Unique parametrizations of models are very important for parameter interpretation and consistency of estimators. In this paper we analyze the identifiability of a general class of finite mixtures of multinomial logits with varying and fixed effects, which includes the popular multinomial logit and conditional logit models. The application of the general identifiability conditions is demonstrated on several important special cases and relations to previously established results are discussed. The main results are illustrated with a simulation study using artificial data and a marketing dataset of brand choices
Multinomial logit model is a powerful tool for modeling the dependence relationship between a set of...
The Multinomial Logit Model is one of the most used Discrete Choice Models and it has been widely u...
Aliss Working Papers ; 2008-08 Diffusion du document : Publique 2008-08Empirical identification of M...
Unique parametrizations of models are very important for parameter interpretation and consistency of...
International audienceWhile hidden class models of various types arise in many statistical applicati...
Identifiability is a necessary condition for the existence of consistent estimates for the parameter...
In this paper, we show under which conditions generalized finite mixture with underlying normal distr...
In dynamic discrete choice analysis, controlling for unobserved heterogeneity is an important issue,...
The random coefficients multinomial choice logit model, also known as the mixed logit, has been wide...
Identifiability problems can be encountered when fitting finite mixture models and their presence sh...
Mixtures of ranking models are standard tools for ranking problems. However, even the fundamental qu...
Finite mixture models provide a flexible framework to study unobserved entities and have arisen in m...
In dynamic discrete choice analysis, controlling for unobserved heterogeneity is an im-portant issue...
This thesis develops a new estimation method for the multinomial logit model, which is applied in mo...
In this paper a sufficient condition for the identifiability of finite mixtures is given. This cond...
Multinomial logit model is a powerful tool for modeling the dependence relationship between a set of...
The Multinomial Logit Model is one of the most used Discrete Choice Models and it has been widely u...
Aliss Working Papers ; 2008-08 Diffusion du document : Publique 2008-08Empirical identification of M...
Unique parametrizations of models are very important for parameter interpretation and consistency of...
International audienceWhile hidden class models of various types arise in many statistical applicati...
Identifiability is a necessary condition for the existence of consistent estimates for the parameter...
In this paper, we show under which conditions generalized finite mixture with underlying normal distr...
In dynamic discrete choice analysis, controlling for unobserved heterogeneity is an important issue,...
The random coefficients multinomial choice logit model, also known as the mixed logit, has been wide...
Identifiability problems can be encountered when fitting finite mixture models and their presence sh...
Mixtures of ranking models are standard tools for ranking problems. However, even the fundamental qu...
Finite mixture models provide a flexible framework to study unobserved entities and have arisen in m...
In dynamic discrete choice analysis, controlling for unobserved heterogeneity is an im-portant issue...
This thesis develops a new estimation method for the multinomial logit model, which is applied in mo...
In this paper a sufficient condition for the identifiability of finite mixtures is given. This cond...
Multinomial logit model is a powerful tool for modeling the dependence relationship between a set of...
The Multinomial Logit Model is one of the most used Discrete Choice Models and it has been widely u...
Aliss Working Papers ; 2008-08 Diffusion du document : Publique 2008-08Empirical identification of M...