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Reranking machine translation hypotheses with structured and web-based language models
2007
2007 IEEE Workshop on Automatic Speech Recognition & Understanding (ASRU)
In this paper, we investigate the use of linguistically motivated and computationally efficient structured language models for reranking N-best hypotheses in a statistical machine translation system. These language models, developed from Constraint Dependency Grammar parses, tightly integrate knowledge of words, morphological and lexical features, and syntactic dependency constraints. Two structured language models are applied for N-best rescoring, one is an almost-parsing language model, and
doi:10.1109/asru.2007.4430102
dblp:conf/asru/WangSZ07
fatcat:jbp23tquz5gpfj2srzohlqzpiu