We propose a “NOVEL Integration of the Sample and Thresholded covariance estimators” (NOVELIST) to estimate the large covariance (correlation) and precision matrix. NOVELIST performs shrinkage of the sample covariance (correlation) towards its thresholded version. The sample covariance (correlation) component is non-sparse and can be low-rank in high dimensions. The thresholded sample covariance (correlation) component is sparse, and its addition ensures the stable invertibility of NOVELIST. The benefits of the NOVELIST estimator include simplicity, ease of implementation, computational efficiency and the fact that its application avoids eigenanalysis. We obtain an explicit convergence rate in the operator norm over a large class of covaria...
Covariance regularization is important when the dimension p of a covariance matrix is close to or ev...
Covariance matrix estimation plays an important role in statistical analysis in many fields, includi...
Published in Economics Letters, 2020, 195, 109465. DOI: 10.1016/j.econlet.2020.109465</p
We propose a “NOVEL Integration of the Sample and Thresholded covariance estimators” (NOVELIST) to e...
The thesis concerns estimating large correlation and covariance matrices and their inverses. Two new...
This paper deals with estimation of high-dimensional covariance with a conditional sparsity structur...
This paper proposes a regularisation method for the estimation of large covariance matrices that use...
This is an expository paper that reviews recent developments on optimal estimation of structured hig...
Spearman's rank correlation is a robust alternative for the standard correlation coefficient. By usi...
This paper studies estimation of covariance matrices with conditional sparse structure. We overcome ...
This paper studies estimation of covariance matrices with conditional sparse structure. We overcome ...
This paper deals with the estimation of a high-dimensional covariance with a con-ditional sparsity s...
The estimation of inverse covariance matrix (also known as precision matrix) is an important proble...
This paper studies the sparsistency and rates of convergence for estimating sparse covariance and pr...
This thesis develops methodology and asymptotic analysis for sparse estimators of the covariance mat...
Covariance regularization is important when the dimension p of a covariance matrix is close to or ev...
Covariance matrix estimation plays an important role in statistical analysis in many fields, includi...
Published in Economics Letters, 2020, 195, 109465. DOI: 10.1016/j.econlet.2020.109465</p
We propose a “NOVEL Integration of the Sample and Thresholded covariance estimators” (NOVELIST) to e...
The thesis concerns estimating large correlation and covariance matrices and their inverses. Two new...
This paper deals with estimation of high-dimensional covariance with a conditional sparsity structur...
This paper proposes a regularisation method for the estimation of large covariance matrices that use...
This is an expository paper that reviews recent developments on optimal estimation of structured hig...
Spearman's rank correlation is a robust alternative for the standard correlation coefficient. By usi...
This paper studies estimation of covariance matrices with conditional sparse structure. We overcome ...
This paper studies estimation of covariance matrices with conditional sparse structure. We overcome ...
This paper deals with the estimation of a high-dimensional covariance with a con-ditional sparsity s...
The estimation of inverse covariance matrix (also known as precision matrix) is an important proble...
This paper studies the sparsistency and rates of convergence for estimating sparse covariance and pr...
This thesis develops methodology and asymptotic analysis for sparse estimators of the covariance mat...
Covariance regularization is important when the dimension p of a covariance matrix is close to or ev...
Covariance matrix estimation plays an important role in statistical analysis in many fields, includi...
Published in Economics Letters, 2020, 195, 109465. DOI: 10.1016/j.econlet.2020.109465</p