差分私有选择的紧下界

T. Steinke, Jonathan Ullman
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引用次数: 70

摘要

在差分隐私文献中,一个普遍的任务是从一组d个项目中选择质量最高的k个项目,其中每个项目的质量取决于必须保护的敏感数据集。这个任务的变体自然地出现在基本问题中,如特征选择和假设检验,也作为许多复杂的差分私有算法的子程序。这些任务的标准方法——重复使用指数机制或稀疏向量技术——在给定n = O(√{k}\log d)个样本的数据集上近似地解决了这个问题。我们为私有选择问题的一些非常简单的变体提供了一个紧下界。我们的下界表明,即使要达到非常低的精度保证,也需要大小为n = Ω(√{k} \log d)的样本。我们的结果是基于对稀疏选择问题的指纹方法的扩展。以前,指纹识别方法已被用于为回答全部d个查询提供严格的下界,但通常只有k个查询中的一些小得多的查询集是相关的。我们的扩展允许我们证明依赖于相关查询数量和查询总数的下界。
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Tight Lower Bounds for Differentially Private Selection
A pervasive task in the differential privacy literature is to select the k items of highest quality out of a set of d items, where the quality of each item depends on a sensitive dataset that must be protected. Variants of this task arise naturally in fundamental problems like feature selection and hypothesis testing, and also as subroutines for many sophisticated differentially private algorithms.The standard approaches to these tasks—repeated use of the exponential mechanism or the sparse vector technique—approximately solve this problem given a dataset of n = O(√{k}\log d) samples. We provide a tight lower bound for some very simple variants of the private selection problem. Our lower bound shows that a sample of size n = Ω(√{k} \log d) is required even to achieve a very minimal accuracy guarantee.Our results are based on an extension of the fingerprinting method to sparse selection problems. Previously, the fingerprinting method has been used to provide tight lower bounds for answering an entire set of d queries, but often only some much smaller set of k queries are relevant. Our extension allows us to prove lower bounds that depend on both the number of relevant queries and the total number of queries.
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