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Improve the Evaluation of Fluency Using Entropy for Machine Translation Evaluation Metrics

Authors :
Yu, Hui
Wu, Xiaofeng
Jiang, Wenbin
Liu, Qun
Lin, Shouxun
Publication Year :
2015

Abstract

The widely-used automatic evaluation metrics cannot adequately reflect the fluency of the translations. The n-gram-based metrics, like BLEU, limit the maximum length of matched fragments to n and cannot catch the matched fragments longer than n, so they can only reflect the fluency indirectly. METEOR, which is not limited by n-gram, uses the number of matched chunks but it does not consider the length of each chunk. In this paper, we propose an entropy-based method, which can sufficiently reflect the fluency of translations through the distribution of matched words. This method can easily combine with the widely-used automatic evaluation metrics to improve the evaluation of fluency. Experiments show that the correlations of BLEU and METEOR are improved on sentence level after combining with the entropy-based method on WMT 2010 and WMT 2012.<br />Comment: 5 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1508.02225
Document Type :
Working Paper