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Retrofitting Concept Vector Representations of Medical Concepts to Improve Estimates of Semantic Similarity and Relatedness

机译:改造概念矢量表示的医学概念,以改善语义相似性和相关性的估计

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Estimation of semantic similarity and relatedness between biomedical concepts has utility for many informatics applications. Automated methods fall into two categories: methods based on distributional statistics drawn from text corpora, and methods using the structure of existing knowledge resources. Methods in the former category disregard taxonomic structure, while those in the latter fail to consider semantically relevant empirical information. In this paper, we present a method that retrofits distributional context vector representations of biomedical concepts using structural information from the UMLS Metathesaurus, such that the similarity between vector representations of linked concepts is augmented. We evaluated it on the UMNSRS benchmark. Our results demonstrate that retrofitting of concept vector representations leads to better correlation with human raters for both similarity and relatedness, surpassing the best results reported to date. They also demonstrate a clear improvement in performance on this reference standard for retrofitted vector representations, as compared to those without retrofitting.
机译:生物医学概念之间的语义相似性和相关性估算具有许多信息应用程序的实用性。自动化方法分为两类:基于从文本语料库中汲取的分布统计的方法,以及使用现有知识资源结构的方法。前者的方法无视分类学结构,而后者的方法则未能考虑语义相关的经验信息。在本文中,我们介绍了一种方法,该方法使用来自UMLS元成像库的结构信息来改造生物医学概念的分布上下文向量表示,使得连接概念的矢量表示之间的相似性被增强。我们在UMNSRS基准上进行了评估。我们的研究结果表明概念向量表示引线的是改造与两者的相似性和关联性人工评级,超越了迄今报道的最佳效果较好的相关性。它们还表明,与未改装的情况相比,它们在该参考标准上表现出对该参考标准的性能的显然改进。

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