We investigate the asymptotic behaviour of posterior distributions of regression coefficients in high-dimensional linear models as the number of dimensions grows with the number of observations. We show that the posterior distribution concentrates in neighbourhoods of the true parameter under simple sufficient conditions. These conditions hold under popular shrinkage priors given some sparsity assumptions
Important features of multivariate linear regression are emphasised and a selection of prior distrib...
Abstract Summary. We study the asymptotic behaviour of the posterior distribution in a mixture mode...
AbstractWe consider Bayesian shrinkage predictions for the Normal regression problem under the frequ...
this paper, we study the behaviour of the posterior distribution as the sample size n tends to infin...
We consider sparse Bayesian estimation in the classical multivariate linear regression model with p ...
Sparsity is a standard structural assumption that is made while modeling high-dimensional statistica...
Abstract. We study the contraction properties of a class of quasi-posterior dis-tributions Π̌n,d obt...
The choice of prior distributions for the variances can be important and quite difficult in Bayesian...
In this paper, we study the large-sample properties of the posterior-based inference in the curved e...
<p>Vector autoregressive (VAR) models aim to capture linear temporal interdependencies among multipl...
Summary This work studies the large sample properties of the posterior-based inference in the curved...
In prediction problems with more predictors than observations, it can sometimes be helpful to use a ...
In some linear models, such as those with interactions, it is natural to include the relationship be...
National audienceWe investigate the asymptotic properties of posterior distributions when the model ...
AbstractWe study consistency and asymptotic normality of posterior distributions of the natural para...
Important features of multivariate linear regression are emphasised and a selection of prior distrib...
Abstract Summary. We study the asymptotic behaviour of the posterior distribution in a mixture mode...
AbstractWe consider Bayesian shrinkage predictions for the Normal regression problem under the frequ...
this paper, we study the behaviour of the posterior distribution as the sample size n tends to infin...
We consider sparse Bayesian estimation in the classical multivariate linear regression model with p ...
Sparsity is a standard structural assumption that is made while modeling high-dimensional statistica...
Abstract. We study the contraction properties of a class of quasi-posterior dis-tributions Π̌n,d obt...
The choice of prior distributions for the variances can be important and quite difficult in Bayesian...
In this paper, we study the large-sample properties of the posterior-based inference in the curved e...
<p>Vector autoregressive (VAR) models aim to capture linear temporal interdependencies among multipl...
Summary This work studies the large sample properties of the posterior-based inference in the curved...
In prediction problems with more predictors than observations, it can sometimes be helpful to use a ...
In some linear models, such as those with interactions, it is natural to include the relationship be...
National audienceWe investigate the asymptotic properties of posterior distributions when the model ...
AbstractWe study consistency and asymptotic normality of posterior distributions of the natural para...
Important features of multivariate linear regression are emphasised and a selection of prior distrib...
Abstract Summary. We study the asymptotic behaviour of the posterior distribution in a mixture mode...
AbstractWe consider Bayesian shrinkage predictions for the Normal regression problem under the frequ...