More-or-less elicitation (MOLE): reducing bias in range estimation and forecasting

Biases like overconfidence and anchoring affect values elicited from people in predictable ways—due to people’s inherent cognitive processes. The more-or-less elicitation (MOLE) process takes insights from how biases affect people’s decisions to design an elicitation process to mitigate or eliminate bias. MOLE relies on four, key insights: (1) uncertainty regarding the location of estimates means people can be unwilling to exclude values they would not specifically include; (2) repeated estimates can be averaged to produce a better, final estimate; (3) people are better at relative than absolute judgements; and, (4) consideration of multiple values prevents anchoring on a particular number. MOLE achieves these by having people repeatedly choose between options presented to them by the computerized tool rather than making estimates directly, and constructing a range logically consistent with (i.e., not ruled out by) the person’s choices in the background. Herein, MOLE is compared, across four experiments, with eight elicitation processes—all requiring direct estimation of values—and is shown to greatly reduce overconfidence in estimated ranges and to generate best guesses that are more accurate than directly estimated equivalents. This is demonstrated across three domains—in perceptual and epistemic uncertainty and in a forecasting task.

[1]  Stefan M. Herzog,et al.  The Wisdom of Many in One Mind , 2009, Psychological science.

[2]  T. Mussweiler The malleability of anchoring effects. , 2002, Experimental psychology.

[3]  A. Tversky,et al.  Judgment under Uncertainty: Heuristics and Biases , 1974, Science.

[4]  G. Northcraft,et al.  Experts, amateurs, and real estate: An anchoring-and-adjustment perspective on property pricing decisions , 1987 .

[5]  Carey K. Morewedge,et al.  A simple remedy for overprecision in judgment. , 2010, Judgment and decision making.

[6]  Massimo Piattelli-Palmarini,et al.  Inevitable Illusions: How Mistakes of Reason Rule Our Minds , 1994 .

[7]  Ilan Yaniv,et al.  Overconfidence in interval estimates: What does expertise buy you? , 2008 .

[8]  D. Kahneman,et al.  Before you make that big decision... , 2011, Harvard business review.

[9]  Thomas Mussweiler,et al.  Overcoming the Inevitable Anchoring Effect: Considering the Opposite Compensates for Selective Accessibility , 2000 .

[10]  Victoria J. Hodge,et al.  A Survey of Outlier Detection Methodologies , 2004, Artificial Intelligence Review.

[11]  D. Kahneman,et al.  Conditions for intuitive expertise: a failure to disagree. , 2009, The American psychologist.

[12]  Dean P. Foster,et al.  Precision and Accuracy of Judgmental Estimation , 1997 .

[13]  Detlof von Winterfeldt,et al.  Testing Best Practices to Reduce the Overconfidence Bias in Multi-criteria Decision Analysis , 2016, 2016 49th Hawaii International Conference on System Sciences (HICSS).

[14]  Reidar Brumer Bratvold,et al.  Correcting common errors in probabilistic evaluations: efficacy of debiasing , 2006 .

[15]  P. D. Newendorp,et al.  Decision analysis for petroleum exploration , 1975 .

[16]  G. Gigerenzer,et al.  Probabilistic mental models: a Brunswikian theory of confidence. , 1991, Psychological review.

[17]  D. Kahneman Thinking, Fast and Slow , 2011 .

[18]  A. Vargha,et al.  A Critique and Improvement of the CL Common Language Effect Size Statistics of McGraw and Wong , 2000 .

[19]  Dean P. Foster,et al.  Graininess of judgment under uncertainty: An accuracy-informativeness trade-off , 1995 .

[20]  Anders Winman,et al.  Subjective probability intervals: how to reduce overconfidence by interval evaluation. , 2004, Journal of experimental psychology. Learning, memory, and cognition.

[21]  B. Fischhoff,et al.  Calibration of probabilities: the state of the art to 1980 , 1982 .

[22]  P. Juslin,et al.  Format dependence in subjective probability calibration , 1999 .

[23]  H. Pashler,et al.  Measuring the Crowd Within , 2008, Psychological science.

[24]  J. Stroop Is the judgment of the group better than that of the average member of the group , 1932 .

[25]  Daniel J. Navarro,et al.  Does anchoring cause overconfidence only in experts? , 2011, CogSci.

[26]  Anders Winman,et al.  The naïve intuitive statistician: a naïve sampling model of intuitive confidence intervals. , 2007, Psychological review.

[27]  D. Winterfeldt,et al.  Cognitive and Motivational Biases in Decision and Risk Analysis , 2015, Risk analysis : an official publication of the Society for Risk Analysis.

[28]  G. A. Miller THE PSYCHOLOGICAL REVIEW THE MAGICAL NUMBER SEVEN, PLUS OR MINUS TWO: SOME LIMITS ON OUR CAPACITY FOR PROCESSING INFORMATION 1 , 1956 .

[29]  Max Henrion,et al.  Uncertainty: A Guide to Dealing with Uncertainty in Quantitative Risk and Policy Analysis , 1990 .

[30]  Steve Begg,et al.  Reducing overconfidence in forecasting with repeated judgement elicitation , 2015, CogSci.

[31]  S. Begg,et al.  More-or-less elicitation (MOLE): Testing a heuristic elicitation method , 2008 .

[32]  D. Moore,et al.  The trouble with overconfidence. , 2008, Psychological review.

[33]  Gordon D. A. Brown,et al.  Absolute identification by relative judgment. , 2005, Psychological review.

[34]  G. Gigerenzer How to Make Cognitive Illusions Disappear: Beyond “Heuristics and Biases” , 1991 .

[35]  A. Tversky,et al.  The framing of decisions and the psychology of choice. , 1981, Science.

[36]  Joshua Klayman,et al.  Overconfidence in interval estimates. , 2004, Journal of experimental psychology. Learning, memory, and cognition.

[37]  R. Thaler,et al.  Nudge: Improving Decisions About Health, Wealth, and Happiness , 2008 .

[38]  Michael D. Lee,et al.  Problems with the Elicitation of Uncertainty , 2004 .

[39]  Matthew Welsh,et al.  Predicting Overprecision in Range Estimation , 2016, CogSci.

[40]  Arthur Carvalho,et al.  An Overview of Applications of Proper Scoring Rules , 2016, Decis. Anal..

[41]  Richard A. Block,et al.  Overconfidence in estimation: Testing the anchoring-and-adjustment hypothesis , 1991 .

[42]  Reidar Brumer Bratvold,et al.  Cognitive Biases in the Petroleum Industry: Impact and Remediation , 2005 .

[43]  J. T. Hawkins,et al.  Improving Stochastic Evaluations Using Objective Data Analysis and Expert Interviewing Techniques , 2002 .

[44]  A. Furnham,et al.  A literature review of the anchoring effect , 2011 .

[45]  Daniel Kahneman,et al.  Availability: A heuristic for judging frequency and probability , 1973 .