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Research Collaboration Prediction and Recommendation Based on Network Embedding in Co-authorship Networks

机译:基于网络嵌入在共同作者网络中的研究协作预测和推荐

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In large-scale datasets, the researchers' multiple features need to be learned automatically instead of manually defined and enumerated, to improve the efficiency and effect of research collaboration prediction and recommendation. This paper applies the network embedding method to learn the context of each researcher by which the semantic similarities among researchers are calculated. Firstly, the co-authorship network is built in a large-scale dataset where research collaborations are denoted by co-authorships. Then the researchers' semantic contexts in the network are learned by the network embedding method based on deep learning, and each researcher's dense, low-dimensional vector is formed. Finally, the semantic similarities among researchers are calculated through vector similarity indices and quantitatively compared by link prediction. Experiments in the field of library and information science (LIS) verify that the method can improve the accuracy and effectiveness of research collaboration prediction and recommendation.
机译:在大规模数据集中,研究人员需要自动学习多个功能,而不是手动定义和枚举,以提高研究协作预测和推荐的效率和效果。本文应用网络嵌入方法,了解每个研究人员的上下文,计算研究人员之间的语义相似之处。首先,共同作者网络建立在一个大型数据集中,其中研究合作由共同作者表示。然后,网络中的研究人员的语义背景是通过基于深度学习的网络嵌入方法来学习的,并且形成每个研究人员的密集,低维向量。最后,通过链路预测通过矢量相似索引和定量计算研究人员之间的语义相似性。图书馆和信息科学领域的实验(LIS)验证了该方法可以提高研究协作预测和推荐的准确性和有效性。

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