Chaeyoung Oh


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2024

pdf bib
Korean Bio-Medical Corpus (KBMC) for Medical Named Entity Recognition
Sungjoo Byun | Jiseung Hong | Sumin Park | Dongjun Jang | Jean Seo | Minseok Kim | Chaeyoung Oh | Hyopil Shin
Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)

Named Entity Recognition (NER) plays a pivotal role in medical Natural Language Processing (NLP). Yet, there has not been an open-source medical NER dataset specifically for the Korean language. To address this, we utilized ChatGPT to assist in constructing the KBMC (Korean Bio-Medical Corpus), which we are now presenting to the public. With the KBMC dataset, we noticed an impressive 20% increase in medical NER performance compared to models trained on general Korean NER datasets. This research underscores the significant benefits and importance of using specialized tools and datasets, like ChatGPT, to enhance language processing in specialized fields such as healthcare.