Sensitivity Auditing
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Sensitivity auditing is an extension of
sensitivity analysis Sensitivity analysis is the study of how the uncertainty in the output of a mathematical model or system (numerical or otherwise) can be divided and allocated to different sources of uncertainty in its inputs. A related practice is uncertainty anal ...
for use in policy-relevant modelling studies. Its use is recommended - e.g. in the European Commission Impact assessment guidelines and by the European Science Academies- when a
sensitivity analysis Sensitivity analysis is the study of how the uncertainty in the output of a mathematical model or system (numerical or otherwise) can be divided and allocated to different sources of uncertainty in its inputs. A related practice is uncertainty anal ...
(SA) of a model-based study is meant to demonstrate the robustness of the evidence provided by the model, but in a context where the inference feeds into a policy or decision-making process.Saltelli, A., van der Sluijs, J., Guimarães Pereira, Â., 2013, Funtowiz, S.O., What do I make of your Latinorum? Sensitivity auditing of mathematical modelling, International Journal Foresight and Innovation Policy, 9 (2/3/4), 213–234.


Approach

In settings where scientific work feeds into policy, the framing of the analysis, its institutional context, and the motivations of its author may become highly relevant, and a pure SA - with its focus on parametric (i.e. quantified) uncertainty - may be insufficient. The emphasis on the framing may, among other things, derive from the relevance of the policy study to different constituencies that are characterized by different norms and values, and hence by a different story about `what the problem is' and foremost about `who is telling the story'. Most often the framing includes implicit assumptions, which could be political (e.g. which group needs to be protected) all the way to technical (e.g. which variable can be treated as a constant). In order to take these concerns into due consideration, sensitivity auditing extends the instruments of
sensitivity analysis Sensitivity analysis is the study of how the uncertainty in the output of a mathematical model or system (numerical or otherwise) can be divided and allocated to different sources of uncertainty in its inputs. A related practice is uncertainty anal ...
to provide an assessment of the entire knowledge- and model-generating process. It takes inspiration from
NUSAP NUSAP is a notational system for the management and communication of uncertainty in science for policy, based on five categories for characterizing any quantitative statement: Numeral, Unit, Spread, Assessment and Pedigree. NUSAP was introduced by S ...
,Van der Sluijs JP, Craye M, Funtowicz S, Kloprogge P, Ravetz J, Risbey J (2005) Combining quantitative and qualitative measures of uncertainty in model based environmental assessment: the NUSAP system. Risk Analysis 25(2):481-492 a method used to qualify the worth (quality) of quantitative information with the generation of `Pedigrees' of numbers. Likewise, sensitivity auditing has been developed to provide pedigrees of models and model-based inferences. Sensitivity auditing is especially suitable in an adversarial context, where not only the nature of the evidence, but also the degree of certainty and uncertainty associated to the evidence, is the subject of partisan interests. These are the settings considered in
Post-normal science Post-normal science (PNS) was developed in the 1990s by Silvio Funtowicz and Jerome R. Ravetz.Funtowicz, S. O. and Ravetz, J. R., 1991. "A New Scientific Methodology for Global Environmental Issues", in Costanza, R. (ed.), Ecological Economics: ...
Funtowicz, S. O. & Ravetz, J. R. 1993. Science for the post-normal age. Futures, 25(7), 739–755. or in
Mode 2 A knowledge production mode is a term from the sociology of science which refers to the way (scientific) knowledge is produced. So far, three modes have been conceptualized. Mode 1 production of knowledge is knowledge production motivated by scie ...
