Variational Bayes (VB) methods have emerged as a fast and computationally-efficient alternative to Markov chain Monte Carlo (MCMC) methods for scalable Bayesian estimation of mixed multinomial logit (MMNL) models. It has been established that VB is substantially faster than MCMC at practically no compromises in predictive accuracy. In this paper, we address two critical gaps concerning the usage and understanding of VB for MMNL. First, extant VB methods are limited to utility specifications involving only individual-specific taste parameters. Second, the finite-sample properties of VB estimators and the relative performance of VB, MCMC and maximum simulated likelihood estimation (MSLE) are not known. To address the former, this study extend...
Variational Bayes (VB) is a common strategy for approximate Bayesian inference, but simple methods a...
Variational Bayes (VB) is a common strategy for approximate Bayesian inference, but simple methods a...
The focus of this paper is to develop a procedure for the Maximum Composite Marginal Likelihood (MA...
Variational Bayesian methods aim to address some of the weaknesses (computation time, storage costs ...
Variational Bayesian methods aim to address some of the weaknesses (computation time, storage costs ...
Variational Bayesian methods aim to address some of the weaknesses (computation time, storage costs ...
Recently, variational Bayesian methods have come into the field of statistics. These methods aim to ...
The multinomial logit model (MNL) possesses a latent variable representation in terms of random var...
This paper develops nonparametric estimation for discrete choice models based on the mixed multinomi...
The widespread use of the Mixed Multinomial Logit model, in the context of discrete choice data, has...
The widespread use of the Mixed Multinomial Logit model, in the context of discrete choice data, has...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
The widespread use of the Mixed Multinomial Logit model, in the context of discrete choice data, has...
The performances of different simulation-based estimation techniques for mixed logit modeling are ev...
The widespread use of the Mixed Multinomial Logit model, in the context of discrete choice data, has...
Variational Bayes (VB) is a common strategy for approximate Bayesian inference, but simple methods a...
Variational Bayes (VB) is a common strategy for approximate Bayesian inference, but simple methods a...
The focus of this paper is to develop a procedure for the Maximum Composite Marginal Likelihood (MA...
Variational Bayesian methods aim to address some of the weaknesses (computation time, storage costs ...
Variational Bayesian methods aim to address some of the weaknesses (computation time, storage costs ...
Variational Bayesian methods aim to address some of the weaknesses (computation time, storage costs ...
Recently, variational Bayesian methods have come into the field of statistics. These methods aim to ...
The multinomial logit model (MNL) possesses a latent variable representation in terms of random var...
This paper develops nonparametric estimation for discrete choice models based on the mixed multinomi...
The widespread use of the Mixed Multinomial Logit model, in the context of discrete choice data, has...
The widespread use of the Mixed Multinomial Logit model, in the context of discrete choice data, has...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
The widespread use of the Mixed Multinomial Logit model, in the context of discrete choice data, has...
The performances of different simulation-based estimation techniques for mixed logit modeling are ev...
The widespread use of the Mixed Multinomial Logit model, in the context of discrete choice data, has...
Variational Bayes (VB) is a common strategy for approximate Bayesian inference, but simple methods a...
Variational Bayes (VB) is a common strategy for approximate Bayesian inference, but simple methods a...
The focus of this paper is to develop a procedure for the Maximum Composite Marginal Likelihood (MA...