A Satisficing Approach to Eliciting Risk Preferences
Berg, Nathan and Prakhya, Srinivas and Ranganathan, Kavitha (2018) A Satisficing Approach to Eliciting Risk Preferences. Journal of Business Research, 82. pp. 127-140.
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Abstract
A new approach is proposed to eliciting risk preferences by framing choice over risky payoff distributions as a satisficing task. We demonstrate novel links between the information elicited from the satisficing task—which allows subjects to consider accepting a worse worst-case outcome in favor of a better best-case outcome—and portfolio choice using expected utility theory (EUT). The key tradeoff in our satisficing task can also be stated in reverse: to consider accepting less attractive potential upside gains in order to improve worst-case outcomes. Risk preferences are elicited by asking subjects to choose an acceptable worst-case portfolio outcome from a continuum of binary gambles, each with its own support and unique minimum. The worst-case aspiration represents the smallest low-state payoff in the binary gamble that the subject is willing to accept. We show analytically and empirically that choosing a most preferred worst-case aspiration maps into a logically equivalent— but psychologically distinct—process of expected utility maximization (i.e., allocating one's savings over a binary risky asset and risk-free bond using the EUT framework with a unique risk-acceptance parameter under CARA or CRRA risk preferences).
Item Type: | Article |
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Uncontrolled Keywords: | Risk preference; Elicitation; Satisficing; Herbert Simon; Portfolio choice; Simple rules that make us smart; Simplicity |
Subjects: | Finance |
Divisions: | Finance and Strategy |
Depositing User: | Mr. Muralidhara D |
Date Deposited: | 28 Nov 2018 11:33 |
Last Modified: | 09 Jan 2019 10:00 |
URI: | http://tapmi.informaticsglobal.com/id/eprint/501 |
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