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DPRK-BERT: The Supreme Language Model

2021-12-01 15:36:13
Arda Akdemir, Yeojoo Jeon

Abstract

Deep language models have achieved remarkable success in the NLP domain. The standard way to train a deep language model is to employ unsupervised learning from scratch on a large unlabeled corpus. However, such large corpora are only available for widely-adopted and high-resource languages and domains. This study presents the first deep language model, DPRK-BERT, for the DPRK language. We achieve this by compiling the first unlabeled corpus for the DPRK language and fine-tuning a preexisting the ROK language model. We compare the proposed model with existing approaches and show significant improvements on two DPRK datasets. We also present a cross-lingual version of this model which yields better generalization across the two Korean languages. Finally, we provide various NLP tools related to the DPRK language that would foster future research.

Abstract (translated)

URL

https://arxiv.org/abs/2112.00567

PDF

https://arxiv.org/pdf/2112.00567.pdf


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