GTCOM neural machine translation systems for WMT19

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Abstract

This paper describes the Global Tone Communication Co., Ltd.'s submission of the WMT19 shared news translation task. We participate in six directions: English to (Gujarati, Lithuanian and Finnish) and (Gujarati, Lithuanian and Finnish) to English. Further, we get the best BLEU scores in the directions of English to Gujarati and Lithuanian to English (28.2 and 36.3 respectively) among all the participants. The submitted systems mainly focus on back-translation, knowledge distillation and reranking to build a competitive model for this task. Also, we apply language model to filter monolingual data, back-translated data and parallel data. The techniques we apply for data filtering include filtering by rules, language models. Besides, We conduct several experiments to validate different knowledge distillation techniques and right-to-left (R2L) reranking.

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Bei, C., Zong, H., Yuan, C., Liu, Q., & Fan, B. (2019). GTCOM neural machine translation systems for WMT19. In WMT 2019 - 4th Conference on Machine Translation, Proceedings of the Conference (Vol. 2, pp. 116–121). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/w19-5305

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