A standard approach to distinguishing people’s risk preferences is to estimate a random utility model using a power utility function to characterize the preferences and a logit function to capture choice consistency. We demonstrate that with often‐used choice situations, this model suffers from empirical underidentification, meaning that parameters cannot be estimated precisely. With simulations of estimation accuracy and Kullback–Leibler divergence measures we examined factors that potentially mitigate this problem. First, using a choice set that guarantees a switch in the utility order between two risky gambles in the range of plausible values leads to higher estimation accuracy than randomly created choice sets or the purpose‐built choic...
The aim of this study is to address the uncertainty problem caused by measurement error in random ut...
The aim of this study is to address the uncertainty problem caused by measurement error in random ut...
This paper derives a trick to account for variation in choice set size in Random Regret Minimization...
A standard approach to distinguishing people's risk preferences is to estimate a random utility mode...
This study addresses the so-called uncertainty problem due to measurement error in random utility an...
Influential economic approaches as random utility models assume a monotonic relation between choice ...
This study addresses the so-called uncertainty problem due to measurement error in random utility an...
In recent years, major advances have taken place in three areas of random utility modeling: (1) semi...
While the paradigm of utility maximisation has formed the basis of the majority of applications in d...
Preferences over risky alternatives can be elicited by different methods, including direct pairwise ...
Current experimental research seeks to estimate shape and parameterization of utility functions. The...
The original publication is available at www.springer.comAbstract: A substantial body of empirical e...
This paper develops new tools for the analysis of Random Utility Models (RUM). The leading applicati...
Models of risky choice have attracted much attention in behavioural economics. Previous research has...
The aim of this study is to address the uncertainty problem caused by measurement error in random ut...
The aim of this study is to address the uncertainty problem caused by measurement error in random ut...
This paper derives a trick to account for variation in choice set size in Random Regret Minimization...
A standard approach to distinguishing people's risk preferences is to estimate a random utility mode...
This study addresses the so-called uncertainty problem due to measurement error in random utility an...
Influential economic approaches as random utility models assume a monotonic relation between choice ...
This study addresses the so-called uncertainty problem due to measurement error in random utility an...
In recent years, major advances have taken place in three areas of random utility modeling: (1) semi...
While the paradigm of utility maximisation has formed the basis of the majority of applications in d...
Preferences over risky alternatives can be elicited by different methods, including direct pairwise ...
Current experimental research seeks to estimate shape and parameterization of utility functions. The...
The original publication is available at www.springer.comAbstract: A substantial body of empirical e...
This paper develops new tools for the analysis of Random Utility Models (RUM). The leading applicati...
Models of risky choice have attracted much attention in behavioural economics. Previous research has...
The aim of this study is to address the uncertainty problem caused by measurement error in random ut...
The aim of this study is to address the uncertainty problem caused by measurement error in random ut...
This paper derives a trick to account for variation in choice set size in Random Regret Minimization...