In this study, we compare the parameter estimates of the mixed logit model obtained with maximum likelihood and with hierarchical Bayesian estimation. The choice of the priors in Bayesian estimation and of the type and the number of quasi-random draws for maximum likelihood estimation have a big impact on the estimates. Our main focus is on the effect of the prior for the covariance matrix in hierarchical Bayes estimation. We investigate several priors such as Inverse Wisharts, the Separation Strategy, Scaled Inverse Wisharts and the Huang Half-t priors and we compute the root mean square errors of the resulting estimates for the mean, covariance matrix and individual parameters in a large simulation study. We show that the default settings...
The mixed logit model is considered to be the most promising state of the art discrete choice model ...
Linear mixed effects models arise quite naturally in a number of settings. Two of the more prominent...
Maximum likelihood estimation in logistic regression with mixed effects is known to often result in ...
In this study, we compare the parameter estimates of the mixed logit model obtained with maximum lik...
Maximum likelihood and Bayesian estimation are both frequently used to fit mixed logit models to cho...
The widespread use of the Mixed Multinomial Logit model, in the context of discrete choice data, has...
The simulation variance in the estimation of mixed logit parameters is found, in our application, to...
AbstractMaximum simulated likelihood (MSL) procedure is generally adopted in discrete choice analysi...
The performances of different simulation-based estimation techniques for mixed logit modeling are ev...
Variational Bayes (VB) methods have emerged as a fast and computationally-efficient alternative to M...
In this paper we derive the Bayes estimates of the location parameter of normal and lognormal distri...
The main topic of the thesis is the proper execution of a Bayesian inference if log-normality is ass...
Variational Bayesian methods aim to address some of the weaknesses (computation time, storage costs ...
In this paper, we evaluate the performance of different simulation-based estimation techniques for M...
This thesis re-examines the Bayes hierarchical linear model and the associated issue of variance com...
The mixed logit model is considered to be the most promising state of the art discrete choice model ...
Linear mixed effects models arise quite naturally in a number of settings. Two of the more prominent...
Maximum likelihood estimation in logistic regression with mixed effects is known to often result in ...
In this study, we compare the parameter estimates of the mixed logit model obtained with maximum lik...
Maximum likelihood and Bayesian estimation are both frequently used to fit mixed logit models to cho...
The widespread use of the Mixed Multinomial Logit model, in the context of discrete choice data, has...
The simulation variance in the estimation of mixed logit parameters is found, in our application, to...
AbstractMaximum simulated likelihood (MSL) procedure is generally adopted in discrete choice analysi...
The performances of different simulation-based estimation techniques for mixed logit modeling are ev...
Variational Bayes (VB) methods have emerged as a fast and computationally-efficient alternative to M...
In this paper we derive the Bayes estimates of the location parameter of normal and lognormal distri...
The main topic of the thesis is the proper execution of a Bayesian inference if log-normality is ass...
Variational Bayesian methods aim to address some of the weaknesses (computation time, storage costs ...
In this paper, we evaluate the performance of different simulation-based estimation techniques for M...
This thesis re-examines the Bayes hierarchical linear model and the associated issue of variance com...
The mixed logit model is considered to be the most promising state of the art discrete choice model ...
Linear mixed effects models arise quite naturally in a number of settings. Two of the more prominent...
Maximum likelihood estimation in logistic regression with mixed effects is known to often result in ...