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UNEP Paint for the Planet: Charlotte Sullivan, 13 Years, England Public Perspectives: Trust, Engagement, and Engineering Expertise Workshop on Climate, Society, and Technology Beckman Center of the National Academies June 7, 2011 Ann Bostrom University of Washington Outline • Expert (engineering) risk assessments • Lay risk perceptions • Two steps to better decisions: 1. Engage stakeholders • Values and uncertainty • Technical and translational challenges 2. Emphasize effective engineering • What to do • How it cuts losses Occupational Outlook Handbook, 2010-11 Edition: Estimated temperature increase in °C IPCC μ=0.73 Class μ=1.1 σ=0.68 σ=1.8 Median=1.8 IPCC μ=0.19 σ=0.04 Class μ= 2.2 σ=1.7 Median=1.1 2009 μ=2.6 σ=5.0 Median=1.7 2009 μ=3.9 σ=7.0 Median=1.5 1992 μ=2.7 σ=3.3 Median=2 1992 μ=3.2 σ=4.3 Median=2 To date 10 years IPCC μ=1.39 Class μ=5.5 σ=0.26 σ= 6.0 Median=3.3 2009μ=6.3 σ=13.3 Median=2.8 1992 μ=6.5 σ=9.1 Median=4 2050 How do people understand probabilities? • Which is larger? 1/100,000 1/10,000 • Peters et al (2007) found that ~10% of respondents had trouble with this kind of comparison. Affect: evaluability Affect heuristic: risk-as-feelings (heuristic = rule-of-thumb or mental shortcut) • “affect” means the specific quality of “goodness” or “badness” I. experienced as a feeling state (with or without consciousness) and II. demarcating a positive or negative quality of a stimulus. • Affective responses occur rapidly and automatically • Reliance on such feelings = “the affect heuristic” Affect: Evaluability Explanations: 1. Ease of mapping stimulus onto response scale (compatibility) 2. The more precise the affective impression, the greater the influence on judgment and decision-making. – “Affect bestows meaning on information” – When consequences have strong affective meaning, people tend to be relatively insensitive to the probabilities of those consequences. Trust, Confidence and Cooperation – T. Earle and M. Siegrist Journal of Applied Social Psychology, 2006, 36, 2, pp. 383–416. Cultural worldviews “preferences for how to organize society” Cultural worldviews “preferences for how to organize society” Risk perception Polarization Expert risk assessment • Expertise is by definition narrow – Experts solve problems differently than non-experts, in their domain of expertise. – Superior recognition gives experts an advantage – 10,000 hours…. • BUT, expertise is only one piece… – Trust AND confidence – Public processes and values – Members of the public may have local expertise Risk perception • “Lay risk assessment” without formal decomposition into probability and harm • Probability neglect; subjective probabilities tend to be “compressed” • Risk perception is affective, social, and cognitive – Affect heuristic - common source used to evaluate both benefits and risks – Social and cultural differences - individualism, hierarchy and egalitarianism – Information processing - attention and memory, problem solving as search • Risk attitudes and behaviors depend on perceived threat and efficacy - Will it harm me? Can I control it? Risk perception Mental models of hazardous processes • Understanding of causal processes - exposure, effects, mitigation Method: – Decision analysis – Semi-structured interviews, surveys – “open” comparison with formal decision model • By analogy? e.g., lead is like mercury. “I don’t know what happens. Is it like mercury, where it is there forever?” Tell me about the issue of climate change • Oh! something I think about all the time. I pay attention to the weather myself all of the time. I’m just sort of an amateur weather forecaster, and I’ve been doing this since I was a child. I know what clouds mean. I’ve definitely seen a change in my lifetime. The mid-80’s I started paying attention. Can you tell me more about that? • I feel like I’m seeing differences in weather patterns. I live in Portland myself and we’ve had a much dryer spring so far. Even though it’s not technically spring I’ve had to water my garden a few times, already, which kind of scares me a little bit. - Seattle, 2008 Ozone? [Tell me all about the issue of climate change] [If you were to explain climate change to someone else, is there anything you would add to what you have said?] “I probably would go into a