Khái niệm cốt lõi
ProgFed is a novel federated learning framework that reduces communication and computation costs by progressively training increasingly complex models, achieving comparable or superior performance to traditional methods.
Thống kê
ProgFed saves up to 20% computation and up to 63% communication costs for converged models.
The approach can achieve a wide range of trade-offs by combining these techniques, showing reduced communication of up to 50x at only 0.1% loss in utility.
ProgFed saves around 25% computation cost and up to 32% two-way communication costs in federated classification.
In federated segmentation, ProgFed reduces communication costs by 63% without sacrificing performance.
ProgFed allows for a communication cost reduction of around 2x in classification and 6.5x in U-net segmentation while achieving practicable performance (≥98% of the best baseline).
Trích dẫn
"We propose ProgFed, the first federated progressive learning framework that reduces both communication and computation costs while preserving model utility."
"Our method inherently reduces two-way communication costs and complements existing methods."
"ProgFed is compatible with classical compression, including sparsification and quantization, and various federated optimizations, such as FedAvg, FedProx, and FedAdam."