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arxiv: 1509.07510 · v1 · pith:CYRC325Hnew · submitted 2015-09-24 · 📊 stat.AP · stat.ME

Bayesian model selection on linear mixed-effects models for comparisons between multiple treatments and a control

classification 📊 stat.AP stat.ME
keywords bayesiancontrolmodelselectiontreatmentslinearmixed-effectsmodels
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We propose a novel Bayesian model selection technique on linear mixed-effects models to compare multiple treatments with a control. A fully Bayesian approach is implemented to estimate the marginal inclusion probabilities that provide a direct measure of the difference between treatments and the control, along with the model-averaged posterior distributions. Default priors are proposed for model selection incorporating domain knowledge and a component-wise Gibbs sampler is developed for efficient posterior computation. We demonstrate the proposed method based on simulated data and an experimental dataset from a longitudinal study of mouse lifespan and weight trajectories.

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