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Predicting Most Influential Paper Award Using Citation Count

机译:使用引文计数预测大多数有影响力的纸张奖励

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The early identification of the influential papers is of great significance for assessing the scientific achievements of researchers and institutions as it can help in addressing the processes in an academic and scientific field, such as promotions, recruitment decisions, and funding allocation. This work evaluates features for predicting the most influential paper award that is given by several renowned conferences, ten years subsequent to their publication. The data of five renowned conferences, i.e., ICSE, ICFP, POPL, PLDI, and OOPSLA is used to predict the long-term citations to identify the most influential paper of the respective conference. GD boost model is considered to be better performing among the five different machine learning algorithms. The results show that a three to five years of the time window is good enough to evaluate the most influential paper award. Additionally, the assessment of time window and the citation trajectory of awarded and non awarded papers shows that the citation trajectory of the awarded paper vary from the Citation gain patterns of non-awarded paper.
机译:利益挑选的早期识别对于评估研究人员和机构的科学成就具有重要意义,因为它可以帮助解决学术和科学领域的过程,例如促销,招聘决策和资金分配。这项工作评估了预测若干知名会议给出的最有影响力的纸张奖项的特点,以至于其出版物之后十年。五位着名会议的数据,即ICSE,ICFP,Popl,Pldi和Oopsla用于预测长期引用,以确定各个会议的最有影响力的论文。 GD升压模型被认为是在五种不同机器学习算法中更好地表现。结果表明,三到五年的时间窗口足以评估最有影响力的纸张奖。此外,授予和非授权论文的时间窗口和引文轨迹的评估表明,获奖文件的引文轨迹因未授予纸质的引文增益模式而异。

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