This paper describes and applies a general approach for incorporating factors with structural equations into models for discrete choice. The approach gives form to the covariance matrix in random coefficient models. The factors act directly on the random coefficients as unobserved attributes. The structural equations allow the factors to act on each other building structures that can represent a variety of concepts such as global heterogeneity and segmentation. The practical outcomes include parsimonious and identified models with rich covariances and better fit. Of greater interest is the ability to specify models that represent and test theory on the relationships between the taste heterogeneities for covariates and in particular between ...
We propose and describe a comprehensive theoretical framework that integrates choice models and stru...
The increasing availability of individual-level consumer data has facilitated the development of new...
Heterogeneity in choice models is typically assumed to have a normal distribution in both Bayesian a...
AbstractThis paper describes and applies a general approach for incorporating factors with structura...
Applications of discrete choice experiments to study consumer choice behavior have grown significant...
This thesis assesses the robustness of structural choice modelling's accuracy and predictive validit...
Models to analyse discrete choice data that account for heterogeneity in error variance (scale) acro...
This paper introduces a simple way to identify attribute by covariate interactions in discrete choic...
The gap between discrete choice models and behavioral theory has spurred various developments that a...
Understanding and accommodating heterogeneity in variance (also referred to as heteroscedasticity) a...
This thesis first considers some extensions of the existing discrete choice models. One such extensi...
A traditional discrete choice model assumes that an individual's decision-making process is bas...
This article introduces a discrete choice model which incorporates a nonlinear structural adjustment...
This thesis is a collection of four papers; one centred on a policy application of Contingent Valuat...
We detail the basic theory for models of discrete choice. This encompasses methods of estimation...
We propose and describe a comprehensive theoretical framework that integrates choice models and stru...
The increasing availability of individual-level consumer data has facilitated the development of new...
Heterogeneity in choice models is typically assumed to have a normal distribution in both Bayesian a...
AbstractThis paper describes and applies a general approach for incorporating factors with structura...
Applications of discrete choice experiments to study consumer choice behavior have grown significant...
This thesis assesses the robustness of structural choice modelling's accuracy and predictive validit...
Models to analyse discrete choice data that account for heterogeneity in error variance (scale) acro...
This paper introduces a simple way to identify attribute by covariate interactions in discrete choic...
The gap between discrete choice models and behavioral theory has spurred various developments that a...
Understanding and accommodating heterogeneity in variance (also referred to as heteroscedasticity) a...
This thesis first considers some extensions of the existing discrete choice models. One such extensi...
A traditional discrete choice model assumes that an individual's decision-making process is bas...
This article introduces a discrete choice model which incorporates a nonlinear structural adjustment...
This thesis is a collection of four papers; one centred on a policy application of Contingent Valuat...
We detail the basic theory for models of discrete choice. This encompasses methods of estimation...
We propose and describe a comprehensive theoretical framework that integrates choice models and stru...
The increasing availability of individual-level consumer data has facilitated the development of new...
Heterogeneity in choice models is typically assumed to have a normal distribution in both Bayesian a...