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Expert-Opinion Elicitation. Robert C. Patev North Atlantic Division – Regional Technical Specialist (978) 318-8394. Expert-Opinion Elicitation. Subjective Estimation Elicitation Process Background Expert-Opinion Elicitation (EOE) Process Probability Axioms of Probability
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Expert-Opinion Elicitation Robert C. Patev North Atlantic Division – Regional Technical Specialist (978) 318-8394
Expert-Opinion Elicitation • Subjective Estimation • Elicitation Process • Background • Expert-Opinion Elicitation (EOE) Process • Probability • Axioms of Probability • Medians and Percentiles • Training Example
Subjective Estimation • Uses of one or more experts to estimate a probability (qualitative or quantitative) for use in engineering risk analysis • Good for first estimate of probabilities • Quick, cost effective and efficient method • Problems: • Not a formal elicitation • Usually not well documented • Probabilities may not be repeatable or defendable • Probabilities may be highly subjective and biased • Probabilities have larger uncertainties compared to structured elicitation values
Subjective Estimation • How good are we at quantifying subjective estimates? • Let us see…..
Subjective Estimation • How good are we at quantifying subjective estimates? • Class Example: • How may ships passed through the Panama Canal last year? • Give best estimate
Expert-Opinion Elicitation • Background • Process developed by RAND Corporation in late 1950’s - early 1960’s • Delphi Method • Scenario Analysis • Effects of thermonuclear war • Civil Defense strategic planning • Examine if U.S. population could survive a nuclear attack
Expert-Opinion Elicitation • Background • Definition • A formal (protocol), heuristic (through discussion) process of obtaining information or answers to specific questions called issues • e.g., failure rates or probabilities, and failure consequences
Expert-Opinion Elicitation • Background • EOE is used for preliminary risk evaluation (screening) is not really intended to replace more complex reliability models • EOE has been used by industry and government agencies to develop failure probabilities when there is a lack of failure information
Expert-Opinion Elicitation • Drawbacks • Subjective process • Not consensus building • Inherently contains bias and dominance • Difficult to process result to determine reliability or hazard rates • Assumptions need to be made • Current Usage in USACE • Supplement to other models • Calculate reliability (not for critical components) • Event tree probabilities • Used in consultation with HQUSACE
Expert-Opinion Elicitation • EOE Process • Participants • Experts • Observers • Listeners • Technical Integrator and Facilitator • Peer Reviewers • ITR process and results
Expert-Opinion Elicitation • EOE Process • Identification and Selection of Experts • Strong relevant expertise • Familiarity and knowledge with issues • Willingness to act as impartial evaluators • Willingness to participate, prepare, and provide needed input • Strong communication skills, interpersonal skills, and ability to generalize
Expert-Opinion Elicitation • EOE Process • Inform experts of issues • “Read ahead” materials • Site visits • Train experts • Elicitation • First opinion • Discussion among experts • Second opinion
Expert-Opinion Elicitation • Probability • General expressions • Percent (1% probability of failure) • Fraction (1/100) • Relative frequency (1 out of 1000) • Axioms of Probability • 0 < Pf < 1 • Sum of probabilities over all possible outcomes must equal 1. • This assume events are independent.
Expert-Opinion Elicitation • Statistics • Median • e.g., Median income, median age • Rank value • For odd n, value with rank of (n+1)/2 • For even n, average of value with rank n/2 or (n/2) + 1 • Used to limit extreme values • Average • Sum of Xi divided by sample size
Sample 1 100 100 200 300 400 Median = 200 Average = 220 Sample 2 100 100 200 300 2000 Median = 200 Average = 540 Median Vs. Average
Expert-Opinion Elicitation • Percentiles • A p-percentile value (Xp) based on a sample is the value of the parameter such that p% of the data is less than or equal to Xp • e.g., The median is the 50th percentile
Expert-Opinion Elicitation • Class Example • Six experts required • Unknown issue given to experts • Define assumptions of issue • Elicit first values • First results • Expert Discussion • Elicit second values • Show final elicitation results