Proceedings of the 27th Conference on Computational Natural Language Learning (CoNLL) 2023
DOI: 10.18653/v1/2023.conll-1.34
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Strategies to Improve Low-Resource Agglutinative Languages Morphological Inflection

Gulinigeer Abudouwaili,
Wayit Ablez,
Kahaerjiang Abiderexiti
et al.

Abstract: Morphological inflection is a crucial task in the field of morphology and is typically considered a sequence transduction task. In recent years, it has received substantial attention from researchers and made significant progress. Models have achieved impressive performance levels for both high-and low-resource languages. However, when the distribution of instances in the training dataset changes, or novel lemma or feature labels are predicted, the model's accuracy declines. In agglutinative languages, morphol… Show more

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