差分隐私下的指数随机图估计

Wentian Lu, G. Miklau
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引用次数: 70

摘要

对社交网络和图形结构数据的有效分析常常受到构成这些网络的个人数据的隐私问题的限制。差别隐私为个人提供了严格而有吸引力的隐私保障。但是,尽管已经提出了用于计算基本图属性的差分私有算法,但数据挖掘社区中常见的大多数图建模任务还不能私有地执行。在这项工作中,我们提出了一种私下估计指数随机图模型(ergm)参数的算法。我们将估计问题分为两个步骤:计算私有充分统计量,然后使用它们来估计模型参数。我们考虑了ERGM模型中常用的特定交替统计量,并描述了一种通过在其局部灵敏度上添加与高置信度界成比例的噪声来私下估计它们的方法。此外,我们提出了一种估计算法,该算法考虑了私有统计量的噪声分布,比使用私有统计量进行标准参数估计具有更好的准确性。
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Exponential random graph estimation under differential privacy
The effective analysis of social networks and graph-structured data is often limited by the privacy concerns of individuals whose data make up these networks. Differential privacy offers individuals a rigorous and appealing guarantee of privacy. But while differentially private algorithms for computing basic graph properties have been proposed, most graph modeling tasks common in the data mining community cannot yet be carried out privately. In this work we propose algorithms for privately estimating the parameters of exponential random graph models (ERGMs). We break the estimation problem into two steps: computing private sufficient statistics, then using them to estimate the model parameters. We consider specific alternating statistics that are in common use for ERGM models and describe a method for estimating them privately by adding noise proportional to a high-confidence bound on their local sensitivity. In addition, we propose an estimation algorithm that considers the noise distribution of the private statistics and offers better accuracy than performing standard parameter estimation using the private statistics.
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