The ridge inverse covariance estimator is generalized to allow for entry-wise penalization. An efficient algorithm for its evaluation is proposed. Its computational accuracy is benchmarked against implementations of specific cases the generalized ridge inverse covariance estimator encompasses. The proposed estimator shrinks toward a user-specified, nonrandom target matrix and is shown to be positive definite and consistent. It is pointed out how the generalized ridge inverse covariance estimator can be used to obtain a generalization of the graphical lasso estimator as well as of its elastic net counterpart. The usage of the presented estimator is illustrated in graphical modeling of omics data. Supplementary materials for this article are ...
The generalized Ridge penalty is a powerful tool for dealing with overfitting and for high-dimension...
The generalized Ridge penalty is a powerful tool for dealing with overfitting and for high-dimension...
Building on a recent framework for distributionally robust optimization, we considerestimation of th...
The ridge estimation of the precision matrix is investigated in the setting where the number of vari...
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...
We develop a new estimator of the inverse covariance matrix for high-dimensional multivariate normal...
We propose covariance-regularized regression, a family of methods for prediction in high dimensional...
Spearman's rank correlation is a robust alternative for the standard correlation coefficient. By usi...
The generalized Ridge penalty is a powerful tool for dealing with overfitting and for high-dimension...
The generalized Ridge penalty is a powerful tool for dealing with overfitting and for high-dimension...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
The generalized Ridge penalty is a powerful tool for dealing with overfitting and for high-dimension...
Building on a recent framework for distributionally robust optimization, we considerestimation of th...
The generalized Ridge penalty is a powerful tool for dealing with overfitting and for high-dimension...
The generalized Ridge penalty is a powerful tool for dealing with overfitting and for high-dimension...
The generalized Ridge penalty is a powerful tool for dealing with overfitting and for high-dimension...
Building on a recent framework for distributionally robust optimization, we considerestimation of th...
The ridge estimation of the precision matrix is investigated in the setting where the number of vari...
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...
We develop a new estimator of the inverse covariance matrix for high-dimensional multivariate normal...
We propose covariance-regularized regression, a family of methods for prediction in high dimensional...
Spearman's rank correlation is a robust alternative for the standard correlation coefficient. By usi...
The generalized Ridge penalty is a powerful tool for dealing with overfitting and for high-dimension...
The generalized Ridge penalty is a powerful tool for dealing with overfitting and for high-dimension...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
The generalized Ridge penalty is a powerful tool for dealing with overfitting and for high-dimension...
Building on a recent framework for distributionally robust optimization, we considerestimation of th...
The generalized Ridge penalty is a powerful tool for dealing with overfitting and for high-dimension...
The generalized Ridge penalty is a powerful tool for dealing with overfitting and for high-dimension...
The generalized Ridge penalty is a powerful tool for dealing with overfitting and for high-dimension...
Building on a recent framework for distributionally robust optimization, we considerestimation of th...