Improved Accuracy for Private Continual Cardinality Estimation in Fully Dynamic Streams via Matrix Factorization
Joel Daniel Andersson, Palak Jain, Satchit Sivakumar

TL;DR
This paper enhances the accuracy of private continual cardinality estimation in dynamic streams by analyzing sensitivity vectors and applying matrix factorization techniques, leading to improved bounds for various streaming problems.
Contribution
It introduces a novel framework that improves error bounds for private continual cardinality estimation using sensitivity vector analysis and matrix factorizations.
Findings
Significant reduction in estimation error bounds.
Improved accuracy for counting distinct elements and triangle counts.
Empirical results show substantial accuracy improvements.
Abstract
We study differentially-private statistics in the fully dynamic continual observation model, where many updates can arrive at each time step and updates to a stream can involve both insertions and deletions of an item. Earlier work (e.g., Jain et al., NeurIPS 2023 for counting distinct elements; Raskhodnikova & Steiner, PODS 2025 for triangle counting with edge updates) reduced the respective cardinality estimation problem to continual counting on the difference stream associated with the true function values on the input stream. In such reductions, a change in the original stream can cause many changes in the difference stream, this poses a challenge for applying private continual counting algorithms to obtain optimal error bounds. We improve the accuracy of several such reductions by studying the associated -sensitivity vectors of the resulting difference streams and isolating…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Data Stream Mining Techniques
