The multinomial logit model (MNL) possesses a latent variable representation in terms of random variables following a multivariate logistic distribution. Based on multivariate finite mixture approximations of the multivariate logistic distribution, various data-augmented Metropolis-Hastings algorithms are developed for a Bayesian inference of the MNL model
Multinomial logistic regression is one of the most popular models for modelling the ef-fect of expla...
This paper introduces Bayesian analysis and demonstrates its application to parameter estimation of ...
This paper develops nonparametric estimation for discrete choice models based on the Mixed Multinomi...
AbstractThis paper studies a Metropolis-Hastings (MH) algorithm of unknown parameters for a multinom...
A Bayesian approach to estimation of the regression coefficients of a multinominal logit model with ...
A Bayesian approach to estimation of the regression coefficients of a multinominal logit model with ...
Multinomial logistic regression is one of the most popular models for modelling the effect of explan...
Variational Bayes (VB) methods have emerged as a fast and computationally-efficient alternative to M...
Statisticians along with other scientists have made significant computational advances that enable t...
AbstractThis paper studies a Metropolis-Hastings (MH) algorithm of unknown parameters for a multinom...
This paper is concerned with statistical inference in multinomial probit, multinomial-$t$ and multin...
Statisticians along with other scientists have made significant computational advances that enable t...
Multinomial logistic regression is a logistic regression where the dependent variable is polychotomo...
We develop Metropolis-Hastings algorithms for exact conditional inference, including goodness-of-fit...
This paper is concerned with statistical inference in multinomial probit, multinomial-t and multinom...
Multinomial logistic regression is one of the most popular models for modelling the ef-fect of expla...
This paper introduces Bayesian analysis and demonstrates its application to parameter estimation of ...
This paper develops nonparametric estimation for discrete choice models based on the Mixed Multinomi...
AbstractThis paper studies a Metropolis-Hastings (MH) algorithm of unknown parameters for a multinom...
A Bayesian approach to estimation of the regression coefficients of a multinominal logit model with ...
A Bayesian approach to estimation of the regression coefficients of a multinominal logit model with ...
Multinomial logistic regression is one of the most popular models for modelling the effect of explan...
Variational Bayes (VB) methods have emerged as a fast and computationally-efficient alternative to M...
Statisticians along with other scientists have made significant computational advances that enable t...
AbstractThis paper studies a Metropolis-Hastings (MH) algorithm of unknown parameters for a multinom...
This paper is concerned with statistical inference in multinomial probit, multinomial-$t$ and multin...
Statisticians along with other scientists have made significant computational advances that enable t...
Multinomial logistic regression is a logistic regression where the dependent variable is polychotomo...
We develop Metropolis-Hastings algorithms for exact conditional inference, including goodness-of-fit...
This paper is concerned with statistical inference in multinomial probit, multinomial-t and multinom...
Multinomial logistic regression is one of the most popular models for modelling the ef-fect of expla...
This paper introduces Bayesian analysis and demonstrates its application to parameter estimation of ...
This paper develops nonparametric estimation for discrete choice models based on the Mixed Multinomi...