SecureAFL secures asynchronous federated learning against poisoning attacks by detecting anomalous updates, estimating missing client contributions, and using Byzantine-robust aggregation.
d.].Federated Learning: Collaborative Machine Learning without Central- ized Training Data
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SecureAFL: Secure Asynchronous Federated Learning
SecureAFL secures asynchronous federated learning against poisoning attacks by detecting anomalous updates, estimating missing client contributions, and using Byzantine-robust aggregation.