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网络表示学习在学者科研合作预测中的应用研究
引用本文:林原,王凯巧,刘海峰,许侃,丁堃,孙晓玲.网络表示学习在学者科研合作预测中的应用研究[J].情报学报,2020,39(4):367-373.
作者姓名:林原  王凯巧  刘海峰  许侃  丁堃  孙晓玲
作者单位:大连理工大学,大连 116024;大连理工大学,大连 116024;大连理工大学,大连 116024;大连理工大学,大连 116024;大连理工大学,大连 116024;大连理工大学,大连 116024
基金项目:国家自然科学基金面上项目“融合多源信息的学术推荐研究”(61976036);国家自然科学基金项目“基于引用极性和评论挖掘的论文综合评价模型研究”(61772103);辽宁省社会科学规划基金项目“基于专利的辽宁装备制造业技术创新趋势研究”(L17CGL009)。
摘    要:在大数据环境下,科研合作是提高科研水平、促进科研产出的重要途径。如何在浩如烟海的学者、机构、领域信息中准确地找到与自身研究方向相近的合作对象是近年来科研合作预测的研究重点。本文通过科学学领域科学文献的记录数据,构建作者-作者、机构-机构、作者-机构、作者-关键词、机构-关键词的共现网络,接着通过网络表示方法学习作者、机构、关键词在所处网络中的语境信息,将信息实体表示成相同空间的低维稠密向量,最后根据表示向量的相似度计算实现合作对象、合作领域挖掘。通过网络表示学习方法能实现多种异质信息融合,定量计算各信息实体间的关联强度,可以很好地捕捉科研网络中学者-学者、学者-机构、学者-关键词的关系,准确地为学者挖掘潜在合作者、合作机构和关键词。

关 键 词:合作推荐  科研预测  网络表示学习  node2vec

Application of Network Representation Learning in the Prediction of Scholar Academic Cooperation
Lin Yuan,Wang Kaiqiao,Liu Haifeng,Xu Kan,Ding Kun,Sun Xiaoling.Application of Network Representation Learning in the Prediction of Scholar Academic Cooperation[J].Journal of the China Society for Scientific andTechnical Information,2020,39(4):367-373.
Authors:Lin Yuan  Wang Kaiqiao  Liu Haifeng  Xu Kan  Ding Kun  Sun Xiaoling
Institution:(Dalian University of Technology,Dalian 116024)
Abstract:In the context of Big Data, scientific cooperation has become an important means to improve the level of scientific research and output. A research focus in recent years includes accurately identifying the cooperation objects that are suitable for scholars, institutions, and fields among the vast numbers of these entities. This study constructs a co-occurrence network of author-author, institution-institution, author-institution, author-keyword, and institution-keyword through the recorded data of scientific literature in the field of science of science. The network representation method is used to learn the context information of authors, institutions, and keywords in a network, and the information entity is represented as a lowdimensional dense vector of the same space. Finally, the mining of the cooperation object is achieved based on the similarity calculation of representation vector. The network representation learning method can realize a variety of heterogeneous information fusion, quantitatively calculate the correlation strength between each information entity, capture the relationship between scholars-scholars, scholars-institutions, and scholars-keywords in the research network, accurately explore potential collaborators, and partner institutions and keywords for scholars.
Keywords:cooperative recommendation  scientific research prediction  network representation learning  node2vec
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