In this article, a modeling strategy is proposed that accounts for heterogeneity in nominal responses that is typically ignored when using common multinomial logit models. Heterogeneity can arise from unobserved variance heterogeneity, but it may also represent uncertainty in choosing from alternatives or, more generally, result from varying coefficients determined by effect modifiers. It is demonstrated that the bias in parameter estimation in multinomial logit models can be substantial if heterogeneity is present but ignored. The modeling strategy avoids biased estimates and allows researchers to investigate which variables determine uncertainty in choice behavior. Several applications demonstrate the usefulness of the model
Abstract. When a binary or ordinal regression model incorrectly assumes that error variances are the...
Stated choice models based on the random utility framework are becoming increasingly popular in the ...
Developments in simulation methods, and the computational power that is now available, have enabled ...
Different voters behave differently at the polls, different students make different university choic...
The comparison of coefficients of logit models obtained for different groups is widely considered as...
This essay contributes to the development of models that allow for heterogeneity across respondents ...
Over the past two decades, validation of choice models has focused on predictive validity rather tha...
While there is general agreement that consumer taste heterogeneity is crucially important in marketi...
Recent advances in "simulation based inference" have made it feasible to estimate discrete choice mo...
There is growing interest in establishing a mechanism to account for scale heterogeneity across indi...
We attempt to provide insights into how heterogeneity has been and can be addressed in choice modeli...
The mixed or heterogeneous multinomial logit (MIXL) model has become popular in a number of fields, ...
There is growing interest in establishing a mechanism to account for scale heterogeneity across indi...
When a binary or ordinal regression model incorrectly assumes that error variances are the same for ...
This paper introduces the package gmnl in R for estimation of multinomial logit models with unobserv...
Abstract. When a binary or ordinal regression model incorrectly assumes that error variances are the...
Stated choice models based on the random utility framework are becoming increasingly popular in the ...
Developments in simulation methods, and the computational power that is now available, have enabled ...
Different voters behave differently at the polls, different students make different university choic...
The comparison of coefficients of logit models obtained for different groups is widely considered as...
This essay contributes to the development of models that allow for heterogeneity across respondents ...
Over the past two decades, validation of choice models has focused on predictive validity rather tha...
While there is general agreement that consumer taste heterogeneity is crucially important in marketi...
Recent advances in "simulation based inference" have made it feasible to estimate discrete choice mo...
There is growing interest in establishing a mechanism to account for scale heterogeneity across indi...
We attempt to provide insights into how heterogeneity has been and can be addressed in choice modeli...
The mixed or heterogeneous multinomial logit (MIXL) model has become popular in a number of fields, ...
There is growing interest in establishing a mechanism to account for scale heterogeneity across indi...
When a binary or ordinal regression model incorrectly assumes that error variances are the same for ...
This paper introduces the package gmnl in R for estimation of multinomial logit models with unobserv...
Abstract. When a binary or ordinal regression model incorrectly assumes that error variances are the...
Stated choice models based on the random utility framework are becoming increasingly popular in the ...
Developments in simulation methods, and the computational power that is now available, have enabled ...