‘Backdoor Attacks in Peer-to-Peer Federated Learning’

“We study backdoor attacks in peer-to-peer federated learning systems on different graph topologies and datasets. We show that only 5% attacker nodes are sufficient to perform a backdoor attack with 42% attack success without decreasing the accuracy on clean data by more than 2%. We also demonstrate that the attack can be amplified by the attacker crashing a small number of nodes.”

Read the paper and see the full list of authors in ArXiv.

View on Site: ‘Backdoor Attacks in Peer-to-Peer Federated Learning’
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