Publication: Investigating Multi-Pivot Ensembling with Massively Multilingual Machine Translation Models
Investigating Multi-Pivot Ensembling with Massively Multilingual Machine Translation Models
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Mohammadshahi, A., Vamvas, J., & Sennrich, R. (2024). Investigating Multi-Pivot Ensembling with Massively Multilingual Machine Translation Models. 169–180. https://aclanthology.org/2024.insights-1.19
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Massively multilingual machine translation models allow for the translation of a large number of languages with a single model, but have limited performance on low- and very-low-resource translation directions. Pivoting via high-resource languages remains a strong strategy for low-resource directions, and in this paper we revisit ways of pivoting through multiple languages. Previous work has used a simple averaging of probability distributions from multiple paths, but we find that this performs worse than using a single pivot, and exa
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Mohammadshahi, A., Vamvas, J., & Sennrich, R. (2024). Investigating Multi-Pivot Ensembling with Massively Multilingual Machine Translation Models. 169–180. https://aclanthology.org/2024.insights-1.19