little more depth about how the ozone works and how we’re holding in—how the warming is actually happening to the best of my knowledge.” • Respondent 102: • “Well, I don’t think it’s in [You mentioned ozone. Can you explain what dispute anymore, um I ozone has to do with it?] think we are pumping “The ozone is kind of the protective layer around out too much waste into the earth and that it allows sunlight in and it our environment. Gasses, allows sun heat out, but at the rate that we are emissions from cars, coal producing things like uh, carbon dioxide and plants, etc. And that’s other gasses that our ozone is holding too much warming. And I think that in, which means that it’s heating the earth everybody thinks we essentially. Um, that’s kind of my basic should do something understanding of how it works.” about it but I think it’s probably too late.” Climate change expert model: a hierarchical influence diagram Tr ans por t at io n Sola r r adia t io n aut om obile s Coas t al Zones eus t at ic s ea le v el bus & r ail la ndus e s t or m dam age r is e t r ans por t at io n er os io n air c r af t geophy s ic al pr oc es s es def or es t at io n Alb edo s alt wat er in t r us io n in aquif er s Build in gs Clim at e ( <T>, weat her , et c . ) wat er heat dis t r ib ut io n of s t or m f r equenc y & s ev er it y lig ht s CO 2 em is s io ns build in gs c hr onic f lo odin g ec os y s t em s er v ic es r ec r eat io n r adia t iv e bala nc e ec os y s t em im pac t s ( i. e. bio div er s it y ) la ndus e popula t io n m ig r at io n dis t r ib ut io n of r ain f all f r es h wat er s upplie s Aer os ols applia nc es f os s il f uel us age N2O em si s io ns G HG s in k s Pla nt s agr ic ult ur al pr ac t ic es s pac e c oolin g Tem per at ur e s pac e heat s oil m ois t ur e dis t r ib ut io n CH4 em is s io ns Land and s ea ic e agr ic ult ur al wat er c onc ent r at io n of gr eenhous e gas s es agr ic ult ur al y ie ld s Agriculture Hum id it y dis t r ib ut io n f ood s upply r edis t r ib ut io n of wealt h, lo s s of r es our c es , in c r eas ed m or t alit y c lim at e s y s t em CFC pr ac t ic es Volc anic ac t iv it y build in g ener gy us e em is s io ns build in g t ot al wat er v apour in at m os pher e I ndus t r y / Ut ilt ie s s oc io - ec onm ic im pa c t s heat in g/ c oolin g build in gs ele c t r ic it y f r om f os s el f uel G r eenhous e gas es Dom ain of geoengin eer in g s t r at gie s in dus t r ia l ener gy us age in dus t r ia l s olv ent s & lu br ic ant s c ons um er dem and f or goods & s er v ic es Dom ain of Adapt at io n St r at gie s nuc le ar ener gy Renewable ener gy s our c es Dom ain of Av oid anc e St r at gie s Deforest ation Buildings Water heat Lights Buildings Appliances Fossil fuel usage Space heat Space cooling CO2 GHG sinks N2O Concentration of Greenhouse gasses Agriculture CH4 CFC Industry/Utilities Water vapor Electric Greenhouse gases Industry energy use Industrial solvent and lubricants Consumers Nuclear energy Renewable energy sources Domain of Avoidance Strategies = Domain of Expert Model of Climate Change Global Climate Change: Expert Model = Component of Expert Model of Climate Change Transportation Automobiles Coastal Zones Bus & rail Land use Eustatic sea level rise Solar radiation Storm damage Transportation Aircraft Erosion Salt water intrusion into aquifers Ecosystem services Chronic flooding Recreation Climate System Deforestation Buildings Geophysical processes Water heat lights Radiative balance Albedo Climate (<T>, weather, etc.) Distribution of storm frequency and severity Ecosystem impacts (e.g. biodiversity) Land use Population migration Buildings CO2 emissions appliances GHG sinks Fossil fuel usage Distribution of rainfall Agricultural practices Fresh water supplies Space heat Space cooling Plants Aerosols N2O emissions Concentration of Greenhouse gasses CH4 emissions Temperature distribution Food supply Land and sea ice Soil moisture Agricultural yields Volcanic activity Redistribution of wealth; loss of resources; increased mortality Water Agricultural practices Humidity distribution Agriculture CFC emissions Total water vapor in atmosphere Industry/Utilities Electricity from fossil fuel Building energy use Domain of Geoengineering Strategies Building heating & cooling Industrial energy use