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Prediction of new scientific collaborations through multiplex networks

机译:通过多路复用网络预测新的科学合作

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The establishment of new collaborations among scientists fertilizes the scientific environment, fostering novel discoveries. Understanding the dynamics driving the development of scientific collaborations is thus crucial to characterize the structure and evolution of science. In this work, we leverage the information included in publication records and reconstruct a categorical multiplex networks to improve the prediction of new scientific collaborations. Specifically, we merge different bibliographic sources to quantify the prediction potential of scientific credit, represented by citations, and common interests, measured by the usage of common keywords. We compare several link prediction algorithms based on different dyadic and triadic interactions among scientists, including a recently proposed metric that fully exploits the multiplex representation of scientific networks. Our work paves the way for a deeper understanding of the dynamics driving scientific collaborations, and validates a new algorithm that can be readily applied to link prediction in systems represented as multiplex networks.
机译:建立科学家的新合作施肥科学环境,促进了新的发现。了解推动科学合作的发展的动态是至关重要的表征科学的结构和演变。在这项工作中,我们利用出版物记录中包含的信息并重建一个分类的多路复用网络,以改善新科学合作的预测。具体而言,我们合并不同的书目来源,以量化科学信用的预测潜力,由CITATIONS和共同利益表示,通过使用常用关键词来衡量。我们基于科学家之间的不同二元和三元交互进行比较几种链路预测算法,包括最近提出的公制,该指标充分利用科学网络的多路复用表示。我们的工作铺平了更深入了解驾驶科学合作的动态的方法,并验证了一种新的算法,可以容易地应用于表示为多路复用网络的系统中的链路预测。

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