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Integration of Scholarly Communication Metadata Using Knowledge Graphs

机译:使用知识图的学术通信元数据集成

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Important questions about the scientific community, e.g., what authors are the experts in a certain field, or are actively engaged in international collaborations, can be answered using publicly available datasets. However, data required to answer such questions is often scattered over multiple isolated datasets. Recently, the Knowledge Graph (KG) concept has been identified as a means for interweaving heterogeneous datasets and enhancing answer completeness and soundness. We present a pipeline for creating high quality knowledge graphs that comprise data collected from multiple isolated structured datasets. As proof of concept, we illustrate the different steps in the construction of a knowledge graph in the domain of scholarly communication metadata (SCM-KG). Particularly, we demonstrate the benefits of exploiting semantic web technology to reconcile data about authors, papers, and conferences. We conducted an experimental study on an SCM-KG that merges scientific research metadata from the DBLP bibliographic source and the Microsoft Academic Graph. The observed results provide evidence that queries are processed more effectively on top of the SCM-KG than over the isolated datasets, while execution time is not negatively affected.
机译:关于科学界的重要问题,例如,某些作者是某个领域的专家,或者正在积极参与国际合作,可以使用公开的数据集来回答。但是,回答此类问题所需的数据通常会散落在多个隔离的数据集中。最近,知识图(kg)概念被识别为交织异构数据集的手段,并增强答案完整性和健全性。我们提出了一种用于创建高质量知识图表的管道,包括从多个隔离的结构数据集收集的数据。作为概念证明,我们说明了在学术通信元数据域(SCM-KG)中的知识图中构建的不同步骤。特别是,我们展示了利用语义Web技术来协调关于作者,论文和会议的数据的好处。我们对SCM-KG进行了一个实验研究,将科学研究元数据与DBLP书目源和Microsoft学术图合并。观察结果提供了证据表明,在SCM-kg之上比孤立的数据集更有效地处理查询,而执行时间不会受到负面影响。

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