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The k-anonymity and l-diversity approaches for privacy preservation in social networks against neighborhood attacks

机译:k-匿名和l-多样性方法在社交网络中针对邻居攻击的隐私保护

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摘要

Recently, more and more social network data have been published in one way or another. Preserving privacy in publishing social network data becomes an important concern. With some local knowledge about individuals in a social network, an adversary may attack the privacy of some victims easily. Unfortunately, most of the previous studies on privacy preservation data publishing can deal with relational data only, and cannot be applied to social network data. In this paper, we take an initiative toward preserving privacy in social network data. Specifically, we identify an essential type of privacy attacks: neighborhood attacks. If an adversary has some knowledge about the neighbors of a target victim and the relationship among the neighbors, the victim may be re-identified from a social network even if the victim’s identity is preserved using the conventional anonymization techniques. To protect privacy against neighborhood attacks, we extend the conventional k-anonymity and l-diversity models from relational data to social network data. We show that the problems of computing optimal k-anonymous and l-diverse social networks are NP-hard. We develop practical solutions to the problems. The empirical study indicates that the anonymized social network data by our methods can still be used to answer aggregate network queries with high accuracy.
机译:最近,越来越多的社交网络数据已经以一种或另一种方式发布。在发布社交网络数据时保护隐私成为一个重要的问题。有了一些有关社交网络中个人的本地知识,对手就可以轻松地攻击某些受害者的隐私。不幸的是,先前有关隐私保护数据发布的大多数研究只能处理关系数据,而不能应用于社交网络数据。在本文中,我们采取了主动行动来保护社交网络数据中的隐私。具体来说,我们确定了一种基本的隐私攻击类型:邻居攻击。如果攻击者对目标受害者的邻居以及邻居之间的关系有所了解,那么即使使用传统的匿名化技术保留了受害者的身份,也可以从社交网络中重新识别受害者。为了保护隐私免受邻居攻击,我们将传统的k-匿名性和l-多样性模型从关系数据扩展到社交网络数据。我们证明了计算最优k-匿名和l-多样化社交网络的问题是NP-难的。我们针对这些问题制定了切实可行的解决方案。实证研究表明,通过我们的方法匿名化的社交网络数据仍然可以用于高精度地回答聚合网络查询。

著录项

  • 来源
    《Knowledge and Information Systems》 |2011年第1期|p.47-77|共31页
  • 作者

    Bin Zhou; Jian Pei;

  • 作者单位

    School of Computing Science, Simon Fraser University, 8888 University Drive, Burnaby, BC, V5A 1S6, Canada;

    School of Computing Science, Simon Fraser University, 8888 University Drive, Burnaby, BC, V5A 1S6, Canada;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Privacy; Social network; k-Anonymity; l-Diversity;

    机译:隐私;社交网络;k-匿名性;l-多样性;

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