Industrial solvents and lubricants Consumer demand for goods and services Buildings/Infrastructure Socioeconomic Impacts Greenhouse gasses Domain of Adaptation Strategies Nuclear energy Renewable energy sources Domain of Avoidance Strategies = in expert model and cited by 1 or more respondents Global Climate Change: “Best” Models = in expert model but not cited by more than 1 respondent = item not in expert model but cited by more than 1 respondent Transportation Sun-earth geometry Automobiles Coastal Zones Bus & rail Land use Eustatic sea level rise Solar radiation Storm damage Transportation Aircraft Erosion Fire Salt water intrusion into aquifers Ecosystem services Chronic flooding Recreation Climate System Deforestation Buildings Geophysical processes Water heat lights Radiative balance Albedo Climate (<T>, weather, etc.) Distribution of storm frequency and severity Ecosystem impacts (e.g. biodiversity) Land use Population migration Buildings CO2 emissions appliances GHG sinks Fossil fuel usage Distribution of rainfall Agricultural practices Fresh water supplies Space heat Space cooling Plants Aerosols N2O emissions Concentration of Greenhouse gasses CH4 emissions Temperature distribution Food supply Land and sea ice Redistribution of wealth; loss of resources; increased mortality Soil moisture Agricultural yields Volcanic activity Water Agricultural practices Humidity distribution Agriculture CFC emissions Total water vapor in atmosphere Industry/Utilities Electricity from fossil fuel Domain of Geoengineering Strategies Building energy use Local weather change Building heating & cooling Industrial energy use End of civilization Industrial solvents and lubricants Consumer demand for goods and services Season Change Renewable energy sources Buildings/Infrastructure Socioeconomic Impacts Greenhouse gasses Domain of Adaptation Strategies Recycling Nuclear energy Human health effects Pollution Nonspecific human/ animal Domain of Avoidance Strategies = in expert model and cited by 1 or more respondents Global Climate Change: “Worst” Models = in expert model but not cited by more than 1 respondent = item not in expert model but cited by more than 1 respondent Transportation automobiles Coastal Zones Bus & rail Land use Eustatic sea level rise Solar radiation Storm damage transportation aircraft erosion Salt water intrusion into aquifers Ecosystem services Chronic flooding recreation Climate System deforestation Buildings Geophysical processes Water heat lights Radiative balance albedo Climate (<T>, weather, etc.) Distribution of storm frequency and severity Ecosystem impacts (e.g. biodiversity) Land use Population migration buildings CO2 emissions appliances GHG sinks Fossil fuel usage Distribution of rainfall Agricultural practices Fresh water supplies Space heat Space cooling plants aerosols N2O emissions Concentration of Greenhouse gasses CH4 emissions Temperature distribution Food supply Land and sea ice Redistribution of wealth; loss of resources; increased mortality Soil moisture Agricultural yields Volcanic activity Water Agricultural practices Humidity distribution Agriculture CFC emissions Total water vapor in atmosphere Industry/Utilities Electricity from fossil fuel Domain of Geoengineering Strategies Building energy use Local weather change Building heating & cooling Aerosol cans Industrial energy use Human health effects End of civilization Ozone depletion Industrial solvents and lubricants Consumer demand for goods and services Season Change Buildings/Infrastructure Socioeconomic Impacts Greenhouse gasses Domain of Adaptation Strategies Nuclear energy Renewable energy sources Pollution Domain of Avoidance Strategies Global Climate Change: Average Model = mentioned by 50% or more respondents = mentioned by 25%-50% of respondents = item not in expert model but cited by more than 10% of respondents Transportation = mentioned by 10%-25% of respondents = item in expert model but not cited by more than 10% of respondents Sun-earth geometry automobiles Coastal Zones Bus & rail Land use Eustatic sea level rise Solar radiation Storm damage transportation aircraft erosion Fire Salt water intrusion into aquifers Ecosystem services Chronic flooding recreation Climate System deforestation Buildings Geophysical processes Water heat Lack of oxygen lights Radiative balance