We develop a new estimator of the inverse covariance matrix for high-dimensional multivariate normal data using the horseshoe prior. The proposed graphical horseshoe estimator has attractive properties compared to other popular estimators, such as the graphical lasso and the graphical smoothly clipped absolute deviation. The most prominent benefit is that when the true inverse covariance matrix is sparse, the graphical horseshoe provides estimates with small information divergence from the sampling model. The posterior mean under the graphical horseshoe prior can also be almost unbiased under certain conditions. In addition to these theoretical results, we also provide a full Gibbs sampler for implementing our estimator. MATLAB code is avai...
We consider the problem of jointly estimating multiple inverse covariance matrices from high-dimensi...
Spearman's rank correlation is a robust alternative for the standard correlation coefficient. By usi...
We consider the problem of jointly estimating multiple inverse covariance matrices from high-dimensi...
The horseshoe prior has been shown to successfully handle high-dimensional sparse estimation problem...
The ridge inverse covariance estimator is generalized to allow for entry-wise penalization. An effic...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
Spearman's rank correlation is a robust alternative for the standard correlation coefficient. By usi...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
This paper proposes a new approach to sparsity, called the horseshoe estimator, which arises from a ...
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...
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...
Spearman's rank correlation is a robust alternative for the standard correlation coefficient. By usi...
We consider the problem of jointly estimating multiple inverse covariance matrices from high-dimensi...
The horseshoe prior has been shown to successfully handle high-dimensional sparse estimation problem...
The ridge inverse covariance estimator is generalized to allow for entry-wise penalization. An effic...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
Spearman's rank correlation is a robust alternative for the standard correlation coefficient. By usi...
This thesis studied the problem of inverse covariance matrix estimation and the inference of graph s...
This paper proposes a new approach to sparsity, called the horseshoe estimator, which arises from a ...
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...
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...
Spearman's rank correlation is a robust alternative for the standard correlation coefficient. By usi...
We consider the problem of jointly estimating multiple inverse covariance matrices from high-dimensi...