4.7 Article

Scheduling Policies for Federated Learning in Wireless Networks

Journal

IEEE TRANSACTIONS ON COMMUNICATIONS
Volume 68, Issue 1, Pages 317-333

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCOMM.2019.2944169

Keywords

Convergence; Data models; Signal to noise ratio; Interference; Computational modeling; Training; Wireless networks; Federated learning; scheduling policies; parallel and distributed algorithms; stochastic geometry; convergence analysis

Funding

  1. SUTD-ZJU Research Collaboration [SUTD-ZJU/RES/01/2016, SUTD-ZJU/RES/05/2016]
  2. SUTD Growth Plan Grant
  3. U.S. National Science Foundation [CCF-093970, CCF-1513915]

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Motivated by the increasing computational capacity of wireless user equipments (UEs), e.g., smart phones, tablets, or vehicles, as well as the increasing concerns about sharing private data, a new machine learning model has emerged, namely federated learning (FL), that allows a decoupling of data acquisition and computation at the central unit. Unlike centralized learning taking place in a data center, FL usually operates in a wireless edge network where the communication medium is resource-constrained and unreliable. Due to limited bandwidth, only a portion of UEs can be scheduled for updates at each iteration. Due to the shared nature of the wireless medium, transmissions are subjected to interference and are not guaranteed. The performance of FL system in such a setting is not well understood. In this paper, an analytical model is developed to characterize the performance of FL in wireless networks. Particularly, tractable expressions are derived for the convergence rate of FL in a wireless setting, accounting for effects from both scheduling schemes and inter-cell interference. Using the developed analysis, the effectiveness of three different scheduling policies, i.e., random scheduling (RS), round robin (RR), and proportional fair (PF), are compared in terms of FL convergence rate. It is shown that running FL with PF outperforms RS and RR if the network is operating under a high signal-to-interference-plus-noise ratio (SINR) threshold, while RR is more preferable when the SINR threshold is low. Moreover, the FL convergence rate decreases rapidly as the SINR threshold increases, thus confirming the importance of compression and quantization of the update parameters. The analysis also reveals a trade-off between the number of scheduled UEs and subchannel bandwidth under a fixed amount of available spectrum.

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