Returns the names of the predictor variables for the different
parts of a model (like fixed or random effects, zero-inflated component,
...). Unlike find_parameters()
, the names from find_predictors()
match
the original variable names from the data that was used to fit the model.
find_predictors(x, ...)# S3 method for default
find_predictors(
x,
effects = "fixed",
component = "all",
flatten = FALSE,
verbose = TRUE,
...
)
A list of character vectors that represent the name(s) of the
predictor variables. Depending on the combination of the arguments
effects
and component
, the returned list can have following elements:
conditional
, the "fixed effects" terms from the model
random
, the "random effects" terms from the model
zero_inflated
, the "fixed effects" terms from the zero-inflation
component of the model
zero_inflated_random
, the "random effects" terms from the zero-inflation
component of the model
dispersion
, the dispersion terms
instruments
, for fixed-effects regressions like ivreg
, felm
or plm
,
the instrumental variables
correlation
, for models with correlation-component like gls
, the
variables used to describe the correlation structure
nonlinear
, for non-linear models (like models of class nlmerMod
or
nls
), the staring estimates for the nonlinear parameters
smooth_terms
returns smooth terms, only applies to GAMs (or similar
models that may contain smooth terms)
A fitted model.
Currently not used.
Should variables for fixed effects ("fixed"
), random effects
("random"
) or both ("all"
) be returned? Only applies to mixed models. May
be abbreviated.
Which type of parameters to return, such as parameters for the conditional model, the zero-inflated part of the model, the dispersion term, the instrumental variables or marginal effects be returned? Applies to models with zero-inflated and/or dispersion formula, or to models with instrumental variables (so called fixed-effects regressions), or models with marginal effects (from mfx). See details in section Model Components .May be abbreviated. Note that the conditional component also refers to the count or mean component - names may differ, depending on the modeling package. There are three convenient shortcuts (not applicable to all model classes):
component = "all"
returns all possible parameters.
If component = "location"
, location parameters such as conditional
,
zero_inflated
, smooth_terms
, or instruments
are returned (everything
that are fixed or random effects - depending on the effects
argument -
but no auxiliary parameters).
For component = "distributional"
(or "auxiliary"
), components like
sigma
, dispersion
, beta
or precision
(and other auxiliary
parameters) are returned.
Logical, if TRUE
, the values are returned as character
vector, not as list. Duplicated values are removed.
Toggle warnings.
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.
"nonlinear"
: for non-linear models (like models of class nlmerMod
or
nls
), returns staring estimates for the nonlinear parameters.
"correlation"
: for models with correlation-component, like gls
, the
variables used to describe the correlation structure are returned.
"location"
: returns location parameters such as conditional
,
zero_inflated
, smooth_terms
, or instruments
(everything that are
fixed or random effects - depending on the effects
argument - but no
auxiliary parameters).
"distributional"
(or "auxiliary"
): components like sigma
, dispersion
,
beta
or precision
(and other auxiliary parameters) are returned.
Special models
Some model classes also allow rather uncommon options. These are:
mhurdle: "infrequent_purchase"
, "ip"
, and "auxiliary"
BGGM: "correlation"
and "intercept"
BFBayesFactor, glmx: "extra"
averaging:"conditional"
and "full"
mjoint: "survival"
mfx: "precision"
, "marginal"
betareg, DirichletRegModel: "precision"
mvord: "thresholds"
and "correlation"
clm2: "scale"
selection: "selection"
, "outcome"
, and "auxiliary"
For models of class brmsfit
(package brms), even more options are
possible for the component
argument, which are not all documented in detail
here.
There are four functions that return information about the variables in a
model: find_predictors()
, find_variables()
, find_terms()
and
find_parameters()
. There are some differences between those functions,
which are explained using following model. Note that some, but not all of
those functions return information about the dependent and independent
variables. In this example, we only show the differences for the independent
variables.
model <- lm(mpg ~ factor(gear), data = mtcars)
find_terms(model)
returns the model terms, i.e. how the variables were
used in the model, e.g. applying transformations like factor()
, poly()
etc. find_terms()
may return a variable name multiple times in case of
multiple transformations. The return value would be "factor(gear)"
.
find_parameters(model)
returns the names of the model parameters
(coefficients). The return value would be "(Intercept)"
, "factor(gear)4"
and "factor(gear)5"
.
find_variables()
returns the original variable names. find_variables()
returns each variable name only once. The return value would be "gear"
.
find_predictors()
is comparable to find_variables()
and also returns
the original variable names, but excluded the dependent (response)
variables. The return value would be "gear"
.
data(mtcars)
m <- lm(mpg ~ wt + cyl + vs, data = mtcars)
find_predictors(m)
Run the code above in your browser using DataLab