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To Better Stand on the Shoulder of Giants

机译:更好地站在巨人队的肩膀上

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Usually scientists breed research ideas inspired by previous publications, but they are unlikely to follow all publications in the unbounded literature collection. The volume of literature keeps on expanding extremely fast, whilst not all papers contribute equal impact to the academic society. Being aware of potentially influential literature would put one in an advanced position in choosing important research references. Hence, estimation of potential influence is of great significance. We study a challenging problem of identifying potentially influential literature. We examine a set of hypotheses on what are the fundamental characteristics for highly cited papers and find some interesting patterns. Based on these observations, we learn to identify potentially influential literature via Future Influence Prediction (FIP), which aims to estimate the future influence of literature. The system takes a series of features of a particular publication as input and produces as output the estimated citation counts of that article after a given time period. We consider several regression models to formulate the learning process and evaluate their performance based on the coefficient of determination (R~2). Experimental results on a real-large data set show a mean average predictive performance of 83.6% measured in R~2. We apply the learned model to the application of bibliography recommendation and obtain prominent performance improvement in terms of Mean Average Precision (MAP).
机译:通常科学家培养了以前出版物的启发的研究思想,但它们不太可能遵循无限的文学系列中的所有出版物。文学的体积保持极快地扩展,而不是所有文件对学术社会带来平等的影响。意识到潜在的有影响力的文学将在选择重要的研究参考方面的一个先进地位。因此,估计潜在影响具有重要意义。我们研究了识别潜在有影响力的文学的具有挑战性的问题。我们研究了一系列假设关于高度引用的论文的基本特征,并找到一些有趣的模式。根据这些观察,我们学会通过未来的影响预测(FIP)来识别潜在的有影响力的文学,这旨在估计文学的未来影响。该系统将特定发布的一系列特征作为输入,并在给定时间段之后作为输出该物品的估计引文计数。我们考虑了几种回归模型来制定学习过程,并根据确定系数评估它们的性能(R〜2)。实验结果对实际数据集显示,在R〜2中测量的平均平均预测性能为83.6%。我们将学习模式应用于书目建议的应用,并在平均平均精度(地图)方面获得突出的性能改进。

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