Returns the coefficients (or posterior samples for Bayesian models) from a model.
# S3 method for BGGM
get_parameters(
x,
component = c("correlation", "conditional", "intercept", "all"),
summary = FALSE,
centrality = "mean",
...
)# S3 method for MCMCglmm
get_parameters(
x,
effects = c("fixed", "random", "all"),
summary = FALSE,
centrality = "mean",
...
)
# S3 method for BFBayesFactor
get_parameters(
x,
effects = c("all", "fixed", "random"),
component = c("all", "extra"),
iterations = 4000,
progress = FALSE,
verbose = TRUE,
summary = FALSE,
centrality = "mean",
...
)
# S3 method for stanmvreg
get_parameters(
x,
effects = c("fixed", "random", "all"),
parameters = NULL,
summary = FALSE,
centrality = "mean",
...
)
# S3 method for brmsfit
get_parameters(
x,
effects = "fixed",
component = "all",
parameters = NULL,
summary = FALSE,
centrality = "mean",
...
)
# S3 method for stanreg
get_parameters(
x,
effects = c("fixed", "random", "all"),
component = c("location", "all", "conditional", "smooth_terms", "sigma",
"distributional", "auxiliary"),
parameters = NULL,
summary = FALSE,
centrality = "mean",
...
)
# S3 method for bayesx
get_parameters(
x,
component = c("conditional", "smooth_terms", "all"),
summary = FALSE,
centrality = "mean",
...
)
# S3 method for bamlss
get_parameters(
x,
component = c("all", "conditional", "smooth_terms", "location", "distributional",
"auxiliary"),
parameters = NULL,
summary = FALSE,
centrality = "mean",
...
)
# S3 method for sim.merMod
get_parameters(
x,
effects = c("fixed", "random", "all"),
parameters = NULL,
summary = FALSE,
centrality = "mean",
...
)
# S3 method for sim
get_parameters(x, parameters = NULL, summary = FALSE, centrality = "mean", ...)
The posterior samples from the requested parameters as data frame.
If summary = TRUE
, returns a data frame with two columns: the
parameter names and the related point estimates (based on centrality
).
A fitted model.
Should all predictor variables, predictor variables for the conditional model, the zero-inflated part of the model, the dispersion term or the instrumental variables be returned? Applies to models with zero-inflated and/or dispersion formula, or to models with instrumental variable (so called fixed-effects regressions). May be abbreviated. Note that the conditional component is also called count or mean component, depending on the model.
Logical, indicates whether the full posterior samples
(summary = FALSE
)) or the summarized centrality indices of
the posterior samples (summary = TRUE
)) should be returned as
estimates.
Only for models with posterior samples, and when
summary = TRUE
. In this case, centrality = "mean"
would
calculate means of posterior samples for each parameter, while
centrality = "median"
would use the more robust median value as
measure of central tendency.
Currently not used.
Should parameters for fixed effects, random effects or both be returned? Only applies to mixed models. May be abbreviated.
Number of posterior draws.
Display progress.
Toggle messages and warnings.
Regular expression pattern that describes the parameters that should be returned.
Note that for BFBayesFactor
models (from the BayesFactor package),
posteriors are only extracted from the first numerator model (i.e.,
model[1]
). If you want to apply some function foo()
to another
model stored in the BFBayesFactor
object, index it directly, e.g.
foo(model[2])
, foo(1/model[5])
, etc.
See also bayestestR::weighted_posteriors()
.
In most cases when models either return different "effects" (fixed,
random) or "components" (conditional, zero-inflated, ...), the arguments
effects
and component
can be used.
data(mtcars)
m <- lm(mpg ~ wt + cyl + vs, data = mtcars)
get_parameters(m)
Run the code above in your browser using DataLab