Covariance matrix estimation plays an important role in statistical analysis in many fields, including (but not limited to) portfolio allocation and risk management in finance, graphical modeling, and clustering for genes discovery in bioinformatics, Kalman filtering and factor analysis in economics. In this paper, we give a selective review of covariance and precision matrix estimation when the matrix dimension can be diverging with, or even larger than the sample size. Two broad categories of regularization methods are presented. The first category exploits an assumed structure of the covariance or precision matrix for consistent estimation. The second category shrinks the eigenvalues of a sample covariance matrix, knowing from random mat...
Many applications of modern science involve a large number of parameters. In many cases, the ...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
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...
Estimating covariance matrices is an important part of portfolio selection, risk management, and ass...
Abstract. Estimating covariance matrices is an important part of port-folio selection, risk manageme...
Methods for estimating sparse and large covariance matrices Covariance and correlation matrices pla...
Estimating covariance matrices is an important part of portfolio selection, risk management, and ass...
This thesis considers two problems related to high-dimensional covariance matrices, namely, covarian...
The estimation of inverse covariance matrix (also known as precision matrix) is an important proble...
Estimating covariance matrices is an important part of portfolio selection, risk management, and ass...
The problem of estimating covariance and precision matrices of multivariate normal distributions is ...
The covariance matrix (or its inverse, the precision matrix) is central to many chemometric techniqu...
The thesis concerns estimating large correlation and covariance matrices and their inverses. Two new...
Covariance matrix estimation plays a central role in statistical analyses. In molecular biology, for...
Many applications of modern science involve a large number of parameters. In many cases, the ...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
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...
Estimating covariance matrices is an important part of portfolio selection, risk management, and ass...
Abstract. Estimating covariance matrices is an important part of port-folio selection, risk manageme...
Methods for estimating sparse and large covariance matrices Covariance and correlation matrices pla...
Estimating covariance matrices is an important part of portfolio selection, risk management, and ass...
This thesis considers two problems related to high-dimensional covariance matrices, namely, covarian...
The estimation of inverse covariance matrix (also known as precision matrix) is an important proble...
Estimating covariance matrices is an important part of portfolio selection, risk management, and ass...
The problem of estimating covariance and precision matrices of multivariate normal distributions is ...
The covariance matrix (or its inverse, the precision matrix) is central to many chemometric techniqu...
The thesis concerns estimating large correlation and covariance matrices and their inverses. Two new...
Covariance matrix estimation plays a central role in statistical analyses. In molecular biology, for...
Many applications of modern science involve a large number of parameters. In many cases, the ...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
Covariance regularization is important when the dimension p of a covariance matrix is close to or ev...