198

On Avoiding the Union Bound When Answering Multiple Differentially Private Queries

Annual Conference Computational Learning Theory (COLT), 2020
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.

View on arXiv
Comments on this paper