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Experiments in domain adaptation for statistical machine translation (2007)

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by Josh Schroeder
Venue:Prague, Czech Republic. Association for Computational Linguistics
Citations:124 - 2 self
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BibTeX

@INPROCEEDINGS{Schroeder07experimentsin,
    author = {Josh Schroeder},
    title = {Experiments in domain adaptation for statistical machine translation},
    booktitle = {Prague, Czech Republic. Association for Computational Linguistics},
    year = {2007},
    pages = {224--227}
}

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Abstract

The special challenge of the WMT 2007 shared task was domain adaptation. We took this opportunity to experiment with various ways of adapting a statistical machine translation systems to a special domain (here: news commentary), when most of the training data is from a different domain (here: European Parliament speeches). This paper also gives a description of the submission of the University of Edinburgh to the shared task. 1 Our framework: the Moses MT system The open source Moses (Koehn et al., 2007) MT system was originally developed at the University

Keyphrases

domain adaptation    statistical machine translation    training data    various way    open source moses    special domain    european parliament speech    news commentary    special challenge    mt system    statistical machine translation system    moses mt system    different domain   

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