articleJan 1, 2013GOLD OA
Recurrent Continuous Translation Models
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Abstract
We introduce a class of probabilistic continuous translation models called Recurrent Continuous Translation Models that are purely based on continuous representations for words, phrases and sentences and do not rely on alignments or phrasal translation units.The models have a generation and a conditioning aspect.The generation of the translation is modelled with a target Recurrent Language Model, whereas the conditioning on the source sentence is modelled with a Convolutional Sentence Model.Through various experiments, we show first that our models obtain a perplexity with respect to gold translations that is > 43% lower than that of stateof-the-art alignment-based translation models.Secondly, we show that…
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Keywords
- Perplexity
- Computer science
- Sentence
- Translation (biology)
- Natural language processing
- Artificial intelligence
- Syntax
- Transfer-based machine translation
UN Sustainable Development Goals
- Quality Education
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