Data collected in the human and biological sciences often have multilevel structures. While conventional hierarchical linear modeling is applicable to purely hierarchical data, multiple membership random effects modeling is appropriate for non-purely nested data wherein some lower-level units manifest mobility across higher-level units. Fitting a multiple membership random effects model (MMrem) to non-purely nested data may account for lower-level observation interdependencies and the contextual effects of higher-level units on the outcomes of lower-level units. One important assumption in multilevel modeling is normality of the residual distributions. Although a few recent studies have investigated the effect of cluster-level residual non-...
Summary. Multilevel or mixed effects models are commonly applied to hierarchical data. The level 2 r...
The purpose of the present study was to examine the minimal sample sizes and mobility rates needed f...
Multilevel models have been developed for addressing data that come from a hierarchical structure. I...
Data collected in the human and biological sciences often have multilevel structures. While conventi...
Hierarchical Linear Modeling (HLM) sample size recommendations are mostly made with traditional grou...
Unlike multilevel data with a purely nested structure, data that are cross-classified not only may b...
Multilevel models are a popular method of clustered and longitudinal data analysis in the social, be...
The number of longitudinal studies has increased steadily in various social science disciplines over...
A simulation study was conducted to examine parameter recovery in a cross-classified multiple member...
textMultilevel measurement models (MMM), an application of hierarchical generalized linear models (H...
Due to its increasing popularity, hierarchical linear modeling (HLM) has been used along with struct...
The current dissertation, composed of two studies, focused on the models that handle several data st...
In this article, we discuss the effect of removing the independence assumptions between the residual...
In this article, we discuss the effect of removing the independence assumptions between the residual...
Most quantitative research is conducted by randomly selecting members of a population on which to co...
Summary. Multilevel or mixed effects models are commonly applied to hierarchical data. The level 2 r...
The purpose of the present study was to examine the minimal sample sizes and mobility rates needed f...
Multilevel models have been developed for addressing data that come from a hierarchical structure. I...
Data collected in the human and biological sciences often have multilevel structures. While conventi...
Hierarchical Linear Modeling (HLM) sample size recommendations are mostly made with traditional grou...
Unlike multilevel data with a purely nested structure, data that are cross-classified not only may b...
Multilevel models are a popular method of clustered and longitudinal data analysis in the social, be...
The number of longitudinal studies has increased steadily in various social science disciplines over...
A simulation study was conducted to examine parameter recovery in a cross-classified multiple member...
textMultilevel measurement models (MMM), an application of hierarchical generalized linear models (H...
Due to its increasing popularity, hierarchical linear modeling (HLM) has been used along with struct...
The current dissertation, composed of two studies, focused on the models that handle several data st...
In this article, we discuss the effect of removing the independence assumptions between the residual...
In this article, we discuss the effect of removing the independence assumptions between the residual...
Most quantitative research is conducted by randomly selecting members of a population on which to co...
Summary. Multilevel or mixed effects models are commonly applied to hierarchical data. The level 2 r...
The purpose of the present study was to examine the minimal sample sizes and mobility rates needed f...
Multilevel models have been developed for addressing data that come from a hierarchical structure. I...