基于压缩感知的社交网络发布数据关系隐私保护

Lin Yao, Dong Liu, Xin Wang, Guowei Wu
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引用次数: 4

摘要

随着社交网络数据发布量的不断增加,隐私保护变得越来越重要。尽管一些文献算法将K-匿名应用于关系数据以防止对手严重侵犯隐私,但K的不恰当选择对隐私保护质量和数据效用有很大影响。本文提出了一种基于压缩感知的关系隐私保护技术(RPPCS)来匿名化社交网络中的关系数据。网络链路从稀疏关系矩阵的随机测量值的恢复中随机化,以保护隐私和数据效用。两套全面的社会网络上的现实世界的关系数据被应用于评估我们的匿名化技术的性能。基于协作网络和Gnutella网络的性能评估表明,与同类方案相比,我们的方案可以更好地保留匿名数据的效用。隐私分析表明,我们的方案能够抵抗后台知识攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preserving the Relationship Privacy of the published social-network data based on Compressive Sensing
With the constant increase of social-network data published, the privacy preservation becomes more and more important. Although some literature algorithms apply K-anonymity to the relational data to prevent an adversary from significantly perpetrating privacy breaches, the inappropriate choice of K has a big impact on the quality of privacy protection and data utility. We propose a technique named Relationship Privacy Preservation based on Compressive Sensing (RPPCS) in this paper to anonymize the relationship data of social networks. The network links are randomized from the recovery of the random measurements of the sparse relationship matrix to both preserve the privacy and data utility. Two comprehensive sets of real-world relationship data on social networks are applied to evaluate the performance of our anonymization technique. Our performance evaluations based on Collaboration Network and Gnutella Network demonstrate that our scheme can better preserve the utility of the anonymized data compared to peer schemes. Privacy analysis shows that our scheme can resist the background knowledge attack.
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