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Matching Pursuit Based Scheduling for Over-the-Air Federated Learning

Abstract

This paper develops a class of low-complexity device scheduling algorithms for over-the-air federated learning via the method of matching pursuit. The proposed scheme tracks closely the close-to-optimal performance achieved by difference-of-convex programming, and outperforms significantly the well-known benchmark algorithms based on convex relaxation. Compared to the state-of-the-art, the proposed scheme poses a drastically lower computational load on the system: For KK devices and NN antennas at the parameter server, the benchmark complexity scales with (N2+K)3+N6\left(N^2+K\right)^3 + N^6 while the complexity of the proposed scheme scales with KpNqK^p N^q for some 0<p,q20 < p,q \leq 2. The efficiency of the proposed scheme is confirmed via numerical experiments on the CIFAR-10 dataset.

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