English

MvSR-NAT: Multi-view Subset Regularization for Non-Autoregressive Machine Translation

Computation and Language 2021-08-20 v1

Abstract

Conditional masked language models (CMLM) have shown impressive progress in non-autoregressive machine translation (NAT). They learn the conditional translation model by predicting the random masked subset in the target sentence. Based on the CMLM framework, we introduce Multi-view Subset Regularization (MvSR), a novel regularization method to improve the performance of the NAT model. Specifically, MvSR consists of two parts: (1) \textit{shared mask consistency}: we forward the same target with different mask strategies, and encourage the predictions of shared mask positions to be consistent with each other. (2) \textit{model consistency}, we maintain an exponential moving average of the model weights, and enforce the predictions to be consistent between the average model and the online model. Without changing the CMLM-based architecture, our approach achieves remarkable performance on three public benchmarks with 0.36-1.14 BLEU gains over previous NAT models. Moreover, compared with the stronger Transformer baseline, we reduce the gap to 0.01-0.44 BLEU scores on small datasets (WMT16 RO\leftrightarrowEN and IWSLT DE\rightarrowEN).

Keywords

Cite

@article{arxiv.2108.08447,
  title  = {MvSR-NAT: Multi-view Subset Regularization for Non-Autoregressive Machine Translation},
  author = {Pan Xie and Zexian Li and Xiaohui Hu},
  journal= {arXiv preprint arXiv:2108.08447},
  year   = {2021}
}
R2 v1 2026-06-24T05:14:20.656Z