PushCen-ADFL is a centroid-based asynchronous federated learning method that applies average-preserving push-sum mixing and regularization to reduce aggregation bias and model drift, claiming up to 6% accuracy gains and 80% lower communication on vision tasks.
Swift: Rapid decentralized federated learning via wait-free model communica- tion,
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Simulations identify three operating regimes for decentralized learning convergence under mobility and bandwidth constraints: inter-contact time dictates mixing, partial updates are tolerated with frequent contacts, and dense patterns cause contention.
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On the Push-Based Asynchronous Federated Learning: A Bias-Correction Aggregation Approach
PushCen-ADFL is a centroid-based asynchronous federated learning method that applies average-preserving push-sum mixing and regularization to reduce aggregation bias and model drift, claiming up to 6% accuracy gains and 80% lower communication on vision tasks.