AbstractIn this article, we model multivariate categorical (binary and ordinal) response data using a very rich class of scale mixture of multivariate normal (SMMVN) link functions to accommodate heavy tailed distributions. We consider both noninformative as well as informative prior distributions for SMMVN-link models. The notation of informative prior elicitation is based on available similar historical studies. The main objectives of this article are (i) to derive theoretical properties of noninformative and informative priors as well as the resulting posteriors and (ii) to develop an efficient Markov chain Monte Carlo algorithm to sample from the resulting posterior distribution. A real data example from prostate cancer studies is used ...
In the context of Bayesian statistical analysis, elicitation is the process of formulating a prior d...
Multinomial probit models are routinely-implemented representations for learning how the class proba...
Abstract: This study proposes a method to estimate the posterior distribution of multidimensional ca...
The paper develops a class of priors that leads to equivalent posterior inference for odds ratio par...
The paper develops a class of priors that leads to equivalent posterior inference for odds ratio par...
This paper addresses the task of eliciting an informative prior distribution for multinomial models....
The term combinatorial mixtures refers to a flexible class of parametric models for inference on mix...
In this paper, we use multivariate logistic regression models to incorporate correlation among binar...
The paper develops a class of priors which leads to equivalent posterior inference for odds ratio pa...
Different conditional independence specifications for ordinal categorical data are compared by calcu...
Recently, Bayesian estimation of item response theory (IRT) models via Markov chain Monte Carlo meth...
This thesis explores the use of the scale mixtures of normal (SMN) family of probability distributio...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
In the context of Bayesian statistical analysis, elicitation is the process of formulating a prior d...
Multinomial probit models are routinely-implemented representations for learning how the class proba...
Abstract: This study proposes a method to estimate the posterior distribution of multidimensional ca...
The paper develops a class of priors that leads to equivalent posterior inference for odds ratio par...
The paper develops a class of priors that leads to equivalent posterior inference for odds ratio par...
This paper addresses the task of eliciting an informative prior distribution for multinomial models....
The term combinatorial mixtures refers to a flexible class of parametric models for inference on mix...
In this paper, we use multivariate logistic regression models to incorporate correlation among binar...
The paper develops a class of priors which leads to equivalent posterior inference for odds ratio pa...
Different conditional independence specifications for ordinal categorical data are compared by calcu...
Recently, Bayesian estimation of item response theory (IRT) models via Markov chain Monte Carlo meth...
This thesis explores the use of the scale mixtures of normal (SMN) family of probability distributio...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
In the context of Bayesian statistical analysis, elicitation is the process of formulating a prior d...
Multinomial probit models are routinely-implemented representations for learning how the class proba...
Abstract: This study proposes a method to estimate the posterior distribution of multidimensional ca...