• Computer Science
  • Published in COLING 2010

Improving Reordering with Linguistically Informed Bilingual n-grams

@inproceedings{Crego2010ImprovingRW,
  title={Improving Reordering with Linguistically Informed Bilingual n-grams},
  author={Josep Maria Crego and François Yvon},
  booktitle={COLING},
  year={2010}
}
We present a new reordering model estimated as a standard n-gram language model with units built from morpho-syntactic information of the source and target languages. It can be seen as a model that translates the morpho-syntactic structure of the input sentence, in contrast to standard translation models which take care of the surface word forms. We take advantage from the fact that such units are less sparse than standard translation units to increase the size of bilingual context that is… CONTINUE READING

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