step_profile()
creates a specification of a recipe step that will fix the
levels of all variables but one and will create a sequence of values for the
remaining variable. This step can be helpful when creating partial regression
plots for additive models.
A recipe object. The step will be added to the sequence of operations for this recipe.
One or more selector functions to choose variables
for this step. See selections()
for more details.
A call to dplyr::vars()
) to specify which
variable will be profiled (see selections()
). If a column is
included in both lists to be fixed and to be profiled, an error
is thrown.
A value between 0 and 1 that is the percentile to
fix continuous variables. This is applied to all continuous
variables captured by the selectors. For date variables, either
the minimum, median, or maximum used based on their distance to
pct
.
The level that qualitative variables will be fixed. If the variables are character (not factors), this will be the index of the sorted unique values. This is applied to all qualitative variables captured by the selectors.
A named list with elements pctl
(a logical) and
len
(an integer). If pctl = TRUE
, then len
denotes how
many percentiles to use to create the profiling grid. This
creates a grid between 0 and 1 and the profile is determined by
the percentiles of the data. For example, if pctl = TRUE
and
len = 3
, the profile would contain the minimum, median, and
maximum values. If pctl = FALSE
, it defines how many grid
points between the minimum and maximum values should be created.
This parameter is ignored for qualitative variables (since all
of their possible levels are profiled). In the case of date
variables, pctl = FALSE
will always be used since there is no
quantile method for dates.
A character string of the selected variable names. This field
is a placeholder and will be populated once prep()
is used.
Not used by this step since no new variables are created.
A logical to indicate if the quantities for preprocessing have been estimated.
A logical. Should the step be skipped when the
recipe is baked by bake()
? While all operations are baked
when prep()
is run, some operations may not be able to be
conducted on new data (e.g. processing the outcome variable(s)).
Care should be taken when using skip = TRUE
as it may affect
the computations for subsequent operations.
A character string that is unique to this step to identify it.
An updated version of recipe
with the new step added to the
sequence of any existing operations.
This step is atypical in that, when baked, the
new_data
argument is ignored; the resulting data set is
based on the fixed and profiled variable's information.
When you tidy()
this step, a tibble is returned with
columns terms
, type
, and id
:
character, the selectors or variables selected
character, "fixed"
or "profiled"
character, id of this step
The underlying operation does not allow for case weights.
data(Sacramento, package = "modeldata")
# Setup a grid across beds but keep the other values fixed
recipe(~ city + price + beds, data = Sacramento) %>%
step_profile(-beds, profile = vars(beds)) %>%
prep(training = Sacramento) %>%
bake(new_data = NULL)
#> # A tibble: 6 × 3
#> city price beds
#> <fct> <int> <int>
#> 1 ANTELOPE 220000 1
#> 2 ANTELOPE 220000 2
#> 3 ANTELOPE 220000 3
#> 4 ANTELOPE 220000 4
#> 5 ANTELOPE 220000 5
#> 6 ANTELOPE 220000 8
##########
# An *additive* model; not for use when there are interactions or
# other functional relationships between predictors
lin_mod <- lm(mpg ~ poly(disp, 2) + cyl + hp, data = mtcars)
# Show the difference in the two grid creation methods
disp_pctl <- recipe(~ disp + cyl + hp, data = mtcars) %>%
step_profile(-disp, profile = vars(disp)) %>%
prep(training = mtcars)
disp_grid <- recipe(~ disp + cyl + hp, data = mtcars) %>%
step_profile(
-disp,
profile = vars(disp),
grid = list(pctl = FALSE, len = 100)
) %>%
prep(training = mtcars)
grid_data <- bake(disp_grid, new_data = NULL)
grid_data <- grid_data %>%
mutate(
pred = predict(lin_mod, grid_data),
method = "grid"
)
pctl_data <- bake(disp_pctl, new_data = NULL)
pctl_data <- pctl_data %>%
mutate(
pred = predict(lin_mod, pctl_data),
method = "percentile"
)
plot_data <- bind_rows(grid_data, pctl_data)
library(ggplot2)
ggplot(plot_data, aes(x = disp, y = pred)) +
geom_point(alpha = .5, cex = 1) +
facet_wrap(~method)