valuable data for scientific or commercial analysis. Therefore, anonymizing social network data before releasing it becomes an important issue. The nodes in the network represent the individuals and the links among them denote their relationships. Nevertheless, publishing a social graph directly by simply removing the names of people who contributed to this graph raises important privacy issues. In particular, some inference attacks on the published graph can lead to de-anonymizing certain nodes, learning the existence of a social relation between two nodes or even using the structure of the graph itself to deduce the value of certain sensitive attributes. In this paper, we present a brief yet systematic review of the existing anonymization techniques for privacy preserving publishing of social network data. We identify the challenges in privacy preserving publishing of social network data comparing to the extensively studied relational case. We survey the existing anonymization methods for privacy preservation in three categories: graph modification approaches, generalization approaches and differential privacy methods.
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社交网络中的数据匿名化技术现状、缺陷暴露与创新讨论
隐私是社交网络用户关心的问题。社交网络是科学或商业分析的宝贵数据来源。因此,在社交网络数据发布前对其进行匿名化处理成为一个重要问题。网络中的节点代表个体,节点之间的链接代表个体之间的关系。然而,直接通过删除对该图表做出贡献的人的名字来发布社交图谱会引发重要的隐私问题。特别是,对已发布的图的一些推理攻击可以导致某些节点的去匿名化,学习两个节点之间存在社会关系,甚至使用图本身的结构来推断某些敏感属性的值。在本文中,我们简要而系统地回顾了现有的匿名化技术,以保护社交网络数据的隐私。与广泛研究的关系案例相比,我们确定了社交网络数据隐私保护发布方面的挑战。本文将现有的匿名化隐私保护方法分为三类:图修改方法、泛化方法和差分隐私保护方法。
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