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Research on Entity Label Value Assignment Method in Knowledge Graph

机译:知识图中实体标签值分配方法的研究

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The lack of entity label values is one of the problems faced by the application of Knowledge Graph.The method of automatically assigning entity label values still has shortcomings, such as costing more resources during training, leading to inaccurate label value assignment because of lacking entity semantics.In this paper, oriented to domain-specific Knowledge Graph, based on the situation that the initial entity label values of all triples are completely unknown, an Entity Label Value Assignment Method (ELVAM) based on external resources and entropy is proposed.ELVAM first constructs a Relationship Triples Cluster according to the relationship type, and randomly extracts the triples data from each cluster to form a Relationship Triples Subset; then collects the extended semantic text of the entities in the subset from the external resources to obtain nouns.Information Entropy and Conditional Entropy of the nouns are calculated through Ontology Category Hierarchy Graph, so as to obtain the entity label value with moderate granularity.Finally, the Label Triples Pattern of each Relationship Triples Cluster is summarized, and the corresponding entity is assigned the label value according to the pattern.The experimental results verify the effectiveness of ELVAM in assigning entity label values in Knowledge Graph.
机译:缺乏实体标签值是知识图表所面临的问题之一。自动分配实体标签值的方法仍然存在缺点,例如在培训期间花费更多资源,导致标签值分配因缺乏实体语义而导致不准确的标签值分配本文以域特定知识图为导向,基于所有三元组的初始实体标签值完全未知,提出了基于外部资源和熵的实体标签值分配方法(ELVAM).ELVAM首先根据关系类型构造关系三元组集群,并随机提取来自每个簇的三元组数据以形成关系三元组子集;然后从外部资源中收集子集中的实体的扩展语义文本,以获取名词。通过本体类别层次结构计算名词的信息熵和条件熵,以便以适度的粒度获取实体标签值。最后,总结了每个关系三元组集群的标签三元图案,并且根据模式分配了相应的实体。实验结果验证了ELVAM在知识图中分配实体标签值的有效性。

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