大学排名有统计学意义吗?中国大学与美国大学的比较

L. Leydesdorff, C. Wagner, Lin Zhang
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引用次数: 5

摘要

摘要目的在Leydesdorff、Bornmann和Mingers(2019)的基础上,我们以清华大学和浙江大学的差异为例进行了实证分析。我们讨论了中国大学排名中的差异是否具有统计学意义的问题。我们提出了衡量国家内部或国家之间不同大学之间统计显著性的方法。设计/方法论/方法基于z检验和重叠置信区间,并使用2020年莱顿排名中205所中国大学的数据,我们认为中国研究型大学的三个主要群体可以区分(低、中、高)。研究结果当205所中国大学的样本与2020年莱顿排名中的197所美国大学合并时,结果同样表明了三个主要群体:低、中、高。使用这些数据(莱顿排名和科学网),中国大学的z分数明显低于美国大学,尽管有一些重叠。研究局限性我们从经验上表明,排名的差异可能是由于数据、模型或建模对数据的影响的变化。当我们使用不同的方法时,科学计量学分组并不总是稳定的。实际意义大学之间的差异可以检验其统计意义。统计数字将排名中小数的数值相对化。人们可以在政策辩论中采用低/中/高的方案,并将各个大学更精细的排名留给运营管理和地方环境。原创性/价值在关于大学排名的讨论中,我们认为,在研究评估中,差异是否具有统计学意义的问题没有得到充分解决。
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Are University Rankings Statistically Significant? A Comparison among Chinese Universities and with the USA
Abstract Purpose Building on Leydesdorff, Bornmann, and Mingers (2019), we elaborate the differences between Tsinghua and Zhejiang University as an empirical example. We address the question of whether differences are statistically significant in the rankings of Chinese universities. We propose methods for measuring statistical significance among different universities within or among countries. Design/methodology/approach Based on z-testing and overlapping confidence intervals, and using data about 205 Chinese universities included in the Leiden Rankings 2020, we argue that three main groups of Chinese research universities can be distinguished (low, middle, and high). Findings When the sample of 205 Chinese universities is merged with the 197 US universities included in Leiden Rankings 2020, the results similarly indicate three main groups: low, middle, and high. Using this data (Leiden Rankings and Web of Science), the z-scores of the Chinese universities are significantly below those of the US universities albeit with some overlap. Research limitations We show empirically that differences in ranking may be due to changes in the data, the models, or the modeling effects on the data. The scientometric groupings are not always stable when we use different methods. Practical implications Differences among universities can be tested for their statistical significance. The statistics relativize the values of decimals in the rankings. One can operate with a scheme of low/middle/high in policy debates and leave the more fine-grained rankings of individual universities to operational management and local settings. Originality/value In the discussion about the rankings of universities, the question of whether differences are statistically significant, has, in our opinion, insufficiently been addressed in research evaluations.
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