Non-IID issue in federated learning is addressed through Gradient Harmonization, improving performance across diverse scenarios.
The author addresses the non-IID issue in federated learning by proposing FedGH, a method that mitigates local drifts through Gradient Harmonization. FedGH consistently enhances FL baselines across diverse benchmarks and scenarios with stronger heterogeneity.