数据包络分析
吸引力
背景(考古学)
中国大陆
中国
政治学
公共关系
科学政策
平面图(考古学)
业务
知识管理
管理科学
计算机科学
经济
心理学
公共行政
地理
数学优化
法学
考古
数学
精神分析
作者
Keyu Xiang,Haiming Liang,Zhaoxia Guo,Yucheng Dong
标识
DOI:10.1007/s40747-021-00481-z
摘要
Abstract Funding inputs and research outputs have always been two central issues in the science of science. In recent decades, research funding plays an increasingly important role in scientific research. Thus, it is progressively significant for management authorities to measure the research efficiency of highly funded scientists, which can be helpful for them to make effective policies. However, few researchers use quantitative analysis to study these issues. To promote the research in this field, we begin with collecting a dataset. This dataset contains research funding and other information from 345 highly funded scientists in Mainland China. Next, we use the dataset to measure the efficiency of highly funded scientists based on the data envelopment analysis. In this way, highly funded scientists are placed into several levels according to their research inputs and outputs. We also give their attractiveness and progress scores compared to other grades. The learning path for less efficient scientists is also provided. We find that highly funded scientists have relatively high efficiency in three kinds of projects, such as the Major Research Plan. Besides, the career length and career start year are demonstrated to have a limited impact on the highly funded scientists. These patterns are beneficial for the development of the scientific community and management authorities to make policies.
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