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Multi-Layer Hierarchical Federated Learning with Quantization

Published: May 13, 2025 | arXiv ID: 2505.08145v1

By: Seyed Mohammad Azimi-Abarghouyi, Carlo Fischione

Potential Business Impact:

Lets many computers learn together better.

Business Areas:
Quantum Computing Science and Engineering

Almost all existing hierarchical federated learning (FL) models are limited to two aggregation layers, restricting scalability and flexibility in complex, large-scale networks. In this work, we propose a Multi-Layer Hierarchical Federated Learning framework (QMLHFL), which appears to be the first study that generalizes hierarchical FL to arbitrary numbers of layers and network architectures through nested aggregation, while employing a layer-specific quantization scheme to meet communication constraints. We develop a comprehensive convergence analysis for QMLHFL and derive a general convergence condition and rate that reveal the effects of key factors, including quantization parameters, hierarchical architecture, and intra-layer iteration counts. Furthermore, we determine the optimal number of intra-layer iterations to maximize the convergence rate while meeting a deadline constraint that accounts for both communication and computation times. Our results show that QMLHFL consistently achieves high learning accuracy, even under high data heterogeneity, and delivers notably improved performance when optimized, compared to using randomly selected values.

Page Count
16 pages

Category
Computer Science:
Machine Learning (CS)