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Mining Frequent Graph Patterns with Differential Privacy

机译:具有差分隐私的频繁图形模式挖掘

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摘要

Discovering frequent graph patterns in a graph database offers valuable information in a variety of applications. However, if the graph dataset contains sensitive data of individuals such as mobile phone-call graphs and web-click graphs, releasing discovered frequent patterns may present a threat to the privacy of individuals. Differential privacy has recently emerged as the de facto standard for private data analysis due to its provable privacy guarantee. In this paper we propose the first differentially private algorithm for mining frequent graph patterns. We first show that previous techniques on differentially private discovery of frequent itemsets cannot apply in mining frequent graph patterns due to the inherent complexity of handling structural information in graphs. We then address this challenge by proposing a Markov Chain Monte Carlo (MCMC) sampling based algorithm. Unlike previous work on frequent itemset mining, our techniques do not rely on the output of a non-private mining algorithm. Instead, we observe that both frequent graph pattern mining and the guarantee of differential privacy can be unified into an MCMC sampling framework. In addition, we establish the privacy and utility guarantee of our algorithm and propose an efficient neighboring pattern counting technique as well. Experimental results show that the proposed algorithm is able to output frequent patterns with good precision.
机译:在图形数据库中发现频繁的图形模式可在各种应用程序中提供有价值的信息。但是,如果图形数据集包含个人的敏感数据(例如手机呼叫图形和Web点击图形),则释放发现的频繁模式可能会对个人隐私构成威胁。由于其可证明的隐私保证,差异隐私最近已成为私有数据分析的事实上的标准。在本文中,我们提出了第一个差分私有算法来挖掘频繁图模式。我们首先显示,由于处理图中的结构信息的内在复杂性,有关频繁项集的差分私有发现的先前技术无法应用于挖掘频繁图模式。然后,我们通过提出基于马尔可夫链蒙特卡洛(MCMC)采样的算法来应对这一挑战。与以前的频繁项集挖掘工作不同,我们的技术不依赖非私有挖掘算法的输出。取而代之的是,我们观察到频繁的图模式挖掘和差分隐私的保证都可以统一到MCMC采样框架中。此外,我们建立了算法的隐私性和实用性保证,并提出了一种有效的相邻模式计数技术。实验结果表明,该算法能够以较高的精度输出频繁模式。

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