In this paper, we suggest a Stata routine for multinomial logit models with unobserved heterogeneity using maximum simulated likelihood based on Halton sequences. The purpose of this paper is twofold. First, we describe the technical implementation of the estimation routine and discuss its properties. Further, we compare our estimation routine with the Stata program gllamm, which solves integration by using Gauss–Hermite quadrature or adaptive quadrature. For the analysis, we draw on multilevel data about schooling. Our empirical findings show that the estimation techniques lead to approximately the same estimation results. The advantage of simulation over Gauss–Hermite quadrature is a marked reduction in computational time for integrals wi...
In this paper, we evaluate the performance of different simulation-based estimation techniques for M...
In this article, I provide an illustrative, step-by-step implementation of the expectation–maximizat...
The use of the multinomial logit model is typically restricted to applications with few predictors, ...
In this paper, we suggest a Stata routine for multinomial logit models with unobserved heterogeneity...
In this paper we suggest a Stata routine for multinomial logit models with unob-served heterogeneity...
This paper proposes the use of a quasi-random sequence for the estimation of the mixed multinomial...
When a multinomial logit model (MNL) is constructed by selecting the best (e.g. the highest t-values...
The existence of the "tree" generalisation of the multinomial logit model, its consistency with theo...
The multinomial logit model with random coefficients is widely used in applied research. This paper ...
Multinomial logit models which are most commonly used for the modeling of unordered multi-category r...
AbstractThis paper studies a Metropolis-Hastings (MH) algorithm of unknown parameters for a multinom...
Multinomial logit model is a powerful tool for modeling the dependence relationship between a set of...
The logratio-normal-multinomial distribution is a count data model resulting from compounding a mult...
A standard method for fitting the multinomial logit model, used in some statistical packages, is to ...
This article describes the mixlogit Stata command for fitting mixed logit models by using maximum si...
In this paper, we evaluate the performance of different simulation-based estimation techniques for M...
In this article, I provide an illustrative, step-by-step implementation of the expectation–maximizat...
The use of the multinomial logit model is typically restricted to applications with few predictors, ...
In this paper, we suggest a Stata routine for multinomial logit models with unobserved heterogeneity...
In this paper we suggest a Stata routine for multinomial logit models with unob-served heterogeneity...
This paper proposes the use of a quasi-random sequence for the estimation of the mixed multinomial...
When a multinomial logit model (MNL) is constructed by selecting the best (e.g. the highest t-values...
The existence of the "tree" generalisation of the multinomial logit model, its consistency with theo...
The multinomial logit model with random coefficients is widely used in applied research. This paper ...
Multinomial logit models which are most commonly used for the modeling of unordered multi-category r...
AbstractThis paper studies a Metropolis-Hastings (MH) algorithm of unknown parameters for a multinom...
Multinomial logit model is a powerful tool for modeling the dependence relationship between a set of...
The logratio-normal-multinomial distribution is a count data model resulting from compounding a mult...
A standard method for fitting the multinomial logit model, used in some statistical packages, is to ...
This article describes the mixlogit Stata command for fitting mixed logit models by using maximum si...
In this paper, we evaluate the performance of different simulation-based estimation techniques for M...
In this article, I provide an illustrative, step-by-step implementation of the expectation–maximizat...
The use of the multinomial logit model is typically restricted to applications with few predictors, ...