Create Interaction Variables
step_interact
creates a specification of a recipe
step that will create new columns that are interaction terms
between two or more variables.
step_interact( recipe, terms, role = "predictor", trained = FALSE, objects = NULL, sep = "_x_", skip = FALSE, id = rand_id("interact") ) ## S3 method for class 'step_interact' tidy(x, ...)
recipe |
A recipe object. The step will be added to the sequence of operations for this recipe. |
terms |
A traditional R formula that contains interaction
terms. This can include |
role |
For model terms created by this step, what analysis role should they be assigned?. By default, the function assumes that the new columns created from the original variables will be used as predictors in a model. |
trained |
A logical to indicate if the quantities for preprocessing have been estimated. |
objects |
A list of |
sep |
A character value used to delineate variables in an
interaction (e.g. |
skip |
A logical. Should the step be skipped when the
recipe is baked by |
id |
A character string that is unique to this step to identify it. |
x |
A |
... |
One or more selector functions to choose which
variables are affected by the step. See |
step_interact
can create interactions between
variables. It is primarily intended for numeric data;
categorical variables should probably be converted to dummy
variables using step_dummy()
prior to being used for
interactions.
Unlike other step functions, the terms
argument should
be a traditional R model formula but should contain no inline
functions (e.g. log
). For example, for predictors
A
, B
, and C
, a formula such as
~A:B:C
can be used to make a three way interaction
between the variables. If the formula contains terms other than
interactions (e.g. (A+B+C)^3
) only the interaction terms
are retained for the design matrix.
The separator between the variables defaults to "_x_
" so
that the three way interaction shown previously would generate a
column named A_x_B_x_C
. This can be changed using the
sep
argument.
When dummy variables are created and are used in interactions,
selectors can help specify the interactions succinctly. For
example, suppose a factor column X
gets converted to dummy
variables x_2
, x_3
, ..., x_6
using step_dummy()
. If
you wanted an interaction with numeric column z
, you could
create a set of specific interaction effects (e.g.
x_2:z + x_3:z
and so on) or you could use
starts_with("x_"):z
. When prep()
evaluates this step,
starts_with("x_")
resolves to (x_2 + x_3 + x_4 + x_5 + x_6)
so that the formula is now (x_2 + x_3 + x_4 + x_5 + x_6):z
and
all two-way interactions are created.
An updated version of recipe
with the new step
added to the sequence of existing steps (if any). For the
tidy
method, a tibble with columns terms
which is
the interaction effects.
library(modeldata) data(penguins) penguins <- penguins %>% na.omit() rec <- recipe(flipper_length_mm ~., data = penguins) int_mod_1 <- rec %>% step_interact(terms = ~ bill_depth_mm:bill_length_mm) # specify all dummy variables succinctly with `starts_with()` int_mod_2 <- rec %>% step_dummy(sex, species, island) %>% step_interact(terms = ~ body_mass_g:starts_with("species")) int_mod_1 <- prep(int_mod_1, training = penguins) int_mod_2 <- prep(int_mod_2, training = penguins) dat_1 <- bake(int_mod_1, penguins) dat_2 <- bake(int_mod_2, penguins) names(dat_1) names(dat_2) tidy(int_mod_1, number = 1) tidy(int_mod_2, number = 2)
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