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On the Utilization of Structural and Textual Information of a Scientific Knowledge Graph to Discover Future Research Collaborations: A Link Prediction Perspective

机译:关于科学知识图结构和文本信息的利用,发现未来的研究合作:链接预测视角

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We consider the discovery of future research collaborations as a link prediction problem applied on scientific knowledge graphs. Our approach integrates into a single knowledge graph both structured and unstructured textual data through a novel representation of multiple scientific documents. The Neo4j graph database is used for the representation of the proposed scientific knowledge graph. For the implementation of our approach, we use the Python programming language and the scikit-learn ML library. We benchmark our approach against classical link prediction algorithms using accuracy, recall, and precision as our performance metrics. Our initial experimentations demonstrate a significant improvement of the accuracy of the future collaboration prediction task. The experimentations reported in this paper use the new COVID-19 Open Research Dataset.
机译:我们认为将未来的研究合作作为应用于科学知识图中的链路预测问题。我们的方法通过多个科学文档的新颖表示集成到一个结构化和非结构化文本数据中。 neo4j图表数据库用于所提出的科学知识图表的表示。为了实现我们的方法,我们使用Python编程语言和Scikit-Learn ML库。我们使用精度,召回和精确度为我们的性能指标来对抗古典链路预测算法的方法。我们的初步实验表明了未来协作预测任务的准确性的显着提高。本文报告的实验使用新的Covid-19开放式研究数据集。

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