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Early indicators of scientific impact: Predicting citations with altmetrics

机译:科学影响的早期指标:预测ALTMetrics的引用

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摘要

Identifying important scholarly literature at an early stage is vital to the academic research community and other stakeholders such as technology companies and government bodies. Due to the sheer amount of research published and the growth of ever-changing interdisciplinary areas, researchers need an efficient way to identify important scholarly work. The number of citations a given research publication has accrued has been used for this purpose, but these take time to occur and longer to accumulate. In this article, we use alt metrics to predict the short-term and long-term citations that a scholarly publication could receive. We build various classification and regression models and evaluate their performance, finding neural networks and ensemble models to perform best for these tasks. We also find that Mendeley readership is the most important factor in predicting the early citations, followed by other factors such as the academic status of the readers (e.g., student, postdoc, professor), followers on Twitter, online post length, author count, and the number of mentions on Twitter, Wikipedia, and across different countries.(c) 2021 Elsevier Ltd. All rights reserved.
机译:在早期阶段确定重要的学术文学对学术研究界和技术公司和政府机构等其他利益相关者至关重要。由于研究的纯粹数量和不断变化的跨学科领域的增长,研究人员需要一个有效的方法来确定重要的学术工作。给定的研究出版物的引用人数已经用于此目的,但这些需要时间发生并更长时间累积。在本文中,我们使用alt指标预测学术出版物可以获得的短期和长期引用。我们构建各种分类和回归模型,并评估其性能,查找神经网络和集合模型,以最适合这些任务。我们还发现孟德利读者侦查是预测早期引用的最重要因素,其次是其他因素,如读者的学术地位(例如,学生,邮政编码,教授),在Twitter上的追随者,在线邮政长度,作者计数,以及Twitter,Wikipedia和跨不同国家的提升数量。(c)2021 Elsevier Ltd.保留所有权利。

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