Shrinkage can effectively improve the condition number and accuracy of covariance matrix estimation, especially for low-sample-support applications with the number of training samples smaller than the dimensionality. This paper investigates parameter choice for linear shrinkage estimators. We propose data-driven, leave-one-out cross-validation (LOOCV) methods for automatically choosing the shrinkage coefficients, aiming to minimize the Frobenius norm of the estimation error. A quadratic loss is used as the prediction error for LOOCV. The resulting solutions can be found analytically or by solving optimization problems of small sizes and thus have low complexities. Our proposed methods are compared with various existing techniques. We show t...
International audienceA highly popular regularized (shrinkage) covariance matrix estimator is the sh...
International audienceA popular regularized (shrinkage) covariance estimator is the shrinkage sample...
Description This package implements a James-Stein-type shrinkage estimator for the covariance matrix...
Shrinkage can effectively improve the condition number and accuracy of covariance matrix estimation,...
Linear estimation of signals is often based on covariance matrices estimated from training, which ca...
Covariance estimation is a key step in many target detection algorithms. To distinguish target from ...
The paper proposes a cross-validated linear shrinkage estimation for population covariance matrices....
Abstract—We address covariance estimation in the sense of minimum mean-squared error (MMSE) when the...
When estimating covariance matrices, traditional sample covariance-based estimators are straightforw...
This book provides a self-contained introduction to shrinkage estimation for matrix-variate normal d...
International audienceIn the context of robust covariance matrix estimation, this work generalizes t...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
Estimating the covariance matrix of a random vector is essential and challenging in large dimension ...
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...
International audienceA highly popular regularized (shrinkage) covariance matrix estimator is the sh...
International audienceA popular regularized (shrinkage) covariance estimator is the shrinkage sample...
Description This package implements a James-Stein-type shrinkage estimator for the covariance matrix...
Shrinkage can effectively improve the condition number and accuracy of covariance matrix estimation,...
Linear estimation of signals is often based on covariance matrices estimated from training, which ca...
Covariance estimation is a key step in many target detection algorithms. To distinguish target from ...
The paper proposes a cross-validated linear shrinkage estimation for population covariance matrices....
Abstract—We address covariance estimation in the sense of minimum mean-squared error (MMSE) when the...
When estimating covariance matrices, traditional sample covariance-based estimators are straightforw...
This book provides a self-contained introduction to shrinkage estimation for matrix-variate normal d...
International audienceIn the context of robust covariance matrix estimation, this work generalizes t...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
Estimating the covariance matrix of a random vector is essential and challenging in large dimension ...
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...
International audienceA highly popular regularized (shrinkage) covariance matrix estimator is the sh...
International audienceA popular regularized (shrinkage) covariance estimator is the shrinkage sample...
Description This package implements a James-Stein-type shrinkage estimator for the covariance matrix...