Rapid Adaptation of Neural Machine Translation to New Languages
Rapid Adaptation of Neural Machine Translation to New Languages
This paper examines the problem of adapting neural machine translation systems to new, low-resourced languages (LRLs) as effectively and rapidly as possible. We propose methods based on starting with massively multilingual "seed models", which can be trained ahead-of-time, and then continuing training on data related to the LRL. We contrast …