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On Privately Estimating a Single Parameter

Published: March 21, 2025 | arXiv ID: 2503.17252v1

By: Hilal Asi, John C. Duchi, Kunal Talwar

Potential Business Impact:

Keeps personal data safe while still using it.

Business Areas:
A/B Testing Data and Analytics

We investigate differentially private estimators for individual parameters within larger parametric models. While generic private estimators exist, the estimators we provide repose on new local notions of estimand stability, and these notions allow procedures that provide private certificates of their own stability. By leveraging these private certificates, we provide computationally and statistical efficient mechanisms that release private statistics that are, at least asymptotically in the sample size, essentially unimprovable: they achieve instance optimal bounds. Additionally, we investigate the practicality of the algorithms both in simulated data and in real-world data from the American Community Survey and US Census, highlighting scenarios in which the new procedures are successful and identifying areas for future work.

Page Count
53 pages

Category
Computer Science:
Machine Learning (CS)