Fabricated Flips: Poisoning Federated Learning without Data
Jiyue Huang, Zilong Zhao, Lydia Y. Chen, Stefanie Roos

TL;DR
This paper introduces DFA, a novel data-free untargeted poisoning attack on federated learning that synthesizes malicious data without prior knowledge or large datasets, effectively bypassing existing defenses.
Contribution
The paper proposes DFA and its variants, DFA-R and DFA-G, as the first data-free attacks on federated learning, demonstrating high success rates against current defenses.
Findings
DFA achieves high attack success rates on multiple datasets.
DFA can evade all tested defense mechanisms in at least 50% of cases.
The proposed REFD defense effectively detects and filters malicious updates.
Abstract
Attacks on Federated Learning (FL) can severely reduce the quality of the generated models and limit the usefulness of this emerging learning paradigm that enables on-premise decentralized learning. However, existing untargeted attacks are not practical for many scenarios as they assume that i) the attacker knows every update of benign clients, or ii) the attacker has a large dataset to locally train updates imitating benign parties. In this paper, we propose a data-free untargeted attack (DFA) that synthesizes malicious data to craft adversarial models without eavesdropping on the transmission of benign clients at all or requiring a large quantity of task-specific training data. We design two variants of DFA, namely DFA-R and DFA-G, which differ in how they trade off stealthiness and effectiveness. Specifically, DFA-R iteratively optimizes a malicious data layer to minimize the…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Adversarial Robustness in Machine Learning · Network Security and Intrusion Detection
