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Curse or Redemption? How Data Heterogeneity Affects the Robustness of Federated Learning

Computer Science

Curse or Redemption? How Data Heterogeneity Affects the Robustness of Federated Learning

S. Zawad, A. Ali, et al.

Discover how data heterogeneity influences the strength of federated learning against backdooring attacks in this intriguing research by Syed Zawad, Ahsan Ali, Pin-Yu Chen, Ali Anwar, Yi Zhou, Nathalie Baracaldo, Yuan Tian, and Feng Yan. The study uncovers surprising challenges and potential defenses in this rapidly evolving field.... show more
Abstract
Data heterogeneity has been identified as one of the key features in federated learning but often overlooked in the lens of robustness to adversarial attacks. This paper focuses on characterizing and understanding its impact on backdooring attacks in federated learning through comprehensive experiments using synthetic and the LEAF benchmarks. The initial impression driven by our experimental results suggests that data heterogeneity is the dominant factor in the effectiveness of attacks and it may be a redemption for defending against backdooring as it makes the attack less efficient, more challenging to design effective attack strategies, and the attack result also becomes less predictable. However, with further investigations, we found data heterogeneity is more of a curse than a redemption as the attack effectiveness can be significantly boosted by simply adjusting the client-side backdooring timing. More importantly, data heterogeneity may result in overfitting at the local training of benign clients, which can be utilized by attackers to disguise themselves and fool skewed-feature based defenses. In addition, effective attack strategies can be made by adjusting attack data distribution. Finally, we discuss the potential directions of defending the curses brought by data heterogeneity. The results and lessons learned from our extensive experiments and analysis offer new insights for designing robust federated learning methods and systems.
Publisher
The Thirty-Fifth AAAI Conference on Artificial Intelligence (AAAI-21)
Published On
Authors
Syed Zawad, Ahsan Ali, Pin-Yu Chen, Ali Anwar, Yi Zhou, Nathalie Baracaldo, Yuan Tian, Feng Yan
Tags
federated learning
data heterogeneity
backdooring attacks
attack defense
robustness
cybersecurity
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