We consider the problem of testing for zero variance components in linear mixed models with correlated or heteroscedastic errors. In the case of independent and identically distributed errors, a valid test exists, which is based on the exact finite sample distribution of the restricted likelihood ratio test statistic under the null hypothesis. We propose to make use of a transformation to derive the (approximate) test distribution for the restricted likelihood ratio test statistic in the case of a general error covariance structure. The proposed test proves its value in simulations and is finally applied to an interesting question in the field of well-being economics
Abstract. Testing for a zero random effects variance is an important and common testing problem. Spe...
In many applications of generalized linear mixed models to clustered correlated or longitudinal data...
Linear mixed models are a powerful inferential tool in modern statistics and have a wide range of ap...
We consider the problem of testing for zero variance components in linear mixed models with correlat...
The goal of our article is to provide a transparent, robust, and computationally feasible statistica...
Mixed effects models are widely used to describe heterogeneity in a population, in particular inter ...
We address the important practical problem of selecting covariates in mixed linear models when the c...
Testing that random effects are zero is difficult, because the null hypothesis restricts the corresp...
Testing zero variance components is one of the most challenging problems in the context of linear mi...
Although the asymptotic distributions of the likelihood ratio for testing hypotheses of null varianc...
We calculate the finite sample probability mass-at-zero and the probability of underestimating the t...
AbstractWe address the important practical problem of selecting covariates in mixed linear models wh...
We introduce a diagnostic test for the mixing distribution in a generalised linear mixed model. The ...
Mixed effects models are widely used to describe heterogeneity in a population. A crucial issue when...
Linear mixed-effects models are widely used in analysis of longitudinal data. However, testing for z...
Abstract. Testing for a zero random effects variance is an important and common testing problem. Spe...
In many applications of generalized linear mixed models to clustered correlated or longitudinal data...
Linear mixed models are a powerful inferential tool in modern statistics and have a wide range of ap...
We consider the problem of testing for zero variance components in linear mixed models with correlat...
The goal of our article is to provide a transparent, robust, and computationally feasible statistica...
Mixed effects models are widely used to describe heterogeneity in a population, in particular inter ...
We address the important practical problem of selecting covariates in mixed linear models when the c...
Testing that random effects are zero is difficult, because the null hypothesis restricts the corresp...
Testing zero variance components is one of the most challenging problems in the context of linear mi...
Although the asymptotic distributions of the likelihood ratio for testing hypotheses of null varianc...
We calculate the finite sample probability mass-at-zero and the probability of underestimating the t...
AbstractWe address the important practical problem of selecting covariates in mixed linear models wh...
We introduce a diagnostic test for the mixing distribution in a generalised linear mixed model. The ...
Mixed effects models are widely used to describe heterogeneity in a population. A crucial issue when...
Linear mixed-effects models are widely used in analysis of longitudinal data. However, testing for z...
Abstract. Testing for a zero random effects variance is an important and common testing problem. Spe...
In many applications of generalized linear mixed models to clustered correlated or longitudinal data...
Linear mixed models are a powerful inferential tool in modern statistics and have a wide range of ap...