Arena: A Learning-based Synchronization Scheme for Hierarchical Federated Learning--Technical Report
Tianyu Qi, Yufeng Zhan, Peng Li, Jingcai Guo, Yuanqing Xia

TL;DR
This paper introduces Arena, a deep reinforcement learning-based synchronization scheme for hierarchical federated learning that adapts to device heterogeneity, non-IID data, and mobility, improving efficiency and accuracy.
Contribution
It proposes a novel learning-based approach to optimize synchronization timing in HFL, addressing heterogeneity and non-IID data challenges.
Findings
Improves training accuracy while reducing energy consumption.
Effectively handles device heterogeneity and mobility.
Demonstrates superior performance in real-world experiments.
Abstract
Federated learning (FL) enables collaborative model training among distributed devices without data sharing, but existing FL suffers from poor scalability because of global model synchronization. To address this issue, hierarchical federated learning (HFL) has been recently proposed to let edge servers aggregate models of devices in proximity, while synchronizing via the cloud periodically. However, a critical open challenge about how to make a good synchronization scheme (when devices and edges should be synchronized) is still unsolved. Devices are heterogeneous in computing and communication capability, and their data could be non-IID. No existing work can well synchronize various roles (\textit{e.g.}, devices and edges) in HFL to guarantee high learning efficiency and accuracy. In this paper, we propose a learning-based synchronization scheme for HFL systems. By collecting data such…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
