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Linguistic Input Features Improve Neural Machine Translation

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arxiv 1606.02892 v2 pith:ZEBBBETC submitted 2016-06-09 cs.CL

Linguistic Input Features Improve Neural Machine Translation

classification cs.CL
keywords featuresneurallinguisticinputmachinetranslationimproveaccording
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Neural machine translation has recently achieved impressive results, while using little in the way of external linguistic information. In this paper we show that the strong learning capability of neural MT models does not make linguistic features redundant; they can be easily incorporated to provide further improvements in performance. We generalize the embedding layer of the encoder in the attentional encoder--decoder architecture to support the inclusion of arbitrary features, in addition to the baseline word feature. We add morphological features, part-of-speech tags, and syntactic dependency labels as input features to English<->German, and English->Romanian neural machine translation systems. In experiments on WMT16 training and test sets, we find that linguistic input features improve model quality according to three metrics: perplexity, BLEU and CHRF3. An open-source implementation of our neural MT system is available, as are sample files and configurations.

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