2012
DOI: 10.1080/02664763.2012.740625
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Estimating utility functions using generalized maximum entropy

Abstract: This paper estimates von Neumann and Morgenstern utility functions using the generalized maximum entropy (GME), applied to data obtained by utility elicitation methods. Given the statistical advantages of this approach, we provide a comparison of the performance of the GME estimator with ordinary least square (OLS) in a real data small sample setup. The results confirm the ones obtained for small samples through Monte Carlo simulations. The difference between the two estimators is small and it decreases as the… Show more

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Cited by 4 publications
(2 citation statements)
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“…The papers by Abbas [4][5][6] where it seems to have been applied for the first time, and later on Abbas (2006), Darooneh [7], Pires et al [8] and Pires et al [9], describe different maxentropic approaches to the problems and contain references to previous work on the specific applications to utility theory. Actually, the transformation of problems (1) into (2) was considered in Abbas' papers.…”
Section: Comments About the Solutions To The Generalized Moment And Imentioning
confidence: 99%
See 1 more Smart Citation
“…The papers by Abbas [4][5][6] where it seems to have been applied for the first time, and later on Abbas (2006), Darooneh [7], Pires et al [8] and Pires et al [9], describe different maxentropic approaches to the problems and contain references to previous work on the specific applications to utility theory. Actually, the transformation of problems (1) into (2) was considered in Abbas' papers.…”
Section: Comments About the Solutions To The Generalized Moment And Imentioning
confidence: 99%
“…Thus, we might decide to consider the problem analyzed in Section 2, that is to reconstruct the second derivative of the utility function by means of the method of maximum entropy in the mean described in Section 4.3. Accordingly, we have to solve (9), where the vector m that is specified right below that equation to be used as input for the numerical analysis is given Table 4. Recall that the procedure of maximum entropy in the mean is used now to determine the second derivative of the utility function, from which the function itself is determined by simple integration.…”
Section: Luenberger's Example With and Without Uncertaintymentioning
confidence: 99%