This paper introduces a new approach to the study of rates of convergence for posterior distributions. It is a natural extension of a recent approach to the study of Bayesian consistency. In particular, we improve on current rates of convergence for models including the mixture of Dirichlet process model and the random Bernstein polynomial model
Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two r...
Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two r...
This dissertation focuses on the frequentist properties of Bayesian procedures in a broad spectrum o...
This paper introduces a new approach to the study of rates of convergence for posterior distribution...
This paper introduces a new approach to the study of rates of convergence for posterior distribution...
We consider the asymptotic behavior of posterior distributions and Bayes estimators for infinite-dim...
We study the rates of convergence of the posterior distribution for Bayesian density estimation with...
We study the rates of convergence of the posterior distribution for Bayesian density estimation with...
We consider the asymptotic behaviour of posterior distributions based on continuous observations fro...
A Dirichlet mixture of exponential power distributions, as a prior on densities supported on the rea...
We consider the asymptotic behaviour of posterior distributions based on continuous observations fro...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
We consider Bayesian density estimation for compactly supported densities using Bernstein mixtures o...
Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two r...
Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two r...
This dissertation focuses on the frequentist properties of Bayesian procedures in a broad spectrum o...
This paper introduces a new approach to the study of rates of convergence for posterior distribution...
This paper introduces a new approach to the study of rates of convergence for posterior distribution...
We consider the asymptotic behavior of posterior distributions and Bayes estimators for infinite-dim...
We study the rates of convergence of the posterior distribution for Bayesian density estimation with...
We study the rates of convergence of the posterior distribution for Bayesian density estimation with...
We consider the asymptotic behaviour of posterior distributions based on continuous observations fro...
A Dirichlet mixture of exponential power distributions, as a prior on densities supported on the rea...
We consider the asymptotic behaviour of posterior distributions based on continuous observations fro...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
We consider the problem of estimating a compactly supported density taking a Bayesian nonparametric ...
We consider Bayesian density estimation for compactly supported densities using Bernstein mixtures o...
Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two r...
Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two r...
This dissertation focuses on the frequentist properties of Bayesian procedures in a broad spectrum o...