Neural Machine Translation from Simplified Translations
Text simplification aims at reducing the lexical, grammatical and structural complexity of a text while keeping the same meaning. In the context of machine translation, we introduce the idea of simplified translations in order to boost the learning ability of deep neural translation models. We condu...
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Zusammenfassung: | Text simplification aims at reducing the lexical, grammatical and structural
complexity of a text while keeping the same meaning. In the context of machine
translation, we introduce the idea of simplified translations in order to boost
the learning ability of deep neural translation models. We conduct preliminary
experiments showing that translation complexity is actually reduced in a
translation of a source bi-text compared to the target reference of the bi-text
while using a neural machine translation (NMT) system learned on the exact same
bi-text. Based on knowledge distillation idea, we then train an NMT system
using the simplified bi-text, and show that it outperforms the initial system
that was built over the reference data set. Performance is further boosted when
both reference and automatic translations are used to learn the network. We
perform an elementary analysis of the translated corpus and report accuracy
results of the proposed approach on English-to-French and English-to-German
translation tasks. |
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DOI: | 10.48550/arxiv.1612.06139 |