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Investigating Multi-Pivot Ensembling with Massively Multilingual Machine Translation Models

Mohammadshahi, Alireza; Vamvas, Jannis; Sennrich, Rico (2024). Investigating Multi-Pivot Ensembling with Massively Multilingual Machine Translation Models. In: Proceedings of the Fifth Workshop on Insights from Negative Results in NLP, Mexico City, Mexico, June 2024. Association for Computational Linguistics, 169-180.

Abstract

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 exacerbates the hallucination problem because the same hallucinations can be probable across different paths. We also propose MaxEns, a novel combination strategy that makes the output biased towards the most confident predictions, hypothesising that confident predictions are less prone to be hallucinations. We evaluate different strategies on the FLORES benchmark for 20 low-resource language directions, demonstrating that MaxEns improves translation quality for low-resource languages while reducing hallucination in translations, compared to both direct translation and an averaging approach. On average, multi-pivot strategies still lag behind using English as a single pivot language, raising the question of how to identify the best pivoting strategy for a given translation direction.

Additional indexing

Item Type:Conference or Workshop Item (Paper), original work
Communities & Collections:06 Faculty of Arts > Institute of Computational Linguistics
Dewey Decimal Classification:410 Linguistics
000 Computer science, knowledge & systems
Language:English
Event End Date:June 2024
Deposited On:22 Aug 2024 07:20
Last Modified:22 Aug 2024 07:20
Publisher:Association for Computational Linguistics
OA Status:Green
Free access at:Official URL. An embargo period may apply.
Official URL:https://aclanthology.org/2024.insights-1.19
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  • Licence: Creative Commons: Attribution 4.0 International (CC BY 4.0)

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