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Interinstitutional Research Team Formation Based on Bibliographic Network Embedding

机译:基于书目网络嵌入的识别基金研究团队形成

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This study aims at forming research teams for interinstitutional collaborations. Research institutes have their own purposes and topics of interest. Thus, supporting joint research between multiple institutes, we have to consider not only synergies between scholars but also purposes of the institutes. To solve this problem, we propose a bibliographic network embedding method that can learn characteristics of institutes, not only of each scholar. First, we compose a bibliographic network that consists of scholars, publications, venues, research projects, and institutes. Collaboration styles and research topics of institutes and scholars are extracted by mining subgraphs from the bibliographic network. Then, vector representations of network nodes are learned based on occurrences of subgraphs on the nodes and neighborhoods of the nodes. Based on the vector representations, we train multilayer perceptrons (MLP) to assess collaboration probability between scholars affiliated in different institutes. For training the MLP, we suggest three strategies: (i) considering every collaboration, (ii) focusing on interinstitutional collaborations, and (iii) focusing on collaboration outcomes. To evaluate the proposed methods, we have analyzed research collaborations of POSTECH (Pohang University of Science and Technology) and RIST (Research Institute of Industrial Science and Technology) from 2011 to 2020. Then, we conducted the research team formation for joint research of the two institutes according to two purposes: pure research and commercialization research.
机译:本研究旨在形成互动合作的研究团队。研究机构有自己的目的和兴趣的主题。因此,支持多个研究所之间的联合研究,我们不仅要考虑学者之间的协同作用,还要考虑研究所的目的。为了解决这个问题,我们提出了一项书目网络嵌入方法,可以学习机构的特征,而不仅仅是每个学者。首先,我们撰写由学者,出版物,场所,研究项目和研究所组成的书目网络。从书目网络中采矿子图提取了机构和学者的协作风格和研究主题。然后,基于节点的节点和邻域的子图的出现来学习网络节点的矢量表示。基于矢量表示,我们培训多层的感知者(MLP)来评估不同机构附属学者之间的合作概率。对于培训MLP,我们建议三项策略:(i)考虑每次合作,(ii)关注识别际合作,(iii)重点是合作成果。为了评估拟议的方法,我们从2011年到2020年分析了Postech(Pohang Theich Technoloce)和Rist(工业科学与技术研究所)的研究合作的研究。然后,我们开展了联合研究的研究团队形成两所研究所根据两个目的:纯研究和商业化研究。

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