基于语料库的医学概念相似度信息检索评价

B. Koopman, G. Zuccon, P. Bruza, Laurianne Sitbon, Michael Lawley
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引用次数: 44

摘要

医学概念之间的语义相似性度量是医学信息学中许多技术的核心,包括医学信息检索中的查询扩展。以前的工作主要考虑基于词库的语义相似度路径度量,并没有深入比较不同的语料库驱动方法。我们评估了八种常见的语料库驱动度量在捕获语义相关性方面的有效性,并将这些与由医学专业人员评估的人类判断的概念对进行比较。我们的研究结果表明,某些语料库驱动的测量与人类的判断有很强的相关性(约0.8)。一个重要的发现是,性能受到启动测量时使用的语料库的选择的显著影响,即用作语料库驱动相似性的证据。本文为医学信息学的语义相似度量的实现提供了指导方针,并总结了对医学信息检索的启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An evaluation of corpus-driven measures of medical concept similarity for information retrieval
Measures of semantic similarity between medical concepts are central to a number of techniques in medical informatics, including query expansion in medical information retrieval. Previous work has mainly considered thesaurus-based path measures of semantic similarity and has not compared different corpus-driven approaches in depth. We evaluate the effectiveness of eight common corpus-driven measures in capturing semantic relatedness and compare these against human judged concept pairs assessed by medical professionals. Our results show that certain corpus-driven measures correlate strongly (approx 0.8) with human judgements. An important finding is that performance was significantly affected by the choice of corpus used in priming the measure, i.e., used as evidence from which corpus-driven similarities are drawn. This paper provides guidelines for the implementation of semantic similarity measures for medical informatics and concludes with implications for medical information retrieval.
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