For this engine, there is a single mode: classification
This engine has no tuning parameters but you can set the family
parameter (and/or link
) as an engine argument (see below).
logistic_reg() %>%
set_engine("glm") %>%
translate()
## Logistic Regression Model Specification (classification)
##
## Computational engine: glm
##
## Model fit template:
## stats::glm(formula = missing_arg(), data = missing_arg(), weights = missing_arg(),
## family = stats::binomial)
To use a non-default family
and/or link
, pass in as an argument to set_engine()
:
logistic_reg() %>%
set_engine("glm", family = stats::binomial(link = "probit")) %>%
translate()
## Logistic Regression Model Specification (classification)
##
## Engine-Specific Arguments:
## family = stats::binomial(link = "probit")
##
## Computational engine: glm
##
## Model fit template:
## stats::glm(formula = missing_arg(), data = missing_arg(), weights = missing_arg(),
## family = stats::binomial(link = "probit"))
Factor/categorical predictors need to be converted to numeric values (e.g., dummy or indicator variables) for this engine. When using the formula method via \code{\link[=fit.model_spec]{fit()}}, parsnip will convert factor columns to indicators.
This model can utilize case weights during model fitting. To use them, see the documentation in [case_weights] and the examples on tidymodels.org
.
The fit()
and fit_xy()
arguments have arguments called case_weights
that expect vectors of case weights.
However, the documentation in [stats::glm()] assumes that is specific type of case weights are being used:"Non-NULL weights can be used to indicate that different observations have different dispersions (with the values in weights being inversely proportional to the dispersions); or equivalently, when the elements of weights are positive integers w_i
, that each response y_i
is the mean of w_i
unit-weight observations. For a binomial GLM prior weights are used to give the number of trials when the response is the proportion of successes: they would rarely be used for a Poisson GLM."
This model object contains data that are not required to make predictions. When saving the model for the purpose of prediction, the size of the saved object might be substantially reduced by using functions from the butcher package.
The "Fitting and Predicting with parsnip" article contains examples for logistic_reg()
with the "glm"
engine.
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