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On User-Level Private Convex Optimization

Authors :
Ghazi, Badih
Kamath, Pritish
Kumar, Ravi
Meka, Raghu
Manurangsi, Pasin
Zhang, Chiyuan
Ghazi, Badih
Kamath, Pritish
Kumar, Ravi
Meka, Raghu
Manurangsi, Pasin
Zhang, Chiyuan
Publication Year :
2023

Abstract

We introduce a new mechanism for stochastic convex optimization (SCO) with user-level differential privacy guarantees. The convergence rates of this mechanism are similar to those in the prior work of Levy et al. (2021); Narayanan et al. (2022), but with two important improvements. Our mechanism does not require any smoothness assumptions on the loss. Furthermore, our bounds are also the first where the minimum number of users needed for user-level privacy has no dependence on the dimension and only a logarithmic dependence on the desired excess error. The main idea underlying the new mechanism is to show that the optimizers of strongly convex losses have low local deletion sensitivity, along with an output perturbation method for functions with low local deletion sensitivity, which could be of independent interest.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1381624333
Document Type :
Electronic Resource