AbstractLet S = (1/n) Σt=1n X(t) X(t)′, where X(1), …, X(n) are p × 1 random vectors with mean zero. When X(t) (t = 1, …, n) are independently and identically distributed (i.i.d.) as multivariate normal with mean vector 0 and covariance matrix Σ, many authors have investigated the asymptotic expansions for the distributions of various functions of the eigenvalues of S. In this paper, we will extend the above results to the case when {X(t)} is a Gaussian stationary process. Also we shall derive the asymptotic expansions for certain functions of the sample canonical correlations in multivariate time series. Applications of some of the results in signal processing are also discussed
This paper aims to provide a nonparametric analysis of the integrated processes of an integer order,...
Asymptotic study of canonical correlation analysis gives the opportunity to present the different st...
AbstractWe show that the entries of the asymptotic covariance matrix of the serial covariances and s...
AbstractThe authors investigated the asymptotic joint distributions of certain functions of the eige...
AbstractIn this paper, the authors obtained asymptotic expressions for the joint distributions of ce...
Asymptotic study of canonical correlation analysis gives the opportunity to present the different st...
AbstractThis paper deals with asymptotic expansions for the non-null distributions of certain test s...
In this paper, the authors obtained asymptotic expressions for the joint distributions of certain fu...
AbstractWe consider two continuous-time Gaussian processes, one being partially correlated to a time...
AbstractCanonical correlation analysis is shown to be equivalent to the problem of estimating a line...
AbstractThis paper deals with asymptotic expansions for the non-null distributions of certain test s...
We consider linear spectral statistics built from the block-normalized correlation matrix of a set o...
We consider linear spectral statistics built from the block-normalized correlation matrix of a set o...
Asymptotic study of canonical correlation analysis gives the opportunity to present the different st...
AbstractMultivariate asymptotic (normal) distributions for eigenvalues and unit-length eigenvectors ...
This paper aims to provide a nonparametric analysis of the integrated processes of an integer order,...
Asymptotic study of canonical correlation analysis gives the opportunity to present the different st...
AbstractWe show that the entries of the asymptotic covariance matrix of the serial covariances and s...
AbstractThe authors investigated the asymptotic joint distributions of certain functions of the eige...
AbstractIn this paper, the authors obtained asymptotic expressions for the joint distributions of ce...
Asymptotic study of canonical correlation analysis gives the opportunity to present the different st...
AbstractThis paper deals with asymptotic expansions for the non-null distributions of certain test s...
In this paper, the authors obtained asymptotic expressions for the joint distributions of certain fu...
AbstractWe consider two continuous-time Gaussian processes, one being partially correlated to a time...
AbstractCanonical correlation analysis is shown to be equivalent to the problem of estimating a line...
AbstractThis paper deals with asymptotic expansions for the non-null distributions of certain test s...
We consider linear spectral statistics built from the block-normalized correlation matrix of a set o...
We consider linear spectral statistics built from the block-normalized correlation matrix of a set o...
Asymptotic study of canonical correlation analysis gives the opportunity to present the different st...
AbstractMultivariate asymptotic (normal) distributions for eigenvalues and unit-length eigenvectors ...
This paper aims to provide a nonparametric analysis of the integrated processes of an integer order,...
Asymptotic study of canonical correlation analysis gives the opportunity to present the different st...
AbstractWe show that the entries of the asymptotic covariance matrix of the serial covariances and s...