2024
DOI: 10.3390/app14083442
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A Mongolian–Chinese Neural Machine Translation Method Based on Semantic-Context Data Augmentation

Huinuan Zhang,
Yatu Ji,
Nier Wu
et al.

Abstract: Neural machine translation (NMT) typically relies on a substantial number of bilingual parallel corpora for effective training. Mongolian, as a low-resource language, has relatively few parallel corpora, resulting in poor translation performance. Data augmentation (DA) is a practical and promising method to solve problems related to data sparsity and single semantic structure by expanding the size and structure of available data. In order to address the issues of data sparsity and semantic inconsistency in Mon… Show more

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