Performance Optimization for Variable Bitwidth Federated Learning in Wireless Networks
Sihua Wang, Mingzhe Chen, Christopher G. Brinton, Changchuan, Yin, Walid Saad, Shuguang Cui

TL;DR
This paper introduces a novel optimization framework for federated learning in wireless networks that jointly determines device participation and model quantization levels to enhance communication efficiency and training performance.
Contribution
It analytically characterizes the impact of quantization and wireless constraints on FL performance and proposes a model-based RL method for optimized device and quantization selection.
Findings
Reduces FL training loss with optimized quantization and device selection.
Model-based RL outperforms model-free RL in FL optimization.
Achieves faster convergence in wireless FL scenarios.
Abstract
This paper considers improving wireless communication and computation efficiency in federated learning (FL) via model quantization. In the proposed bitwidth FL scheme, edge devices train and transmit quantized versions of their local FL model parameters to a coordinating server, which aggregates them into a quantized global model and synchronizes the devices. The goal is to jointly determine the bitwidths employed for local FL model quantization and the set of devices participating in FL training at each iteration. We pose this as an optimization problem that aims to minimize the training loss of quantized FL under a per-iteration device sampling budget and delay requirement. However, the formulated problem is difficult to solve without (i) a concrete understanding of how quantization impacts global ML performance and (ii) the ability of the server to construct estimates of this process…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cooperative Communication and Network Coding · Advanced MIMO Systems Optimization