Gibbons, Michael; Camille Limoges; Helga Nowotny; Simon Schwartzman; Peter Scott; Martin Trow (1994). The new production of knowledge: the dynamics of science and research in contemporary societies. London: Sage. . science.
Post-normal science Post-normal science (PNS) was developed in the 1990s by Silvio Funtowicz and Jerome R. Ravetz.Funtowicz, S. O. and Ravetz, J. R., 1991. "A New Scientific Methodology for Global Environmental Issues", in Costanza, R. (ed.), Ecological Economics: ...
(PNS) is a concept developed by
Silvio Funtowicz Silvio O. Funtowicz (born 1946) is a philosopher of science active in the field of science and technology studies. He created the NUSAP, a notational system for characterising uncertainty and quality in quantitative expressions, and together with ...
and
Jerome Ravetz Jerome (Jerry) Ravetz is a philosopher of science. He is best known for his books analysing scientific knowledge from a social and ethical perspective, focussing on issues of quality. He is the co-author (with Silvio Funtowicz) of the NUSAP ...
,Funtowicz, S.O. and Jerome R. Ravetz (1991). "A New Scientific Methodology for Global Environmental Issues." In Ecological Economics: The Science and Management of Sustainability. Ed. Robert Costanza. New York: Columbia University Press: 137–152.Funtowicz, S. O., & Ravetz, J. R. 1992. Three types of risk assessment and the emergence of postnormal science. In S. Krimsky & D. Golding (Eds.), Social theories of risk (pp. 251–273). Westport, CT: Greenwood. which proposes a methodology of inquiry that is appropriate when “facts are uncertain, values in dispute, stakes high and decisions urgent” (Funtowicz and Ravetz, 1992: 251–273).
Mode 2 A knowledge production mode is a term from the sociology of science which refers to the way (scientific) knowledge is produced. So far, three modes have been conceptualized. Mode 1 production of knowledge is knowledge production motivated by scie ...
Science, coined in 1994 by Gibbons et al., refers to a mode of production of scientific knowledge that is context-driven, problem-focused and interdisciplinary. Carrozza (2015)Carrozza, C., 2015. “Democratizing Expertise and Environmental Governance: Different Approaches to the Politics of Science and their Relevance for Policy Analysis”, Journal of Environmental Policy & Planning, 17(1), 108-126. offers a discussion of these concepts and approaches. Sensitivity auditing - together with
post-normal science Post-normal science (PNS) was developed in the 1990s by Silvio Funtowicz and Jerome R. Ravetz.Funtowicz, S. O. and Ravetz, J. R., 1991. "A New Scientific Methodology for Global Environmental Issues", in Costanza, R. (ed.), Ecological Economics: ...
is one of the lenses recommended to study sustainability in.Saltelli, A., Benini, L., Funtowicz, S., Giampietro, M., Kaiser, M., Reinert, E. S., & van der Sluijs, J. P. (2020). The technique is never neutral. How methodological choices condition the generation of narratives for sustainability. Environmental Science and Policy, Volume 106, April 2020, Pages 87-98, https://doi.org/10.1016/j.envsci.2020.01.008 Sensitivity auditing is recommended by the
European Commission The European Commission (EC) is the executive of the European Union (EU). It operates as a cabinet government, with 27 members of the Commission (informally known as "Commissioners") headed by a President. It includes an administrative body o ...
for use in
impact assessment Policy Impact Assessments (IAs) are formal, evidence-based procedures that assess the economic, social, and environmental effects of public policy. They have been incorporated into policy making in the OECD countries and the European Commission. Ke ...
s in order to improve the quality of model-based evidence used to support policy decisions.European Commission. 2021. “Better Regulation Toolbox.” November 25.
/ref> Similar recommendations can be found in the report from the European Academies’ association of science for policy
SAPEA The Scientific Advice Mechanism is a service created by the European Commission which provides independent science advice directly to European Commissioners to inform their decision-making. The Mechanism consists of two parts: the Group of Chief ...
.


