DANS is an institute of the Royal Netherlands Academy of Arts and Sciences (KNAW) and the Netherlands Organization for Scientific Research (NWO) that focuses on digital archiving and long-term accessibility of research data. The presentation discusses the development of metrics to measure science over time, including bibliometrics, altmetrics, and new types of metrics for research assessment. It argues that metrics should be tailored to their purpose and granularity of analysis, and that qualitative research should complement quantitative metrics. New research information systems and ontologies can help understand science dynamics if they clearly communicate their scope and limitations.
Z Score,T Score, Percential Rank and Box Plot Graph
Metrics for Science Policy
1. dans.knaw.nl
DANS is an institute of KNAW en NWO
Bibliometrics, Webometrics, Altmetrics,
Alternative metrics
A possible Zeno effect for science metrics, and why we
nevertheless look for metrics?
Andrea Scharnhorst
www.knowescape.org
Workshop “Alternative metrics or tailored metrics: Science dynamics for
science policy”, November 9-10, 2016 Warsaw
4. Motivation
PhD on math
models of science
dynamics –
measurement –
scientometrics
(e.g., # researcher
in a field; # PhD
students in a field)
Use of metrics in
science policy –
EastEurope in the
mirror of
bibliometrics –
Matthew effect of
countries (Bonitz)
New practices, new
metrics
Web indicators for
scientific,
technological and
innovation research
– WISER 2002-5
Academic Careers
Understood
through
Measurement and
Norms - ACUMEN
2011-14
Impact-EV -
Evaluation of SSH
2013-17
Visualisation of
structure and
evolution of science
Visualising NARCIS
Mapping Digital
Humanities
Digital Observatory
for DH (Pilot)
Semantic web
technologies - Open
Data
CEDAR Dutch
Historic Census
New practices
Research Data -
FAIR
6. Growth of science and indicator systems –
How metrics came about?
1950 1960 1970 1980 1990 2000 2010
NSF (1950)
https://nsf.gov/statistics/
i.e., PhDs per field
OECD (1961)
Frascati Manual 63
EuroCRIS (2002)
CERIF Standard Data Model
VIVITI (1952)
RZH
ISI (1960)
WoK, Citation indexing
Altmetrics.com (2011)
VIVO Open source software/ontology for scholarship
wikipedia
Google Scholar (2004)
CASRAI (2006)
Open standards RI, CA
7. Box model of research
Output
journal articles; citation
impact; patents
Input
Human capital: authors; ….
?students?
Expenditures: projects;
...?infrastructures?
Process
8. Tailored metrics or all-in metrics?
Perhaps counter-intuitively, when it comes to metrics more is not necessarily always better.
When deciding what to record, you should picture yourself at operationally significant
periods within the year like year-end, budget submission time, and month end, imagining
the information you would ideally like to report upwards or use to make operational
decisions for your department. For example a handy technique is to design your ideal
annual departmental report and then work backwards asking whether at present you have
the necessary data to produce the report.
The annual report should talk to your firm’s strategic goals if it is to be effective and well
received. Of course you won’t collect metrics solely for upward reporting to management,
you’ll also collect metrics to help run your department better. Differentiate between
external and internal metrics – those meant to help you and your team run things better,
and those meant to communicate your value externally within the firm.
Peter Borchers, Managing Director
http://priorysolutions.com/articles/law-firm-library-metrics-aall-session-summary/
9. Metrics - What for?
Questions
To better understand science dynamics
To better monitor science dynamics
How have disciplines developed over centuries?
Do innovation, institutionalisation, education operate
on different time scales?
What is the dynamic of the academic job market?
How much ‘small fields’ does an university need?
How adequate are national portfolios to team science?
Impact of large scale infrastructure investment
Who does re-use research data?
10. Blind spots – infrastructure and new fields
Start of large scale
digitization projects at the
Royal Library
Start of the "Cultural
memory of The Netherlands"
Start of Staten-Generaal
Digitaal - Parlamentary
Debates
LifeCoursesInContext
NWO - Mega RIS - Digital
Databank for Newspapers
(DDD)
PoliticalMashup
CEDAR - Dutch Historic
Census
EliteNetworkShifts
DELPHER - Portal to digital
sources of the KB
ExPoSe
Digging into Linked
Parliamentary Data
1-Jan-99 31-Dec-00 31-Dec-02 30-Dec-04 30-Dec-06 29-Dec-08 29-Dec-10 28-Dec-12 28-Dec-14 27-Dec-16
From Digitization to Digital Humanities
13. But be aware
Local (geo, topic, institutional)
science measurement
Global, cross-domain,
long-term
ResearchInformation
Systems
Not all measurement should be pursuit on all levels of granularity and all time!
Up-scaling comes with a price!
14. Take away
Understanding Monitoring
Combine qualitative and quantitative research
Make sure to refer to standard data models – re-use ontologies
RI data are ‘just’ data – use the FAIR principles (findable, accessible, interoperable, re-usable)
When experimenting with new Research
Information Systems communicate where they
are located (local-global; incidental-long-
time;….)
Communicate about error margin’s, uncertainty and ambiguity – visualise!
15. References
Godin, B. (2005). Measurement and statistics on science and technology: 1920 to the present. London: Routledge.
Godin, B. (2001). The Emergence of Science and Technology Indicators: Why Did Governments Supplement Statistics With
Indicators? (No. 8). Montreal. Retrieved from http://www.csiic.ca/PDF/Godin_8.pdf - (annex: NSF indicators (scores/feasibility),
considered by not recommended)
Priem, J., Taraborelli, D., Groth, P., & Neylon, C. (2010). Alt-metrics: a manifesto. October. Retrieved from
http://altmetrics.org/manifesto/
Diana Hicks, & Wouters, P. (2015). The Leiden Manifesto for research metrics. Use these ten principles to guide research
evaluation... Nature, 520(7548), 9–11. doi:10.1038/520429a
Borgman, C. L. (2015). Big data, little data, no data: Scholarship in the networked world. Cambridge, Mass: MIT Press
Börner, K. (2010). Atlas of science: Visualizing what we know. Cambridge, Mass: MIT Press.
Börner, K. (2015). Atlas of knowledge: Anyone can map. Cambridge, Mass: MIT Press.
Wilkinson, M. D., Dumontier, M., Aalbersberg, I. J., Appleton, G., Axton, M., Baak, A., ... Mons, B. (2016). The FAIR Guiding
Principles for scientific data management and stewardship. Nature, 3, 160018. DOI: doi:10.1038/sdata.2016.18
16. dans.knaw.nl
DANS is an institute of KNAW en NWO
Thanks for your attention!
Andrea.scharnhorst@dans.knaw.nl
@ScharnhorstA @knowescape
Dans.knaw.nl