Explained variance (R^2) is a familiar summary of the fit of a linear regression and has been generalized in various ways to multilevel (hierarchical) models. The multilevel models we consider in this paper are characterized by hierarchical data structures in which individuals are grouped into units (which themselves might be further grouped into larger units), and there are variables measured on individuals and each grouping unit. The models are based on regression relationships at different levels, with the first level corresponding to the individual data, and subsequent levels corresponding to between-group regressions of individual predictor effects on grouping unit variables. We present an approach to defining R^2 at each level of the ...
A Bayesian representation of the analysis of variance by A. Gelman is introduced with ecological exa...
We introduce General Multilevel Models and discuss the estimation procedures that may be used to fit...
Multilevel models can be used to account for clustering in data from multi-stage surveys. In some ca...
A wide range of statistical problems involve estimation of means or conditional means of multidimens...
textDue to the inherently hierarchical nature of many natural phenomena, data collected rests in ne...
"Multilevel or mixed effects models are commonly applied to hierarchical data; for example,nsee Gold...
Multilevel (hierarchical) modeling is a generalization of linear and generalized linear modeling in ...
The concept of explained proportion of variance or modeled proportion of variance is reviewed in the...
What is multilevel modelling? - Varying relations and random effects: Theory - Varying relations and...
Abstract. In multilevel modelling, the residual variation in a response variable is split into compo...
"This paper explores the consequences of small cluster size for parameter estimation in multilevel m...
This chapter provides models for repeated measures and multivariate data. It also introduces structu...
Purpose – This paper aims to discuss multilevel modeling for longitudinal data, clarifying the circu...
In multilevel research, the data structure in the population is hierarchical, and the sample data ar...
The choice of prior distributions for the variances can be important and quite difficult in Bayesian...
A Bayesian representation of the analysis of variance by A. Gelman is introduced with ecological exa...
We introduce General Multilevel Models and discuss the estimation procedures that may be used to fit...
Multilevel models can be used to account for clustering in data from multi-stage surveys. In some ca...
A wide range of statistical problems involve estimation of means or conditional means of multidimens...
textDue to the inherently hierarchical nature of many natural phenomena, data collected rests in ne...
"Multilevel or mixed effects models are commonly applied to hierarchical data; for example,nsee Gold...
Multilevel (hierarchical) modeling is a generalization of linear and generalized linear modeling in ...
The concept of explained proportion of variance or modeled proportion of variance is reviewed in the...
What is multilevel modelling? - Varying relations and random effects: Theory - Varying relations and...
Abstract. In multilevel modelling, the residual variation in a response variable is split into compo...
"This paper explores the consequences of small cluster size for parameter estimation in multilevel m...
This chapter provides models for repeated measures and multivariate data. It also introduces structu...
Purpose – This paper aims to discuss multilevel modeling for longitudinal data, clarifying the circu...
In multilevel research, the data structure in the population is hierarchical, and the sample data ar...
The choice of prior distributions for the variances can be important and quite difficult in Bayesian...
A Bayesian representation of the analysis of variance by A. Gelman is introduced with ecological exa...
We introduce General Multilevel Models and discuss the estimation procedures that may be used to fit...
Multilevel models can be used to account for clustering in data from multi-stage surveys. In some ca...