An explicit representation for disappointment aversion and other betweenness preferences

Author:

Cerreia-Vioglio Simone1,Dillenberger David2,Ortoleva Pietro3

Affiliation:

1. Department of Decision Sciences, Università Bocconi

2. Department of Economics, University of Pennsylvania

3. Department of Economics and Princeton School of Public and International Affairs, Princeton University

Abstract

One of the most well known models of non‐expected utility is Gul's (1991) model of disappointment aversion. This model, however, is defined implicitly, as the solution to a functional equation; its explicit utility representation is unknown, which may limit its applicability. We show that an explicit representation can be easily constructed, using solely the components of the implicit representation. We also provide a more general result: an explicit representation for preferences in the betweenness class that also satisfy negative certainty independence (Dillenberger 2010) or its counterpart. We show how our approach gives a simple way to identify the parameters of the representation behaviorally and to study the consequences of disappointment aversion in a variety of applications.

Funder

European Research Council

National Sleep Foundation

Publisher

The Econometric Society

Subject

General Economics, Econometrics and Finance

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