Estimating utility functions using generalized maximum entropy
Loading...
Date
Journal Title
Journal ISSN
Volume Title
Publisher
Taylor and Francic
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 width of the parameter support vector increases. Moreover, the GME estimator is more precise than
the OLS one. Overall, the results suggest that GME is an interesting alternative to OLS in the estimation
of utility functions when data are generated by utility elicitation methods.
Description
Citation
Pires, C., A. Dionísio, L. Coelho (2013), "Estimating utility functions using GME", Journal of Applied Statistics, 40(1), 221-234.