AbstractWe derive asymptotic expansions for the distributions of the normal theory maximum likelihood estimators of unique variances and uniquenesses (standardized unique variances) in the factor analysis model. Asymptotic expansions are given for the distributions of non-Studentized and also Studentized statistics to construct accurate confidence intervals. In the case of Studentized statistics, we investigate the accuracy of the asymptotic approximations to the exact distributions that are determined by Monte Carlo simulations. The results show that, compared with normal approximations, the asymptotic expansions generally improve the accuracy of the approximations in the tail area except for the cases of the uniqueness estimators whose tr...
The paper develops the bootstrap theory and extends the asymptotic theory of rank estimators, such a...
AbstractAsymptotic expansions for the standardized as well as the studentized least squares estimate...
This paper provides a set of results that can be used to establish the asymptotic size and/or simila...
AbstractWe derive asymptotic expansions for the distributions of the normal theory maximum likelihoo...
AbstractAsymptotic expansions of the distributions of parameter estimators in mean and covariance st...
In this thesis, we discuss the use of bootstrap methods for constructing confidence intervals in a ...
The sampling distribution of several commonly occurring statistics are known to be closer to the cor...
AbstractAsymptotic expansions of the distributions of parameter estimators in mean and covariance st...
A linear method for the construction of asymptotic bootstrap confidence intervals is proposed. We ap...
AbstractAsymptotic expansions of the distributions of typical estimators in canonical correlation an...
When the variance is unknown, the problem of setting fixed width confidence intervals for the mean m...
In this thesis we examine the derivation of asymptotic expansion approximations to the cumulative di...
AbstractThe asymptotic distribution of some test criteria for a covariance matrix are derived under ...
This paper presents discussion of properties of asymptotic confidence intervals based on a normalizi...
The dissertation is composed of four research papers. In all the papers asymptotic methods and techn...
The paper develops the bootstrap theory and extends the asymptotic theory of rank estimators, such a...
AbstractAsymptotic expansions for the standardized as well as the studentized least squares estimate...
This paper provides a set of results that can be used to establish the asymptotic size and/or simila...
AbstractWe derive asymptotic expansions for the distributions of the normal theory maximum likelihoo...
AbstractAsymptotic expansions of the distributions of parameter estimators in mean and covariance st...
In this thesis, we discuss the use of bootstrap methods for constructing confidence intervals in a ...
The sampling distribution of several commonly occurring statistics are known to be closer to the cor...
AbstractAsymptotic expansions of the distributions of parameter estimators in mean and covariance st...
A linear method for the construction of asymptotic bootstrap confidence intervals is proposed. We ap...
AbstractAsymptotic expansions of the distributions of typical estimators in canonical correlation an...
When the variance is unknown, the problem of setting fixed width confidence intervals for the mean m...
In this thesis we examine the derivation of asymptotic expansion approximations to the cumulative di...
AbstractThe asymptotic distribution of some test criteria for a covariance matrix are derived under ...
This paper presents discussion of properties of asymptotic confidence intervals based on a normalizi...
The dissertation is composed of four research papers. In all the papers asymptotic methods and techn...
The paper develops the bootstrap theory and extends the asymptotic theory of rank estimators, such a...
AbstractAsymptotic expansions for the standardized as well as the studentized least squares estimate...
This paper provides a set of results that can be used to establish the asymptotic size and/or simila...