徘徊者-弹性差异化私有分散学习

Yauhen Yakimenka;Chung-Wei Weng;Hsuan-Yin Lin;Eirik Rosnes;Jörg Kliewer
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引用次数: 0

摘要

我们考虑了逻辑环上分散学习中的游离者问题,同时保留了用户数据隐私。特别是,我们扩展了 Cyffers 和 Bellet 最近提出的通过分散化放大差分隐私(DP)的框架,将整体训练延迟(包括计算延迟和通信延迟)包括在内。我们得出了跳过方案(超时后忽略落伍者)和基线方案(等待每个节点完成训练后再继续训练)的收敛速度和 DP 水平的分析结果。通过跳过方案的超时参数,确定了整体训练延迟、准确性和隐私之间的权衡,并在实际数据集的逻辑回归以及使用 MNIST 和 CIFAR-10 数据集的图像分类中进行了经验验证。
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Straggler-Resilient Differentially Private Decentralized Learning
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.
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