Jeonghyeok Park


2021

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Enhancing Language Generation with Effective Checkpoints of Pre-trained Language Model
Jeonghyeok Park | Hai Zhao
Findings of the Association for Computational Linguistics: ACL-IJCNLP 2021

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Papago’s Submissions to the WMT21 Triangular Translation Task
Jeonghyeok Park | Hyunjoong Kim | Hyunchang Cho
Proceedings of the Sixth Conference on Machine Translation

This paper describes Naver Papago’s submission to the WMT21 shared triangular MT task to enhance the non-English MT system with tri-language parallel data. The provided parallel data are Russian-Chinese (direct), Russian-English (indirect), and English-Chinese (indirect) data. This task aims to improve the quality of the Russian-to-Chinese MT system by exploiting the direct and indirect parallel re- sources. The direct parallel data is noisy data crawled from the web. To alleviate the issue, we conduct extensive experiments to find effective data filtering methods. With the empirical knowledge that the performance of bilingual MT is better than multi-lingual MT and related experiment results, we approach this task as bilingual MT, where the two indirect data are transformed to direct data. In addition, we use the Transformer, a robust translation model, as our baseline and integrate several techniques, averaging checkpoints, model ensemble, and re-ranking. Our final system provides a 12.7 BLEU points improvement over a baseline system on the WMT21 triangular MT development set. In the official evalua- tion of the test set, ours is ranked 2nd in terms of BLEU scores.