This dissertation carries out a series of Monte Carlo simulations seeking the implications for welfare estimates from three research practices commonly implemented in empirical applications of mixed logit and latent class logit. Chapter 3 compares welfare measures across conditional logit, mixed logit, and latent class logit. The practice of comparing welfare estimates is widely used in the field. However, this chapter shows comparisons of welfare estimates seem unable to provide reliable information about the differences in welfare estimates that result from controlling for unobserved heterogeneity. The reason is that estimates from mixed logit and latent class logit are inherently inecient and inaccurate. Researchers tend to use their own...
The multinomial logit model (MNL) has for many years provided the fundamental platform for the analy...
Representing unobserved heterogeneity or taste variations in behavioral choice analysis is receiving...
Practitioners have frequently used the conditional logit (CL) model or multinomial logit (ML) model ...
This dissertation carries out a series of Monte Carlo simulations seeking the implications for welf...
This dissertation carries out a series of Monte Carlo simulations seeking the implications for welfa...
The impact of the approach used to describe preference heterogeneity on welfare measures has been wi...
Models to analyse discrete choice data that account for heterogeneity in error variance (scale) acro...
A range of empirical approaches to representing preference heterogeneity have emerged in choice mode...
The Multinomial Logit, discrete choice model of transport demand, has several restrictions when comp...
Stated choice models based on the random utility framework are becoming increasingly popular in the ...
Stated choice models based on the random utility framework are becoming increasingly popular in the ...
[eng]The impact of the approach used to describe preference heterogeneity on welfare measures has be...
Stated choice models based on the random utility framework are becoming increasingly popular in the ...
This thesis is a collection of four papers; one centred on a policy application of Contingent Valuat...
The opportunity to have seven data sets associated with a stated choice experiment that are very sim...
The multinomial logit model (MNL) has for many years provided the fundamental platform for the analy...
Representing unobserved heterogeneity or taste variations in behavioral choice analysis is receiving...
Practitioners have frequently used the conditional logit (CL) model or multinomial logit (ML) model ...
This dissertation carries out a series of Monte Carlo simulations seeking the implications for welf...
This dissertation carries out a series of Monte Carlo simulations seeking the implications for welfa...
The impact of the approach used to describe preference heterogeneity on welfare measures has been wi...
Models to analyse discrete choice data that account for heterogeneity in error variance (scale) acro...
A range of empirical approaches to representing preference heterogeneity have emerged in choice mode...
The Multinomial Logit, discrete choice model of transport demand, has several restrictions when comp...
Stated choice models based on the random utility framework are becoming increasingly popular in the ...
Stated choice models based on the random utility framework are becoming increasingly popular in the ...
[eng]The impact of the approach used to describe preference heterogeneity on welfare measures has be...
Stated choice models based on the random utility framework are becoming increasingly popular in the ...
This thesis is a collection of four papers; one centred on a policy application of Contingent Valuat...
The opportunity to have seven data sets associated with a stated choice experiment that are very sim...
The multinomial logit model (MNL) has for many years provided the fundamental platform for the analy...
Representing unobserved heterogeneity or taste variations in behavioral choice analysis is receiving...
Practitioners have frequently used the conditional logit (CL) model or multinomial logit (ML) model ...