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Scientometric Indicators and Machine Learning-Based Models for Predicting Rising Stars in Academia

机译:基于机器学习的基于Schoolutic指标,用于预测学术界上升恒星的模型

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Newly recruited researchers who are expected to outstandingly surpass their peers in the quality of their work, are often considered as substantial assets in universities and research & development entities. Foreseeably identifying such Rising Stars is vital for highly competitive and profitable institutes and organizations. In this paper, we propose models based on a set of Scientometric Indicators to predict rising stars in academia. In addition, we define the rising stars problem in a comprehensive and methodological manner. Machine learning techniques are applied on actual data subsets collected from the Web of Science (WoS) data source. Our experimental results show that the proposed models and indicators can be used effectively in predicting future rising stars.
机译:新征聘的研究人员,预计将超越其在工作质量的同行中,通常被视为大学和研发实体的大量资产。可预见到竞争恒星对于高竞争力和有利可图的机构和组织来说至关重要。在本文中,我们提出了一套科学计量指标的模型,以预测学术界的升级恒星。此外,我们以全面和方法的方式定义上升恒星问题。机器学习技术应用于从科学Web(WOS)数据源收集的实际数据子集上。我们的实验结果表明,拟议的模型和指标可以有效地预测未来升起的恒星。

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