Prioritizing Gradient Sign Over Modulus: An Importance-Aware Framework for Wireless Federated Learning
arXiv cs.LG / 3/12/2026
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Key Points
- Sign-Prioritized FL (SP-FL) transmits gradient signs preferentially to improve model updates under constrained wireless resources.
- The framework uses hierarchical resource allocation across packets and devices to prioritize important gradient information and allows modulus data to be discarded if not recoverable.
- An alternating optimization algorithm based on Newton-Raphson and successive convex approximation solves the bandwidth and power allocation problem, with analysis of one-step convergence.
- Simulation results on CIFAR-10 show up to 9.96% higher testing accuracy than existing methods in resource-constrained scenarios.
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