Nested data structures create statistical dependence that influences the effective sample size and statistical power of a study. Several methods are available for dealing with nested data, including the summary-statistics approach and multilevel modelling (MLM). Recent publications have heralded MLM as the best method for analysing nested data, claiming benefits in power over summary-statistics approaches (e.g., the t test). However, when cluster size is equal, these approaches are mathematically equivalent. We conducted statistical simulations demonstrating equivalence of MLM and summary-statistics approaches for analysing nested data and provide supportive cases for the utility of the conventional summary-statistics approach in nested exp...
Sauzet O, Wright KC, Marston L, Brocklehurst P, Peacock JL. Modelling the hierarchical structure in ...
Model selection is often implicit: when performing an ANOVA, one assumes that the normal distributio...
In a recent note by Walters and Edwards (2004), the authors argued that summary statistics should be...
In neuroscience, experimental designs in which multiple observations are collected from a single res...
Hierarchically-organized data arise naturally in many psychology and neuroscience studies. As the st...
BACKGROUND: In neuroscience, experimental designs in which multiple measurements are collected in th...
The goal of this paper is to broaden general knowledge on nested data analysis, its problems of depe...
Multilevel analysis quantifies variation in the experimental effect while optimizing power and preve...
Common approach to the analysis of experimental data across much of the biological sciences is test-...
A conventional study design among medical and biological experimentalists involves col- lecting mult...
Common approach to the analysis of experimental data across much of the biological sciences is test-...
The number of longitudinal studies has increased steadily in various social science disciplines over...
Biological data sets are typically characterized by high dimensionality and low effect sizes. A powe...
Background: The use of Multilevel Models (MLM) and Generalized Estimating Equations (GEE) for analys...
Background: The use of Multilevel Models (MLM) and Generalized Estimating Equations (GEE) for analys...
Sauzet O, Wright KC, Marston L, Brocklehurst P, Peacock JL. Modelling the hierarchical structure in ...
Model selection is often implicit: when performing an ANOVA, one assumes that the normal distributio...
In a recent note by Walters and Edwards (2004), the authors argued that summary statistics should be...
In neuroscience, experimental designs in which multiple observations are collected from a single res...
Hierarchically-organized data arise naturally in many psychology and neuroscience studies. As the st...
BACKGROUND: In neuroscience, experimental designs in which multiple measurements are collected in th...
The goal of this paper is to broaden general knowledge on nested data analysis, its problems of depe...
Multilevel analysis quantifies variation in the experimental effect while optimizing power and preve...
Common approach to the analysis of experimental data across much of the biological sciences is test-...
A conventional study design among medical and biological experimentalists involves col- lecting mult...
Common approach to the analysis of experimental data across much of the biological sciences is test-...
The number of longitudinal studies has increased steadily in various social science disciplines over...
Biological data sets are typically characterized by high dimensionality and low effect sizes. A powe...
Background: The use of Multilevel Models (MLM) and Generalized Estimating Equations (GEE) for analys...
Background: The use of Multilevel Models (MLM) and Generalized Estimating Equations (GEE) for analys...
Sauzet O, Wright KC, Marston L, Brocklehurst P, Peacock JL. Modelling the hierarchical structure in ...
Model selection is often implicit: when performing an ANOVA, one assumes that the normal distributio...
In a recent note by Walters and Edwards (2004), the authors argued that summary statistics should be...