Research Topic Flows in Co-Authorship Networks
Bastian Sch\"afermeier, Johannes Hirth, Tom Hanika

TL;DR
This paper introduces the Topic Flow Network (TFN), a graph-based method for analyzing the transfer of expertise between research topics and authors in scientific collaboration networks, using publication data and topic modeling.
Contribution
The paper presents a novel TFN structure that captures inter- and intratopic flows in co-authorship networks, enabling large-scale analysis of research topic dynamics.
Findings
TFNs effectively identify topical communities.
TFNs reveal influential authors across fields.
TFNs facilitate analysis of expertise transfer between topics.
Abstract
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…
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