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Published July 21, 2020 | Submitted
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On the Empirical Validity of Cumulative Prospect Theory: Experimental Evidence of Rank-Independent Probability Weighting

Abstract

Cumulative Prospect Theory (CPT), the leading behavioral account of decision making under uncertainty, avoids the dominance violations implicit in Prospect Theory (PT) by assuming that the probability weight applied to a given outcome depends on its ranking. We devise a simple and direct non-parametric method for measuring the change in relative probability weights resulting from a change in payoff ranks. We find no evidence that these weights are even modestly sensitive to ranks. Conventional calibrations of CPT preferences imply that the percentage change in probability weights should be an order of magnitude larger than we observe. It follows either that probability weighting is not rank-dependent, or that the weighting function is nearly linear. Non-parametric measurement of the change in relative probability weights resulting from changes in probabilities rules out the second possibility. Additional tests nevertheless indicate that the dominance patterns predicted by PT do not arise. We reconcile these findings by positing a form of complexity aversion that generalizes the well-known certainty effect.

Additional Information

First Draft: December 1, 2014. Posted: 2 Apr 2019; Last revised: 26 May 2020. Previous versions of this paper were titled 'Direct Tests of Cumulative Prospect Theory.' We are grateful to Ted O'Donoghue, Colin Camerer, Nick Barberis, Kota Saito, seminar participants at Cornell, Caltech, MIT, UCLA, CIDE, Tel Aviv, UC Santa Barbara, the Stanford Institute for Theoretical Economics, and five anonymous referees for helpful and thoughtful comments. Fulya Ersoy, Vincent Leah-Martin, Seung-Keun Martinez, and Alex Kellogg all provided valuable research assistance.

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August 19, 2023
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