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Local Model Poisoning Attacks to Byzantine-Robust Federated Learning

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In federated learning, multiple client devices jointly learn a machine learning model: each client device maintains a local model for its local training dataset, while a master device maintains a global model via aggregating the local models from the client devices. The machine learning community recently proposed several federated learning methods that were claimed to be robust against Byzantine failures (e.g., system failures, adversarial manipulations) of certain client devices. In this work, we perform the first systematic study on local model poisoning attacks to federated learning. We assume an attacker has compromised some client devices, and the attacker manipulates the local model parameters on the compromised client devices during the learning process such that the global model has a large testing error rate. We formulate our attacks as optimization problems and apply our attacks to four recent Byzantine-robust federated learning methods. Our empirical results on four real-world datasets show that our attacks can substantially increase the error rates of the models learnt by the federated learning methods that were claimed to be robust against Byzantine failures of some client devices. We generalize two defenses for data poisoning attacks to defend against our local model poisoning attacks. Our evaluation results show that one defense can effectively defend against our attacks in some cases, but the defenses are not effective enough in other cases, highlighting the need for new defenses against our local model poisoning attacks to federated learning.

Minghong Fang, Xiaoyu Cao, Jinyuan Jia, Neil Zhenqiang Gong• 2019

Related benchmarks

TaskDatasetResultRank
Image ClassificationfMNIST (test)
Test Accuracy79.94
230
Image ClassificationMNIST (test)
Accuracy90.6
196
Image ClassificationMNIST 0.5 (test)
Accuracy91.51
80
Model Poisoning AttackPurchase cross-device (test)
72.37
74
Image ClassificationCIFAR10-0.5 (test)
Accuracy45.35
72
Image ClassificationFMNIST 0.5 (test)
Accuracy72.49
72
Image ClassificationFashion-MNIST 50-client (Non-IID)
Error Rate12
49
Image ClassificationFashion-MNIST IID 50-client
Error Rate10.9
49
IoT Intrusion DetectionN-BaIoT Scenario 2
Accuracy97.54
36
Federated Learning Model Poisoning RobustnessPurchase Cross-silo 100 FL clients, 500 global iterations & 3 layer DNN model
Attack Impact (I_theta)74.35
26
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