Evaluating MT for massive open online courses: A multifaceted comparison between PBSM and NMT systems
This article reports a multifaceted comparison between statistical and neural machine translation (MT) systems that were developed for translation of data from massive open online courses (MOOCs). The study uses four language pairs: English to German, Greek, Portuguese, and Russian. Translation qual...
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Published in: | Machine translation Vol. 32; no. 3; pp. 255 - 278 |
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Main Authors: | , , , , , |
Format: | Journal Article |
Language: | English |
Published: |
Springer
01-09-2018
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Online Access: | Get full text |
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Summary: | This article reports a multifaceted comparison between statistical and neural machine translation (MT) systems that were developed for translation of data from massive open online courses (MOOCs). The study uses four language pairs: English to German, Greek, Portuguese, and Russian. Translation quality is evaluated using automatic metrics and human evaluation, carried out by professional translators. Results show that neural MT is preferred in side-by-side ranking, and is found to contain fewer overall errors. Results are less clear-cut for some error categories, and for temporal and technical post-editing effort. In addition, results are reported based on sentence length, showing advantages and disadvantages depending on the particular language pair and MT paradigm. |
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ISSN: | 0922-6567 1573-0573 |