We consider the statistical inference for high-dimensional precision matrices. Specifically, we propose a data-driven procedure for constructing a class of simultaneous confidence regions for a subset of the entries of a large precision matrix. The confidence regions can be applied to test for specific structures of a precision matrix, and to recover its nonzero components. We first construct an estimator for the precision matrix via penalized node-wise regression. We then develop the Gaussian approximation to approximate the distribution of the maximum difference between the estimated and the true precision coefficients. A computationally feasible parametric bootstrap algorithm is developed to implement the proposed procedure. The theoreti...
DATA AVAILABILITY STATEMENT : The data under consideration in this study is in the public domain.Thi...
The estimation of inverse covariance matrix (also known as precision matrix) is an important proble...
Estimating a large precision (inverse covariance) matrix is difficult due to the curse of dimensiona...
We consider the statistical inference for high-dimensional precision matrices. Specifically, we prop...
Matrix models are ubiquitous in modern statistics. For instance, they are used in finance to assess ...
The thesis concerns estimating large correlation and covariance matrices and their inverses. Two new...
The thesis considers the estimation of sparse precision matrices in the highdimensional setting. Fir...
This paper focuses on exploring the sparsity of the inverse covariance matrix $\bSigma^{-1}$, or the...
We establish a necessary and sufficient condition for the existence of the precision matrix estimato...
Given n samples X1, X2,..., Xn from N(0,Σ), we are interested in estimating the p × p precision matr...
This paper proposes a regularisation method for the estimation of large covariance matrices that use...
The dependency structure of multivariate data can be analyzed using the covariance matrix ∑. In many...
Estimation of inverse covariance matrices, known as precision matrices, is important in various area...
Under the Gaussian assumption, the relationship between conditional independence and sparsity allows...
High-dimensional data are often most plausibly generated from distributions with complex structure a...
DATA AVAILABILITY STATEMENT : The data under consideration in this study is in the public domain.Thi...
The estimation of inverse covariance matrix (also known as precision matrix) is an important proble...
Estimating a large precision (inverse covariance) matrix is difficult due to the curse of dimensiona...
We consider the statistical inference for high-dimensional precision matrices. Specifically, we prop...
Matrix models are ubiquitous in modern statistics. For instance, they are used in finance to assess ...
The thesis concerns estimating large correlation and covariance matrices and their inverses. Two new...
The thesis considers the estimation of sparse precision matrices in the highdimensional setting. Fir...
This paper focuses on exploring the sparsity of the inverse covariance matrix $\bSigma^{-1}$, or the...
We establish a necessary and sufficient condition for the existence of the precision matrix estimato...
Given n samples X1, X2,..., Xn from N(0,Σ), we are interested in estimating the p × p precision matr...
This paper proposes a regularisation method for the estimation of large covariance matrices that use...
The dependency structure of multivariate data can be analyzed using the covariance matrix ∑. In many...
Estimation of inverse covariance matrices, known as precision matrices, is important in various area...
Under the Gaussian assumption, the relationship between conditional independence and sparsity allows...
High-dimensional data are often most plausibly generated from distributions with complex structure a...
DATA AVAILABILITY STATEMENT : The data under consideration in this study is in the public domain.Thi...
The estimation of inverse covariance matrix (also known as precision matrix) is an important proble...
Estimating a large precision (inverse covariance) matrix is difficult due to the curse of dimensiona...