Although discrete mixture modelling has formed the backbone of the literature on Bayesian density estimation, there are some well-known disadvantages. As an alternative to discrete mix-tures, we propose a class of priors based on random nonlinear functions of a uniform latent variable with an additive residual. The induced prior for the density is shown to have desirable properties, including ease of centring on an initial guess, large support, posterior consistency and straightforward computation via Gibbs sampling. Some advantages over discrete mixtures, such as Dirichlet process mixtures of Gaussian kernels, are discussed and illustrated via simulations and an application
Bayesian nonparametric methods have recently gained popularity in the context of density estimation....
We propose a general procedure for constructing nonparametric priors for Bayesian inference. Under v...
Bayesian nonparametric methods have recently gained popularity in the context of density estimation....
Abstract: Although discrete mixture modeling has formed the backbone of the literature on Bayesian d...
Summary. This article considers Bayesian methods for density regression, allowing a random probabili...
The infinite mixture of normals model has become a popular method for density estimation problems. T...
The past decade has seen a remarkable development in the area of Bayesian nonparametric inference fr...
We establish that the Dirichlet location scale mixture of normal priors and the logistic Gaussian pr...
The mixture of normals model has been extensively applied to density estimation problems. This pape...
The past decade has seen a remarkable development in the area of Bayesian nonparametric inference fr...
The past decade has seen a remarkable development in the area of Bayesian nonparametric inference fr...
In the first paper, we propose a flexible class of priors for density estimation avoiding discrete m...
We describe and illustrate Bayesian inference in models for density estimation using mixtures of Dir...
Abstract. We propose a flexible Bayesian method for conditional density function es-timation and pro...
JSTOR is a not-for-profit service that helps scholars, researchers, and students discover, use, and ...
Bayesian nonparametric methods have recently gained popularity in the context of density estimation....
We propose a general procedure for constructing nonparametric priors for Bayesian inference. Under v...
Bayesian nonparametric methods have recently gained popularity in the context of density estimation....
Abstract: Although discrete mixture modeling has formed the backbone of the literature on Bayesian d...
Summary. This article considers Bayesian methods for density regression, allowing a random probabili...
The infinite mixture of normals model has become a popular method for density estimation problems. T...
The past decade has seen a remarkable development in the area of Bayesian nonparametric inference fr...
We establish that the Dirichlet location scale mixture of normal priors and the logistic Gaussian pr...
The mixture of normals model has been extensively applied to density estimation problems. This pape...
The past decade has seen a remarkable development in the area of Bayesian nonparametric inference fr...
The past decade has seen a remarkable development in the area of Bayesian nonparametric inference fr...
In the first paper, we propose a flexible class of priors for density estimation avoiding discrete m...
We describe and illustrate Bayesian inference in models for density estimation using mixtures of Dir...
Abstract. We propose a flexible Bayesian method for conditional density function es-timation and pro...
JSTOR is a not-for-profit service that helps scholars, researchers, and students discover, use, and ...
Bayesian nonparametric methods have recently gained popularity in the context of density estimation....
We propose a general procedure for constructing nonparametric priors for Bayesian inference. Under v...
Bayesian nonparametric methods have recently gained popularity in the context of density estimation....