We study several problems in differentially private domain discovery, where each user holds a subset of items from a shared but unknown domain, and the goal is to output an informative subset of items. For set union, we show that the simple baseline Weighted Gaussian Mechanism (WGM) has a near-optimal ℓ1 missing mass guarantee on Zipfian data as well as a distribution-free ℓ∞ missing mass guarantee. We then apply the WGM as a domain-discovery precursor for existing known-domain algorithms for private top-k and k-hitting set and obtain new utility guarantees for their unknown domain variants. Finally, experiments demonstrate that all of our WGM-based methods are competitive with or outperform existing baselines for all three problems.
@article{arxiv.2603.14016,
title = {Missing Mass for Differentially Private Domain Discovery},
author = {Travis Dick and Matthew Joseph and Vinod Raman},
journal= {arXiv preprint arXiv:2603.14016},
year = {2026}
}