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Rapid Adaptation of Neural Machine Translation to New Languages

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arxiv 1808.04189 v1 pith:GGPPOLL4 submitted 2018-08-13 cs.CL

Rapid Adaptation of Neural Machine Translation to New Languages

classification cs.CL
keywords adaptationdatableueffectiveexperimentslanguagesmachinemassively
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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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 a number of strategies, leading to a novel, simple, yet effective method of "similar-language regularization", where we jointly train on both a LRL of interest and a similar high-resourced language to prevent over-fitting to small LRL data. Experiments demonstrate that massively multilingual models, even without any explicit adaptation, are surprisingly effective, achieving BLEU scores of up to 15.5 with no data from the LRL, and that the proposed similar-language regularization method improves over other adaptation methods by 1.7 BLEU points average over 4 LRL settings. Code to reproduce experiments at https://github.com/neubig/rapid-adaptation

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