Differentially private inference via noisy optimization
Marco Avella-Medina, Casey Bradshaw, Po-Ling Loh
DOI: 10.1214/23-aos2321
Journal: The Annals of Statistics
This work shows that robust statistics can be used in conjunction with noisy gradient descent or noisy Newton methods in order to obtain optimal private estimators with global linear or quadratic convergence, respectively, and establishes local and global convergence guarantees.
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Journal Info
Journals:
ISSN 0090-5364
Quartile
Category | Quartile |
STATISTICS & PROBABILITY | 1 |
Quartile(CN)
Category | Quartile |
数学 | 1 |
数学, 统计学与概率论 | 1 |