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Syntactic Patterns Improve Information Extraction for Medical Search

机译:句法模式改善了医学搜索的信息提取

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Medical professionals search the published literature by specifying the type of patients, the medical intenention(s) and the outcome measure(s) of interest. In this paper we demonstrate how features encoding syntactic patterns improve the performance of state-of-the-art sequence tagging models (both linear and neural) for information extraction of these medically relevant categories. We present an analysis of the type of patterns exploited, and the semantic space induced for these, i.e.. the distributed representations learned for identified multi-token patterns. We show that these learned representations differ substantially from those of the constituent unigrams. suggesting that the patterns capture contextual information that is otherwise lost.
机译:医疗专业人员通过指定患者的类型,医疗意愿和感兴趣的结果度量来搜索已发表的文献。在本文中,我们演示了编码语法模式的特征如何改善这些医学上相关类别的信息提取的最新序列标签模型(线性和神经网络)的性能。我们将对所利用模式的类型进行分析,并为这些模式诱导语义空间,即为识别出的多令牌模式而学习的分布式表示形式。我们表明,这些学习的表示形式与构成字母组合的表示形式有很大的不同。建议这些模式捕获上下文信息,否则这些信息将丢失。

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