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...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
Sparsity is a standard structural assumption that is made while modeling high-dimensional statistica...
Asymptotic theory, Jeffreys prior, Neyman–Scott model, Right invariant prior, Kullback–Leibler diver...
AbstractWe consider Bayesian shrinkage predictions for the Normal regression problem under the frequ...
We investigate Bayesian shrinkage methods for constructing predictive distributions. We consider the...
In estimating a multivariate normal mean, both the celebrated James-Stein estimator and the Bayes es...
In linear regression problems with many predictors, penalized regression techniques are often used t...
In linear regression problems with many predictors, penalized regression techniques are often used t...
In linear regression problems with many predictors, penalized regression techniques are often used t...
This paper considers Bayesian regression with normal and double-exponential priors as forecasting me...
In linear regression problems with many predictors, penalized regression techniques are often used t...
In linear regression problems with many predictors, penalized regression techniques are often used t...
This paper examines the properties of Bayes shrinkage estimators for dynamic regressions, that are b...
Suppose we observe X ~ Nm(Aβ, σ2I) and would like to estimate the predictive density p(y|β) of a fut...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
Sparsity is a standard structural assumption that is made while modeling high-dimensional statistica...
Asymptotic theory, Jeffreys prior, Neyman–Scott model, Right invariant prior, Kullback–Leibler diver...
AbstractWe consider Bayesian shrinkage predictions for the Normal regression problem under the frequ...
We investigate Bayesian shrinkage methods for constructing predictive distributions. We consider the...
In estimating a multivariate normal mean, both the celebrated James-Stein estimator and the Bayes es...
In linear regression problems with many predictors, penalized regression techniques are often used t...
In linear regression problems with many predictors, penalized regression techniques are often used t...
In linear regression problems with many predictors, penalized regression techniques are often used t...
This paper considers Bayesian regression with normal and double-exponential priors as forecasting me...
In linear regression problems with many predictors, penalized regression techniques are often used t...
In linear regression problems with many predictors, penalized regression techniques are often used t...
This paper examines the properties of Bayes shrinkage estimators for dynamic regressions, that are b...
Suppose we observe X ~ Nm(Aβ, σ2I) and would like to estimate the predictive density p(y|β) of a fut...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
This paper builds on a simple unified representation of shrinkage Bayes estimators based on hierarch...
Sparsity is a standard structural assumption that is made while modeling high-dimensional statistica...
Asymptotic theory, Jeffreys prior, Neyman–Scott model, Right invariant prior, Kullback–Leibler diver...