Consider estimating an n×p matrix of means Θ, say, from an n×p matrix of observations X, where the elements of X are assumed to be independently normally distributed with E(xij)=θij and constant variance, and where the performance of an estimator is judged using a p×p matrix quadratic error loss function. A matrix version of the James-Stein estimator is proposed, depending on a tuning constant a. It is shown to dominate the usual maximum likelihood estimator for some choices of a when n≥3. This result also extends to other shrinkage estimators and settings
This paper is concerned with the problem of estimating a matrix of means in multivariate normal dist...
Estimating a covariance matrix is an important task in applications where the number of vari-ables i...
Recently, the shrinkage approach has increased its popularity in theoretical and applied statistics,...
The dissertation can be broadly classified into four projects. They are presented in four different ...
AbstractIn this paper we propose James–Stein type estimators for variances raised to a fixed power b...
This book provides a self-contained introduction to shrinkage estimation for matrix-variate normal d...
In this paper, we are interested in estimating a multivariate normal mean under the balanced loss fu...
AbstractThe paper develops a general class of shrinkage estimators for estimating the normal mean, w...
This paper considers the problem of estimating a high-dimensional vector θ ∈ ℝn from a noisy one-tim...
This paper constructs a new estimator for large covariance matrices by drawing a bridge between the ...
In this work we construct an optimal shrinkage estimator for the precision matrix in high dimensions...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
This paper introduces a new method for deriving covariance matrix estimators that are decision-theor...
AbstractThe shrinkage effect is studied in estimating the expectation vector by weighting of mean ve...
Consider a p-variate(p ≥ 3) normal distribution with mean and covariance matrix Σ = 2I p for any un...
This paper is concerned with the problem of estimating a matrix of means in multivariate normal dist...
Estimating a covariance matrix is an important task in applications where the number of vari-ables i...
Recently, the shrinkage approach has increased its popularity in theoretical and applied statistics,...
The dissertation can be broadly classified into four projects. They are presented in four different ...
AbstractIn this paper we propose James–Stein type estimators for variances raised to a fixed power b...
This book provides a self-contained introduction to shrinkage estimation for matrix-variate normal d...
In this paper, we are interested in estimating a multivariate normal mean under the balanced loss fu...
AbstractThe paper develops a general class of shrinkage estimators for estimating the normal mean, w...
This paper considers the problem of estimating a high-dimensional vector θ ∈ ℝn from a noisy one-tim...
This paper constructs a new estimator for large covariance matrices by drawing a bridge between the ...
In this work we construct an optimal shrinkage estimator for the precision matrix in high dimensions...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
This paper introduces a new method for deriving covariance matrix estimators that are decision-theor...
AbstractThe shrinkage effect is studied in estimating the expectation vector by weighting of mean ve...
Consider a p-variate(p ≥ 3) normal distribution with mean and covariance matrix Σ = 2I p for any un...
This paper is concerned with the problem of estimating a matrix of means in multivariate normal dist...
Estimating a covariance matrix is an important task in applications where the number of vari-ables i...
Recently, the shrinkage approach has increased its popularity in theoretical and applied statistics,...