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Optimizing Batch Linear Queries under Exact and Approximate Differential Privacy

机译:在精确和近似差分隐私下优化批线性查询

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摘要

Differential privacy is a promising privacy-preserving paradigm for statistical query processing over sensitive data. It works by injecting random noise into each query result such that it is provably hard for the adversary to infer the presence or absence of any individual record from the published noisy results. The main objective in differentially private query processing is to maximize the accuracy of the query results while satisfying the privacy guarantees. Previous work, notably Li et al. [2010], has suggested that, with an appropriate strategy, processing a batch of correlated queries as a whole achieves considerably higher accuracy than answering them individually. However, to our knowledge there is currently no practical solution to find such a strategy for an arbitrary query batch; existing methods either return strategies of poor quality (often worse than naive methods) or require prohibitively expensive computations for even moderately large domains. Motivated by this, we propose a low-rank mechanism (LRM), the first practical differentially private technique for answering batch linear queries with high accuracy. LRM works for both exact (i.e., epsilon-) and approximate (i.e., (epsilon, delta)-) differential privacy definitions. We derive the utility guarantees of LRM and provide guidance on how to set the privacy parameters, given the user's utility expectation. Extensive experiments using real data demonstrate that our proposed method consistently outperforms state-of-the-art query processing solutions under differential privacy, by large margins.
机译:差异隐私是一种对敏感数据进行统计查询处理的有前途的隐私保护范例。它通过向每个查询结果中注入随机噪声来工作,从而证明对手很难从已发布的嘈杂结果中推断出是否存在任何单独的记录。差分私有查询处理的主要目标是在满足隐私保证的同时,最大化查询结果的准确性。先前的工作,特别是Li等。 [2010]提出,采用适当的策略,整体上处理一批相关查询要比单独回答它们的准确性高得多。但是,据我们所知,目前还没有找到针对任意查询批处理的策略的实际解决方案。现有方法要么返回质量较差的策略(通常比朴素的方法差),要么即使对于中等大小的域,也需要昂贵的计算。因此,我们提出了一种低秩机制(LRM),这是第一种实用的差分私有技术,可以高精度地回答批线性查询。 LRM既适用于精确(即epsilon-)又适用于近似(即(epsilon,delta)-)差异隐私定义。根据用户的效用期望,我们得出LRM的效用保证,并提供有关如何设置隐私参数的指导。使用实际数据进行的大量实验表明,我们提出的方法在差异性隐私下始终远远领先于最新的查询处理解决方案。

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