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Implicit knowledge discovery in biomedical ontologies: Computing interesting relatednesses

机译:生物医学本体中的隐式知识发现:计算有趣的相关性

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Ontologies, seen as effective representations for sharing and reusing knowledge, have become increasingly important in biomedicine, usually focusing on taxonomic knowledge specific to a subject. Efforts have been made to uncover implicit knowledge within large biomedical ontologies by exploring semantic similarity and relatedness between concepts. However, much less attention has been paid to another potentially helpful approach: discovering implicit knowledge across multiple ontologies of different types, such as disease ontologies, symptom ontologies, and gene ontologies. In this paper, we propose a unified approach to the problem of ontology based implicit knowledge discovery - a Multi-Ontology Relatedness Model (MORM), which includes the formation of multiple related ontologies, a relatedness network and a formal inference mechanism based on set-theoretic operations. Experiments for biomedical applications have been carried out, and preliminary results show the potential value of the proposed approach for biomedical knowledge discovery.
机译:本体被视为共享和重用知识的有效代表,在生物医学中已变得越来越重要,通常将重点放在特定于受试者的生物分类知识上。通过探索概念之间的语义相似性和相关性,人们努力发现大型生物医学本体中的隐性知识。但是,对另一种可能有用的方法的关注却很少:在不同类型的多种本体之间发现隐性知识,例如疾病本体,症状本体和基因本体。在本文中,我们提出了一种解决基于本体的隐式知识发现问题的统一方法-多本体关联模型(MORM),该模型包括多个相关本体的形成,关联网络和基于集合的正式推理机制。理论运算。已经进行了生物医学应用实验,初步结果表明了该方法对生物医学知识发现的潜在价值。

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