Straggler-Resilient Differentially-Private Decentralized Learning
Abstract
We consider the straggler problem in decentralized learning over a logical ring while preserving user data privacy. Especially, we extend the recently proposed framework of differential privacy (DP) amplification by decentralization by Cyffers and Bellet to include overall training latency--comprising both computation and communication latency. Analytical results on both the convergence speed and the DP level are derived for both a skipping scheme (which ignores the stragglers after a timeout) and a baseline scheme that waits for each node to finish before the training continues. A trade-off between overall training latency, accuracy, and privacy, parameterized by the timeout of the skipping scheme, is identified and empirically validated for logistic regression on a real-world dataset and for image classification using the MNIST and CIFAR-10 datasets.
Cite
@article{arxiv.2212.03080,
title = {Straggler-Resilient Differentially-Private Decentralized Learning},
author = {Yauhen Yakimenka and Chung-Wei Weng and Hsuan-Yin Lin and Eirik Rosnes and Jörg Kliewer},
journal= {arXiv preprint arXiv:2212.03080},
year = {2024}
}
Comments
To appear in the IEEE Journal on Selected Areas in Information Theory (special issue on Information-Theoretic Methods for Trustworthy and Reliable Machine Learning)