Alternatives to the Dirichlet prior for multinomial probabilities are explored. The Dirichlet prior has the feature that the cell probabilities are only weakly correlated. A generalization of the logistic normal family on the simplex introduces a strong correlation structure between cell probabilities through the covariance of the underlying multivariate normal distribution. The posterior distribution is also a generalized logistic normal distribution where the data enter through the covariance structure. Inference about absolutely continuous distributions is analogous to the discrete case. The density is modeled by a second order, continuous in the mean, stochastic process such that neighboring ordinates are highly correlated. The infinite...
In the first paper, we propose a flexible class of priors for density estimation avoiding discrete m...
The past decade has seen a remarkable development in the area of Bayesian nonparametric inference fr...
Summary. This article considers Bayesian methods for density regression, allowing a random probabili...
A family of nonparametric prior distributions which extends the Dirichlet process is introduced and ...
We establish that the Dirichlet location scale mixture of normal priors and the logistic Gaussian pr...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
Nonparametric Bayesian inference has widespread applications in statistics and machine learning. In ...
The definition and investigation of general classes of non-parametric priors has recently been an ac...
The availability of complex-structured data has sparked new research directions in statistics and ma...
We address the question as to whether a prior distribution on the space of distribution functions ex...
AbstractConstruction methods for prior densities are investigated from a predictive viewpoint. Predi...
This paper addresses the task of eliciting an informative prior distribution for multinomial models....
Abstract: We consider nonparametric Bayesian estimation of a probabil-ity density p based on a rando...
In this paper we investigate a recently introduced class of nonparametric priors, termed generalize...
In the first paper, we propose a flexible class of priors for density estimation avoiding discrete m...
The past decade has seen a remarkable development in the area of Bayesian nonparametric inference fr...
Summary. This article considers Bayesian methods for density regression, allowing a random probabili...
A family of nonparametric prior distributions which extends the Dirichlet process is introduced and ...
We establish that the Dirichlet location scale mixture of normal priors and the logistic Gaussian pr...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
Nonparametric Bayesian inference has widespread applications in statistics and machine learning. In ...
The definition and investigation of general classes of non-parametric priors has recently been an ac...
The availability of complex-structured data has sparked new research directions in statistics and ma...
We address the question as to whether a prior distribution on the space of distribution functions ex...
AbstractConstruction methods for prior densities are investigated from a predictive viewpoint. Predi...
This paper addresses the task of eliciting an informative prior distribution for multinomial models....
Abstract: We consider nonparametric Bayesian estimation of a probabil-ity density p based on a rando...
In this paper we investigate a recently introduced class of nonparametric priors, termed generalize...
In the first paper, we propose a flexible class of priors for density estimation avoiding discrete m...
The past decade has seen a remarkable development in the area of Bayesian nonparametric inference fr...
Summary. This article considers Bayesian methods for density regression, allowing a random probabili...