Machine Translation Quality Estimation: Applications And Future Perspectives

TRANSLATION QUALITY ASSESSMENT: FROM PRINCIPLES TO PRACTICE(2018)

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摘要
Predicting the quality of machine translation (MT) output is a topic that has been attracting significant attention. By automatically distinguishing bad from good quality translations, it has the potential to makeMT more useful in a number of applications. In this chapter we review various practical applications where quality estimation (QE) at sentence level has shown positive results: filtering low quality cases from post-editing, selecting the best MT system when multiple options are available, improving MT performance by selecting additional parallel data, and sampling for quality assurance by humans. Finally, we discuss QE at other levels (word and document) and general challenges in the field, as well as perspectives for novel directions and applications.
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关键词
Translation quality assessment, Principles to practice, Translation errors, Translation models, Post-editing effort, Statistical machine translation, Machine translation system ranking, Machine translation system selection, Quality estimation
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