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Learning Pattern Relation-Based Hyperbolic Embedding for Adverse Drug Reaction Extraction

机译:基于学习模式关系的双曲嵌入不良药物反应提取

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摘要

Hyperbolic embedding has been recently developed to allow us to embed words in a Cartesian product of hyperbolic spaces, and its efficiency has been proved in several works of literature since the hierarchical structure is the natural form of texts. Such a hierarchical structure exhibits not only the syntactic structure but also semantic representation. This paper presents an approach to learn meaningful patterns by hyperbolic embedding and then extract adverse drug reactions from electronic medical records. In the experiments, the public source of data from MIMIC-III (Medical Information Mart for Intensive Care III) with over 58,000 observed hospital admissions of the brief hospital course section is used, and the result shows that the approach can construct a set of efficient word embeddings and also retrieve texts of the same relation type with the input. With the Poincaré embeddings model and its vector sum (PC-S), the authors obtain up to 82.3% in the precision at ten, 85.7% in the mean average precision, and 93.6% in the normalized discounted cumulative gain.
机译:最近已经开发了双曲线嵌入,以允许我们在双曲线空间的笛卡尔产品中嵌入单词,并且在几个文献作品中已经证明了其效率,因为等级结构是文本的自然形式。这种层级结构不仅表现出句法结构,而且表现出语义表示。本文介绍了一种通过双曲嵌入学习有意义的模式的方法,然后从电子医疗记录中提取不良药物反应。在实验中,使用了来自MIMIC-III(医疗信息Mart for Micrency Care III)的公共数据来源,其中有超过58,000次观察到的简短医院课程部分的入学录取,结果表明该方法可以构建一套效率Word Embeddings并使用输入检索相同关系类型的文本。随着Poincaré的嵌入式模型及其矢量和(PC-S),作者在平均平均精度的平均精度下的精度下可获得高达82.3%,归一化折扣累计增益的93.6%。

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