AbstractWe consider Bayesian shrinkage predictions for the Normal regression problem under the frequentist Kullback–Leibler risk function.Firstly, we consider the multivariate Normal model with an unknown mean and a known covariance. While the unknown mean is fixed, the covariance of future samples can be different from that of training samples. We show that the Bayesian predictive distribution based on the uniform prior is dominated by that based on a class of priors if the prior distributions for the covariance and future covariance matrices are rotation invariant.Then, we consider a class of priors for the mean parameters depending on the future covariance matrix. With such a prior, we can construct a Bayesian predictive distribution dom...
We examine the issue of variable selection in linear regression modeling, where we have a potentiall...
Many authors have considered the problem of estimating a covariance matrix in small samples. In thi...
AbstractConstruction methods for prior densities are investigated from a predictive viewpoint. Predi...
AbstractWe consider Bayesian shrinkage predictions for the Normal regression problem under the frequ...
AbstractThis paper addresses the problem of estimating the density of a future outcome from a multiv...
Suppose we observe X ~ Nm(Aβ, σ2I) and would like to estimate the predictive density p(y|β) of a fut...
AbstractSimultaneous prediction and parameter inference for the independent Poisson observables mode...
AbstractBayesian predictive densities for the 2-dimensional Wishart model are investigated. The perf...
AbstractIn some invariant estimation problems under a group, the Bayes estimator against an invarian...
AbstractThis paper deals with the problem of estimating the mean matrix in an elliptically contoured...
In this report, we briefly discuss Bayesian linear regression as well as the proof for the inference...
In this report, we briefly discuss Bayesian linear regression as well as the proof for the inference...
In this report, we briefly discuss Bayesian linear regression as well as the proof for the inference...
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 vectors with co...
We examine the issue of variable selection in linear regression modeling, where we have a potentiall...
Many authors have considered the problem of estimating a covariance matrix in small samples. In thi...
AbstractConstruction methods for prior densities are investigated from a predictive viewpoint. Predi...
AbstractWe consider Bayesian shrinkage predictions for the Normal regression problem under the frequ...
AbstractThis paper addresses the problem of estimating the density of a future outcome from a multiv...
Suppose we observe X ~ Nm(Aβ, σ2I) and would like to estimate the predictive density p(y|β) of a fut...
AbstractSimultaneous prediction and parameter inference for the independent Poisson observables mode...
AbstractBayesian predictive densities for the 2-dimensional Wishart model are investigated. The perf...
AbstractIn some invariant estimation problems under a group, the Bayes estimator against an invarian...
AbstractThis paper deals with the problem of estimating the mean matrix in an elliptically contoured...
In this report, we briefly discuss Bayesian linear regression as well as the proof for the inference...
In this report, we briefly discuss Bayesian linear regression as well as the proof for the inference...
In this report, we briefly discuss Bayesian linear regression as well as the proof for the inference...
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 vectors with co...
We examine the issue of variable selection in linear regression modeling, where we have a potentiall...
Many authors have considered the problem of estimating a covariance matrix in small samples. In thi...
AbstractConstruction methods for prior densities are investigated from a predictive viewpoint. Predi...