Publication | Closed Access
Detecting and mitigating poisoning attacks in federated learning using generative adversarial networks
55
Citations
18
References
2020
Year
Artificial IntelligenceEngineeringMachine LearningInformation SecurityFederated StructurePoisoning AttackIot SecurityData ScienceCollaborative LearningAdversarial Machine LearningInternet Of Things SecurityInternet Of ThingsData PrivacyComputer ScienceDistributed LearningPrivacyData SecurityDecentralized Machine LearningGenerative Adversarial NetworkFederated LearningGenerative Adversarial Networks
Summary In the age of the Internet of Things (IoT), large numbers of sensors and edge devices are deployed in various application scenarios; Therefore, collaborative learning is widely used in IoT to implement crowd intelligence by inviting multiple participants to complete a training task. As a collaborative learning framework, federated learning is designed to preserve user data privacy, where participants jointly train a global model without uploading their private training data to a third party server. Nevertheless, federated learning is under the threat of poisoning attacks, where adversaries can upload malicious model updates to contaminate the global model. To detect and mitigate poisoning attacks in federated learning, we propose a poisoning defense mechanism, which uses generative adversarial networks to generate auditing data in the training procedure and removes adversaries by auditing their model accuracy. Experiments conducted on two well‐known datasets, MNIST and Fashion‐MNIST, suggest that federated learning is vulnerable to the poisoning attack, and the proposed defense method can detect and mitigate the poisoning attack.
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