层次社会网络的局部差分隐私图发布

Jing-Yu Yang, Xuebin Ma, Xiangyu Bai, L. Cui
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引用次数: 4

摘要

随着社交网络服务的普及,社交媒体应用程序已经从用户那里获得了大量的个人数据和关系信息。在大数据时代,数据应该共享,最大限度地发挥其潜在价值。因此,个人隐私保护问题变得越来越重要。目前,差分隐私是一种经过严格验证的隐私保护模式,在许多领域引起了人们的关注和研究。然而,现有的社交网络差分隐私发布技术主要集中在中心化模型上,即假设数据收集者是可信的。本文采用了层次随机图模型,该模型满足了局部模型的差分隐私性。我们利用蒙特卡罗马尔可夫链提高了效率和精度。实验表明,在相同的差分隐私条件下,局部差分隐私比集中式差分隐私具有更好的效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph Publishing with Local Differential Privacy for Hierarchical Social Networks
With the spread of social network services, social media applications have obtained a significant amount of personal data and relational information from their users. In the era of big data, data should to be shared to make maximum use of its potential value. Therefore, the problem of personal privacy protection has become increasingly important. At present, differential privacy is a strictly proven privacy protection model, which has garnered people’s attention and research in many fields. However, the existing social network differential privacy publishing technology mainly focuses on the centralized model, that is, the data collector is assumed to be credible. The hierarchical random graph model, which satisfies differential privacy to the local model, was applied in our study. We improved efficiency and accuracy using the Monte Carlo Markov chain. The experiment showed that the local differential privacy had better utility than the centralized differential privacy under the same differential privacy conditions.
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