The rules

Sensitivity auditing is summarised by seven rules or guiding principles: # Check against the rhetorical use of mathematical modeling. Question addressed: is the model being used to elucidate or to obfuscate?; # Adopt an `assumption hunting' attitude. Question addressed: what was `assumed out'? What are the tacit, pre-analytical, possibly normative assumptions underlying the analysis?; # Detect Garbage In Garbage Out (GIGO). Issue addressed: artificial deflation of uncertainty operated in order to achieve a desired inference at a desired level of confidence. It also works on the reverse practice, the artificial inflation of uncertainties, e.g. to deter regulation; # Find sensitive assumptions before they find you. Issue addressed: anticipate criticism by doing careful homework via sensitivity and uncertainty analyses before publishing results. # Aim for transparency. Issue addressed: stakeholders should be able to make sense of, and possibly replicate, the results of the analysis; # Do the right sums, which is more important than `Do the sums right'. Issue addressed: is the viewpoint of a relevant stakeholder being neglected? Who decided that there was a problem and what the problem was? # Focus the analysis on the key question answered by the model, exploring the entire space of the assumptions holistically. Issue addressed: don't perform perfunctory analyses that just `scratch the surface' of the system's potential uncertainties. The first rule looks at the instrumental use of mathematical modeling to advance one's agenda. This use is called rhetorical, or strategic, like the use of Latin to confuse or obfuscate an interlocutor. The second rule about `assumption hunting' is a reminder to look for what was assumed when the model was originally framed. Modes are full of
ceteris paribus ' (also spelled '; () is a Latin phrase, meaning "other things equal"; some other English translations of the phrase are "all other things being equal", "other things held constant", "all else unchanged", and "all else being equal". A statement ...
assumptions. For example, in economics, the model can predict the result of a shock to a given set of equations, assuming that all the rest - all other input variables and inputs - remain equal, but in real life "ceteris" are never "paribus", meaning that variables tend to be linked with one another, so they cannot realistically change independently of one another. Rule three is about artificially exaggerating or playing down uncertainties wherever convenient. The tobacco lobbies exaggerated the uncertainties about the health effects of smoking according to Oreskes and Conway, Oreskes N, Conway EM (2010) Merchants of Doubt: How a Handful of Scientists Obscured the Truth on Issues from Tobacco Smoke to Global Warming. Bloomsbury Press, New York. while advocates of the death penalty played down the uncertainties in the negative relations between capital punishment and crime rate.Leamer EE (2010) Tantalus on the road to asymptopia. Journal of Economic Perspectives 4(2):31-46. Clearly the latter wanted the policy, in this case the death penalty, and were interested in showing that the supporting evidence was robust. In the former case the lobbies did not want regulation (e.g. bans on tobacco smoking in public places) and were hence interested in amplifying the uncertainty in the smoking-health effect causality relationship. Rule four is about `confessing' uncertainties before going public with the analysis. This rule is also one of the commandments of applied econometrics according to Kennedy:Kennedy, P. (2007) A Guide to Econometrics, 5th ed., p.396, Blackwell Publishing, Oxford. `Thou shall confess in the presence of sensitivity. Corollary: Thou shall anticipate criticism'. According to this rule, a
sensitivity analysis Sensitivity analysis is the study of how the uncertainty in the output of a mathematical model or system (numerical or otherwise) can be divided and allocated to different sources of uncertainty in its inputs. A related practice is uncertainty anal ...
should be performed before the results of a modeling study are published. There are many good reasons for doing this, one being that a carefully performed
sensitivity analysis Sensitivity analysis is the study of how the uncertainty in the output of a mathematical model or system (numerical or otherwise) can be divided and allocated to different sources of uncertainty in its inputs. A related practice is uncertainty anal ...
often uncovers plain coding mistakes or model inadequacies. The other is that, more often than not, the analysis reveals uncertainties that are larger than those anticipated by the model developers. Rule five is about presenting the results of the modeling study in a transparent fashion. Both rules originate from the practice of impact assessment, where a modeling study presented without a proper SA, or as originating from a model which is in fact a black box, may end up being rejected by stakeholders.Saltelli, A., Funtowicz, S., 2014, When all models are wrong: More stringent quality criteria are needed for models used at the science-policy interface, Issues in Science and Technology, Winter 2014, 79-85. Both rules four and five suggest that reproducibility may be a condition for transparency and that this latter may be a condition for legitimacy.Saltelli, A., Funtowicz, S., 2015 Evidence-based policy at the end of the Cartesian Dream: The case of mathematical modelling, in "The end of the Cartesian dream", Edited by Ângela Guimarães Pereira, and Silvio Funtowicz, Routledge, p. 147-162. Rule six, about doing the right sum, is not far from the `assumption-hunting' rule; it is just more general. It deals with the fact that often an analyst is set to work on an analysis arbitrarily framed to the advantage of a party. Sometime this comes via the choice of the discipline selected to do the analysis. Thus an environmental impact problem may be framed through the lenses of economics, and presented as a cost benefit or risk analysis, while the issue has little to do with costs or benefits or risks and a lot to do with profits, controls, and norms. An example is in Marris et al.Marris, C., Wynne, B., Simmons, P., and Weldon, Sue. 2001. Final Report of the PABE Research Project Funded by the Commission of European Communities, Contract number: FAIR CT98-3844 DG12-SSMI) Dec, Lancaster: University of Lancaster. on the issue of GMOs, mostly presented in the public discourse as a food safety issue while the spectrum of concerns of GMO opponents - including lay citizens - appears broader. An approach which extends this particular rule to a spectrum of plausible frames is the so-called
Quantitative storytelling Quantitative storytelling (QST) is a systematic approach used to explore the multiplicity of frames potentially legitimate in a scientific study or controversy.[Giampietro, M., Aspinall, R. J., Ramos-Martin, J. and Bukkens, S. G. F. (2014) Resource ...
. Rule seven is about avoiding a perfunctory
sensitivity analysis Sensitivity analysis is the study of how the uncertainty in the output of a mathematical model or system (numerical or otherwise) can be divided and allocated to different sources of uncertainty in its inputs. A related practice is uncertainty anal ...
. A SA where each uncertain input is moved at a time while leaving all other inputs fixed is perfunctory.Saltelli, A., Annoni, P., 2010, How to avoid a perfunctory sensitivity analysis, Environmental Modeling and Software, 25, 1508-1517 https://doi.org/10.1016/j.envsoft.2010.04.012. A true SA should make an honest effort at exploring all uncertainties simultaneously, leaving the model free to display its full nonlinear and possibly non-additive behaviour. A similar point is made in Sam L. Savage's book `The flaw of averages'.Savage SL (2009) The Flaw of Averages: Why We Underestimate Risk in the Face of Uncertainty, Wiley.


