Title: Andrea Saltelli,
1Models, Uncertainty and Sensitivity
Andrea Saltelli, European Commission, Joint
Research Centre andrea.saltelli_at_jrc.it ECOINFORMA
TICS meeting US Environmental Protection Agency,
Research Triangle Park, North Carolina, April
2008
2On uncertainty 1
"That is what we meant by science. That both
question and answer are tied up with uncertainty,
and that they are painful. But that there is no
way around them. And that you hide nothing
instead, everything is brought out into the
open".
Borderliners, Peter Høeg, Delta publisher, 1995
3On uncertainty 2
EPAs science panel found that quantitative
evidence must be characterized as having
high uncertainties. What to do in the face of
uncertainty is a policy question, not a
scientific question. .. The debate is about
what kinds of uncertainty can be tolerated as a
basis for decision-making.
Hazy reasoning behind clean air David Goldston,
Nature 4523, April 2008 Science alone cant
determine how regulations are written
4On uncertainty 3
How to play uncertainties in environmental
regulation
Source Scientific American, Jun2005, Vol. 292,
Issue 6
5- Fabrication (and politicisation) of
uncertainty The example of the US Data quality
act and of the OMB Peer Review and Information
Quality which
seemed designed to maximize the ability of
corporate interests to manufacture and magnify
scientific uncertainty.
6About the OFFICE OF MANAGEMENT AND BUDGET (OMB)
Proposed Risk Assessment Bulletin (January 9,
2006) http//www.whitehouse.gov/omb/inforeg/ OMB
under attack by US legislators and scientists
The aim is to bog the process down, in the name
of transparency (Robert Shull). Source Colin
Macilwain, Safe and sound? Nature, 19 July 2006.
Main Man. John Graham has led the White House
mission to change agencies' approach to risk
ibidem in Nature
7The critique of models and what sensitivity
analysis has to do with it
8Jared Diamonds Collapse versus Michael
Crichtons State of Fear
9Rising sea level will threaten cities of the
United Kingdom (e.g. London), India Japan and the
Philippines., p. 493.
10 Michael Crichton presents adversarial opinion
on retreating glaciers and thickness of Antarctic
ice cap and contends that sea levels are not
rising.
11They talk as if simulation were real-world data.
They re not. That s a problem that has to be
fixed. I favor a stamp WARNING COMPUTER
SIMULATION MAY BE ERRONEOUS and UNVERIFIABLE.
Like on cigarettes p. 556
12For sure modelling is subject toady to an
unprecedented critique, which is no longer
limited to post-modern philosophers but involves
intellectuals and scientists of different
political hues. Have models fallen out of grace?
13Useless Arithmetic Why Environmental Scientists
Can't Predict the Future by Orrin H. Pilkey and
Linda Pilkey-Jarvis Quantitative mathematical
models used by policy makes and government
administrators to form environmental policies are
seriously flawed
14One of the examples discussed concerns the Yucca
Mountain repository for radioactive waste
disposal, where a very large model called TSPA
(for total system performance assessment) is used
to guarantee the safe containment of the waste.
TSPA is Composed of 286 sub-models.
15TSPA (like any other model) relies on assumptions
-- a crucial one being the low permeability of
the geological formation and hence the long time
needed for the water to percolate from the desert
surface to the level of the underground disposal.
Evidence was produced which could lead to an
upward revision of water permeability of 4 orders
of magnitude (The 36Cl story)
16? The narratives How bad is the modeling that
supports the Department of Energy's assertions
about the safety and permanency of the Yucca
Mountain nuclear waste dump? Execrable, according
to legendary Duke University geologist Orrin
Pilkey and his geologist daughter, Linda
Pilkey-Jarvis, who works for the Washington state
ecology department. Ken Maize Power Blog
17We just cant predict, concludes N. N. Taleb, and
we are victims of the ludic fallacy, of delusion
of uncertainty, and so on. Modelling is just
another attempt to Platonify reality
Nassim Nichola Taleb, The Black Swan, Penguin,
London 2007
18Many will disagree with Pilkey and Taleb. Yet,
stakeholders and media alike expect instrumental
use of models, amplification or dampening of
uncertainty as a function of convenience and so
on.
19The IFPRI had raised about 460,000 for the
modeling, which would have provided insights to
help policymakers
But Greenpeaces Haerlin and others objected
that the models were not transparent. Source
Dueling visions for an hungry world, Erik
Stokstad, 14 MARCH 2008, 319 SCIENCE
20The critique of models
The nature of models, after Rosen
21The critique of models
After Robert Rosen, 1991, World (the natural
system) and Model (the formal system) are
internally entailed - driven by a causal
structure. Efficient, material, final for
world formal for modelNothing entails
with one another World and Model the
association is hence the result of a
craftsmanship.
22The critique of models
George M. Hornberger 1981 Hydrogeologist
Naomi Oreskes 1994 Historian
Jean Baudrillard 1999 Philosopher
23Just philosophy? Maybe not A title during the
RIVM media scandal (1999) RIVM over-exact
prognoses based on virtual reality of computer
models
Jeroen van der Sluijs
- Other Newspaper headlines
- Environmental institute lies and deceits
- Fuss in parliament after criticism on
environmental numbers - The bankruptcy of the environmental numbers
- Society has a right on fair information, RIVM
does not provide it
24Science for the post normal age is discussed in
Funtowicz and Ravetz (1990, 1993, 1999) mostly
in relation to Science for policy use.
