2022
DOI: 10.48550/arxiv.2206.00564
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Exploring Diversity in Back Translation for Low-Resource Machine Translation

Abstract: Back translation is one of the most widely used methods for improving the performance of neural machine translation systems. Recent research has sought to enhance the effectiveness of this method by increasing the 'diversity' of the generated translations. We argue that the definitions and metrics used to quantify 'diversity' in previous work have been insufficient. This work puts forward a more nuanced framework for understanding diversity in training data, splitting it into lexical diversity and syntactic di… Show more

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