Questions addressed by sensitivity auditing

In conclusion, these rules are meant to help an analyst to anticipate criticism, in particular relating to model-based inference feeding into an impact assessment. What questions and objections may be received by the modeler? Here is a possible list: * You treated X as a constant when we know it is uncertain by at least 30% * It would be sufficient for a 5% error in X to make your statement about Z fragile * Your model is but one of the plausible models - you neglected model uncertainty * You have instrumentally maximized your level of confidence in the results * Your model is a black box - why should I trust your results? * You have artificially inflated the uncertainty * Your framing is not socially robust * You are answering the wrong question


Sensitivity auditing in the European Commission Guidelines

Sensitivity auditing is described in the European Commission Guidelines for impact assessment. Relevants excerpts are (pp. 392): :" here there is a major disagreement among stakeholders about the nature of the problem, … then sensitivity auditing is more suitable but sensitivity analysis is still advisable as one of the steps of sensitivity auditing." :"Sensitivity auditing, is a wider consideration of the effect of all types of uncertainty, including structural assumptions embedded in the model, and subjective decisions taken in the framing of the problem." :"The ultimate aim is to communicate openly and honestly the extent to which particular models can be used to support policy decisions and what their limitations are." :"In general sensitivity auditing stresses the idea of honestly communicating the extent to which model results can be trusted, taking into account as much as possible all forms of potential uncertainty, and to anticipate criticism by third parties."


SAPEA report

The European Academies’ association of science for policy
SAPEA The Scientific Advice Mechanism is a service created by the European Commission which provides independent science advice directly to European Commissioners to inform their decision-making. The Mechanism consists of two parts: the Group of Chief ...
describes in detail sensitivity auditing in its 2019 report entitled
Making sense of science for policy under conditions of complexity and uncertainty
.Science Advice for Policy by European Academies
Making sense of science for policy under conditions of complexity and uncertainty
Berlin, 2019.


Applications

Application of concepts from sensitivity auditing are to the OECD-PISA study,L. Araujo, A. Saltelli, and S. V. Schnepf, “Do PISA data justify PISA-based education policy?,” Int. J. Comp. Educ. Dev., vol. 19, no. 1, pp. 20–34, 2017 https://doi.org/10.1108/IJCED-12-2016-0023. food security,A. Saltelli and S. Lo Piano, “Problematic quantifications: a critical appraisal of scenario making for a global ‘sustainable’ food production,” Food Ethics, vol. 1, no. 2, pp. 173–179, 2017 https://doi.org/10.1007/s41055-017-0020-6. nutrition,S. Lo Piano and M. Robinson, “Nutrition and public health economic evaluations under the lenses of post normal science,” Futures, vol. 112, p. 102436, Sep. 2019 https://doi.org/10.1016/j.futures.2019.06.008. the
ecological footprint The ecological footprint is a method promoted by the Global Footprint Network to measure human demand on natural capital, i.e. the quantity of nature it takes to support people or an economy. It tracks this demand through an ecological accounti ...
.A. Galli et al., “Questioning the Ecological Footprint,” Ecol. Indic., vol. 69, pp. 224–232, Oct. 2016.


Developments

Sensitivity auditing is among the tools recommended in the context of a possible
ethics of quantification Ethics of quantification is the study of the ethical issues associated to different forms of visible or invisible forms of quantification. These could include algorithms, metrics/indicators, statistical and mathematical modelling, as noted in a revi ...
,Saltelli, A. (2019). Statistical versus mathematical modelling: a short comment. Nature Communications, 10, 1–3. https://doi.org/10.1038/s41467-019-11865-8.Saltelli, A. (2020). Ethics of quantification or quantification of ethics? Futures, https://doi.org/10.1016/j.futures.2019.102509. which aims to identify common ethical elements in different problems seen in quantification, such as metrics fixation,Muller, J. Z. (2018). The tyranny of metrics. Princeton University Press. misuse of statistics,Wasserstein, R. L., & Lazar, N. A. (2016). The ASA’s Statement on p -Values: Context, Process, and Purpose. The American Statistician, 70(2), 129–133. poor modellingSaltelli, A. (2018). Should statistics rescue mathematical modelling? ArXiv, arXiv:1712(06457. and unethical algorithms.O’Neil, C. (2016). Weapons of math destruction : how big data increases inequality and threatens democracy. Random House Publishing Group.


References

{{Reflist Sensitivity analysis Environmental social science