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Pan-Private Uniformity Testing

机译:泛私有均匀性测试

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摘要

A centrally differentially private algorithm maps raw data to differentially private outputs. In contrast, a locally differentially private algorithm may only access data through public interaction with data holders, and this interaction must be a differentially private function of the data. We study the intermediate model of emph{pan-privacy}. Unlike a locally private algorithm, a pan-private algorithm receives data in the clear. Unlike a centrally private algorithm, the algorithm receives data one element at a time and must maintain a differentially private internal state while processing this stream. First, we show that pan-privacy against multiple intrusions on the internal state is equivalent to sequentially interactive local privacy. Next, we contextualize pan-privacy against a single intrusion by analyzing the sample complexity of uniformity testing over domain $[k]$. Focusing on the dependence on $k$, centrally private uniformity testing has sample complexity $Theta(sqrt{k})$, while noninteractive locally private uniformity testing has sample complexity $Theta(k)$. We show that the sample complexity of pan-private uniformity testing is $Theta(k^{2/3})$. By a new $Omega(k)$ lower bound for the sequentially interactive setting, we also separate pan-private from sequentially interactive locally private and multi-intrusion pan-private uniformity testing.
机译:集中差别私有算法将原始数据映射到差异私有输出。相反,局部差分私有算法可以仅通过与数据保持器的公共交互访问数据,并且该交互必须是数据的差别私有功能。我们研究 emph {pan-privacy}的中间模型。与本地私有算法不同,PAN私有算法在清除中接收数据。与中心私有算法不同,算法一次接收数据一个元素,并且必须在处理此流的同时保持差别私有内部状态。首先,我们表明,对内部状态的多个入侵的PAN隐私相当于顺序交互式本地隐私。接下来,我们通过分析均匀性测试的样本复杂性,对单一侵入性进行上下文化Pan隐私,通过域$ [k] $。专注于$ k $的依赖,集中私有统一性测试具有样本复杂性$ theta( sqrt {k})$,而非交互式本地私人均匀性测试具有样本复杂度$ theta(k)$。我们表明泛私有均匀性测试的样本复杂性是$ theta(k ^ {2/3})$。通过一个新的$ oomega(k)$低绑定的序列交互式设置,我们还将Pan-Pricion分离为顺序交互式私有和多侵入泛私有均匀性测试。

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