Adaptive Quantization Resolution and Power Control for Federated Learning over Cell-free Networks
Afsaneh Mahmoudi, and Emil Bj\"ornson

TL;DR
This paper presents a novel adaptive quantization and power control scheme for federated learning over cell-free networks, significantly reducing communication overhead while maintaining high accuracy.
Contribution
It introduces a mixed-resolution quantization scheme and dynamic power control tailored for FL in cell-free MIMO, addressing latency and straggler issues.
Findings
Achieves at least 93% reduction in communication overhead.
Maintains test accuracy comparable to classic FL.
Reduces communication overhead by 75% and improves accuracy by 10% over benchmarks.
Abstract
Federated learning (FL) is a distributed learning framework where users train a global model by exchanging local model updates with a server instead of raw datasets, preserving data privacy and reducing communication overhead. However, the latency grows with the number of users and the model size, impeding the successful FL over traditional wireless networks with orthogonal access. Cell-free massive multiple-input multipleoutput (CFmMIMO) is a promising solution to serve numerous users on the same time/frequency resource with similar rates. This architecture greatly reduces uplink latency through spatial multiplexing but does not take application characteristics into account. In this paper, we co-optimize the physical layer with the FL application to mitigate the straggler effect. We introduce a novel adaptive mixed-resolution quantization scheme of the local gradient vector updates,…
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Taxonomy
TopicsCooperative Communication and Network Coding · Advanced MIMO Systems Optimization · Sparse and Compressive Sensing Techniques
