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首页> 外文期刊>International journal on Semantic Web and information systems >Detecting Human Diseases Relatedness: A Spreading Activation Approach Over Ontologies
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Detecting Human Diseases Relatedness: A Spreading Activation Approach Over Ontologies

机译:检测人类疾病相关性:在本体中的传播激活方法

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摘要

Due to the ubiquitous availability of the information on the web, there is a great need for a standardized representation of this information. Therefore, developing an efficient algorithm for retrieving information from knowledge graphs is a key challenge for many semantic web applications. This article presents spreading activation over ontology (SAOO) approach in order to detect the relatedness between two human diseases by applying spreading activation algorithm based on bidirectional search technique. The proposed approach detects two diseases relatedness by considering semantic domain knowledge. The methodology of the proposed work is divided into two phases: Semantic Matching and Diseases Relatedness Detection. In semantic matching, diseases within the user-submitted query are semantically identified in the ontology graph. In diseases relatedness detection, the relatedness between the two diseases is detected by using bidirectional-based spreading activation on the ontology graph. The classification of these diseases is provided as well.
机译:由于网上信息的无处不在的可用性,很有需要对此信息的标准化表示。因此,开发一种用于从知识图形检索信息的有效算法是许多语义Web应用程序的关键挑战。本文介绍了本体论(SAO)方法的激活,以通过应用基于双向搜索技术的扩展激活算法来检测两种人类疾病之间的相关性。通过考虑语义域知识,所提出的方法通过考虑两个疾病相关性。拟议作品的方法分为两阶段:语义匹配和疾病相关性检测。在语义匹配中,在本体图中,在语义上识别用户提交的查询中的疾病。在疾病相关性检测中,通过在本体图上使用基于双向的扩展激活来检测两种疾病之间的相关性。也提供了这些疾病的分类。

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