SFAT
Heterogeneity fixer
Combating heterogeneity in federated learning by combining adversarial training with client-wise slack during aggregation
[ICLR 2023] "Combating Exacerbated Heterogeneity for Robust Models in Federated Learning"
28 stars
2 watching
7 forks
Language: Python
last commit: over 1 year ago adversarial-learningdata-heterogeneityfederated-adversarial-learningfederated-learningrobust-machine-learning
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