2023
DOI: 10.1109/access.2023.3277858
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Byzantine-Resilient Secure Federated Learning on Low-Bandwidth Networks

Abstract: Privacy-preserving and Byzantine-resilient machine learning has been an important research issue, and many centralized methods have been developed. However, it is difficult for these methods to achieve fast learning and high accuracy simultaneously. In contrast, federated learning based on local model masking like Byzantine-Resilient Secure Aggregation (BREA), is a promising approach to simultaneously achieve them. Despite the advantage of light computation of randomizing local models of users for privacy pres… Show more

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References 34 publications
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