Impact of Domain-Adapted Multilingual Neural Machine Translation in the Medical Domain
Rios, Miguel, Chereji, Raluca-Maria, Secara, Alina, Ciobanu, Dragos
–arXiv.org Artificial Intelligence
Multilingual Neural Machine Translation (MNMT) models leverage many language pairs during training to improve translation quality for low-resource languages by transferring knowledge from high-resource languages. We study the quality of a domain-adapted MNMT model in the medical domain for English-Romanian with automatic metrics and a human error typology annotation which includes terminology-specific error categories. We compare the out-of-domain MNMT with the in-domain adapted MNMT. The in-domain MNMT model outperforms the out-of-domain MNMT in all measured automatic metrics and produces fewer terminology errors.
arXiv.org Artificial Intelligence
Dec-5-2022
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