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Excellence networks in science: A Web-based application based on Bayesian multilevel logistic regression (BMLR) for the identification of institutions collaborating successfully

机译:科学领域的卓越网络:基于贝叶斯多级逻辑回归(BMLR)的基于Web的应用程序,用于识别成功协作的机构

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In this study we present an application which can be accessed via www.excellence-networks.net and which represents networks of scientific institutions worldwide. The application is based on papers (articles, reviews and conference papers) published between 2007 and 2011. It uses (network) data, on which the SCImago Institutions Ranking is based (Scopus data from Elsevier). Using this data, institutional networks have been estimated with statistical models (Bayesian multilevel logistic regression, BMLR) for a number of Scopus subject areas. Within single subject areas, we have investigated and visualized how successfully overall an institution (reference institution) has collaborated (compared to all the other institutions in a subject area), and with which other institutions (network institutions) a reference institution has collaborated particularly successfully. The "best paper rate" (statistically estimated) was used as an indicator for evaluating the collaboration success of an institution. This gives the proportion of highly cited papers from an institution, and is considered generally as an indicator for measuring impact in bibliometrics. (C) 2016 Elsevier Ltd. All rights reserved.
机译:在这项研究中,我们提出了一个可以通过www.excellence-networks.net访问的应用程序,该应用程序代表了全球科研机构的网络。该应用程序基于2007年至2011年之间发表的论文(文章,评论和会议论文)。它使用(网络)数据作为SCImago机构排名的基础(Elsevier的Scopus数据)。利用这些数据,已经利用许多Scopus学科领域的统计模型(贝叶斯多级Logistic回归,BMLR)对机构网络进行了估算。在单个主题领域内,我们调查并可视化了一个机构(参考机构)在整体上如何成功地进行了合作(与该主题区域中的所有其他机构相比),以及参考机构与其他机构(网络机构)之间的合作特别成功。 “最佳纸率”(统计估算)用作评估机构协作成功的指标。这给出了来自机构的高被引用论文的比例,通常被认为是衡量文献计量学影响的指标。 (C)2016 Elsevier Ltd.保留所有权利。

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