通过分块设计实现精确最优和通信高效的私有估计

Hyun-Young Park;Seung-Hyun Nam;Si-Hyeon Lee
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引用次数: 0

摘要

本文基于离散分布估计的组合块设计,提出了一类新的局部差分隐私(LDP)方案。这一类方案不仅在组合块设计的统一框架下恢复了许多已知的 LDP 方案,而且还提出了一种新的方法,即以较低的通信成本找到实现完全最优(或接近最优)隐私-效用权衡的新方案。事实上,我们发现了许多新的 LDP 方案,这些方案能在特定的输入数据大小和 LDP 约束条件下,在所有无偏或一致方案中以最小的通信成本实现完全最优的隐私-效用权衡。此外,为了部分解决块设计方案的稀疏存在性问题,我们考虑了更广泛的一类基于规则和配对平衡设计的 LDP 方案,称为 RPBD 方案,它放宽了对块设计的对称性要求之一。通过考虑这一大类 RPBD 方案,我们可以找到在输入数据大小和 LDP 约束更大的情况下,以合理的低通信成本实现接近最优的隐私-效用权衡的 LDP 方案。
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Exactly Optimal and Communication-Efficient Private Estimation via Block Designs
In this paper, we propose a new class of local differential privacy (LDP) schemes based on combinatorial block designs for discrete distribution estimation. This class not only recovers many known LDP schemes in a unified framework of combinatorial block design, but also suggests a novel way of finding new schemes achieving the exactly optimal (or near-optimal) privacy-utility trade-off with lower communication costs. Indeed, we find many new LDP schemes that achieve the exactly optimal privacy-utility trade-off, with the minimum communication cost among all the unbiased or consistent schemes, for a certain set of input data size and LDP constraint. Furthermore, to partially solve the sparse existence issue of block design schemes, we consider a broader class of LDP schemes based on regular and pairwise-balanced designs, called RPBD schemes, which relax one of the symmetry requirements on block designs. By considering this broader class of RPBD schemes, we can find LDP schemes achieving near-optimal privacy-utility trade-off with reasonably low communication costs for a much larger set of input data size and LDP constraint.
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