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Measuring Accuracy of Triples in Knowledge Graphs

机译:测量知识图中三元组的精度

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An increasing amount of large-scale knowledge graphs have been constructed in recent years. Those graphs are often created from text-based extraction, which could be very noisy. So far, cleaning knowledge graphs are often carried out by human experts and thus very inefficient. It is necessary to explore automatic methods for identifying and eliminating erroneous information. In order to achieve this, previous approaches primarily rely on internal information i.e. the knowledge graph itself. In this paper, we introduce an automatic approach, Triples Accuracy Assessment (TAA), for validating RDF triples (source triples) in a knowledge graph by finding consensus of matched triples (among target triples) from other knowledge graphs. TAA uses knowledge graph interlinks to find identical resources and apply different matching methods between the predicates of source triples and target triples. Then based on the matched triples, TAA calculates a confidence score to indicate the correctness of a source triple. In addition, we present an evaluation of our approach using the FactBench dataset for fact validation. Our findings show promising results for distinguishing between correct and wrong triples.
机译:近年来,越来越多的大规模知识图被构建。这些图通常是从基于文本的提取中创建的,这可能非常嘈杂。到目前为止,清洁知识图通常是由人类专家执行的,因此效率很低。有必要探索用于识别和消除错误信息的自动方法。为了实现这一点,先前的方法主要依靠内部信息,即知识图本身。在本文中,我们介绍了一种自动方法,即三元组准确性评估(TAA),用于通过从其他知识图中找到匹配的三元组(目标三元组之间)的共识来验证知识图中的RDF三元组(源三元组)。 TAA使用知识图互连来查找相同的资源,并在源三元组和目标三元组的谓词之间应用不同的匹配方法。然后,基于匹配的三元组,TAA计算置信度得分以指示源三元组的正确性。此外,我们使用FactBench数据集对我们的方法进行了评估,以进行事实验证。我们的发现显示出区分正确和错误三元组的有希望的结果。

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