get_data {insight} | R Documentation |
Get the data that was used to fit the model
Description
This functions tries to get the data that was used to fit the model and returns it as data frame.
Usage
get_data(x, ...)
## Default S3 method:
get_data(x, source = "environment", verbose = TRUE, ...)
## S3 method for class 'glmmTMB'
get_data(
x,
effects = "all",
component = "all",
source = "environment",
verbose = TRUE,
...
)
## S3 method for class 'afex_aov'
get_data(x, shape = c("long", "wide"), ...)
## S3 method for class 'rma'
get_data(
x,
source = "environment",
verbose = TRUE,
include_interval = FALSE,
transf = NULL,
transf_args = NULL,
ci = 0.95,
...
)
Arguments
x |
A fitted model. |
... |
Currently not used. |
source |
String, indicating from where data should be recovered. If
|
verbose |
Toggle messages and warnings. |
effects |
Should model data for fixed effects ( |
component |
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. |
shape |
Return long or wide data? Only applicable in repeated measures designs. |
include_interval |
For meta-analysis models, should normal-approximation confidence intervals be added for each response effect size? |
transf |
For meta-analysis models, if intervals are included, a function applied to each response effect size and its interval. |
transf_args |
For meta-analysis models, an optional list of arguments
passed to the |
ci |
For meta-analysis models, the Confidence Interval (CI) level if
|
Value
The data that was used to fit the model.
Model components
Possible values for the component
argument depend on the model class.
Following are valid options:
-
"all"
: returns all model components, applies to all models, but will only have an effect for models with more than just the conditional model component. -
"conditional"
: only returns the conditional component, i.e. "fixed effects" terms from the model. Will only have an effect for models with more than just the conditional model component. -
"smooth_terms"
: returns smooth terms, only applies to GAMs (or similar models that may contain smooth terms). -
"zero_inflated"
(or"zi"
): returns the zero-inflation component. -
"dispersion"
: returns the dispersion model component. This is common for models with zero-inflation or that can model the dispersion parameter. -
"instruments"
: for instrumental-variable or some fixed effects regression, returns the instruments. -
"location"
: returns location parameters such asconditional
,zero_inflated
,smooth_terms
, orinstruments
(everything that are fixed or random effects - depending on theeffects
argument - but no auxiliary parameters). -
"distributional"
(or"auxiliary"
): components likesigma
,dispersion
,beta
orprecision
(and other auxiliary parameters) are returned.
Examples
data(cbpp, package = "lme4")
cbpp$trials <- cbpp$size - cbpp$incidence
m <- glm(cbind(incidence, trials) ~ period, data = cbpp, family = binomial)
head(get_data(m))