This function compte the Bayes factors (BFs) that are appropriate to the input.
For vectors or single models, it will compute BFs for single parameters
,
or is hypothesis
is specified, BFs for restricted models
.
For multiple models, it will return the BF corresponding to comparison between models
and if a model comparison is passed, it will compute the inclusion BF
.
For a complete overview of these functions, read the Bayes factor vignette.
bayesfactor(
...,
prior = NULL,
direction = "two-sided",
null = 0,
hypothesis = NULL,
effects = c("fixed", "random", "all"),
verbose = TRUE,
denominator = 1,
match_models = FALSE,
prior_odds = NULL
)
A numeric vector, model object(s), or the output from bayesfactor_models
.
An object representing a prior distribution (see 'Details').
Test type (see 'Details'). One of 0
, "two-sided"
(default, two tailed),
-1
, "left"
(left tailed) or 1
, "right"
(right tailed).
Value of the null, either a scalar (for point-null) or a range (for a interval-null).
A character vector specifying the restrictions as logical conditions (see examples below).
Should results for fixed effects, random effects or both be returned? Only applies to mixed models. May be abbreviated.
Toggle off warnings.
Either an integer indicating which of the models to use as the denominator,
or a model to be used as a denominator. Ignored for BFBayesFactor
.
See details.
Optional vector of prior odds for the models. See BayesFactor::priorOdds<-
.
Some type of Bayes factor, depending on the input. See bayesfactor_parameters
, bayesfactor_models
or bayesfactor_inclusion
# NOT RUN {
library(bayestestR)
# Vectors
prior <- distribution_normal(1000, mean = 0, sd = 1)
posterior <- distribution_normal(1000, mean = .5, sd = .3)
bayesfactor(posterior, prior = prior)
# }
# NOT RUN {
# rstanarm models
# ---------------
if (require("rstanarm")) {
model <- stan_lmer(extra ~ group + (1 | ID), data = sleep)
bayesfactor(model)
}
# }
# NOT RUN {
# Frequentist models
# ---------------
m0 <- lm(extra ~ 1, data = sleep)
m1 <- lm(extra ~ group, data = sleep)
m2 <- lm(extra ~ group + ID, data = sleep)
comparison <- bayesfactor(m0, m1, m2)
comparison
bayesfactor(comparison)
# }
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