Binomial data are often generated in split-plot experimental designs in agricultural, biological, and environmental research. Modeling non-normality and random effects are the two major challenges in analyzing binomial data in split-plot designs. In this study, seven statistical methods for testing whole-plot and subplot treatment effects using mixed, generalized linear, or generalized linear mixed models are compared for the size and power of the tests. This study shows that analyzing random effects properly is more important than adjusting the analysis for non-normality. Methods based on mixed and generalized linear mixed models hold Type I error rates better than generalized linear models. Whole-plot tests tend to be conservative in some...
Over the past decade, there have been rapid advances in the development of methods for the design an...
A split-plot data structure is usually modelled by a linear classificatory model with a 0,1 model ma...
Recent developments in computational methods for maximum likelihood (ML) or restricted maximum likel...
The split plot design (SPD) has at least two types of experimental units and at least two levels of ...
We first introduce the general linear mixed model and provide a justification for using REML to fit ...
Generalized linear mixed models (GLMMs), regardless of the software used to implement them (R, SAS, ...
Unbalanced split-plot experiments present many analysis problems. This paper discusses some of the d...
Several procedures for constructing confidence intervals and testing hypotheses about fixed effects ...
Many industrial response surface experiments are deliberately not conducted in a completely randomiz...
Generalized linear models provide a methodology for doing regression and ANOV A-type analysis with d...
In random coefficients regression, we are often interested in the mean of a certain para-meter parti...
Split-plot experimental data are often analyzed as if the data came from a completely randomized des...
SUMMARY. In a split-plot experiment, the oommon assumption is that the same error variance applies t...
An approximate procedure based on normal probability graphs for selecting significant parameters of ...
Count data from nested designs, split-plot experiments, and repeated measures studies are commonly e...
Over the past decade, there have been rapid advances in the development of methods for the design an...
A split-plot data structure is usually modelled by a linear classificatory model with a 0,1 model ma...
Recent developments in computational methods for maximum likelihood (ML) or restricted maximum likel...
The split plot design (SPD) has at least two types of experimental units and at least two levels of ...
We first introduce the general linear mixed model and provide a justification for using REML to fit ...
Generalized linear mixed models (GLMMs), regardless of the software used to implement them (R, SAS, ...
Unbalanced split-plot experiments present many analysis problems. This paper discusses some of the d...
Several procedures for constructing confidence intervals and testing hypotheses about fixed effects ...
Many industrial response surface experiments are deliberately not conducted in a completely randomiz...
Generalized linear models provide a methodology for doing regression and ANOV A-type analysis with d...
In random coefficients regression, we are often interested in the mean of a certain para-meter parti...
Split-plot experimental data are often analyzed as if the data came from a completely randomized des...
SUMMARY. In a split-plot experiment, the oommon assumption is that the same error variance applies t...
An approximate procedure based on normal probability graphs for selecting significant parameters of ...
Count data from nested designs, split-plot experiments, and repeated measures studies are commonly e...
Over the past decade, there have been rapid advances in the development of methods for the design an...
A split-plot data structure is usually modelled by a linear classificatory model with a 0,1 model ma...
Recent developments in computational methods for maximum likelihood (ML) or restricted maximum likel...