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HUME: Human UCCA-Based Evaluation of Machine Translation

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arxiv 1607.00030 v2 pith:3X6TVD5C submitted 2016-06-30 cs.CL

HUME: Human UCCA-Based Evaluation of Machine Translation

classification cs.CL
keywords evaluationhumanhumesemantictranslationadequacymachineoutput
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Human evaluation of machine translation normally uses sentence-level measures such as relative ranking or adequacy scales. However, these provide no insight into possible errors, and do not scale well with sentence length. We argue for a semantics-based evaluation, which captures what meaning components are retained in the MT output, thus providing a more fine-grained analysis of translation quality, and enabling the construction and tuning of semantics-based MT. We present a novel human semantic evaluation measure, Human UCCA-based MT Evaluation (HUME), building on the UCCA semantic representation scheme. HUME covers a wider range of semantic phenomena than previous methods and does not rely on semantic annotation of the potentially garbled MT output. We experiment with four language pairs, demonstrating HUME's broad applicability, and report good inter-annotator agreement rates and correlation with human adequacy scores.

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