Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally shrunk by recombining sample eigenvectors with a (potentially nonlinear) function of the unobservable population covariance matrix. The optimal shape of this function reflects the loss/risk that is to be minimized. We solve the problem of optimal covariance matrix estimation under a variety of loss functions motivated by statistical precedent, probability theory, and differential geometry. A key ingredient of our nonlinear shrinkage methodology is a new estimator of the angle between sample and population eigenvectors, without making strong assumptions on the population eigenvalues. We also introduce a broad family of covariance matrix estimato...
AbstractThe problem of estimating large covariance matrices of multivariate real normal and complex ...
Estimating the covariance matrix of a random vector is essential and challenging in large dimension ...
Many applied problems require a covariance matrix estimator that is not only invertible, but also we...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
Many statistical applications require an estimate of a covariance matrix and/or its inverse. When th...
This paper establishes the first analytical formula for optimal nonlinear shrinkage of large-dimensi...
This book provides a self-contained introduction to shrinkage estimation for matrix-variate normal d...
International audienceA highly popular regularized (shrinkage) covariance matrix estimator is the sh...
This paper constructs a new estimator for large covariance matrices by drawing a bridge between the ...
Provides nonparametric Steinian shrinkage estimators of the covariance matrix that are suitable in h...
Estimating a covariance matrix is an important task in applications where the number of vari-ables i...
When estimating covariance matrices, traditional sample covariance-based estimators are straightforw...
This paper introduces a new method for deriving covariance matrix estimators that are decision-theor...
Integrated covariance matrices arise in intra-day models of asset returns, which allow volatility to...
Many econometric and data-science applications require a reliable estimate of the covariance matrix,...
AbstractThe problem of estimating large covariance matrices of multivariate real normal and complex ...
Estimating the covariance matrix of a random vector is essential and challenging in large dimension ...
Many applied problems require a covariance matrix estimator that is not only invertible, but also we...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
Many statistical applications require an estimate of a covariance matrix and/or its inverse. When th...
This paper establishes the first analytical formula for optimal nonlinear shrinkage of large-dimensi...
This book provides a self-contained introduction to shrinkage estimation for matrix-variate normal d...
International audienceA highly popular regularized (shrinkage) covariance matrix estimator is the sh...
This paper constructs a new estimator for large covariance matrices by drawing a bridge between the ...
Provides nonparametric Steinian shrinkage estimators of the covariance matrix that are suitable in h...
Estimating a covariance matrix is an important task in applications where the number of vari-ables i...
When estimating covariance matrices, traditional sample covariance-based estimators are straightforw...
This paper introduces a new method for deriving covariance matrix estimators that are decision-theor...
Integrated covariance matrices arise in intra-day models of asset returns, which allow volatility to...
Many econometric and data-science applications require a reliable estimate of the covariance matrix,...
AbstractThe problem of estimating large covariance matrices of multivariate real normal and complex ...
Estimating the covariance matrix of a random vector is essential and challenging in large dimension ...
Many applied problems require a covariance matrix estimator that is not only invertible, but also we...