The ridge estimation of the precision matrix is investigated in the setting where the number of variables is large relative to the sample size. First, two archetypal ridge estimators are reviewed and it is noted that their penalties do not coincide with common quadratic ridge penalties. Subsequently, starting from a proper ℓ2-penalty, analytic expressions are derived for two alternative ridge estimators of the precision matrix. The alternative estimators are compared to the archetypes with regard to eigenvalue shrinkage and risk. The alternatives are also compared to the graphical lasso within the context of graphical modeling. The comparisons may give reason to prefer the proposed alternative estimators
Abstract It is known that the accuracy of the maximum likelihood-based covariance and precision matr...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
The problem of estimating covariance and precision matrices of multivariate normal distributions is ...
The ridge inverse covariance estimator is generalized to allow for entry-wise penalization. An effic...
The problem of estimating the covariance matrix of normal and non-normal distributions is addressed ...
Methods of estimating the ridge parameter in ridge regression analysis are available in the literat...
We consider the problem of jointly estimating multiple inverse covariance matrices from high-dimensi...
We consider the problem of jointly estimating multiple inverse covariance matrices from high-dimensi...
For a suitably chosen ridge penalty parameter, the ridge regression estimator uniformly dominates th...
For a suitably chosen ridge penalty parameter, the ridge regression estimator uniformly dominates th...
The estimation of inverse covariance matrix (also known as precision matrix) is an important proble...
The estimation of inverse covariance matrix (also known as precision matrix) is an important proble...
This paper treats the problem of estimating the inverse covariance matrix in an increasing dimension...
<p>It is known that the accuracy of the maximum likelihood-based covariance and precision matrix est...
Abstract It is known that the accuracy of the maximum likelihood-based covariance and precision matr...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
The problem of estimating covariance and precision matrices of multivariate normal distributions is ...
The ridge inverse covariance estimator is generalized to allow for entry-wise penalization. An effic...
The problem of estimating the covariance matrix of normal and non-normal distributions is addressed ...
Methods of estimating the ridge parameter in ridge regression analysis are available in the literat...
We consider the problem of jointly estimating multiple inverse covariance matrices from high-dimensi...
We consider the problem of jointly estimating multiple inverse covariance matrices from high-dimensi...
For a suitably chosen ridge penalty parameter, the ridge regression estimator uniformly dominates th...
For a suitably chosen ridge penalty parameter, the ridge regression estimator uniformly dominates th...
The estimation of inverse covariance matrix (also known as precision matrix) is an important proble...
The estimation of inverse covariance matrix (also known as precision matrix) is an important proble...
This paper treats the problem of estimating the inverse covariance matrix in an increasing dimension...
<p>It is known that the accuracy of the maximum likelihood-based covariance and precision matrix est...
Abstract It is known that the accuracy of the maximum likelihood-based covariance and precision matr...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...