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NTIS 바로가기스마트미디어저널 = Smart media journal, v.11 no.10, 2022년, pp.89 - 96
김정훈 (순천대학교 IT-Bio융합시스템전공) , 김준영 (순천대학교 IT-Bio융합시스템전공) , 박준 (순천대학교 IT-Bio융합시스템전공) , 박성욱 (순천대학교 IT-Bio융합시스템전공) , 정세훈 (순천대학교 컴퓨터공학과) , 심춘보 (순천대학교 인공지능공학부)
An open domain machine reading comprehension is a model that adds a function to search paragraphs as there are no paragraphs related to a given question. Document searches have an issue of lower performance with a lot of documents despite abundant research with word frequency based TF-IDF. Paragraph...
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