Back to Search Start Over

Alternated Training with Synthetic and Authentic Data for Neural Machine Translation

Authors :
Jiao, Rui
Yang, Zonghan
Sun, Maosong
Liu, Yang
Jiao, Rui
Yang, Zonghan
Sun, Maosong
Liu, Yang
Publication Year :
2021

Abstract

While synthetic bilingual corpora have demonstrated their effectiveness in low-resource neural machine translation (NMT), adding more synthetic data often deteriorates translation performance. In this work, we propose alternated training with synthetic and authentic data for NMT. The basic idea is to alternate synthetic and authentic corpora iteratively during training. Compared with previous work, we introduce authentic data as guidance to prevent the training of NMT models from being disturbed by noisy synthetic data. Experiments on Chinese-English and German-English translation tasks show that our approach improves the performance over several strong baselines. We visualize the BLEU landscape to further investigate the role of authentic and synthetic data during alternated training. From the visualization, we find that authentic data helps to direct the NMT model parameters towards points with higher BLEU scores and leads to consistent translation performance improvement.<br />Comment: ACL 2021, Short Findings

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1269558079
Document Type :
Electronic Resource