AI RESEARCH
Learning Locally, Revising Globally: Global Reviser for Federated Learning with Noisy Labels
arXiv CS.LG
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ArXi:2412.00452v2 Announce Type: replace Conventioanl federated learning (FL) heavily depends on high-quality labels, which are often impractical in the real world, leading to the federated label-noise (F-LN) problem. Worsely, the F-LN problem is exacerbated by the heterogeneity of FL, whereas clients experience different labelnoise types, ratios, and data distribution. In this study, we first observe an intriguing phenomenon that the global model of FL exhibits a slow memorization of noisy labels, suggesting its ability to maintain reliable predictions and robust representations in FL.