FIXED SIZE CONFIDENCE REGIONS FOR THE PARAMETERS OF THE LINEAR MIXED EFFECTS LOGISTIC MODEL

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  We develop fixed size confidence regions for estimating the fixed and random effects parameters of the mixed effects logistic regression model.This model applies to,among others,the study of the effects of covariates on a dichotomous response variable when subjects are sampled in clusters.
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