This paper tackles the problem of estimating the covariance matrix in large-dimension and small-sample-size scenarios. Inspired by the well-known linear shrinkage estimation, we propose a novel second-order Stein-type regularization strategy to generate well-conditioned covariance matrix estimators. We model the second-order Stein-type regularization as a quadratic polynomial concerning the sample covariance matrix and a given target matrix, representing the prior information of the actual covariance structure. To obtain available covariance matrix estimators, we choose the spherical and diagonal target matrices and develop unbiased estimates of the theoretical mean squared errors, which measure the distances between the actual covariance m...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
Many economic problems require a covariance matrix estimator that is not only invertible, but also w...
International audienceRobust high dimensional covariance estimators are considered, comprising regul...
Estimating a covariance matrix is an important task in applications where the number of vari-ables i...
Estimation of high-dimensional covariance matrices is known to be a difficult problem, has many appl...
This paper introduces a new method for deriving covariance matrix estimators that are decision-theor...
Covariance matrix estimation plays an important role in statistical analysis in many fields, includi...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
We consider the problem of estimating high-dimensional covariance matrices of K-populations or class...
Many applied problems require a covariance matrix estimator that is not only invertible, but also we...
This paper constructs a new estimator for large covariance matrices by drawing a bridge between the ...
An approach of regularizing Tyler\u27s robust M-estimator of the co-variance matrix is proposed. We ...
Covariance matrices usually exhibit specific spectral structures, such as low-rank ones in the case ...
International audienceCovariance matrices usually exhibit specific spectral structures, such as low-...
This paper proposes a conjugate Bayesian regression model to estimate the covariance matrix of a lar...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
Many economic problems require a covariance matrix estimator that is not only invertible, but also w...
International audienceRobust high dimensional covariance estimators are considered, comprising regul...
Estimating a covariance matrix is an important task in applications where the number of vari-ables i...
Estimation of high-dimensional covariance matrices is known to be a difficult problem, has many appl...
This paper introduces a new method for deriving covariance matrix estimators that are decision-theor...
Covariance matrix estimation plays an important role in statistical analysis in many fields, includi...
Under rotation-equivariant decision theory, sample covariance matrix eigenvalues can be optimally sh...
We consider the problem of estimating high-dimensional covariance matrices of K-populations or class...
Many applied problems require a covariance matrix estimator that is not only invertible, but also we...
This paper constructs a new estimator for large covariance matrices by drawing a bridge between the ...
An approach of regularizing Tyler\u27s robust M-estimator of the co-variance matrix is proposed. We ...
Covariance matrices usually exhibit specific spectral structures, such as low-rank ones in the case ...
International audienceCovariance matrices usually exhibit specific spectral structures, such as low-...
This paper proposes a conjugate Bayesian regression model to estimate the covariance matrix of a lar...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
Many economic problems require a covariance matrix estimator that is not only invertible, but also w...
International audienceRobust high dimensional covariance estimators are considered, comprising regul...