Parameters from multinomial or cumulative link models
# S3 method for DirichletRegModel
model_parameters(
model,
ci = 0.95,
bootstrap = FALSE,
iterations = 1000,
component = c("all", "conditional", "precision"),
standardize = NULL,
exponentiate = FALSE,
verbose = TRUE,
...
)# S3 method for bifeAPEs
model_parameters(model, ...)
# S3 method for bracl
model_parameters(
model,
ci = 0.95,
bootstrap = FALSE,
iterations = 1000,
standardize = NULL,
exponentiate = FALSE,
p_adjust = NULL,
verbose = TRUE,
...
)
# S3 method for mlm
model_parameters(
model,
ci = 0.95,
bootstrap = FALSE,
iterations = 1000,
standardize = NULL,
exponentiate = FALSE,
p_adjust = NULL,
verbose = TRUE,
...
)
# S3 method for clm2
model_parameters(
model,
ci = 0.95,
bootstrap = FALSE,
iterations = 1000,
component = c("all", "conditional", "scale"),
standardize = NULL,
exponentiate = FALSE,
p_adjust = NULL,
verbose = TRUE,
...
)
A model with multinomial or categorical response value.
Confidence Interval (CI) level. Default to 0.95
(95%
).
Should estimates be based on bootstrapped model? If
TRUE
, then arguments of Bayesian regressions apply (see also
bootstrap_parameters()
).
The number of bootstrap replicates. This only apply in the case of bootstrapped frequentist models.
Model component for which parameters should be shown. May be
one of "conditional"
, "precision"
(betareg),
"scale"
(ordinal), "extra"
(glmx),
"marginal"
(mfx), "conditional"
or "full"
(for
MuMIn::model.avg()
) or "all"
.
The method used for standardizing the parameters. Can be
NULL
(default; no standardization), "refit"
(for re-fitting the model
on standardized data) or one of "basic"
, "posthoc"
, "smart"
,
"pseudo"
. See 'Details' in effectsize::standardize_parameters()
.
Important:
The "refit"
method does not standardized categorical predictors (i.e.
factors), which may be a different behaviour compared to other R packages
(such as lm.beta) or other software packages (like SPSS). to mimic
such behaviours, either use standardize="basic"
or standardize the data
with datawizard::standardize(force=TRUE)
before fitting the model.
For mixed models, when using methods other than "refit"
, only the fixed
effects will be returned.
Robust estimation (i.e. robust=TRUE
) of standardized parameters only
works when standardize="refit"
.
Logical, indicating whether or not to exponentiate the
the coefficients (and related confidence intervals). This is typical for
logistic regression, or more generally speaking, for models with log
or logit links. Note: Delta-method standard errors are also
computed (by multiplying the standard errors by the transformed
coefficients). This is to mimic behaviour of other software packages, such
as Stata, but these standard errors poorly estimate uncertainty for the
transformed coefficient. The transformed confidence interval more clearly
captures this uncertainty. For compare_parameters()
,
exponentiate = "nongaussian"
will only exponentiate coefficients
from non-Gaussian families.
Toggle warnings and messages.
Arguments passed to or from other methods. For instance, when
bootstrap = TRUE
, arguments like type
or parallel
are
passed down to bootstrap_model()
, and arguments like ci_method
are passed down to bayestestR::describe_posterior()
.
Character vector, if not NULL
, indicates the method to
adjust p-values. See stats::p.adjust()
for details. Further
possible adjustment methods are "tukey"
, "scheffe"
,
"sidak"
and "none"
to explicitly disable adjustment for
emmGrid
objects (from emmeans).
A data frame of indices related to the model's parameters.
Multinomial or cumulative link models, i.e. models where the
response value (dependent variable) is categorical and has more than two
levels, usually return coefficients for each response level. Hence, the
output from model_parameters()
will split the coefficient tables
by the different levels of the model's response.
insight::standardize_names()
to rename
columns into a consistent, standardized naming scheme.
# NOT RUN {
library(parameters)
if (require("brglm2", quietly = TRUE)) {
data("stemcell")
model <- bracl(
research ~ as.numeric(religion) + gender,
weights = frequency,
data = stemcell,
type = "ML"
)
model_parameters(model)
}
# }
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