2023
DOI: 10.48550/arxiv.2302.01772
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Fixing by Mixing: A Recipe for Optimal Byzantine ML under Heterogeneity

Abstract: Byzantine machine learning (ML) aims to ensure the resilience of distributed learning algorithms to misbehaving (or Byzantine) machines. Although this problem received significant attention, prior works often assume the data held by the machines to be homogeneous, which is seldom true in practical settings. Data heterogeneity makes Byzantine ML considerably more challenging, since a Byzantine machine can hardly be distinguished from a non-Byzantine outlier. A few solutions have been proposed to tackle this iss… Show more

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