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Spreading Relation Annotations in a Lexical Semantic Network Applied to Radiology

机译:应用于放射学的词汇语义网络中的扩展关系注释

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Domain specific ontologies are invaluable but their development faces many challenges. In most cases, domain knowledge bases are built with very limited scope without considering the benefits of including domain knowledge to a general ontology. Furthermore, most existing resources lack meta-information about association strength (weights) and annotations (frequency information like frequent, rare ... or relevance information like pertinent or irrelevant). In this paper, we are presenting a semantic resource for radiology built over an existing general semantic lexical network (JeuxDeMots). This network combines weight and annotations on typed relations between terms and concepts. Some inference mechanisms are applied to the network to improve its quality and coverage. We extend this mechanism to relation annotation. We describe how annotations are handled and how they improve the network by imposing new constraints especially those founded on medical knowledge.
机译:特定领域的本体是无价的,但其发展面临许多挑战。在大多数情况下,领域知识库的构建范围非常有限,而没有考虑将领域知识包括到一般本体中的​​好处。此外,大多数现有资源缺乏有关关联强度(权重)和注释(频率信息,如频繁,稀有...或相关性信息,如相关或不相关)的元信息。在本文中,我们提出了一种基于现有通用语义词法网络(JeuxDeMots)构建的放射学语义资源。该网络将权重和注释结合在术语和概念之间的类型化关系上。一些推理机制被应用于网络以改善其质量和覆盖范围。我们将此机制扩展到关系注释。我们描述了注释的处理方式,以及它们如何通过施加新的约束(尤其是基于医学知识的约束)来改善网络。

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