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Shielding Federated Learning: Robust Aggregation with Adaptive Client Selection

conference contribution
posted on 2022-11-01, 22:49 authored by Wei Wan, Shengshan Hu, jianrong Lu, Leo ZhangLeo Zhang, Hai Jin, Yuanyuan He
Federated learning (FL) enables multiple clients to collaboratively train an accurate global model while protecting clients' data privacy. However, FL is susceptible to Byzantine attacks from malicious participants. Although the problem has gained significant attention, existing defenses have several flaws: the server irrationally chooses malicious clients for aggregation even after they have been detected in previous rounds; the defenses perform ineffectively against sybil attacks or in the heterogeneous data setting. To overcome these issues, we propose MAB-RFL, a new method for robust aggregation in FL. By modelling the client selection as an extended multi-armed bandit (MAB) problem, we propose an adaptive client selection strategy to choose honest clients that are more likely to contribute high-quality updates. We then propose two approaches to identify malicious updates from sybil and non-sybil attacks, based on which rewards for each client selection decision can be accurately evaluated to discourage malicious behaviors. MAB-RFL achieves a satisfying balance between exploration and exploitation on the potential benign clients. Extensive experimental results show that MAB-RFL outperforms existing defenses in three attack scenarios under different percentages of attackers.

History

Pagination

753-760

Location

Vienne, Austria

Start date

2022-07-23

End date

2022-07-29

ISBN-13

9781956792003

Language

eng

Publication classification

E1 Full written paper - refereed

Editor/Contributor(s)

De Raedt L

Title of proceedings

IJCAI 2022 : Proceedings f the Artificial Intelligence 2022 Joint Conference

Event

Artificial Intelligence Conference (31st. 2022 : Vienna, Austria)

Publisher

International Joint Conferences on Artificial Intelligence Organization

Place of publication

Vienna, Austria

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