Papers by Juan Flores

1 papers
Predicting Machine Translation Performance on Low-Resource Languages: The Role of Domain Similarity (2024.findings-eacl)

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Challenge: Existing approaches for predicting the performance of NLP models for low-resource languages (LRLs) focus on high-resourced languages, overlooking LRLs and domain shifts.
Approach: They investigate the impact of domain similarity on predicting performance of machine translation models in low-resource languages.
Outcome: The results show that domain similarity has the most important impact on predicting the performance of Machine Translation models.

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