Multinomial probit models are routinely-implemented representations for learning how the class probabilities of categorical response data change with p observed predictors. Although several frequentist methods have been developed for estimation, inference and classification within such a class of models, Bayesian inference is still lagging behind. This is due to the apparent absence of a tractable class of conjugate priors, that may facilitate posterior inference on the multinomial probit coefficients. Such an issue has motivated increasing efforts toward the development of effective Markov chain Monte Carlo methods, but state-of-the-art solutions still face severe computational bottlenecks, especially in high dimensions. In this article, w...
AbstractIn this article, we model multivariate categorical (binary and ordinal) response data using ...
Multivariate ordinal data arise in many areas of applications. This paper proposes new efficient met...
We re-examine the multinomial probit model in the light of recent developments in the field of simul...
Multinomial probit models are routinely-implemented representations for learning how the class proba...
A broad class of models that routinely appear in several fields can be expressed as partially or ful...
A broad class of models that routinely appear in several fields can be expressed as partially or ful...
Regression models for dichotomous data are ubiquitous in statistics. Besides being useful for infere...
Multinomial probit (mnp) models are fundamental and widely-applied regression models for categorical...
No abstract availableBayesian binary probit regression and its extensions to time-dependent observat...
Under standard prior distributions, fitted probabilities from Bayesian multinomial probit models can...
Probit and logistic regressions are among the most popular and well-established formulations to mode...
Statistical inference in multinomial multiperiod probit models has been hindered in the past by the ...
This paper considers probabilistic multinomial probit classification using Gaussian process (GP) pri...
It is well known in the statistics literature that augmenting binary and polychotomous response mode...
The multinomial probit model is often used to analyze choice behaviour. However, estimation with exi...
AbstractIn this article, we model multivariate categorical (binary and ordinal) response data using ...
Multivariate ordinal data arise in many areas of applications. This paper proposes new efficient met...
We re-examine the multinomial probit model in the light of recent developments in the field of simul...
Multinomial probit models are routinely-implemented representations for learning how the class proba...
A broad class of models that routinely appear in several fields can be expressed as partially or ful...
A broad class of models that routinely appear in several fields can be expressed as partially or ful...
Regression models for dichotomous data are ubiquitous in statistics. Besides being useful for infere...
Multinomial probit (mnp) models are fundamental and widely-applied regression models for categorical...
No abstract availableBayesian binary probit regression and its extensions to time-dependent observat...
Under standard prior distributions, fitted probabilities from Bayesian multinomial probit models can...
Probit and logistic regressions are among the most popular and well-established formulations to mode...
Statistical inference in multinomial multiperiod probit models has been hindered in the past by the ...
This paper considers probabilistic multinomial probit classification using Gaussian process (GP) pri...
It is well known in the statistics literature that augmenting binary and polychotomous response mode...
The multinomial probit model is often used to analyze choice behaviour. However, estimation with exi...
AbstractIn this article, we model multivariate categorical (binary and ordinal) response data using ...
Multivariate ordinal data arise in many areas of applications. This paper proposes new efficient met...
We re-examine the multinomial probit model in the light of recent developments in the field of simul...