TL;DR
This paper introduces a multi-layer federated learning framework that leverages device-to-device communications in large-scale fog networks, improving convergence analysis and resource efficiency over traditional star-topology models.
Contribution
It develops a novel multi-stage hybrid federated learning model considering multi-layer network structures and D2D interactions, with convergence bounds and adaptive control algorithms.
Findings
MH-FL achieves better resource utilization.
Convergence bounds depend on network topology.
Distributed control adapts D2D rounds effectively.
Abstract
Federated learning has generated significant interest, with nearly all works focused on a "star" topology where nodes/devices are each connected to a central server. We migrate away from this architecture and extend it through the network dimension to the case where there are multiple layers of nodes between the end devices and the server. Specifically, we develop multi-stage hybrid federated learning (MH-FL), a hybrid of intra- and inter-layer model learning that considers the network as a multi-layer cluster-based structure. MH-FL considers the topology structures among the nodes in the clusters, including local networks formed via device-to-device (D2D) communications, and presumes a semi-decentralized architecture for federated learning. It orchestrates the devices at different network layers in a collaborative/cooperative manner (i.e., using D2D interactions) to form local…
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