albedo Climate (<T>, weather, etc.) Distribution of storm frequency and severity Ecosystem impacts (e.g. biodiversity) Land use Population migration buildings CO2 emissions appliances GHG sinks Fossil fuel usage Distribution of rainfall Agricultural practices Fresh water supplies Space heat Space cooling plants aerosols N2O emissions Concentration of Greenhouse gasses CH4 emissions Temperature distribution Nonspecific water impacts Land and sea ice Food supply Redistribution of wealth; loss of resources; increased mortality Soil moisture Agricultural yields Volcanic activity Water Agricultural practices Humidity distribution Agriculture CFC emissions Total water vapor in atmosphere Industry/Utilities Electricity from fossil fuel Domain of Geoengineering Strategies Building energy use Local weather change Building heating & cooling Aerosol cans Industrial energy use End of civilization Industrial solvents and lubricants Consumer demand for goods and services Season Change Renewable energy sources Buildings/Infrastructure Socioeconomic Impacts Greenhouse gasses Domain of Adaptation Strategies Recycling Nuclear energy Human health effects Ozone depletion Pollution Nonspecific human/ animal Domain of Avoidance Strategies Public risk assessment, management and policy • Problem solving as search – iterate between designing for safety and assessing risk – broad engagement to avoid narrow bracketing • Participative decision making can produce better decisions (NRC, 2008). – Decision aiding – Mediated modeling – Use (social) science and (new) technology to engage people Perceptions in risk assessments and decisions – a two-step 1. Engage stakeholders to address: • • Values and uncertainties Technical and translation challenges 2. Emphasize effective actions! • • What to do How it cuts losses Engage stakeholders: Values • What endpoints are valued (deaths, dollars, displacement?) • How and by whom they are valued • Not-so-obvious distributive implications, as with airbags • Methodological and ethical challenges (Fischhoff, 1991; Slovic, 1995) Engage stakeholders: Uncertainty • Both limits to what is known and inherent variability • How should uncertainty be treated and interpreted? • How uncertainty is analyzed can change the outcome • Representation of uncertainty can influence interpretations and preferences Engage stakeholders: Technical and translational challenges • Risk assessment is analytically and dataintensive • Even large-scale tests may be insufficient to discover devastating rare adverse effects • Results may be lost in translation – 10% PE? • Engaging engineers with other parties in facilitated discussions can help. USEFUL METRIC CONVERSIONS 1 million microphones = 1 megaphone 1 million bicycles = 2 megacycles 2000 mockingbirds = two kilomockingbirds 1 millionth of a fish = 1 microfiche 10 monologs = 5 dialogues 2 monographs = 1 diagram 8 nickels = 2 paradigms 2 baby sitters = 1 gamma gampa - Anonymous Effective actions! • What to do • How it cuts losses – Protective actions – Engineering tools and strategies NUDGES: Choice Architecture iNcentives: people have to feel they are getting something for their choice Understand mappings: you have to understand how they see things Defaults: make sure the ‘do nothing’ route is one of the best Give feedback: investigate the rejected options, and experiment with them Expect error: humans make mistakes, so well-designed systems allow for this Structure complex choices: if it’s difficult, break it down into easier chunks In sum: • Expert (engineering) risk assessments can differ from • Lay risk perceptions • But together they produce better decisions: 1. Better engineering by engaging stakeholders: • Values and uncertainty • Technical and translational challenges 2. Better actions by emphasizing systematic evaluation of effectiveness: • What to do • How it cuts losses Thanks to the U.S. National Science Foundation (NSF9701785, NSF0729302), Cynthia Atman, Douglas Bostrom, Vanessa Collier, Robert Dooley, Baruch Fischhoff, Rebecca Hudson, Lester Lave, Granger Morgan, Daniel Read, Travis Reynolds, and many others. UNEP Paint for the Planet: Charlotte Sullivan, 13 Years, England Affect: evaluability Kahneman & Tversky say We evaluate prospects and tradeoffs from a starting point; losses loom larger than gains… Prospect Theory