基于动量优化器的多点训练联邦梯度平均。

Lecture notes-monograph series Pub Date : 2020-10-01 Epub Date: 2020-09-26 DOI:10.1007/978-3-030-60548-3_17
Samuel W Remedios, John A Butman, Bennett A Landman, Dzung L Pham
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引用次数: 12

摘要

人工神经网络的多站点训练方法对医疗机器学习社区特别感兴趣,主要是由于机构之间数据共享的困难。然而,当代的多站点技术,如权重平均和循环权重传递,为了简化实现,在理论上做出了牺牲。在本文中,我们实现了联邦梯度平均(FGA),这是一种不需要数据传输的联邦学习的变体,在数学上相当于使用集中数据的单站点训练。我们评估了两种场景:一个模拟的多站点数据集用于MNIST手写数字分类,一个真实的多站点数据集用于头部CT出血分割。我们比较了联邦梯度平均与单站点训练,联邦加权平均(FWA)和循环权转移。在MNIST任务中,我们证明了使用FGA训练的结果等同于集中式单点训练的权值集。在出血分割任务中,我们表明,由于FGA能够利用基于动量的优化,它比FWA和循环权转移平均取得了更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated Gradient Averaging for Multi-Site Training with Momentum-Based Optimizers.

Multi-site training methods for artificial neural networks are of particular interest to the medical machine learning community primarily due to the difficulty of data sharing between institutions. However, contemporary multi-site techniques such as weight averaging and cyclic weight transfer make theoretical sacrifices to simplify implementation. In this paper, we implement federated gradient averaging (FGA), a variant of federated learning without data transfer that is mathematically equivalent to single site training with centralized data. We evaluate two scenarios: a simulated multi-site dataset for handwritten digit classification with MNIST and a real multi-site dataset with head CT hemorrhage segmentation. We compare federated gradient averaging to single site training, federated weight averaging (FWA), and cyclic weight transfer. In the MNIST task, we show that training with FGA results in a weight set equivalent to centralized single site training. In the hemorrhage segmentation task, we show that FGA achieves on average superior results to both FWA and cyclic weight transfer due to its ability to leverage momentum-based optimization.

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