In problems where a distribution is concentrated in a lower-dimensional subspace, the covariance matrix faces a singularity problem. In downstream statistical analyzes this can cause a problem as the inverse of the covariance matrix is often required in the likelihood. There are several methods to overcome this challenge. The most well known ones are the eigenvalue, singular value, and Cholesky decompositions. In this short note, we develop a new method to deal with the singularity problem while preserving the covariance structure of the original matrix. We compare our alternative with other methods. In a simulation study, we generate various covariance matrices that have different dimensions and dependency structures, and compare the CPU t...
We introduce nonparametric regularization of the eigenvalues of a sample covariance matrix through s...
Covariance matrix estimation plays an important role in statistical analysis in many fields, includi...
Many multivariate techniques in statistics are described in terms of an appropriate sums of squares ...
In problems where a distribution is concentrated in a lower-dimensional subspace, the covariance mat...
In problems where a distribution is concentrated in a lower-dimensional subspace, the covariance mat...
This is an expository essay that reviews the recent developments on resolving the singularity proble...
Abstract—In many practical situations we would like to es-timate the covariance matrix of a set of v...
The maximum likelihood (ML) test in the structural covariance analysis is an effective tool in stati...
The singular value matrix decomposition plays a ubiquitous role in statistics and related fields. My...
When in a linear GMM model nuisance parameters are eliminated by multiplying the moment conditions b...
In the present work some topics in the context of principal compo-nents are studied when the matrix ...
Statistical analysis in high-dimensional settings, where the data dimension p is close to or larger ...
In the present work some topics in the context of principal components are studied when the matrix o...
Singular value decomposition is a widely used tool for dimension reduction in multivariate analysis....
AbstractThe need to estimate structured covariance matrices arises in a variety of applications and ...
We introduce nonparametric regularization of the eigenvalues of a sample covariance matrix through s...
Covariance matrix estimation plays an important role in statistical analysis in many fields, includi...
Many multivariate techniques in statistics are described in terms of an appropriate sums of squares ...
In problems where a distribution is concentrated in a lower-dimensional subspace, the covariance mat...
In problems where a distribution is concentrated in a lower-dimensional subspace, the covariance mat...
This is an expository essay that reviews the recent developments on resolving the singularity proble...
Abstract—In many practical situations we would like to es-timate the covariance matrix of a set of v...
The maximum likelihood (ML) test in the structural covariance analysis is an effective tool in stati...
The singular value matrix decomposition plays a ubiquitous role in statistics and related fields. My...
When in a linear GMM model nuisance parameters are eliminated by multiplying the moment conditions b...
In the present work some topics in the context of principal compo-nents are studied when the matrix ...
Statistical analysis in high-dimensional settings, where the data dimension p is close to or larger ...
In the present work some topics in the context of principal components are studied when the matrix o...
Singular value decomposition is a widely used tool for dimension reduction in multivariate analysis....
AbstractThe need to estimate structured covariance matrices arises in a variety of applications and ...
We introduce nonparametric regularization of the eigenvalues of a sample covariance matrix through s...
Covariance matrix estimation plays an important role in statistical analysis in many fields, includi...
Many multivariate techniques in statistics are described in terms of an appropriate sums of squares ...