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Graph-Based Knowledge Consolidation in Ontology Population

机译:本体人口中基于图的知识整合

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摘要

We propose a novel method for knowledge consolidation based on a knowledge graph as a next step in relation extraction from text. The knowledge consolidation method consists of entity consolidation and relation consolidation. During the entity consolidation process, identical entities are found and merged using both name similarity and relation similarity measures. In the relation consolidation process, incorrect relations are removed using cardinality properties, temporal information and relation weight in given graph structure. In our experiment, we could generate compact and clean knowledge graphs where number of entities and relations are reduced by 6.1% and by 17.4% respectively with increasing relation accuracy from 77.0% to 85.5%.
机译:我们提出了一种基于知识图的知识整合的新方法,作为从文本中提取关系的下一步。知识合并方法包括实体合并和关系合并。在实体合并过程中,将使用名称相似性和关系相似性度量来查找并合并相同的实体。在关系合并过程中,使用基数属性,时间信息和给定图结构中的关系权重来消除不正确的关系。在我们的实验中,我们可以生成紧凑而干净的知识图,其中实体和关系的数量分别减少6.1%和17.4%,关系准确度从77.0%提高到85.5%。

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