Effects of covariates on outcome in baggr models
fixed_effects(bg, summary = FALSE, transform = NULL, interval = 0.95)
A matrix: columns are covariate coefficients and rows are draws from the posterior distribution.
Number of rows depends on iterations in the MCMC (i.e. x
in baggr(..., iter = x`)
a baggr model
logical; if TRUE
returns summary statistic instead of all MCMC samples
a transformation (R function) to apply to the result; (this is commonly used when calling from other plotting or printing functions)
uncertainty interval width (numeric between 0 and 1), if summary=TRUE
treatment_effect for overall treatment effect across groups, group_effects for effects within each group, effect_draw and effect_plot for predicted treatment effect in new group (which you can condition on fixed effects using new data argument)