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On Avoiding the Union Bound When Answering Multiple Differentially Private Queries

Abstract

In this work, we study the problem of answering kk queries with (ϵ,δ)(\epsilon, \delta)-differential privacy, where each query has sensitivity one. We give an algorithm for this task that achieves an expected \ell_\infty error bound of O(1ϵklog1δ)O(\frac{1}{\epsilon}\sqrt{k \log \frac{1}{\delta}}), which is known to be tight (Steinke and Ullman, 2016). A very recent work by Dagan and Kur (2020) provides a similar result, albeit via a completely different approach. One difference between our work and theirs is that our guarantee holds even when δ<2Ω(k/(logk)8)\delta < 2^{-\Omega(k/(\log k)^8)} whereas theirs does not apply in this case. On the other hand, the algorithm of Dagan and Kur has a remarkable advantage that the \ell_{\infty} error bound of O(1ϵklog1δ)O(\frac{1}{\epsilon}\sqrt{k \log \frac{1}{\delta}}) holds not only in expectation but always (i.e., with probability one) while we can only get a high probability (or expected) guarantee on the error.

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