Establishing the Parameters of a Decentralized Neural Machine Learning Model

Aline Ioste, M. Finger
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Abstract

The decentralized machine learning models face a bottleneck of high-cost communication. Trade-offs between communication and accuracy in decentralized learning have been addressed by theoretical approaches. Here we propose a new practical model that performs several local training operations before a communication round, choosing among several options. We show how to determine a configuration that dramatically reduces the communication burden between participant hosts, with a reduction in communication practice showing robust and accurate results both to IID and NON-IID data distributions.
分散神经机器学习模型参数的建立
分散的机器学习模型面临着高成本通信的瓶颈。分散学习中沟通和准确性之间的权衡已经通过理论方法得到解决。在这里,我们提出了一个新的实用模型,在一轮通信之前执行几个局部训练操作,从几个选项中进行选择。我们展示了如何确定一种配置,这种配置可以极大地减少参与者主机之间的通信负担,同时减少通信实践,对IID和非IID数据分布都显示出稳健和准确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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