R/plot_coefficients.brmsfit.R
plot_coefficients.brmsfit.Rd
Plot fixed or random effects coefficients for brmsfit objects.
# S3 method for brmsfit plot_coefficients( model, order = "decreasing", prob = 0.95, keep_intercept = FALSE, palette = "bilbao", ref_line = 0, trans = NULL, plot = TRUE, ranef = FALSE, which_ranef = NULL, ... )
model | The model. For example, lm, glm, gam, lme4, brms. |
---|---|
order | The order of the plots- "increasing", "decreasing", or a numeric vector giving the order. The default is NULL, i.e. the default ordering. Not applied to random effects. |
prob | For |
keep_intercept | Default is FALSE. Intercepts are typically on a very different scale than covariate effects. |
palette | A scico palette. Default is 'bilbao'. |
ref_line | A reference line. Default is zero. |
trans | A transformation function to be applied to the coefficients (e.g. exponentiation). |
plot | Default is TRUE, but sometimes you just want the data. |
ranef | If applicable, whether to plot random effects instead of fixed effects. |
which_ranef | If plotting random effects, which one to plot. |
... | Other arguments applied for specific methods. |
A ggplot of the coefficients and their interval estimates. Or the data that would be used to create the plot.
Other model visualization:
plot_coefficients.lm()
,
plot_coefficients.merMod()
,
plot_coefficients()
,
plot_gam_2d()
,
plot_gam_3d()
,
plot_gam_check()
,
plot_gam()
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