2021
DOI: 10.48550/arxiv.2110.08415
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Multilingual unsupervised sequence segmentation transfers to extremely low-resource languages

Abstract: We show that unsupervised sequencesegmentation performance can be transferred to extremely low-resource languages by pre-training a Masked Segmental Language Model (Downey et al., 2021) multilingually. Further, we show that this transfer can be achieved by training over a collection of low-resource languages that are typologically similar (but phylogenetically unrelated) to the target language. In our experiments, we transfer from a collection of 10 Indigenous American languages (AmericasNLP, Mager et al., 20… Show more

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