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A general method for sifting linguistic knowledge from structured terminologies.

机译:从结构化术语中筛选语言知识的一般方法。

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摘要

Morphological knowledge is useful for medical language processing, information retrieval and terminology or ontology development. We show how a large volume of morphological associations between words can be learnt from existing medical terminologies by taking advantage of the semantic relations already encoded between terms in these terminologies: synonymy, hierarchy and transversal relations. The method proposed relies on no a priori linguistic knowledge. Since it can work with different relations between terms, it can be applied to any structured terminology. Tested on SNOMED and ICD in French and English, it proves to identify fairly reliable morphological relations (precision > 90%) with a good coverage (over 88% compared to the UMLS lexical variant generation program). For English words with a stem longer than 3 characters, recall reaches 98.8% for inflection and 94.7% for derivation.
机译:形态学知识可用于医学语言处理,信息检索以及术语或本体开发。我们展示了如何利用现有的医学术语,利用这些术语之间的已编码语义关系(同义,层次和横向关系)来学习单词之间的大量形态关联。提出的方法不依赖先验语言知识。由于它可以处理术语之间的不同关系,因此可以应用于任何结构化术语。在法语和英语的SNOMED和ICD上进行了测试,证明可以识别相当可靠的形态关系(精度> 90%),且覆盖范围广(与UMLS词法变体生成程序相比,超过88%)。对于词干超过3个字符的英语单词,词尾变化的回忆率达到98.8%,派生词的回忆率达到94.7%。

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