Visible to the public Federated Learning with Local Differential Privacy: Trade-Offs Between Privacy, Utility, and Communication

TitleFederated Learning with Local Differential Privacy: Trade-Offs Between Privacy, Utility, and Communication
Publication TypeConference Paper
Year of Publication2021
AuthorsKim, Muah, Günlü, Onur, Schaefer, Rafael F.
Conference NameICASSP 2021 - 2021 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)
Date PublishedJune 2021
PublisherIEEE
ISBN Number978-1-7281-7605-5
KeywordsCollaborative Work, composability, composition theorems, Conferences, Differential privacy, federated learning (FL), Gaussian randomization, Human Behavior, local differential privacy (LDP), privacy, pubcrawl, resilience, Resiliency, Scalability, Sensitivity, Signal processing, stochastic gradient descent (SGD), Stochastic processes
Abstract

Federated learning (FL) allows to train a massive amount of data privately due to its decentralized structure. Stochastic gradient descent (SGD) is commonly used for FL due to its good empirical performance, but sensitive user information can still be inferred from weight updates shared during FL iterations. We consider Gaussian mechanisms to preserve local differential privacy (LDP) of user data in the FL model with SGD. The trade-offs between user privacy, global utility, and transmission rate are proved by defining appropriate metrics for FL with LDP. Compared to existing results, the query sensitivity used in LDP is defined as a variable, and a tighter privacy accounting method is applied. The proposed utility bound allows heterogeneous parameters over all users. Our bounds characterize how much utility decreases and transmission rate increases if a stronger privacy regime is targeted. Furthermore, given a target privacy level, our results guarantee a significantly larger utility and a smaller transmission rate as compared to existing privacy accounting methods.

URLhttps://ieeexplore.ieee.org/document/9413764
DOI10.1109/ICASSP39728.2021.9413764
Citation Keykim_federated_2021