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Meteor++ 2.0: Adopt Syntactic Level Paraphrase Knowledge into Machine Translation Evaluation

机译:Meteor ++ 2.0:在机器翻译评估中采用句法级别复述知识

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This paper describes Meteor++ 2.0, our submission to the WMT19 Metric Shared Task. The well known Meteor metric improves machine translation evaluation by introducing paraphrase knowledge. However, it only focuses on the lexical level and utilizes consecutive n-grams paraphrases. In this work, we take into consideration syntactic level paraphrase knowledge, which sometimes may be skip-grams. We describe how such knowledge can be extracted from Paraphrase Database (PPDB) and integrated into Meteor-based metrics. Experiments on WMT15 and WMT17 evaluation datasets show that the newly proposed metric outperforms all previous versions of Meteor.
机译:本文介绍了Meteor ++ 2.0,这是我们提交给WMT19 Metric Shared Task的内容。众所周知的Meteor度量标准通过引入复述知识来改善机器翻译评估。但是,它仅关注词汇级别,并使用连续的n元语法释义。在这项工作中,我们考虑了句法级别的复述知识,有时这可能是跳跃语法。我们描述了如何从复述数据库(PPDB)中提取此类知识并将其集成到基于流星的指标中。在WMT15和WMT17评估数据集上进行的实验表明,新提出的指标优于所有以前版本的Meteor。

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