Heavy Hitters and the Structure of Local Privacy

Mark Bun, Jelani Nelson, Uri Stemmer
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引用次数: 139

Abstract

We present a new locally differentially private algorithm for the heavy hitters problem which achieves optimal worst-case error as a function of all standardly considered parameters. Prior work obtained error rates which depend optimally on the number of users, the size of the domain, and the privacy parameter, but depend sub-optimally on the failure probability. We strengthen existing lower bounds on the error to incorporate the failure probability, and show that our new upper bound is tight with respect to this parameter as well. Our lower bound is based on a new understanding of the structure of locally private protocols. We further develop these ideas to obtain the following general results beyond heavy hitters. (1) Advanced Grouposition: In the local model, group privacy for k users degrades proportionally to root k, instead of linearly in k as in the central model. Stronger group privacy yields improved max-information guarantees, as well as stronger lower bounds (via "packing arguments"), over the central model. (2) Building on a transformation of Bassily and Smith (STOC 2015), we give a generic transformation from any non-interactive approximate-private local protocol into a pure-private local protocol. Again in contrast with the central model, this shows that we cannot obtain more accurate algorithms by moving from pure to approximate local privacy.
重量级人物和本地隐私结构
我们提出了一种新的局部差分私有算法,该算法可以将最优最坏情况误差作为所有标准考虑参数的函数。先前的工作得到的错误率最优地依赖于用户数量、域大小和隐私参数,但次优地依赖于故障概率。我们加强了现有的误差下界,以纳入失效概率,并表明我们的新上界对于这个参数也是紧的。我们的下界是基于对局部私有协议结构的新理解。我们进一步发展这些想法,以获得除重量级人物之外的以下一般结果。(1)高级分组位置:在局部模型中,k个用户的组隐私按比例退化到根k,而不是像在中心模型中那样在k中线性退化。与中心模型相比,更强的群体隐私产生了更好的最大信息保证,以及更强的下界(通过“打包参数”)。(2)基于Bassily和Smith (STOC 2015)的转换,我们给出了从任何非交互式近似私有本地协议到纯私有本地协议的通用转换。再次与中心模型形成对比的是,这表明我们无法通过从纯粹到近似的局部隐私来获得更准确的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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