Publication: Mixture-modeling with unsupervised clusters for domain adaptation in statistical machine translation
Mixture-modeling with unsupervised clusters for domain adaptation in statistical machine translation
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Sennrich, R. (2012). Mixture-modeling with unsupervised clusters for domain adaptation in statistical machine translation. 185–192. http://hltshare.fbk.eu/EAMT2012/html/Papers/42.pdf
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In Statistical Machine Translation, in-domain and out-of-domain training data are not always clearly delineated. This paper investigates how we can still use mixture-modeling techniques for domain adaptation in such cases. We apply unsupervised clustering methods to split the original training set, and then use mixture-modeling techniques to build a model adapted to a given target domain. We show that this approach improves performance over an unadapted baseline, and several alternative domain adaptation methods.
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Sennrich, R. (2012). Mixture-modeling with unsupervised clusters for domain adaptation in statistical machine translation. 185–192. http://hltshare.fbk.eu/EAMT2012/html/Papers/42.pdf