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Trend-Based Citation Count Prediction for Research Articles

机译:研究文章的基于趋势的引文计数预测

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This paper aims to predict the future impact, measured by the citation count, of any papers of interest. While existing studies utilized the features related to the paper content or publication information to do Citation Count Prediction (CCP), we propose to leverage the citation count trend of a paper and develop a Trend-based Citation Count Prediction (T-CCP) model. By observing the citation count fluctuation of a paper along with time, we identify five typical citation trends: early burst, middle burst, late burst, multi bursts, and no bursts. T-CCP first performs Citation Trend Classification (CTC) to detect the citation trend of a paper, and then learns the predictive function for each trend to predict the citation count. We investigate two categories of features for CCP, CTC, and T-CCP: the publication features, including author, venue, expertise, social, and reinforcement features, and the early citation behaviors, including citation statistical and structural features. Experiments conducted on the Arnet-Miner citation dataset exhibit promising results that T-CCP outperforms CCP and the proposed features are more effective than conventional ones.
机译:本文旨在预测通过引用次数衡量的任何感兴趣的论文的未来影响。现有研究利用与论文内容或出版物信息相关的功能来进行引用计数预测(CCP),但我们建议利用论文的引用计数趋势并开发基于趋势的引用计数预测(T-CCP​​)模型。通过观察论文的引文计数随时间的波动,我们确定了五个典型的引文趋势:早期爆发,中间爆发,晚期爆发,多次爆发和无爆发。 T-CCP​​首先执行“引用趋势分类”(CTC)以检测论文的引用趋势,然后学习每种趋势的预测功能以预测引用计数。我们研究了CCP,CTC和T-CCP​​的两类功能:出版功能,包括作者,会场,专业知识,社交和强化功能,以及早期的引文行为,包括引文统计和结构特征。在Arnet-Miner引用数据集上进行的实验显示出令人鼓舞的结果,即T-CCP​​的性能优于CCP,并且所提出的功能比常规功能更有效。

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