Understanding the Impact of UGC Specificities on Translation Quality

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Abstract

This work takes a critical look at the evaluation of user-generated content automatic translation, the well-known specificities of which raise many challenges for MT. Our analyses show that measuring the average-case performance using a standard metric on a UGC test set falls far short of giving a reliable image of the UGC translation quality. That is why we introduce a new data set for the evaluation of UGC translation in which UGC specificities have been manually annotated using a fine-grained typology. Using this data set, we conduct several experiments to measure the impact of different kinds of UGC specificities on translation quality, more precisely than previously possible.

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APA

Núñez, J. C. R., Seddah, D., & Wisniewski, G. (2021). Understanding the Impact of UGC Specificities on Translation Quality. In W-NUT 2021 - 7th Workshop on Noisy User-Generated Text, Proceedings of the Conference (pp. 189–198). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2021.wnut-1.22

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