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Network patterns of university-industry collaboration: A case study of the chemical sciences in Australia

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posted on 2024-08-06, 12:14 authored by Colin Gallagher, Dean LusherDean Lusher, Johan Koskinen, Bopha RodenBopha Roden, Peng WangPeng Wang, Aaron Gosling, Anastasios Polyzos, Martina Stenzel, Sarah HegartySarah Hegarty, Thomas SpurlingThomas Spurling, Gregory SimpsonGregory Simpson
University–industry (U–I) collaboration takes on many forms, from research services, teaching and training, to curiosity-led research. In the chemical industries, academic chemists generate new knowledge, address novel problems faced by industry, and train the future workforce in cutting-edge methods. In this study, we examine the dynamic structures of collaborative research contracts and grants between academic and industry partners over a 5-year period within a research-intensive Australian university. We reconstruct internal contract data provided by a university research office as records of its collaborations into a complex relational database that links researchers to research projects. We then structure this complex relational data as a two-mode network of researcher-project collaborations for utilisation with Social Network Analysis (SNA)—a relational methodology ideally suited to relational data. Specifically, we use a stochastic actor-oriented model (SAOM), a statistical network model for longitudinal two-mode network data. Although the dataset is complicated, we manage to replicate it exactly using a very parsimonious and relatable network model. Results indicate that as academics gain experience, they become more involved in direct research contracts with industry, and in research projects more generally. Further, more senior academics are involved in projects involving both industry partners and other academic partners of any level. While more experienced academics are also less likely to repeat collaborations with the same colleagues, there is a more general tendency in these collaborations, regardless of academic seniority or industry engagement, for prior collaborations to predict future collaborations. We discuss implications for industry and academics.

Funding

ARC Training Centre for the Chemical Industries

Australian Research Council

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ISSN

1588-2861

Journal title

Scientometrics

Volume

128

Issue

8

Pagination

29 pp

Publisher

Springer Science and Business Media LLC

Copyright statement

Copyright © 2023 the authors. This article is licensed under a Creative Commons Attribution 4.0 International License.

Language

eng

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