Findings of the Covid-19 MLIA Machine Translation Task
F. Casacuberta
Alexandru Ceausu
K. Choukri
Miltos Deligiannis
Miguel Domingo
M. García-Martínez
Manuel Herranz
Guillaume Jacquet
V. Papavassiliou
Stelios Piperidis
Prokopis Prokopidis
Dimitris Roussis
M. Salah

Abstract
This work presents the results of the machine translation (MT) task from the Covid-19 MLIA @ Eval initiative, a community effort to improve the generation of MT systems focused on the current Covid-19 crisis. Nine teams took part in this event, which was divided in two rounds and involved seven different language pairs. Two different scenarios were considered: one in which only the provided data was allowed, and a second one in which the use of external resources was allowed. Overall, best approaches were based on multilingual models and transfer learning, with an emphasis on the importance of applying a cleaning process to the training data.
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