Conference Publication Details
Mandatory Fields
Jinhua Du and Andy Way
MT Summit XVI - 16th Machine Translation Summit
Neural Pre-Translation for Hybrid Machine Translation
2017
September
Published
0
()
Optional Fields
27
40
Nagoya, Japan
18-SEP-17
22-SEP-17
Hybrid machine translation (HMT) takes advantage of different types of machine translation (MT) systems to improve translation performance. Neural machine translation (NMT) can produce more fluent translations while phrase-based statistical machine translation (PB-SMT) can produce adequate results primarily due to the contribution of the translation model. In this paper, we propose a cascaded hybrid framework to combine NMT and PB-SMT to improve translation quality. Specifically, we first use the trained NMT system to pre-translate the training data, and then employ the pre-translated training data to build an SMT system and tune parameters using the pre-translated development set. Finally, the SMT system is utilised as a post-processing step to re-decode the pre-translated test set and produce the final result. Experiments conducted on Japanese!English and Chinese!English show that the proposed cascaded hybrid framework can significantly improve performance by 2.38 BLEU points and 4.22 BLEU points, respectively, compared to the baseline NMT system
http://www.computing.dcu.ie/~away/PUBS/2017/neuralpretranslation4HMT.pdf
Grant Details
Science Foundation Ireland (SFI)
13/RC/2106