Differentially Private Continual Release of Histograms and Related Queries

We study privately releasing column sums of a -dimensional table with entries from a universe undergoing row updates, called histogram under continual release. Our mechanisms give better additive -error than existing mechanisms for a large class of queries and input streams. Our first contribution is an output-sensitive mechanism in the insertions-only model () for maintaining (i) the histogram or (ii) queries that do not require maintaining the entire histogram, such as the maximum or minimum column sum, the median, or any quantiles. The mechanism has an additive error of whp, where is the maximum output value over all time steps on this dataset. The mechanism does not require as input. This breaks the bound of prior work when . Our second contribution is a mechanism for the turnstile model that admits negative entry updates (). This mechanism has an additive error of whp, where is the number of times two consecutive data rows differ, and the mechanism does not require as input. This is useful when monitoring inputs that only vary under unusual circumstances. For this gives the first private mechanism with error for continual counting in the turnstile model, improving on the error bound by Dwork et al. [ASIACRYPT 2015], where is the number of ones in the stream, as well as allowing negative entries, while Dwork et al. [ASIACRYPT 2015] can only handle nonnegative entries ().
View on arXiv@article{henzinger2025_2302.11341, title={ Differentially Private Continual Release of Histograms and Related Queries }, author={ Monika Henzinger and A. R. Sricharan and Teresa Anna Steiner }, journal={arXiv preprint arXiv:2302.11341}, year={ 2025 } }