summary.postpr: Posterior model probabilities and Bayes factors
Description
This function extracts the posterior model probabilities and
calculates the Bayes factors from an object of class "postpr".
Usage
# S3 method for postpr
summary(object, rejection = TRUE, print = TRUE, digits
= max(3, getOption("digits")-3), …)Arguments
object
an object of class "postpr".
rejection
logical, if method is "mnlogistic" or "neuralnet",
should the approximate model probabilities based on the rejection
method returned.
print
logical, if TRUE prints the mean models probabilities.
digits
the digits to be rounded to.
Value
A list with the following components if method="rejection":
Proban object of class table of the posterior model
probabilities.
BayesFan object of class table with the Bayes factors
between pairs of models.
A list with the following components if method is "mnlogistic"
or "neuralnet" and rejection is TRUE:
rejectiona list with the same components as above
mnlogistica list with the same components as above
Examples
Run this code# NOT RUN {
## see ?postpr for examples
# }
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