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The Effectiveness of Morphology-aware Segmentation in Low-Resource Neural Machine Translation (2103.11189v1)

Published 20 Mar 2021 in cs.CL and cs.AI

Abstract: This paper evaluates the performance of several modern subword segmentation methods in a low-resource neural machine translation setting. We compare segmentations produced by applying BPE at the token or sentence level with morphologically-based segmentations from LMVR and MORSEL. We evaluate translation tasks between English and each of Nepali, Sinhala, and Kazakh, and predict that using morphologically-based segmentation methods would lead to better performance in this setting. However, comparing to BPE, we find that no consistent and reliable differences emerge between the segmentation methods. While morphologically-based methods outperform BPE in a few cases, what performs best tends to vary across tasks, and the performance of segmentation methods is often statistically indistinguishable.

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Authors (2)
  1. Jonne Sälevä (8 papers)
  2. Constantine Lignos (19 papers)
Citations (15)

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