SOTAVerified

Bi-SimCut: A Simple Strategy for Boosting Neural Machine Translation

2022-06-06NAACL 2022Code Available1· sign in to hype

Pengzhi Gao, Zhongjun He, Hua Wu, Haifeng Wang

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

We introduce Bi-SimCut: a simple but effective training strategy to boost neural machine translation (NMT) performance. It consists of two procedures: bidirectional pretraining and unidirectional finetuning. Both procedures utilize SimCut, a simple regularization method that forces the consistency between the output distributions of the original and the cutoff sentence pairs. Without leveraging extra dataset via back-translation or integrating large-scale pretrained model, Bi-SimCut achieves strong translation performance across five translation benchmarks (data sizes range from 160K to 20.2M): BLEU scores of 31.16 for en -> de and 38.37 for de -> en on the IWSLT14 dataset, 30.78 for en -> de and 35.15 for de -> en on the WMT14 dataset, and 27.17 for zh -> en on the WMT17 dataset. SimCut is not a new method, but a version of Cutoff (Shen et al., 2020) simplified and adapted for NMT, and it could be considered as a perturbation-based method. Given the universality and simplicity of SimCut and Bi-SimCut, we believe they can serve as strong baselines for future NMT research.

Tasks

Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
IWSLT2014 English-GermanBi-SimCutBLEU score31.16Unverified
IWSLT2014 English-GermanSimCutBLEU score30.98Unverified
IWSLT2014 German-EnglishBi-SimCutBLEU score38.37Unverified
IWSLT2014 German-EnglishSimCutBLEU score37.81Unverified
WMT2014 English-GermanSimCutBLEU score30.56Unverified
WMT2014 English-GermanBi-SimCutBLEU score30.78Unverified
WMT2014 German-EnglishBi-SimCutBLEU score35.15Unverified
WMT2014 German-EnglishSimCutBLEU score34.86Unverified

Reproductions