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This study explores the use of subjective probability in modeling uncertainty when limited data is available. Subjective probability allows decision-makers to estimate probabilities based on their beliefs and judgment. The study also discusses the combination of judgment and data using Bayes' rule. Objective probability is often inadequate for practical problems due to the lack of data, making subjective probability a valuable tool for decision-making.
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Subjective Probability for Modeling Uncertainty with Limited Data Efstratios Nikolaidis The University of Toledo April 2009
Risky venture: need to model uncertainty • Decision: Irrevocable allocation of resources to achieve desired payoff • Outcomes of uncertain events affect payoff … …
Selecting best course of action by comparing risk profiles Hybrid Probability Probability Return rate Diesel Probability Gas price Return rate
Objective probability is inadequate for most practical problems • Long-term relative frequency • Objective measure • Most people understand concept of objective probability • There is little data in most practical decisions • Too expensive to collect data • We cannot conduct a repeatable experiment for one-of- a-kind events • Fuel price in 2011 • Demand for cars in 2011 • Chance for a particular person to die in a car crash
Subjective probability can help model uncertainty • Principle 1: Probability is a decision maker’s (DM’s) belief that an outcome will materialize • Principle 2: DM avoids risky venture that will result in sure loss • Belief leads to inclination to act. Elicit it by observing how DM makes choices in the face of uncertainty. • Observe inclination to accept gambles in controlled experiments
Estimating subjective probability of a candidate winning 2008 U.S. presidential election by using trading data This ticket is worth $1 only if Mr. Obama wins 2008 presidential election Maximum buying price reflected a gambler’s belief that Mr. Obama would win election
Trading data from 2008 U.S. presidential election(http://newsfutures.wordpress.com) P(win)=0.8 P(win)=0.5
DM is decisive to avoid sure loss Eliciting expert’s probability
Eliciting a decision maker’s probability distribution • Estimating 5% percentile of water pump life if we cannot perform tests Reference experiment: wheel of fortune Real life experiment CDF 0.05 Life (hrs) 2000 Ticket 1: Worth $1 only if needle settles in sector Ticket 1: Worth $1 only if life 5% percentile 2000 hrs P(5% percentile 2000 hrs) = /3600
Combining judgments and data by using Bayes’ rule Example • Judgment: 1 per 10 pumps fail on average • Posterior = likelihood prior scaling constant • Subjective probability converges to relative frequency and epistemic uncertainty decreases with amount of data Data: 10 out of 200 pumps failed Data: 1 out of 20 pumps failed
Lessons learnt • In most practical decisions, we do not have enough data to estimate relative frequencies. Objective probability is inadequate for modeling uncertainty. • Subjective probability enables decision-maker to model uncertainty on the basis of both judgment and data. • Subjective probability has a solid theoretical justification derived from first principles. • Can combine judgment with data by using Bayes’ rule. Subjective probability converges to relative frequency with amount of data increasing. • Ambiguity aversion leads to indecision. Some people’s behavior is at odds with the precepts of subjective probability.