基于度相关图生成的差分隐私保护。

Pub Date : 2013-08-01
Yue Wang, Xintao Wu
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引用次数: 0

摘要

在保持差异隐私的同时实现对社交网络数据的准确分析一直是一项挑战,因为聚类系数等图形特征通常具有高灵敏度,这与表格数据上的传统聚合函数(例如计数和求和)不同。在本文中,我们研究了在图生成中执行边缘差分隐私的问题。其思想是对从原始网络中学习到的图模型参数强制差分隐私,然后使用具有私有参数的图模型生成用于发布的图。特别地,我们开发了一个基于dk -图生成模型的差分隐私保护图生成器。我们首先从原始图中推导出dK-graph模型中使用的各种参数(即度相关),然后对学习到的参数实施边缘微分隐私,最后使用带有扰动参数的dK-graph模型生成图。对于2k图模型,我们通过基于平滑灵敏度而不是全局灵敏度校准噪声来强制边缘差分隐私。通过这样做,我们以较小的幅度噪声实现了严格的差分隐私保证。我们在四个真实网络上进行了实验,并在效用和隐私权衡方面比较了我们的私有dk图模型与随机Kronecker图生成模型的性能。实证评估表明,所开发的私有dk图生成模型显著优于基于随机Kronecker生成模型的方法。
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Preserving Differential Privacy in Degree-Correlation based Graph Generation.

Enabling accurate analysis of social network data while preserving differential privacy has been challenging since graph features such as cluster coefficient often have high sensitivity, which is different from traditional aggregate functions (e.g., count and sum) on tabular data. In this paper, we study the problem of enforcing edge differential privacy in graph generation. The idea is to enforce differential privacy on graph model parameters learned from the original network and then generate the graphs for releasing using the graph model with the private parameters. In particular, we develop a differential privacy preserving graph generator based on the dK-graph generation model. We first derive from the original graph various parameters (i.e., degree correlations) used in the dK-graph model, then enforce edge differential privacy on the learned parameters, and finally use the dK-graph model with the perturbed parameters to generate graphs. For the 2K-graph model, we enforce the edge differential privacy by calibrating noise based on the smooth sensitivity, rather than the global sensitivity. By doing this, we achieve the strict differential privacy guarantee with smaller magnitude noise. We conduct experiments on four real networks and compare the performance of our private dK-graph models with the stochastic Kronecker graph generation model in terms of utility and privacy tradeoff. Empirical evaluations show the developed private dK-graph generation models significantly outperform the approach based on the stochastic Kronecker generation model.

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