AbstractData in social and behavioral sciences are often hierarchically organized. Special statistical procedures have been developed to analyze such data while taking into account the resulting dependence of observations. Most of these developments require a multivariate normality distribution assumption. It is important to know whether normal theory-based inference can still be valid when applied to nonnormal hierarchical data sets. Using an analytical approach for balanced data and numerical illustrations for unbalanced data, this paper shows that the likelihood ratio statistic based on the normality assumption is asymptotically robust for many nonnormal distributions. The result extends the scope of asymptotic robustness theory that has...
It is shown, that the union of k elementary null hypotheses can be rejected at level #alpha#, whenev...
nonnormal data, normal estimating equation, rescaled statistic, sandwich-type covariance, random eff...
This paper presents the conditions for robustness to the nonnormality on three test statistics for a...
AbstractData in social and behavioral sciences are often hierarchically organized. Special statistic...
Abstract: Several test statistics for covariance structure models derived from the normal theory lik...
AbstractThis paper examines asymptotic distributions of the likelihood ratio criteria, which are pro...
This paper examines asymptotic distributions of the likelihood ratio criteria, which are proposed un...
AbstractThe normal distribution based likelihood ratio (LR) statistic is widely used in structural e...
AbstractThe aim of this paper is to present a framework for asymptotic analysis of likelihood ratio ...
AbstractThis paper examines asymptotic distributions of the likelihood ratio criteria, which are pro...
Recent research of asymptotic robustness shows that the likelihood ratio (LR) test statistic for tes...
It is clear that the likelihood ratio statistics plays an important role in theories of asymptotical...
In this paper, the authors derived asymptotic expressions for the null distributions of the likeliho...
We review the most common situations where one or some of the regularity conditions which underlie l...
We review the most common situations where one or some of the regularity conditions which ...
It is shown, that the union of k elementary null hypotheses can be rejected at level #alpha#, whenev...
nonnormal data, normal estimating equation, rescaled statistic, sandwich-type covariance, random eff...
This paper presents the conditions for robustness to the nonnormality on three test statistics for a...
AbstractData in social and behavioral sciences are often hierarchically organized. Special statistic...
Abstract: Several test statistics for covariance structure models derived from the normal theory lik...
AbstractThis paper examines asymptotic distributions of the likelihood ratio criteria, which are pro...
This paper examines asymptotic distributions of the likelihood ratio criteria, which are proposed un...
AbstractThe normal distribution based likelihood ratio (LR) statistic is widely used in structural e...
AbstractThe aim of this paper is to present a framework for asymptotic analysis of likelihood ratio ...
AbstractThis paper examines asymptotic distributions of the likelihood ratio criteria, which are pro...
Recent research of asymptotic robustness shows that the likelihood ratio (LR) test statistic for tes...
It is clear that the likelihood ratio statistics plays an important role in theories of asymptotical...
In this paper, the authors derived asymptotic expressions for the null distributions of the likeliho...
We review the most common situations where one or some of the regularity conditions which underlie l...
We review the most common situations where one or some of the regularity conditions which ...
It is shown, that the union of k elementary null hypotheses can be rejected at level #alpha#, whenev...
nonnormal data, normal estimating equation, rescaled statistic, sandwich-type covariance, random eff...
This paper presents the conditions for robustness to the nonnormality on three test statistics for a...