A transformation perspective on marginal and conditional models
Luisa Barbanti, Torsten Hothorn

TL;DR
This paper introduces a new statistical model for analyzing clustered data using transformation models and multivariate normal distributions.
Contribution
The novel model provides an analytic formula for marginal distributions and handles various response types.
Findings
The model can relax the normal assumption for reaction times in sleep deprivation data.
Marginal odds ratios were reported for the toe nail data.
The model was applied to clinical trials for estimating treatment effects.
Abstract
Clustered observations are ubiquitous in controlled and observational studies and arise naturally in multicenter trials or longitudinal surveys. We present a novel model for the analysis of clustered observations where the marginal distributions are described by a linear transformation model and the correlations by a joint multivariate normal distribution. The joint model provides an analytic formula for the marginal distribution. Owing to the richness of transformation models, the techniques are applicable to any type of response variable, including bounded, skewed, binary, ordinal, or survival responses. We demonstrate how the common normal assumption for reaction times can be relaxed in the sleep deprivation benchmark data set and report marginal odds ratios for the notoriously difficult toe nail data. We furthermore discuss the analysis of two clinical trials aiming at the…
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Taxonomy
TopicsStatistical Methods and Bayesian Inference · Statistical Methods and Inference · Economic and Environmental Valuation
