Masked Sentence Model Based on BERT for Move Recognition in Medical Scientific Abstracts

Volume: 4, Issue: 4, Pages: 42 - 55
Published: Dec 1, 2019
Abstract
Purpose Move recognition in scientific abstracts is an NLP task of classifying sentences of the abstracts into different types of language units. To improve the performance of move recognition in scientific abstracts, a novel model of move recognition is proposed that outperforms the BERT-based method. Design/methodology/approach Prevalent models based on BERT for sentence classification often classify sentences without considering the context...
Paper Details
Title
Masked Sentence Model Based on BERT for Move Recognition in Medical Scientific Abstracts
Published Date
Dec 1, 2019
Volume
4
Issue
4
Pages
42 - 55
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