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Integration of Multiple Graph Datasets and Their Linguistic Summaries: An Application to Linked Data

机译:多个图数据集及其语言摘要的集成:链接数据的应用

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This paper presents a novel method of generating and evaluating linguistic summaries of content stored in distributed graph datasets, like LinkedData. Linguistic summarization is a well known data mining technique, aimed to discover patterns in data and present them in natural language. So fax, this method has been researched only for relational databases. In our recent paper we have presented how to adapt this method for graph datasets. We have solved the problems of subject definition (further extended in this paper), retrieval of the attributes for summarization, generalization of summarizers and qualifiers. In this paper we extend that research by adapting proposed method to distributed interlinked graph datasets, which results in obtaining new summaries, and therefore new knowledge. We discuss how to follow different types of equivalence links that may exists between graph datasets. In order to measure characteristics specific for summaries of distributed graph data we propose new truth values (degree of subject appropriateness, degree of summarizer order and degree of linkage), and adapt existing ones (degree of covering). We run several experiments on Linked Data and discuss the results.
机译:本文提出了一种生成和评估存储在分布式图形数据集(如LinkedData)中的内容的语言摘要的新颖方法。语言汇总是一种众所周知的数据挖掘技术,旨在发现数据中的模式并以自然语言呈现它们。因此,对于传真,仅针对关系数据库研究了此方法。在我们最近的论文中,我们介绍了如何将这种方法应用于图数据集。我们已经解决了主题定义(在本文中进一步扩展),检索摘要属性,摘要生成器和限定符的泛化等问题。在本文中,我们通过将所提出的方法应用于分布式互连图数据集来扩展该研究,从而获得新的摘要,从而获得新的知识。我们讨论了如何遵循图数据集之间可能存在的不同类型的等价链接。为了测量特定于分布图数据摘要的特征,我们提出了新的真值(主题适当程度,摘要顺序的程度和链接程度),并采用现有的值(覆盖程度)。我们对链接数据进行了几次实验,并讨论了结果。

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