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Shall I Work with Them? A Knowledge Graph-Based Approach for Predicting Future Research Collaborations

机译:我要和他们一起工作吗?基于知识图形的方法用于预测未来的研究合作

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摘要

We consider the prediction of future research collaborations as a link prediction problem applied on a scientific knowledge graph. To the best of our knowledge, this is the first work on the prediction of future research collaborations that combines structural and textual information of a scientific knowledge graph through a purposeful integration of graph algorithms and natural language processing techniques. Our work: (i) investigates whether the integration of unstructured textual data into a single knowledge graph affects the performance of a link prediction model, (ii) studies the effect of previously proposed graph kernels based approaches on the performance of an ML model, as far as the link prediction problem is concerned, and (iii) proposes a three-phase pipeline that enables the exploitation of structural and textual information, as well as of pre-trained word embeddings. We benchmark the proposed approach against classical link prediction algorithms using accuracy, recall, and precision as our performance metrics. Finally, we empirically test our approach through various feature combinations with respect to the link prediction problem. Our experimentations with the new COVID-19 Open Research Dataset demonstrate a significant improvement of the abovementioned performance metrics in the prediction of future research collaborations.
机译:我们认为未来合作研究的预测适用于科学知识图中的链接预测问题。据我们所知,这是对未来的合作研究中,通过的图形算法和自然语言处理技术有目的的,结合了科学知识图的结构和文本信息预测的第一部作品。我们的工作:(一)调查的整合非结构化文本数据到一个单一的知识图谱是否影响链接预测模型的性能,(二)研究了先前提出的图形效果内核基础上的ML模型的性能的方法,如据链路预测问题来讲,及(iii)提出了一个三阶段的管道,使结构和文本信息的开发利用,以及预先训练字的嵌入的。我们的基准反对使用精度,召回和精度我们的性能指标古典链接预测算法所提出的方法。最后,我们实证检验通过各种特征组合我们的方法相对于链路预测问题。我们与新COVID-19开放研究数据集性实验证明上述性能指标的未来合作研究的预测显著的改善。

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