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Structural Characteristics of the Co-contributorship Network and Its Application in Collaborative Group Identification |
Lu Chao1, Li Mengting1, Chen Xiujuan2, Dong Ke3,4, Wei Ruibin5 |
1.Business School, Hohai University, Nanjing 211100 2.School of Journalism and Communication, Nanjing Normal University, Nanjing 210097 3.Research Institute for Data Management & Innovation, Nanjing University, Suzhou 215163 4.Laboratory of Data Intelligence and Interdisciplinary lnnovation, Nanjing University, Nanjing 210023 5.School of Management Science and Engineering, Anhui University of Finance and Economics, Bengbu 233030 |
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Abstract The construction of organized scientific research teams relies on a scientific understanding of the phenomena and patterns of research collaboration. The commonly used research model for scientific collaboration, the co-authorship network, assumes equal contributions among co-authors for the same research output, which often contradicts actual research collaboration practices. The emergence of author contribution statement data provides valuable material for revealing more detailed collaboration practices. This study proposes a novel collaboration network, which is called the “co-contributorship network” and constructed using contribution declaration data, to provide a new tool for investigating scientific collaboration issues in depth. Using article data in the field of medicine from PLoS as an example and the co-authorship network as a baseline, we explore the physical properties of this new collaboration network through its network structure characteristics. Furthermore, we focus on identifying collaboration groups, an essential research direction, to better understand the practical value of the co-contributorship network. The study finds the following: in terms of the network structure, the co-contributorship network is sparser than the co-authorship network. The results of both networks regarding the identification of collaboration groups partially coincide, with an overlap of approximately 57%. Approximately 32% of the collaboration groups experienced restructuring in the co-contributorship network. The evaluation results show that collaboration groups in the co-contributorship network tend to be more focused on research topics compared to those in the co-authorship network, but the difference is not statistically significant. Overall, based on our dataset, the co-contributorship network exhibits a more favorable community structure compared to the co-authorship network. It helps identify finer-grained collaboration groups with higher consistency in their research topics among the identified groups.
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Received: 17 March 2023
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