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On Modeling and Predicting individual Paper Citation Count over Time

机译:在建模和预测单个纸张引渡量随时间的推移

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Evaluating a scientist's past and future potential impact is key in decision making concerning with recruitment and funding, and is increasingly linked to publication citation count. Meanwhile, timely identifying those valuable work with great potential before they receive wide recognition and become highly cited papers is both useful for readers and authors in many regards. We propose a method for predicting the citation counts of individual publications, over an arbitrary time period. Our approach explores paper-specific covariates, and a point process model to account for the aging effect and triggering role of recent citations, through which papers lose and gain their popularity, respectively. Empirical results on the Microsoft Academic Graph data suggests that our model can be useful for both prediction and interpretability.
机译:评估科学家的过去和未来的潜在影响是关于招聘和资金的决策的关键,与出版引用计数越来越多地联系起来。同时,在获得广泛认可之前及时确定具有巨大潜力的有价值的工作,并成为读者和作者在许多方面的读者和作者中有用。我们提出了一种在任意时间段内预测各个出版物的引文计数的方法。我们的方法探讨了纸质特定的协变量,以及点流程模型,以考虑近期引用的老化效果和触发作用,分别通过该文件失去并获得其受欢迎程度。 Microsoft学术图数据上的经验结果表明,我们的模型对于这两种预测和解释性都有用。

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