Wenyi Tang


2023

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A Dual Reinforcement Method for Data Augmentation using Middle Sentences for Machine Translation
Wenyi Tang | Yves Lepage
Proceedings of Machine Translation Summit XIX, Vol. 1: Research Track

This paper presents an approach to enhance the quality of machine translation by leveraging middle sentences as pivot points and employing dual reinforcement learning. Conventional methods for generating parallel sentence pairs for machine translation rely on parallel corpora, which may be scarce, resulting in limitations in translation quality. In contrast, our proposed method entails training two machine translation models in opposite directions, utilizing the middle sentence as a bridge for a virtuous feedback loop between the two models. This feedback loop resembles reinforcement learning, facilitating the models to make informed decisions based on mutual feedback. Experimental results substantiate that our proposed method significantly improves machine translation quality.
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