Hierarchical system combination for machine translation
Fei Huang, Kishore Papineni
EMNLP-CoNLL 2007
In this paper, we argue that n-gram language models are not sufficient to address word reordering required for Machine Translation. We propose a new distortion model that can be used with existing phrase-based SMT decoders to address those n-gram language model limitations. We present empirical results in Arabic to English Machine Translation that show statistically significant improvements when our proposed model is used. We also propose a novel metric to measure word order similarity (or difference) between any pair of languages based on word alignments. © 2006 Association for Computational Linguistics.
Fei Huang, Kishore Papineni
EMNLP-CoNLL 2007
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