基于图的差分隐私查询集建模

Ali Inan, M. E. Gursoy, Emir Esmerdag, Y. Saygin
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引用次数: 3

摘要

差分隐私作为一种隐私保护机制,受到了社会各界的关注。大量的工作集中在它在数据分析中的应用上,其中统计查询是批量提交的,这些查询的答案受到噪声的干扰。这种噪声的大小取决于隐私参数λ和查询集的灵敏度。然而,众所周知,计算灵敏度是np困难的。在这项研究中,我们提出了一种近似查询集灵敏度的方法。我们的解决方案构建了一个查询-区域-交集图。我们证明了计算该图的最大团大小相当于从上面的灵敏度边界。据我们所知,我们的界限是文献中已知的最严格的。我们的解决方案目前支持有限但很有表现力的SQL查询子集(例如,范围查询),以及几乎所有流行的聚合函数(除了AVERAGE)。实验结果显示了我们的方法的效率:即使对于大型查询集(例如,超过5个属性的2K个查询),通过使用最先进的解决方案来解决最大团问题,我们可以在一分钟内近似灵敏度。
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Graph-based modelling of query sets for differential privacy
Differential privacy has gained attention from the community as the mechanism for privacy protection. Significant effort has focused on its application to data analysis, where statistical queries are submitted in batch and answers to these queries are perturbed with noise. The magnitude of this noise depends on the privacy parameter ϵ and the sensitivity of the query set. However, computing the sensitivity is known to be NP-hard. In this study, we propose a method that approximates the sensitivity of a query set. Our solution builds a query-region-intersection graph. We prove that computing the maximum clique size of this graph is equivalent to bounding the sensitivity from above. Our bounds, to the best of our knowledge, are the tightest known in the literature. Our solution currently supports a limited but expressive subset of SQL queries (i.e., range queries), and almost all popular aggregate functions directly (except AVERAGE). Experimental results show the efficiency of our approach: even for large query sets (e.g., more than 2K queries over 5 attributes), by utilizing a state-of-the-art solution for the maximum clique problem, we can approximate sensitivity in under a minute.
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