Nonparametric Method for Clustered Data in Pre-Post Factorial Design
Solomon W. Harrar, Yue Cui

TL;DR
This paper introduces nonparametric effect-size measures for clustered data in pre-post factorial designs, providing robust analysis without parametric assumptions, especially useful for non-metric data like Quality of Life outcomes.
Contribution
The paper develops novel nonparametric effect-size estimators and ANOVA-type tests for clustered pre-post data, accommodating incomplete clusters and arbitrary dependence structures.
Findings
Effective in multiple clustering scenarios
Provides asymptotic confidence intervals and hypothesis tests
Illustrated with a randomized trial on indoor wood smoke reduction
Abstract
In repeated measures factorial designs involving clustered units, parametric methods such as linear mixed effects models are used to handle within subject correlations. However, assumptions of these parametric models such as continuity and normality are usually hard to come by in many cases. The homoscedasticity assumption is rather hard to verify in practice. Furthermore, these assumptions may not even be realistic when data are measured in a non-metric scale as commonly happens, for example, in Quality of Life outcomes. In this article, nonparametric effect-size measures for clustered data in factorial designs with pre-post measurements will be introduced. The effect-size measures provide intuitively-interpretable and informative probabilistic comparisons of treatment and time effects. The dependence among observations within a cluster can be arbitrary across treatment groups. The…
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Taxonomy
TopicsOptimal Experimental Design Methods · Economic and Environmental Valuation · Statistical Methods and Bayesian Inference
