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Combining multi-domain statistical machine translation models using automatic classifiers

Authors :
Banerjee, P.
Du, J.
Li, B.
Naskar, S. Kr
Andy Way
Genabith, J.
Source :
Scopus-Elsevier
Publication Year :
2010
Publisher :
Association for Machine Translation in the Americas, 2010.

Abstract

This paper presents a set of experiments on Domain Adaptation of Statistical Machine Translation systems. The experiments focus on Chinese-English and two domain-specific corpora. The paper presents a novel approach for combining multiple domain-trained translation models to achieve improved translation quality for both domain-specific as well as combined sets of sentences. We train a statistical classifier to classify sentences according to the appropriate domain and utilize the corresponding domain-specific MT models to translate them. Experimental results show that the method achieves a statistically significant absolute improvement of 1.58 BLEU (2.86% relative improvement) score over a translation model trained on combined data, and considerable improvements over a model using multiple decoding paths of the Moses decoder, for the combined domain test set. Furthermore, even for domain-specific test sets, our approach works almost as well as dedicated domain-specific models and perfect classification.

Subjects

Subjects :
Machine translating

Details

Language :
English
Database :
OpenAIRE
Journal :
Scopus-Elsevier
Accession number :
edsair.dedup.wf.001..16f5f75371bc491006943c12d8ca0bc4