Secure Byzantine-Robust Distributed Learning via Clustering

10/06/2021
by   Raj Kiriti Velicheti, et al.
0

Federated learning systems that jointly preserve Byzantine robustness and privacy have remained an open problem. Robust aggregation, the standard defense for Byzantine attacks, generally requires server access to individual updates or nonlinear computation – thus is incompatible with privacy-preserving methods such as secure aggregation via multiparty computation. To this end, we propose SHARE (Secure Hierarchical Robust Aggregation), a distributed learning framework designed to cryptographically preserve client update privacy and robustness to Byzantine adversaries simultaneously. The key idea is to incorporate secure averaging among randomly clustered clients before filtering malicious updates through robust aggregation. Experiments show that SHARE has similar robustness guarantees as existing techniques while enhancing privacy.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/24/2022

zPROBE: Zero Peek Robustness Checks for Federated Learning

Privacy-preserving federated learning allows multiple users to jointly t...
research
06/03/2019

Secure Distributed On-Device Learning Networks With Byzantine Adversaries

The privacy concern exists when the central server has the copies of dat...
research
06/08/2020

Secure Byzantine-Robust Machine Learning

Increasingly machine learning systems are being deployed to edge servers...
research
04/01/2022

Robust and Efficient Aggregation for Distributed Learning

Distributed learning paradigms, such as federated and decentralized lear...
research
12/31/2019

Robust Aggregation for Federated Learning

We present a robust aggregation approach to make federated learning robu...
research
02/20/2023

Byzantine-Resistant Secure Aggregation for Federated Learning Based on Coded Computing and Vector Commitment

In this paper, we propose an efficient secure aggregation scheme for fed...
research
10/02/2020

F2ED-Learning: Good Fences Make Good Neighbors

In this paper, we present F2ED-Learning, the first federated learning pr...

Please sign up or login with your details

Forgot password? Click here to reset