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Differentially Private Database Release via Kernel Mean Embeddings

机译:通过内核均值嵌入差分私有数据库发布

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We lay theoretical foundations for new database release mechanisms that allow third-parties to construct consistent estimators of population statistics, while ensuring that the privacy of each individual contributing to the database is protected. The proposed framework rests on two main ideas. First, releasing (an estimate of) the kernel mean embedding of the data generating random variable instead of the database itself still allows third-parties to construct consistent estimators of a wide class of population statistics. Second, the algorithm can satisfy the definition of differential privacy by basing the released kernel mean embedding on entirely synthetic data points, while controlling accuracy through the metric available in a Reproducing Kernel Hilbert Space. We describe two instantiations of the proposed framework, suitable under different scenarios, and prove theoretical results guaranteeing differential privacy of the resulting algorithms and the consistency of estimators constructed from their outputs.
机译:我们为新的数据库发布机制奠定了理论基础,该机制允许第三方构建一致的人口统计估算器,同时确保保护对数据库做出贡献的每个人的隐私。提议的框架基于两个主要思想。首先,释放(估计)内核意味着嵌入生成数据的随机变量而不是数据库本身,这仍然允许第三方构造各种人口统计数据的一致估计量。其次,该算法可以通过基于完全合成的数据点嵌入已发布的内核均值来满足差分隐私的定义,同时通过可再生内核希尔伯特空间中的可用度量来控制准确性。我们描述了所提出的框架的两个实例,适用于不同的场景,并证明了理论结果,可保证所得算法的不同隐私性以及从其输出构造的估计量的一致性。

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