预测长期研究合作的依赖性、互惠性和非正式指导:基于合著矩阵的多元时间序列分析

IF 3.4 2区 管理学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Yongjun Zhu , Donghun Kim , Ting Jiang , Yi Zhao , Jiangen He , Xinyi Chen , Wen Lou
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引用次数: 0

摘要

在本研究中,我们考察了依赖性、互惠性和非正式指导在预测五个学科的长期研究合作中的作用。我们使用基于合作作者矩阵的多变量时间序列特征和可解释的机器学习来训练长期合作预测模型,并解释训练模型的特征重要性。总体而言,使用各种标准定义的长期科研合作在所考察的学科中较为罕见,预测结果为中等至良好。我们发现,依赖性、互惠性和非正式指导在不同学科中发挥着不同的作用。其中,非正式指导在预测农业、地质学和图书馆与信息科学的长期研究合作方面具有重要作用。互惠性衡量两个研究人员之间的相互依存关系,对农业和地质学领域的预测非常重要。最后,依赖性在所有学科中都很重要,但重要程度不一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dependency, reciprocity, and informal mentorship in predicting long-term research collaboration: A co-authorship matrix-based multivariate time series analysis

In this study, we examine the roles of dependency, reciprocity, and informal mentorship in the prediction of long-term research collaboration in five disciplines. We use co-authorship matrix-based multivariate time series features and interpretable machine learning to train long-term collaboration prediction models and interpret the feature importance of trained models. Overall, long-term research collaboration that is defined using various standards was rare across the examined disciplines, and the prediction results were moderate to good. We found dependency, reciprocity, and informal mentorship to have different roles in different disciplines. Among the three, informal mentorship was important in predicting long-term research collaboration in Agriculture, Geology, and Library and Information Science. Reciprocity, which measures the interdependence between two researchers was important to prediction in the fields of Agriculture and Geology. Finally, dependency was important in all the disciplines with varying degrees of importance.

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来源期刊
Journal of Informetrics
Journal of Informetrics Social Sciences-Library and Information Sciences
CiteScore
6.40
自引率
16.20%
发文量
95
期刊介绍: Journal of Informetrics (JOI) publishes rigorous high-quality research on quantitative aspects of information science. The main focus of the journal is on topics in bibliometrics, scientometrics, webometrics, patentometrics, altmetrics and research evaluation. Contributions studying informetric problems using methods from other quantitative fields, such as mathematics, statistics, computer science, economics and econometrics, and network science, are especially encouraged. JOI publishes both theoretical and empirical work. In general, case studies, for instance a bibliometric analysis focusing on a specific research field or a specific country, are not considered suitable for publication in JOI, unless they contain innovative methodological elements.
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