论文标题

研究主题在共同创作网络中流动

Research Topic Flows in Co-Authorship Networks

论文作者

Schäfermeier, Bastian, Hirth, Johannes, Hanika, Tom

论文摘要

在科学计量学方面,经常通过共同创作分析科学合作。一个经常被忽视且更难量化的方面是作者来自不同研究主题的专业知识流,这是科学进步的重要组成部分。通过主题流网络(TFN),我们提出了一个图形结构,以分析科学作者及其各自的研究领域之间的研究主题流。 基于多画像和主题模型,我们提出的网络结构解释了室内和跨性别流。我们的方法需要仅构建TFN的出版物语料库(即作者和摘要信息)。由此,通过非阴性矩阵分解自动发现研究主题。其得出的TFN允许应用社交网络分析技术,例如常见指标和社区检测。最重要的是,它允许在研究主题之间以及微观量表之间,即在某些作者之间进行微观量表,即在研究主题之间以及在微观量表之间进行分析。 我们通过将我们的方法应用于两个全面的20 mio。在现场进行了60多年的研究计算机科学和数学研究的出版物。我们的结果提供了证据,表明TFN是合适的,例如,用于分析局部社区,在不同领域中发现重要作者,以及最值得注意的是,对跨性别流的分析,即局部专业知识的转移。除此之外,我们的方法还为未来的研究打开了新的方向,例如研究研究领域之间的影响关系。

In scientometrics, scientific collaboration is often analyzed by means of co-authorships. An aspect which is often overlooked and more difficult to quantify is the flow of expertise between authors from different research topics, which is an important part of scientific progress. With the Topic Flow Network (TFN) we propose a graph structure for the analysis of research topic flows between scientific authors and their respective research fields. Based on a multi-graph and a topic model, our proposed network structure accounts for intratopic as well as intertopic flows. Our method requires for the construction of a TFN solely a corpus of publications (i.e., author and abstract information). From this, research topics are discovered automatically through non-negative matrix factorization. The thereof derived TFN allows for the application of social network analysis techniques, such as common metrics and community detection. Most importantly, it allows for the analysis of intertopic flows on a large, macroscopic scale, i.e., between research topic, as well as on a microscopic scale, i.e., between certain sets of authors. We demonstrate the utility of TFNs by applying our method to two comprehensive corpora of altogether 20 Mio. publications spanning more than 60 years of research in the fields computer science and mathematics. Our results give evidence that TFNs are suitable, e.g., for the analysis of topical communities, the discovery of important authors in different fields, and, most notably, the analysis of intertopic flows, i.e., the transfer of topical expertise. Besides that, our method opens new directions for future research, such as the investigation of influence relationships between research fields.

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