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conference paper

Learning from History for Byzantine Robust Optimization

Karimireddy, Sai Praneeth  
•
He, Lie  
•
Jaggi, Martin  
January 1, 2021
International Conference On Machine Learning, Vol 139
International Conference on Machine Learning (ICML)

Byzantine robustness has received significant attention recently given its importance for distributed and federated learning. In spite of this, we identify severe flaws in existing algorithms even when the data across the participants is identically distributed. First, we show realistic examples where current state of the art robust aggregation rules fail to converge even in the absence of any Byzantine attackers. Secondly, we prove that even if the aggregation rules may succeed in limiting the influence of the attackers in a single round, the attackers can couple their attacks across time eventually leading to divergence. To address these issues, we present two surprisingly simple strategies: a new robust iterative clipping procedure, and incorporating worker momentum to overcome time-coupled attacks. This is the first provably robust method for the standard stochastic optimization setting. Our code is open sourced at this link(2).

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Type
conference paper
Web of Science ID

WOS:000683104605032

Author(s)
Karimireddy, Sai Praneeth  
He, Lie  
Jaggi, Martin  
Date Issued

2021-01-01

Publisher

JMLR-JOURNAL MACHINE LEARNING RESEARCH

Publisher place

San Diego

Published in
International Conference On Machine Learning, Vol 139
Series title/Series vol.

Proceedings of Machine Learning Research

Volume

139

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
MLO  
Event nameEvent placeEvent date
International Conference on Machine Learning (ICML)

ELECTR NETWORK

Jul 18-24, 2021

Available on Infoscience
September 25, 2021
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/181616
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