Eigenvalue analysis is an important aspect in many data modeling methods. Unfortunately, the eigenvalues of the sample covariance matrix (sample eigenvalues) are biased estimates of the eigenvalues of the covariance matrix of the data generating process (population eigenvalues). We present a new method based on bootstrapping to reduce the bias in the sample eigenvalues: the eigenvalue estimates are updated in several iterations, where in each iteration synthetic data is generated to determine how to update the population eigenvalue estimates. Comparison of the bootstrap eigenvalue correction with a state of the art correction method by Karoui shows that depending on the type of population eigenvalue distribution, sometimes the Karoui method...
This article provides a central limit theorem for a consistent estimator of population eigenvalues w...
We consider settings where the observations are drawn from a zero-mean multivariate (real or complex...
We consider the problem of quantifying uncertainty for the estimation error of the leading eigenvect...
Abstract—Eigenvalue analysis is an important aspect in many data modeling methods. Unfortunately, th...
Second-order statistics play an important role in data modeling. Nowadays, there is a tendency towar...
Eigenvalues of sample covariance matrices are often used in biometrics. It has been known for severa...
Eigenvalues of sample covariance matrices are often used in biometrics. It has been known for severa...
This paper studies the impact of bootstrap procedure on the eigenvalue distributions of the sample c...
ABSTRACT. Bootstrap methods are widely used for distribution estimation, al-though in some problems ...
Spectral statistics play a central role in many multivariate testing problems. It is therefore of in...
Modern computer technology has facilitated the presence of high-dimensional data, whose graphical re...
In a spiked population model, the population covariance matrix has all its eigenvalues equal to unit...
Three methods for estimating the eigenvalues of the parameter covariance matrix in a Wishart distrib...
Statistics derived from the eigenvalues of sample covariance matrices are called spectral statistics...
AbstractIn the spiked population model introduced by Johnstone (2001) [11], the population covarianc...
This article provides a central limit theorem for a consistent estimator of population eigenvalues w...
We consider settings where the observations are drawn from a zero-mean multivariate (real or complex...
We consider the problem of quantifying uncertainty for the estimation error of the leading eigenvect...
Abstract—Eigenvalue analysis is an important aspect in many data modeling methods. Unfortunately, th...
Second-order statistics play an important role in data modeling. Nowadays, there is a tendency towar...
Eigenvalues of sample covariance matrices are often used in biometrics. It has been known for severa...
Eigenvalues of sample covariance matrices are often used in biometrics. It has been known for severa...
This paper studies the impact of bootstrap procedure on the eigenvalue distributions of the sample c...
ABSTRACT. Bootstrap methods are widely used for distribution estimation, al-though in some problems ...
Spectral statistics play a central role in many multivariate testing problems. It is therefore of in...
Modern computer technology has facilitated the presence of high-dimensional data, whose graphical re...
In a spiked population model, the population covariance matrix has all its eigenvalues equal to unit...
Three methods for estimating the eigenvalues of the parameter covariance matrix in a Wishart distrib...
Statistics derived from the eigenvalues of sample covariance matrices are called spectral statistics...
AbstractIn the spiked population model introduced by Johnstone (2001) [11], the population covarianc...
This article provides a central limit theorem for a consistent estimator of population eigenvalues w...
We consider settings where the observations are drawn from a zero-mean multivariate (real or complex...
We consider the problem of quantifying uncertainty for the estimation error of the leading eigenvect...