effect_plot | R Documentation |
This function plots values from effect_draw, the predictive distribution
(under default settings, posterior predictive),
for one or more baggr
objects.
effect_plot(..., transform = NULL)
... |
Object(s) of class baggr. If there is more than one, a comparison will be plotted and names of objects will be used as a plot legend (see examples). |
transform |
a transformation to apply to the result, should be an R function; (this is commonly used when calling group_effects from other plotting or printing functions) |
Under default settings in baggr posterior predictive is obtained. But
effect_plot
can also be used for prior predictive distributions when
setting ppd=T
in baggr. The two outputs work exactly the same, but
labels will change to indicate this difference.
A ggplot
object.
effect_draw documents the process of drawing values;
baggr_compare can be used as a shortcut for effect_plot
with argument
compare = "effects"
# A single effects plot
bg1 <- baggr(schools, prior_hypersd = uniform(0, 20))
effect_plot(bg1)
# Compare how posterior depends on the prior choice
bg2 <- baggr(schools, prior_hypersd = normal(0, 5))
effect_plot("Uniform prior on SD"=bg1,
"Normal prior on SD"=bg2)
# Compare the priors themselves (ppd=T)
bg1_ppd <- baggr(schools, prior_hypersd = uniform(0, 20), ppd=TRUE)
bg2_ppd <- baggr(schools, prior_hypersd = normal(0, 5), ppd=TRUE)
effect_plot("Uniform prior on SD"=bg1_ppd,
"Normal prior on SD"=bg2_ppd)
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.