ICLR2026

Skirting Additive Error Barriers for Private Turnstile Streams

Anders Aamand, Justin Y. Chen, Sandeep Silwal

被引用 1 次

摘要

We study differentially private continual release of the number of distinct items in a turnstile stream, where items may be both inserted and deleted. A recent work of Jain, Kalemaj, Raskhodnikova, Sivakumar, and Smith (NeurIPS '23) shows that for streams of length TT, polynomial additive error of Ω(T1/4)\Omega(T^{1/4}) is necessary, even without any space restrictions. We show that this additive error lower bound can be circumvented if the algorithm is allowed to output estimates with both additive and multiplicative error. We give an algorithm for the continual release of the number of distinct elements with polylog(T)\text{polylog} (T) multiplicative and polylog(T)\text{polylog}(T) additive error. We also show a qualitatively similar phenomenon for estimating the F2F_2 moment of a turnstile stream, where we can obtain 1+o(1)1+o(1) multiplicative and polylog(T)\text{polylog} (T) additive error. Both results can be achieved using polylogarithmic space whereas prior approaches use polynomial space. In the sublinear space regime, some multiplicative error is necessary even if privacy is not a consideration. We raise several open questions aimed at better understanding trade-offs between multiplicative and additive error in private continual release.