Differentially Private Continual Releases of Streaming Frequency Moment Estimations

Alessandro Epasto, Jieming Mao, Andrés Muñoz Medina, V. Mirrokni, Sergei Vassilvitskii, Peilin Zhong
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引用次数: 14

Abstract

The streaming model of computation is a popular approach for working with large-scale data. In this setting, there is a stream of items and the goal is to compute the desired quantities (usually data statistics) while making a single pass through the stream and using as little space as possible. Motivated by the importance of data privacy, we develop differentially private streaming algorithms under the continual release setting, where the union of outputs of the algorithm at every timestamp must be differentially private. Specifically, we study the fundamental $\ell_p$ $(p\in [0,+\infty))$ frequency moment estimation problem under this setting, and give an $\varepsilon$-DP algorithm that achieves $(1+\eta)$-relative approximation $(\forall \eta\in(0,1))$ with $\mathrm{poly}\log(Tn)$ additive error and uses $\mathrm{poly}\log(Tn)\cdot \max(1, n^{1-2/p})$ space, where $T$ is the length of the stream and $n$ is the size of the universe of elements. Our space is near optimal up to poly-logarithmic factors even in the non-private setting. To obtain our results, we first reduce several primitives under the differentially private continual release model, such as counting distinct elements, heavy hitters and counting low frequency elements, to the simpler, counting/summing problems in the same setting. Based on these primitives, we develop a differentially private continual release level set estimation approach to address the $\ell_p$ frequency moment estimation problem. We also provide a simple extension of our results to the harder sliding window model, where the statistics must be maintained over the past $W$ data items.
流频率矩估计的差分私有连续释放
流计算模型是处理大规模数据的一种流行方法。在此设置中,存在一个项目流,目标是在通过该流并使用尽可能少的空间时计算所需的数量(通常是数据统计)。考虑到数据隐私的重要性,我们开发了连续发布设置下的差分私有流算法,该算法在每个时间戳的输出联合必须是差分私有的。具体来说,我们研究了该设置下的基本$\ell_p$$(p\in [0,+\infty))$频率矩估计问题,并给出了一种$\varepsilon$ -DP算法,该算法利用$\mathrm{poly}\log(Tn)$加性误差实现$(1+\eta)$ -相对逼近$(\forall \eta\in(0,1))$,使用$\mathrm{poly}\log(Tn)\cdot \max(1, n^{1-2/p})$空间,其中$T$为流长度,$n$为元素域的大小。即使在非私人环境中,我们的空间在多对数因子方面也接近最优。为了得到我们的结果,我们首先在差分私有连续释放模型下简化了几个原语,例如计数不同的元素、重磅元素和计数低频元素,以简化为相同设置下的计数/求和问题。基于这些原语,我们开发了一种差分私有持续释放水平集估计方法来解决$\ell_p$频率矩估计问题。我们还将结果简单地扩展到较硬的滑动窗口模型,其中必须维护过去$W$数据项的统计信息。
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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