在外包社交网络中抵制标签社区攻击

Yang Wang, Fudong Qiu, Fan Wu, Guihai Chen
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引用次数: 5

摘要

随着云计算的普及,许多公司将社交网络数据外包给云服务提供商,隐私泄露问题越来越严重。然而,以往的研究大多忽略了一个重要的事实,即在真实的社交网络中,用户具有多种属性,并且可以灵活地自行决定其个人资料中哪些属性是敏感属性。在将社交网络外包给云服务提供商时,应保护用户的这些敏感属性不被泄露。本文考虑了利用网络结构的邻域信息和一跳邻居标签作为背景知识来抵抗隐私攻击的问题。为了解决这个问题,我们提出了一种基于全局相似性的群体匿名化(GSGA)方法来生成匿名的社交网络,同时保持尽可能多的效用。我们还在真实数据集和合成数据集上广泛评估了我们的方法。评估结果表明,通过我们的方法匿名化的社交网络仍然可以用于回答聚合查询,并且准确率很高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resisting label-neighborhood attacks in outsourced social networks
With the popularity of cloud computing, many companies would outsource their social network data to a cloud service provider, where privacy leaks have become a more and more serious problem. However, most of the previous studies have ignored an important fact, i.e., in real social networks, users possess various attributes and have the flexibility to decide which attributes of their profiles are sensitive attributes by themselves. These sensitive attributes of the users should be protected from being revealed when outsourcing a social network to a cloud service provider. In this paper, we consider the problem of resisting privacy attacks with neighborhood information of both network structure and labels of one-hop neighbors as background knowledge. To tackle this problem, we propose a Global Similarity-based Group Anonymization (GSGA) method to generate a anonymized social network while maintaining as much utility as possible. We also extensively evaluate our approach on both real data set and synthetic data sets. Evaluation results show that the social network anonymized by our approach can still be used to answer aggregation queries with high accuracy.
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