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Predicting scientific breakthroughs based on knowledge structure variations

机译:基于知识结构变化预测科学突破

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摘要

Breakthrough research plays an essential role in the advancement of the scientific system. The identification and recognition of scientific breakthroughs is thus of extreme importance. We propose a citing-structure perspective for observing the unfolding of breakthrough research from variations in knowledge structure. The hypothesis is empirically validated that scientific breakthroughs show distinctive knowledge structure characteristics, which are further utilized to predict breakthroughs in their early stage of formation. These characteristics include average clustering coefficient, average degree, maximum closeness centrality, and maximum eigenvector centrality in the direct citing networks of a breakthrough publication. Several explanations are provided for the effectiveness of the predictive models. We also show that: (1) the number of direct citation counts is of low predictive power, with even a negative impact on prediction performance; (2) disciplinary differences exist in knowledge structure, and this should be taken into account; (3) breakthrough characteristics are most prominent in the first layer of citing networks; (4) timing is critical, and 2- to 3-year-old citing networks have greater predictive power.
机译:突破性研究在科学系统的进步方面发挥着重要作用。因此,对科学突破的识别和识别是极度重要的。我们提出了一种倾向性的结构视角,用于观察知识结构变化的突破性研究的展开。虚拟化的假设验证,科学突破表现出独特的知识结构特征,其进一步利用来预测其早期形成的突破。这些特征包括平均聚类系数,平均程度,最大近的中心和最大突破性网络中的直接网络中的最大特征传染媒介。提供了几种解释,用于预测模型的有效性。我们还表明:(1)直接引用计数的数量是低预测能力,甚至对预测性能的负面影响; (2)知识结构中存在的纪律差异,应考虑到这一点; (3)突破特征在第一层锡特网络中最突出; (4)计时至关重要,2至3岁的引用网络具有更大的预测力。

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