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Efficient and Reliable Overlay Networks for Decentralized Federated Learning

12 December 2021
Yifan Hua
Kevin Miller
Andrea L. Bertozzi
Chao Qian
Bao Wang
    OOD
    FedML
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Abstract

We propose near-optimal overlay networks based on ddd-regular expander graphs to accelerate decentralized federated learning (DFL) and improve its generalization. In DFL a massive number of clients are connected by an overlay network, and they solve machine learning problems collaboratively without sharing raw data. Our overlay network design integrates spectral graph theory and the theoretical convergence and generalization bounds for DFL. As such, our proposed overlay networks accelerate convergence, improve generalization, and enhance robustness to clients failures in DFL with theoretical guarantees. Also, we present an efficient algorithm to convert a given graph to a practical overlay network and maintaining the network topology after potential client failures. We numerically verify the advantages of DFL with our proposed networks on various benchmark tasks, ranging from image classification to language modeling using hundreds of clients.

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