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Towards Medical Machine Reading Comprehension with Structural Knowledge and Plain Text

机译:以结构知识和纯文本的医疗机器阅读理解

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Machine reading comprehension (MRC) has achieved significant progress on the open domain in recent years, mainly due to large-scale pre-trained language models. However, it performs much worse in specific domains such as the medical field due to the lack of extensive training data and professional structural knowledge neglect. As an effort, we first collect a large scale medical multi-choice question dataset (more than 21k instances) for the National Licensed Pharmacist Examination in China. It is a challenging medical examination with a passing rate of less than 14.2% in 2018. Then we propose a novel reading comprehension model KMQA, which can fully exploit the structural medical knowledge (i.e., medical knowledge graph) and the reference medical plain text (i.e., text snippets retrieved from reference books). The experimental results indicate that the KMQA outperforms existing competitive models with a large margin and passes the exam with 61.8% accuracy rate on the test set.
机译:机器阅读理解(MRC)近年来在开放领域取得了重大进展,主要是由于大规模的预先训练的语言模型。然而,由于缺乏广泛的培训数据和专业的结构知识忽视,它在诸如医学领域的特定领域的特定领域表现得更加严重。作为一项努力,我们首先在中国收集大规模的医疗多项选择问题数据集(超过21K实例),在中国国家持牌药剂师考试。这是一项具有挑战性的体检,2018年的通过率低于14.2%。然后我们提出了一种新颖的阅读理解模型KMQA,可以充分利用结构医学知识(即医学知识图表)和参考医学简单文本(即,从参考书中检索的文本代码段)。实验结果表明,KMQA优于现有的竞争力模型,具有大的余量,并通过测试集中的61.8%的准确率。

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