Qualitative Judgement of Research Impact: Domain Taxonomy as a Fundamental Framework for Judgement of the Quality of Research

被引:0
作者
Fionn Murtagh
Michael Orlov
Boris Mirkin
机构
[1] University of Derby,Department of Computing
[2] Goldsmiths,undefined
[3] University of London,undefined
[4] National Research University Higher School of Economics,undefined
[5] Birkbeck,undefined
[6] University of London,undefined
来源
Journal of Classification | 2018年 / 35卷
关键词
Research impact; Scientometrics; Stratification; Rank aggregation; Multicriteria decision making; Semantic analysis; Taxonomy;
D O I
暂无
中图分类号
学科分类号
摘要
The appeal of metric evaluation of research impact has attracted considerable interest in recent times. Although the public at large and administrative bodies are much interested in the idea, scientists and other researchers are much more cautious, insisting that metrics are but an auxiliary instrument to the qualitative peer-based judgement. The goal of this article is to propose availing of such a well positioned construct as domain taxonomy as a tool for directly assessing the scope and quality of research. We first show how taxonomies can be used to analyze the scope and perspectives of a set of research projects or papers. Then we proceed to define a research team or researcher’s rank by those nodes in the hierarchy that have been created or significantly transformed by the results of the researcher. An experimental test of the approach in the data analysis domain is described. Although the concept of taxonomy seems rather simplistic to describe all the richness of a research domain, its changes and use can be made transparent and subject to open discussions.
引用
收藏
页码:5 / 28
页数:23
相关论文
共 35 条
[1]  
ABRAMO G(2013)National Peer-Review Research Assessment Exercises for the Hard Sciences Can Be a Complete Waste Of Money: The Italian Case Scientometrics 95 311-324
[2]  
CICERO T(2013)Impact Factor Distortions Science 340 787-85
[3]  
ANGELO CA(2010)Long Live the Web Scientific American 303 80-1022
[4]  
ALBERT B(2003)Latent Dirichlet Allocation Journal of Machine Learning Research 3 993-177
[5]  
BERNERS-LEE T(2009)Measuring Research Impact: Developing Practical and Cost-Effective Approaches Evidence and Policy: A Journal of Research, Debate and Practice 5 167-236
[6]  
BLEI DM(2013)Expert Failure: Re-Evaluating Research Assessment PLoS Biology 11 224-431
[7]  
NG AY(2013)Group Size, h-Index, and Efficiency in Publishing in Top Journals Explain Expert Panel Assessments of Research Group Quality and Productivity Research Evaluation 22 429-717
[8]  
JORDAN MI(2015)The Leiden Manifesto for Research Metrics Nature 520 693-614
[9]  
LAFFERTY J(2013)The UK Research Assessment Exercise and the Narrowing of UK Economics Cambridge Journal of Economics 37 612-315
[10]  
CANAVAN J(2008)Editorial The Computer Journal 51 304-353