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Identifying the Academic Rising Stars via Pairwise Citation Increment Ranking

机译:通过成对引用增量排名确定学术上升星星

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Predicting the fast-rising young researchers (the Academic Rising Stars) in the future provides useful guidance to the research community, e.g., offering competitive candidates to university for young faculty hiring as they are expected to have success academic careers. In this work, given a set of young researchers who have published the first first-author paper recently, we solve the problem of how to effectively predict the top k% researchers who achieve the highest citation increment in Δt years. We explore a series of factors that can drive an author to be fast-rising and design a novel pairwise citation increment ranking (PCIR) method that leverages those factors to predict the academic rising stars. Experimental results on the large ArnetMiner dataset with over 1.7 million authors demonstrate the effectiveness of PCIR. Specifically, it outperforms all given benchmark methods, with over 8% average improvement. Further analysis demonstrates that temporal features are the best indicators for rising stars prediction, while venue features are less relevant.
机译:预测未来的快速上升的年轻研究人员(学术崛起的星星)为研究界提供了有用的指导,例如,为年轻的教师招聘大学提供有竞争力的候选人,因为它们有望拥有成功的学术职业。在这项工作中,鉴于一系列年轻的研究人员最近发表了第一个第一作者纸张,我们解决了如何有效预测达到Δt年达到最高引用增量的最高k%的研究人员的问题。我们探索了一系列的因素,可以推动作者快速上升和设计一种新颖的成对引用增量排名(PCIR)方法,利用这些因素来预测学术崛起的恒星。大型ARNETMINER数据集的实验结果有超过170万作者的作者证明了PCIR的有效性。具体而言,它优于所有给定的基准方法,平均改善超过8%。进一步的分析表明,时间特征是升高恒星预测的最佳指标,而场地特征则不太相关。

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