We provide sufficient conditions to establish posterior consistency in nonparametric regression problems with Gaussian errors when suitable prior distributions are used for the unknown regression function and the noise variance. When the prior under consideration satisfies certain properties, the crucial condition for posterior consistency is to construct tests that separate from the outside of the suitable neighborhoods of the parameter. Under appropriate conditions on the regression function, we show there exist tests, of which the type I error and the type II error probabilities are exponentially small for distinguishing the true parameter from the complements of the suitable neighborhoods of the parameter. These sufficient conditions en...
We establish a sufficient condition ensuring strong Hellinger consistency of posterior distributions...
In longitudinal studies or clustered designs, observations for each subject or cluster are dependent...
The introduction of the Hausdorff alpha-entropy in Xing (2008a), Xing (2008b), Xing (2010), Xing (20...
AbstractWe provide sufficient conditions to establish posterior consistency in nonparametric regress...
Posterior consistency can be thought of as a theoretical justification of the Bayesian method. One o...
Consider binary observations whose response probability is an unknown smooth function of a set of co...
Bayesian consistency is an important issue in the context of non- parametric problems. The posterior...
Alternative posterior consistency results in nonparametric binary regression using Gaussia
We introduce a new truncation approach to extend earlier methods for proving consistency in nonparam...
This paper contributes to the theory of Bayesian consistency for a sequence of posterior and predict...
We consider Bayesian inference in the linear regression problem with an unknown error distribution t...
AbstractBayesian nonparametric models are widely and successfully used for statistical prediction. ...
In this paper we study posterior consistency for different topologies on the parameters for hidden M...
We consider a sequence of posterior distributions based on a data-dependent prior (which we shall re...
In the Bayesian approach, the a priori knowledge about the input of a mathematical model is describe...
We establish a sufficient condition ensuring strong Hellinger consistency of posterior distributions...
In longitudinal studies or clustered designs, observations for each subject or cluster are dependent...
The introduction of the Hausdorff alpha-entropy in Xing (2008a), Xing (2008b), Xing (2010), Xing (20...
AbstractWe provide sufficient conditions to establish posterior consistency in nonparametric regress...
Posterior consistency can be thought of as a theoretical justification of the Bayesian method. One o...
Consider binary observations whose response probability is an unknown smooth function of a set of co...
Bayesian consistency is an important issue in the context of non- parametric problems. The posterior...
Alternative posterior consistency results in nonparametric binary regression using Gaussia
We introduce a new truncation approach to extend earlier methods for proving consistency in nonparam...
This paper contributes to the theory of Bayesian consistency for a sequence of posterior and predict...
We consider Bayesian inference in the linear regression problem with an unknown error distribution t...
AbstractBayesian nonparametric models are widely and successfully used for statistical prediction. ...
In this paper we study posterior consistency for different topologies on the parameters for hidden M...
We consider a sequence of posterior distributions based on a data-dependent prior (which we shall re...
In the Bayesian approach, the a priori knowledge about the input of a mathematical model is describe...
We establish a sufficient condition ensuring strong Hellinger consistency of posterior distributions...
In longitudinal studies or clustered designs, observations for each subject or cluster are dependent...
The introduction of the Hausdorff alpha-entropy in Xing (2008a), Xing (2008b), Xing (2010), Xing (20...