Jerry Ravetz
Silvio Funtowicz
25Post Normal Science
Post-Normal Science, a mode of scientific
problem-solving appropriate to policy issues
where facts are uncertain, values in dispute,
stakes high and decisions urgent.
26Post Normal Science
Elements of Post Normal Science Appropriate
management of uncertainty quality and
value-ladenness Plurality of commitments and
perspectives Internal extension of peer community
(involvement of other disciplines) External
extension of peer community (involvement of
stakeholders in environmental assessment
quality control)
27Post Normal Science
Remark on Post Normal Science diagram increasing
stakes increases uncertainty
Funtowicz and Ravetz, Science for the Post Normal
age, Futures, 1993
28GIGO (Garbage In, Garbage Out) Science - where
uncertainties in inputs must be suppressed lest
outputs become indeterminate
Jerry Ravetz
29The critique of models lt-gt Sensitivity
Peter Kennedy, A Guide to Econometrics One of
the ten commandments of applied econometrics
according to Peter Kennedy Thou shall confess
in the presence of sensitivity. Corollary Thou
shall anticipate criticism
30 When reporting a sensitivity analysis,
researchers should explain fully their
specification search so that the readers can
judge for themselves how the results may have
been affected.
31Sensitivity
Definition. The study of how uncertainty in the
output of a model (numerical or otherwise) can be
apportioned to different sources of uncertainty
in the model input. A related practice is
uncertainty analysis', which focuses rather on
quantifying uncertainty in model output. The two
should be run in tandem.
32In sensitivity analysis Type I error assessing
as important a non important factor Type II
assessing as non important an important factor
Type III analysing the wrong problem
33- Type III in sensitivity Examples
- In the case of TSPA (Yucca mountain) a range of
0.02 to 1 millimetre per year was used for
percolation of flux rate. Applying sensitivity
analysis to TSPA could or could not identify this
as a crucial factor, but this would be of scarce
use if the value of the percolation flux were
later found to be of the order of 3,000
millimetres per year.
34Prescriptions for sensitivity analysis
EPAs 2004 guidelines on modelling Models
Guidance Draft - November 2003 Draft Guidance on
the Development, Evaluation, and Application of
Regulatory Environmental Models Prepared by The
Council for Regulatory Environmental Modeling,
http//cfpub.epa.gov/crem/cremlib.cfm
35CREM Prescriptions for sensitivity analysis
- methods should preferably be able to
- deal with a model regardless of assumptions about
a models linearity and additivity - consider interaction effects among input
uncertainties and - an so on
36CREM prescriptions are good. We at JRC works on
practices that that take them into proper
account. What these practices have in common the
aspiration to tackle the curse of dimensionality.
37 Want to to know more? Buy our book! GLOBAL
SENSITIVITY ANALYSIS. The primer John Wiley
Sons, 2008
38Sensitivity analysis and the White House
In the US the Proposed Risk Assessment Bulletin
mentioned before also puts forward prescription
for sensitivity analysis.
394. Standard for Characterizing Uncertainty Influe
ntial risk assessments should characterize
uncertainty with a sensitivity analysis and,
where feasible, through use of a numeric
distribution Sensitivity analysis is
particularly useful in pinpointing which
assumptions are appropriate candidates for
additional data collection to narrow the degree
of uncertainty in the results. Sensitivity
analysis is generally considered a minimum,
necessary component of a quality risk assessment
report.
Source OFFICE OF MANAGEMENT AND BUDGET Proposed
Risk Assessment Bulletin (January 9, 2006)
http//www.whitehouse.gov/omb/inforeg/
40The OMB about transparency
http//www.whitehouse.gov/omb/inforeg/
41The primary benefit of public transparency is not
necessarily that errors in analytic results will
be detected, although error correction is clearly
valuable. The more important benefit of
transparency is that the public will be able to
assess how much an agencys analytic result
hinges on the specific analytic choices made by
the agency. Concreteness about analytic choices
allows, for example, the implications of
alternative technical choices to be readily
assessed. This type of sensitivity analysis is
widely regarded as an essential feature of
high-quality analysis, yet sensitivity analysis
cannot be undertaken by outside parties unless a
high degree of transparency is achieved. The OMB
guidelines do not compel such sensitivity
analysis as a necessary dimension of quality, but
the transparency achieved by reproducibility will
allow the public to undertake sensitivity studies
of interest.
Friday, February 22, 2002 Graphic - Federal
Register, Part IX Office of Management and
Budget Guidelines for Ensuring and Maximizing the
Quality, Objectivity, Utility, and Integrity of
Information Disseminated by Federal Agencies
Notice Republicationhttp//www.whitehouse.gov/om
b/inforeg/
42- Conclusions Role of sensitivity analysis
- (in a post-normal science context)
- Good practice and due diligence (e.g. test
models, obtain parsimonious model representations
) - Check if policy options are distinguishable given
the uncertainties - Contribute to the pedigree of the assessment.
- Falsify an analysis and or / make sure that you
are not falsified.
43- Falsify the analysis (Popperian demarcation)
- Scientific mathematical modelling should
involve constant efforts to falsify the model
(Pilkey and Pilkey Jarvis, op. cit.) - Fight the white swan syndrome (Nassim N.
Taleb, 2007)