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Missing RDF Triples Detection and Correction in Knowledge Graphs

机译:知识图中缺少RDF三元组检测和校正

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Knowledge graphs (KGs) have become a powerful asset in information science and technology. To foster enhancing search, information retrieval and question answering domains KGs offer effective structured information. KGs represent real-world entities and their relationships in Resource Description Framework (RDF) triples format. Despite the large amount of knowledge, there are still missing and incorrect knowledge in the KGs. We study the graph patterns of interlinked entities to discover missing and incorrect RDF triples in two KGs - DBpedia and YAGO. We apply graph-based approach to map similar object properties and apply similarity based approach to map similar datatype properties. Our propose methods can utilize those similar ontology properties and efficiently discover missing and incorrect RDF triples in DBpedia and YAGO.
机译:知识图谱(KGs)已成为信息科学和技术中的强大资产。为了促进搜索,信息检索和问题解答领域的发展,幼稚园提供了有效的结构化信息。 KG以资源描述框架(RDF)三元组格式表示现实世界中的实体及其关系。尽管知识量很大,但幼稚园中仍然缺少和不正确的知识。我们研究了互连的实体的图形模式,以发现两个KG-KG和YAGO中缺少的和不正确的RDF三元组。我们应用基于图的方法来映射相似的对象属性,并应用基于相似度的方法来映射相似的数据类型属性。我们提出的方法可以利用那些相似的本体属性,并有效地发现DBpedia和YAGO中缺少和不正确的RDF三元组。

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