Let X|μ∼Np(μ, vxI) and Y|μ∼Np(μ, vyI) be independent p-dimensional multivariate normal vectors with common unknown mean μ. Based on observing X=x, we consider the problem of estimating the true predictive density p(y|μ) of Y under expected Kullback–Leibler loss. Our focus here is the characterization of admissible procedures for this problem. We show that the class of all generalized Bayes rules is a complete class, and that the easily interpretable conditions of Brown and Hwang [Statistical Decision Theory and Related Topics (1982) III 205–230] are sufficient for a formal Bayes rule to be admissible
AbstractIn three or more dimensions it is well known that the usual point estimator for the mean of ...
AbstractSimultaneous prediction and parameter inference for the independent Poisson observables mode...
AbstractConstruction methods for prior densities are investigated from a predictive viewpoint. Predi...
AbstractThis paper addresses the problem of estimating the density of a future outcome from a multiv...
Let X : μ ∼ Np(μ, vxI) and Y : μ ∼ Np(μ, vyI) be independent p-dimensional multivariate normal vecto...
Let X|μ∼Np(μ,vxI) and Y|μ∼Np(μ,vyI) be independent p-dimensional multivariate normal vectors with co...
Let X : μ ∼ Np(μ, vxI) and Y : μ ∼ Np(μ, vyI) be independent p-dimensional multivariate normal vecto...
Suppose we observe X ~ Nm(Aβ, σ2I) and would like to estimate the predictive density p(y|β) of a fut...
Let X|μ∼Np(μ,vxI) and Y|μ∼Np(μ,vyI) be independent p-dimensional multivariate normal vectors with co...
AbstractThis paper addresses the problem of estimating the density of a future outcome from a multiv...
Let X | µ ∼ Np(µ, vxI) and Y | µ ∼ Np(µ, vyI) be independent p-dimensional multivariate normal vecto...
AbstractWe consider two problems: (1) estimate a normal mean under a general divergence loss introdu...
AbstractBayesian predictive densities for the 2-dimensional Wishart model are investigated. The perf...
Abstract: For general regular parametric models, we compare predictive densities under the criterion...
Suppose we observe X ~ Nm(Aβ, σ2I) and would like to estimate the predictive density p(y|β) of a fut...
AbstractIn three or more dimensions it is well known that the usual point estimator for the mean of ...
AbstractSimultaneous prediction and parameter inference for the independent Poisson observables mode...
AbstractConstruction methods for prior densities are investigated from a predictive viewpoint. Predi...
AbstractThis paper addresses the problem of estimating the density of a future outcome from a multiv...
Let X : μ ∼ Np(μ, vxI) and Y : μ ∼ Np(μ, vyI) be independent p-dimensional multivariate normal vecto...
Let X|μ∼Np(μ,vxI) and Y|μ∼Np(μ,vyI) be independent p-dimensional multivariate normal vectors with co...
Let X : μ ∼ Np(μ, vxI) and Y : μ ∼ Np(μ, vyI) be independent p-dimensional multivariate normal vecto...
Suppose we observe X ~ Nm(Aβ, σ2I) and would like to estimate the predictive density p(y|β) of a fut...
Let X|μ∼Np(μ,vxI) and Y|μ∼Np(μ,vyI) be independent p-dimensional multivariate normal vectors with co...
AbstractThis paper addresses the problem of estimating the density of a future outcome from a multiv...
Let X | µ ∼ Np(µ, vxI) and Y | µ ∼ Np(µ, vyI) be independent p-dimensional multivariate normal vecto...
AbstractWe consider two problems: (1) estimate a normal mean under a general divergence loss introdu...
AbstractBayesian predictive densities for the 2-dimensional Wishart model are investigated. The perf...
Abstract: For general regular parametric models, we compare predictive densities under the criterion...
Suppose we observe X ~ Nm(Aβ, σ2I) and would like to estimate the predictive density p(y|β) of a fut...
AbstractIn three or more dimensions it is well known that the usual point estimator for the mean of ...
AbstractSimultaneous prediction and parameter inference for the independent Poisson observables mode...
AbstractConstruction methods for prior densities are investigated from a predictive viewpoint. Predi...