A.1 SAS EXAMPLES
models using ML or Bayesian methods, cumulative link models for ordinal responses, zero-in ated Poisson regression models for count data, and GEE analyses for marginal models. PROC LOGISTIC gives ML tting of binary response models, cumulative link models for ordinal responses, and baseline-category logit models for nominal responses.
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