Performance measures as forms of evidence for science and technology policy decisions

被引:0
作者
Irwin Feller
机构
[1] American Association for the Advancement of Science,
[2] Pennsylvania State University,undefined
来源
The Journal of Technology Transfer | 2013年 / 38卷
关键词
Science and technology policy; Performance measurement; Evidence based decision making; New public management; 038; 031; 032;
D O I
暂无
中图分类号
学科分类号
摘要
Amidst current widespread calls for evidence based decision making on public investments in science and technological innovation, frequently interpreted to imply the employment of some bundle of output, outcome, productivity, or rate-of-return measures, the promises and limitations of performance measures, singly or collectively, varies greatly across contexts. The promises reflect belief in, scholarly research supportive of, and opportunistic provision of performance measures that respond or cater to executive and legislative branch expectations or hopes that such measures will facilitate evidence-based decision-making. The limitations reflect research on the dynamics of scientific discovery, technological innovation and the links between the two that even when well done and used by adepts, performance measures at best provide limited guidance for future expenditure decisions and at worst are rife with potential for incorrect, faddish, chimerical, and counterproductive decisions. As a decision-making enhancement, performance measurement techniques have problematic value when applied to the Big 3 questions of U.S. science policy: (1) what is the optimal size of the Federal government’s investments in science and technology programs; (2) the allocation of these investments among missions/agencies/and programs (and thus fields of science); and (3) the selection of performers, funding mechanisms, and the criteria used to select projects and performers.
引用
收藏
页码:565 / 576
页数:11
相关论文
共 47 条
[1]  
Auranen O(2010)University research funding and publication performance—An international comparison Research Policy 39 822-834
[2]  
Nieminen M(2010)A multi-systems perspective for the science of team science Science Translational Medicine 2 1-5
[3]  
Borner K(2005)Mapping the backbone of science Scientometrics 64 351-374
[4]  
Contractor N(2005)Patents and appropriation: Concerns and evidence Journal of Technology Transfer 30 57-71
[5]  
Falk-Krzesinski H(2002)Links and impacts: The influence of public research on industrial R&D Management Science 48 1-23
[6]  
Fiore S(2008)An empirical study of scientific production: A cross country analysis, 1981–2002 Research Policy 37 565-579
[7]  
Hall K(1979)Economic benefits from research: An example from agriculture Science 205 1101-1107
[8]  
Keyton J(2002)Performance measurement redux American Journal of Evaluation 23 435-452
[9]  
Boyack K.(2010)Science advice as procedural rationality: Reflections on the National Research Council Minerva 48 259-275
[10]  
Klavans R.(2009)Developing science, technology and innovation indicators: What we can learn from the past Research Policy 38 583-589