Back to Search Start Over

Adapting machine translation education to the neural era : a case study of MT quality assessment

Authors :
Macken, Lieve
Vanroy, Bram
Tezcan, Arda
Nurminen, Mary
Brenner, Judith
Koponen, Maarit
Latomaa, Sirkku
Mikhailov, Mikhail
Schierl, Frederike
Ranasinghe, Tharindu
Vanmassenhove, Eva
Alvarez Vidal, Sergi
Aranberri, Nora
Nunziatini, Mara
Parra Escartín, Carla
Forcada, Mikel
Popovic, Maja
Scarton, Carolina
Moniz, Helena
Source :
Proceedings of the 24th Annual Conference of the European Association for Machine Translation
Publication Year :
2023
Publisher :
European Association for Machine Translation (EAMT), 2023.

Abstract

The use of automatic evaluation metrics to is well established in the translation industry. Whereas it is relatively easy to cover the word- and character-based metrics in an MT course, it is less obvious to integrate the newer neural metrics. In this paper we discuss how we introduced the topic of MT quality assessment in a course for translation students. We selected three English source texts, each having a different difficulty level and style, and let the students translate the texts into their L1 and reflect upon translation difficulty. Afterwards, the students were asked to assess MT quality for the same texts using different methods and to critically reflect upon obtained results. The students had access to the MATEO web interface, which contains wordand character-based metrics as well as neural metrics. The students used two different reference translations: their own translations and professional translations of the three texts. We not only synthesise the comments of the students, but also present the results of some cross-lingual analyses on nine different language pairs.

Subjects

Subjects :
Languages and Literatures

Details

Language :
English
ISBN :
978-952-03-2947-1
ISBNs :
9789520329471
Database :
OpenAIRE
Journal :
Proceedings of the 24th Annual Conference of the European Association for Machine Translation
Accession number :
edsair.od.......330..ef156d9018881c2856be3356397d8775