Labelled Dependencies in Machine Translation Evaluation.

StatMT '07 Proceedings of the Second Workshop on Statistical Machine Translation(2007)

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摘要
We present a method for evaluating the quality of Machine Translation (MT) output, using labelled dependencies produced by a Lexical-Functional Grammar (LFG) parser. Our dependency-based method, in contrast to most popular string-based evaluation metrics, does not unfairly penalize perfectly valid syntactic variations in the translation, and the addition of WordNet provides a way to accommodate lexical variation. In comparison with other metrics on 16,800 sentences of Chinese-English newswire text, our method reaches high correlation with human scores.
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关键词
dependency-based method,popular string-based evaluation metrics,Chinese-English newswire text,Lexical-Functional Grammar,Machine Translation,high correlation,human score,labelled dependency,lexical variation,valid syntactic variation,machine translation evaluation
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