Analyzing Federated Learning through an Adversarial Lens

Pages: 634 - 643
Published: May 24, 2019
Abstract
Federated learning distributes model training among a multitude of agents, who, guided by privacy concerns, perform training using their local data but share only model parameter updates, for iterative aggregation at the server. In this work, we explore the threat of model poisoning attacks on federated learning initiated by a single, non-colluding malicious agent where the adversarial objective is to cause the model to misclassify a set of...
Paper Details
Title
Analyzing Federated Learning through an Adversarial Lens
Published Date
May 24, 2019
Pages
634 - 643
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