In this paper we introduce a new flexible mixed model for multinomial discrete choice where the key individual- and alternative-specific parameters of interest are allowed to follow an assumption-free nonparametric density specification while other alternative-specific coefficients are assumed to be drawn from a multivariate normal distribution. A hierarchical specification of our model allows us to break down a complex data structure into a set of submodels with the desired features that are naturally assembled in the original system. We estimate the model using a Bayesian Markov Chain Monte Carlo technique with a multivariate Dirichlet Process (DP) prior on the coefficients with nonparametrically estimated density. We bypass a problem of ...
Multinomial Probit or Multinomial Logit models are frequently used in marketing research for modelin...
binary (e.g., probit model; we looked at with data augmentation) ordinal (ordinal logit or probit) m...
This paper demonstrates a method for estimating logit choice models for small sample data, including...
This paper develops nonparametric estimation for discrete choice models based on the mixed multinomi...
This thesis first considers some extensions of the existing discrete choice models. One such extensi...
This paper develops nonparametric estimation for discrete choice models based on the Mixed Multinomi...
The widespread use of the Mixed Multinomial Logit model, in the context of discrete choice data, has...
Heterogeneity in choice models is typically assumed to have a normal distribution in both Bayesian a...
Statisticians along with other scientists have made significant computational advances that enable t...
Statisticians along with other scientists have made significant computational advances that enable t...
The multinomial logit model in discrete choice analysis is widely used in transport research. It has...
Discrete choice experiments are widely used to learn about the distribution of individual preference...
This thesis presents three applications of Bayesian nonparametric in econo-metric models. The models...
This paper shows how to develop new multinomial processing tree (MPT) models for discrete choice, an...
In discrete choice models, heterogeneity in consumer sensitivity to product characteristics is typic...
Multinomial Probit or Multinomial Logit models are frequently used in marketing research for modelin...
binary (e.g., probit model; we looked at with data augmentation) ordinal (ordinal logit or probit) m...
This paper demonstrates a method for estimating logit choice models for small sample data, including...
This paper develops nonparametric estimation for discrete choice models based on the mixed multinomi...
This thesis first considers some extensions of the existing discrete choice models. One such extensi...
This paper develops nonparametric estimation for discrete choice models based on the Mixed Multinomi...
The widespread use of the Mixed Multinomial Logit model, in the context of discrete choice data, has...
Heterogeneity in choice models is typically assumed to have a normal distribution in both Bayesian a...
Statisticians along with other scientists have made significant computational advances that enable t...
Statisticians along with other scientists have made significant computational advances that enable t...
The multinomial logit model in discrete choice analysis is widely used in transport research. It has...
Discrete choice experiments are widely used to learn about the distribution of individual preference...
This thesis presents three applications of Bayesian nonparametric in econo-metric models. The models...
This paper shows how to develop new multinomial processing tree (MPT) models for discrete choice, an...
In discrete choice models, heterogeneity in consumer sensitivity to product characteristics is typic...
Multinomial Probit or Multinomial Logit models are frequently used in marketing research for modelin...
binary (e.g., probit model; we looked at with data augmentation) ordinal (ordinal logit or probit) m...
This paper demonstrates a method for estimating logit choice models for small sample data, including...