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跨学科合著网络在多个尺度上的混合模式。

Mixing Patterns in Interdisciplinary Co-Authorship Networks at Multiple Scales.

机构信息

Unit of Human Communication, Development, and Information Sciences, Faculty of Education, The University of Hong Kong, Hong Kong, China.

Department of Physics, University of Michigan, Ann Arbor, USA.

出版信息

Sci Rep. 2020 May 7;10(1):7731. doi: 10.1038/s41598-020-64351-3.

Abstract

There are inherent challenges to interdisciplinary research collaboration, such as bridging cognitive gaps and balancing transaction costs with collaborative benefits. This raises the question: Does interdisciplinary research collaboration necessarily result in disciplinary diversity among collaborators? We aim to explore this question by assessing collaborative preferences in interdisciplinary research at multiple scales through the examinination of disciplinary mixing patterns at the individual, dyadic, and team level in a coauthor network from the field of artificial intelligence in education, an emerging interdisciplinary area. Our key finding is that disciplinary diversity is reflected by diverse research experiences of individual researchers rather than diversity within pairs or groups of researchers. We also examine intergroup mixing by applying a novel approach to classify the active and non-active researchers in the collaboration network based on participation in multiple teams. We find a significant difference in indicators of academic performance and experience between the clusters of active and non-active researchers, suggesting intergroup mixing as a key factor in academic success. Our results shed light on the nature of team formation in interdisciplinary research, as well as highlight the importance of interdisciplinary training.

摘要

跨学科研究合作存在固有挑战,例如弥合认知差距以及平衡交易成本与合作效益。这就引出了一个问题:跨学科研究合作是否一定会导致合作者之间的学科多样性?我们旨在通过在人工智能教育领域的合著网络中,从个体、对偶和团队层面评估跨学科研究中的合作偏好,来探索这一问题,该网络是一个新兴的跨学科领域。我们的主要发现是,学科多样性反映了个体研究人员不同的研究经验,而不是研究人员个体内部的多样性。我们还通过应用一种新方法,根据参与多个团队的情况对合作网络中的活跃和非活跃研究人员进行分类,来研究组间混合。我们发现,在合作网络中,活跃和非活跃研究人员群体在学术表现和经验指标上存在显著差异,这表明组间混合是学术成功的关键因素。我们的研究结果揭示了跨学科研究中团队形成的本质,同时也强调了跨学科培训的重要性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e95a/7206138/a729967d05f3/41598_2020_64351_Fig1_HTML.jpg

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