A Study of Syntactic Multi-Modality in Non-Autoregressive Machine Translation

Kexun Zhang, Rui Wang, Xu Tan, Junliang Guo, Yi Ren, Tao Qin, Tie-Yan Liu
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引用次数: 3

Abstract

It is difficult for non-autoregressive translation (NAT) models to capture the multi-modal distribution of target translations due to their conditional independence assumption, which is known as the “multi-modality problem”, including the lexical multi-modality and the syntactic multi-modality. While the first one has been well studied, the syntactic multi-modality brings severe challenges to the standard cross entropy (XE) loss in NAT and is understudied. In this paper, we conduct a systematic study on the syntactic multi-modality problem. Specifically, we decompose it into short- and long-range syntactic multi-modalities and evaluate several recent NAT algorithms with advanced loss functions on both carefully designed synthesized datasets and real datasets. We find that the Connectionist Temporal Classification (CTC) loss and the Order-Agnostic Cross Entropy (OAXE) loss can better handle short- and long-range syntactic multi-modalities respectively. Furthermore, we take the best of both and design a new loss function to better handle the complicated syntactic multi-modality in real-world datasets. To facilitate practical usage, we provide a guide to using different loss functions for different kinds of syntactic multi-modality.
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非自回归机器翻译中句法多模态的研究
非自回归翻译(NAT)模型由于其条件独立假设而难以捕捉译文的多模态分布,即所谓的“多模态问题”,包括词汇多模态和句法多模态。虽然前者已经得到了很好的研究,但句法多模态给NAT中的标准交叉熵(XE)损失带来了严峻的挑战,研究尚不充分。本文对句法多模态问题进行了系统的研究。具体而言,我们将其分解为短期和长期语法多模态,并在精心设计的合成数据集和实际数据集上评估了几种具有高级损失函数的最新NAT算法。我们发现连接时间分类(CTC)损失和顺序不可知交叉熵(OAXE)损失分别可以更好地处理短时间和长时间的句法多模态。此外,我们将两者的优点结合起来,设计了一个新的损失函数来更好地处理真实数据集中复杂的语法多模态。为了方便实际使用,我们提供了针对不同类型的语法多模态使用不同损失函数的指南。
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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