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COSS: Cross Ontology Semantic Similarity measure — An information content based approach

机译:COSS:跨本体语义相似性度量—一种基于信息内容的方法

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Computation of Semantic similarity between concepts play a key role in Ontology mapping, Psycholinguistics, Information Integration and Information Retrieval. A COSS (Cross Ontology Semantic Similarity) measure which follows information content approach and is based on Amos Tversky psychological contrast model for finding the semantic closeness of concepts belonging to different biomedical ontologies. This computational approach exploits knowledge sources such as ontologies, thesauri to quantify the information content (informativeness) which helps to assess the amount of information shared by the compared concepts. The proposed approach is corpus independent and it correlates well with the human judgements. The proposed approach has been experimented with two biomedical ontologies: SNOMED-CT (Systemized nomenclature of medical clinical terms) and Mesh (Medical subject headings) within UMLS Framework and the results are reported. This paper also proposed RRCOSS (Refined Resnik Cross Ontology Semantic Similarity) and RLCOSS (Refined Lin Cross Ontology Semantic Similarity) measures. The proposed three approaches outperform the other computational methods as it achieves the highest correlation of 0.920.
机译:概念之间的语义相似性计算在本体映射,精神语言学,信息集成和信息检索中发挥着关键作用。曲折(跨本体语义相似性)措施,其遵循信息内容方法,基于AMOS TVERSKY心理对比模型,用于寻找属于不同生物医学本体的概念的语义近距离。该计算方法利用了本体诸如本体的知识来源,叙述了信息内容(信息性),这有助于评估比较概念共享的信息量。该拟议的方法是独立的,它与人类判断相关。提出的方法已经尝试了两个生物医学本体:SnoMed-CT(医学临床术语的系统化术语)和UMLS框架内的网状(医学主题标题),并报告了结果。本文还提出了RRCOSS(精制Resnik跨本体学语义相似性)和RLCOSS(精制林跨本体论语义相似性)措施。所提出的三种方法优于其他计算方法,因为它实现了0.920的最高相关性。

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