Edinburgh Neural Machine Translation Systems For WMT 16 | Awesome LLM Papers Contribute to Awesome LLM Papers

Edinburgh Neural Machine Translation Systems For WMT 16

Rico Sennrich, Barry Haddow, Alexandra Birch . Proceedings of the First Conference on Machine Translation: Volume 2, Shared Task Papers 2016 – 471 citations

[Paper]   Search on Google Scholar   Search on Semantic Scholar
Uncategorized WMT

We participated in the WMT 2016 shared news translation task by building neural translation systems for four language pairs, each trained in both directions: English<->Czech, English<->German, English<->Romanian and English<->Russian. Our systems are based on an attentional encoder-decoder, using BPE subword segmentation for open-vocabulary translation with a fixed vocabulary. We experimented with using automatic back-translations of the monolingual News corpus as additional training data, pervasive dropout, and target-bidirectional models. All reported methods give substantial improvements, and we see improvements of 4.3–11.2 BLEU over our baseline systems. In the human evaluation, our systems were the (tied) best constrained system for 7 out of 8 translation directions in which we participated.

Similar Work