Training Mixed-Domain Translation Models via Federated Learning

P. Passban, T. Roosta, Rahul Gupta, Ankit R. Chadha, Clement Chung
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引用次数: 11

Abstract

Training mixed-domain translation models is a complex task that demands tailored architec- tures and costly data preparation techniques. In this work, we leverage federated learning (FL) in order to tackle the problem. Our investiga- tion demonstrates that with slight modifications in the training process, neural machine trans- lation (NMT) engines can be easily adapted when an FL-based aggregation is applied to fuse different domains. Experimental results also show that engines built via FL are able to perform on par with state-of-the-art baselines that rely on centralized training techniques.We evaluate our hypothesis in the presence of five datasets with different sizes, from different domains, to translate from German into English and discuss how FL and NMT can mutually benefit from each other. In addition to provid- ing benchmarking results on the union of FL and NMT, we also propose a novel technique to dynamically control the communication band- width by selecting impactful parameters during FL updates. This is a significant achievement considering the large size of NMT engines that need to be exchanged between FL parties.
通过联邦学习训练混合领域翻译模型
训练混合域翻译模型是一项复杂的任务,需要定制的架构和昂贵的数据准备技术。在这项工作中,我们利用联邦学习(FL)来解决这个问题。我们的研究表明,在训练过程中稍加修改,当基于fl的聚合应用于融合不同的域时,神经机器翻译(NMT)引擎可以很容易地适应。实验结果还表明,通过FL构建的引擎能够与依靠集中训练技术的最先进的基线相提并论。我们在来自不同领域的五个不同大小的数据集的存在下评估我们的假设,从德语翻译成英语,并讨论FL和NMT如何相互受益。除了提供FL和NMT结合的基准测试结果外,我们还提出了一种新的技术,通过在FL更新过程中选择有影响的参数来动态控制通信带宽。考虑到需要在FL各方之间交换的大型NMT引擎,这是一项重大成就。
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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