2024
DOI: 10.1609/aaai.v38i4.28095
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FedDiv: Collaborative Noise Filtering for Federated Learning with Noisy Labels

Jichang Li,
Guanbin Li,
Hui Cheng
et al.

Abstract: Federated Learning with Noisy Labels (F-LNL) aims at seeking an optimal server model via collaborative distributed learning by aggregating multiple client models trained with local noisy or clean samples. On the basis of a federated learning framework, recent advances primarily adopt label noise filtering to separate clean samples from noisy ones on each client, thereby mitigating the negative impact of label noise. However, these prior methods do not learn noise filters by exploiting knowledge across all clie… Show more

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References 23 publications
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