Dynamic Privacy Allocation for Locally Differentially Private Federated
Learning with Composite Objectives
- URL: http://arxiv.org/abs/2308.01139v1
- Date: Wed, 2 Aug 2023 13:30:33 GMT
- Title: Dynamic Privacy Allocation for Locally Differentially Private Federated
Learning with Composite Objectives
- Authors: Jiaojiao Zhang, Dominik Fay, and Mikael Johansson
- Abstract summary: This paper proposes a differentially private federated learning algorithm for strongly convex but possibly nonsmooth problems.
The proposed algorithm adds artificial noise to the shared information to ensure privacy and dynamically allocates the time-varying noise variance to minimize an upper bound of the optimization error.
Numerical results show the superiority of the proposed algorithm over state-of-the-art methods.
- Score: 10.528569272279999
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper proposes a locally differentially private federated learning
algorithm for strongly convex but possibly nonsmooth problems that protects the
gradients of each worker against an honest but curious server. The proposed
algorithm adds artificial noise to the shared information to ensure privacy and
dynamically allocates the time-varying noise variance to minimize an upper
bound of the optimization error subject to a predefined privacy budget
constraint. This allows for an arbitrarily large but finite number of
iterations to achieve both privacy protection and utility up to a neighborhood
of the optimal solution, removing the need for tuning the number of iterations.
Numerical results show the superiority of the proposed algorithm over
state-of-the-art methods.
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