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ME-Based Biomedical Named Entity Recognition Using Lexical Knowledge

机译:使用词法知识的基于ME的生物医学命名实体识别

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In this paper, we present a two-phase biomedical NE-recognition method based on a ME model: we first recognize biomedical terms and then assign appropriate semantic classes to the recognized terms. In the two-phase NE-recognition method, the performance of the term-recognition phase is very important, because the semantic classification is performed on the region identified at the recognition phase. In this study, in order to improve the performance of term recognition, we try to incorporate lexical knowledge into pre- and postprocessing of the term-recognition phase. In the preprocessing step, we use domain-salient words as lexical knowledge obtained by corpus comparison. In the postprocessing step, we utilize χ~2-based collocations gained from Medline corpus. In addition, we use morphological patterns extracted from the training data as features for learning the ME-based classifiers. Experimental results show that the performance of NE-recognition can be improved by utilizing such lexical knowledge.
机译:在本文中,我们提出了一种基于ME模型的两阶段生物医学NE识别方法:首先识别生物医学术语,然后为识别的术语分配适当的语义类别。在两阶段NE识别方法中,术语识别阶段的性能非常重要,因为语义分类是在识别阶段识别的区域上进行的。在这项研究中,为了提高术语识别的性能,我们尝试将词汇知识整合到术语识别阶段的预处理中。在预处理步骤中,我们使用领域显着词作为通过语料比较获得的词汇知识。在后处理步骤中,我们利用从Medline语料库获得的基于χ〜2的搭配。另外,我们使用从训练数据中提取的形态学模式作为学习基于ME的分类器的特征。实验结果表明,利用这种词汇知识可以提高NE识别的性能。

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