从私有化直方图得出最佳线性无偏估计值

Jordan Awan, Adam Edwards, Paul Bartholomew, Andrew Sillers
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引用次数: 0

摘要

在差分隐私(DP)机制中,释放 "冗余 "输出可能是有益的,即可以通过组合不同的私有化值组合来估算一个数量。事实上,美国人口普查局发布的 DP 2020 十年期人口普查产品中就有这种结构。有了这种结构,DP 输出可以通过强制执行自一致性来改进(即通过组合不同值获得的估计值结果相同),我们证明最小方差处理是一种线性投影。然而,标准的投影算法在内存和执行时间方面都过于昂贵,不适合十年一次的人口普查等应用。我们提出了可扩展的高效最佳线性无偏估计算法(SEA BLUE),该算法基于聚合和差分两步过程,1)通过线性无偏程序实现自洽性;2)计算和内存效率高;3)在特定结构假设下实现最小方差解;4)经验表明对违反结构假设的情况具有鲁棒性。我们提出了三种在不同假设条件下计算估计值置信区间的方法。我们将 SEA BLUE 应用于两个 2010 年人口普查示范产品,以说明其可扩展性和有效性。
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Best Linear Unbiased Estimate from Privatized Histograms
In differential privacy (DP) mechanisms, it can be beneficial to release "redundant" outputs, in the sense that a quantity can be estimated by combining different combinations of privatized values. Indeed, this structure is present in the DP 2020 Decennial Census products published by the U.S. Census Bureau. With this structure, the DP output can be improved by enforcing self-consistency (i.e., estimators obtained by combining different values result in the same estimate) and we show that the minimum variance processing is a linear projection. However, standard projection algorithms are too computationally expensive in terms of both memory and execution time for applications such as the Decennial Census. We propose the Scalable Efficient Algorithm for Best Linear Unbiased Estimate (SEA BLUE), based on a two step process of aggregation and differencing that 1) enforces self-consistency through a linear and unbiased procedure, 2) is computationally and memory efficient, 3) achieves the minimum variance solution under certain structural assumptions, and 4) is empirically shown to be robust to violations of these structural assumptions. We propose three methods of calculating confidence intervals from our estimates, under various assumptions. We apply SEA BLUE to two 2010 Census demonstration products, illustrating its scalability and validity.
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