Federated Learning Beyond the Star: Local D2D Model Consensus with Global Cluster Sampling
Abstract
Federated learning has emerged as a popular technique for distributing model training across the network edge. Its learning architecture is conventionally a star topology between the devices and a central server. In this paper, we propose two timescale hybrid federated learning (TT-HF), which migrates to a more distributed topology via device-to-device (D2D) communications. In TT-HF, local model training occurs at devices via successive gradient iterations, and the synchronization process occurs at two timescales: (i) macro-scale, where global aggregations are carried out via device-server interactions, and (ii) micro-scale, where local aggregations are carried out via D2D cooperative consensus formation in different device clusters. Our theoretical analysis reveals how device, cluster, and network-level parameters affect the convergence of TT-HF, and leads to a set of conditions under which a convergence rate of O(1/t) is guaranteed. Experimental results demonstrate the improvements in convergence and utilization that can be obtained by TT-HF over state-of-the-art federated learning baselines.
Cite
@article{arxiv.2109.03350,
title = {Federated Learning Beyond the Star: Local D2D Model Consensus with Global Cluster Sampling},
author = {Frank Po-Chen Lin and Seyyedali Hosseinalipour and Sheikh Shams Azam and Christopher G. Brinton and Nicolò Michelusi},
journal= {arXiv preprint arXiv:2109.03350},
year = {2021}
}
Comments
This paper has been published in IEEE Global Communications Conference 2021 (Globecom). arXiv admin note: substantial text overlap with arXiv:2103.10481