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Privately Answering Classification Queries in the Agnostic PAC Model

机译:不可知论PAC模型中的私人回答分类查询

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We revisit the problem of differentially private release of classification queries. In this problem, the goal is to design an algorithm that can accurately answer a sequence of classification queries based on a private training set while ensuring differential privacy. We formally study this problem in the agnostic PAC model and derive a new upper bound on the private sample complexity. Our results improve over those obtained in a recent work (Bassily et al., 2018) for the agnostic PAC setting. In particular, we give an improved construction that yields a tighter upper bound on the sample complexity. Moreover, unlike (Bassily et al., 2018), our accuracy guarantee does not involve any blow-up in the approximation error associated with the given hypothesis class. Given any hypothesis class with VC-dimension $d$, we show that our construction can privately answer up to $m$ classification queries with average excess error $lpha$ using a private sample of size $pprox rac{d}{lpha^2},maxleft(1, sqrt{m},lpha^{3/2}ight)$. Using recent results on private learning with auxiliary public data, we extend our construction to show that one can privately answer any number of classification queries with average excess error $lpha$ using a private sample of size $pprox rac{d}{lpha^2},maxleft(1, sqrt{d},lphaight)$. When $lpha=Oleft(rac{1}{sqrt{d}}ight)$, our private sample complexity bound is essentially optimal.
机译:我们重新讨论分类查询的差异私有发布问题。在这个问题中,目标是设计一种算法,该算法可以在确保差异性隐私的同时,根据私人训练集准确回答一系列分类查询。我们在不可知论的PAC模型中正式研究了这个问题,并得出了私人样本复杂度的新上限。我们的结果比最近的工作(Bassily et al。,2018)中获得的结果更好。特别是,我们给出了一种改进的结构,该结构在样本复杂度上产生了更严格的上限。此外,与(Bassily等人,2018)不同,我们的准确性保证不涉及与给定假设类别相关的逼近误差的任何激增。给定任何带有VC维$ d $的假设类,我们证明了我们的构造可以使用大小为 approx frac {d} {的私有样本,私下回答平均平均超额误差为$ alpha $的$ m $分类查询。 alpha ^ 2} , max left(1, sqrt {m} , alpha ^ {3/2} right)$。利用最近的关于带有辅助公共数据的私人学习结果,我们扩展了结构,以显示一个人可以使用大小为 approx frac {d} {的私人样本,私下回答任何数量的平均超额错误$ alpha $的分类查询。 alpha ^ 2} , max left(1, sqrt {d} , alpha right)$。当$ alpha = O left( frac {1} { sqrt {d}} right)$时,我们的私有样本复杂度范围实际上是最佳的。

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