step_box_cox
creates a specification of a recipe
step that will transform data using a Box-Cox
transformation. This function differs from
recipes::step_BoxCox
by adding multiple methods
including Guerrero lambda optimization and handling for
negative data used in the Forecast R Package.
step_box_cox(
recipe,
...,
method = c("guerrero", "loglik"),
limits = c(-1, 2),
role = NA,
trained = FALSE,
lambdas_trained = NULL,
skip = FALSE,
id = rand_id("box_cox")
)# S3 method for step_box_cox
tidy(x, ...)
A recipe
object. The step will be added to the sequence of operations for this recipe.
One or more selector functions to choose which
variables are affected by the step. See selections()
for more details. For the tidy
method, these are not
currently used.
One of "guerrero" or "loglik"
A length 2 numeric vector defining the range to compute the transformation parameter lambda.
Not used by this step since no new variables are created.
A logical to indicate if the quantities for preprocessing have been estimated.
A numeric vector of transformation values. This
is NULL
until computed by prep()
.
A logical. Should the step be skipped when the recipe
is baked by bake.recipe()
? While all operations are baked when prep.recipe()
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.
A step_box_cox
object.
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
(the
selectors or variables selected) and value
(the
lambda estimate).
The step_box_cox()
function is designed specifically to handle time series
using methods implemented in the Forecast R Package.
Negative Data
This function can be applied to Negative Data.
Lambda Optimization Methods
This function uses 2 methods for optimizing the lambda selection from the Forecast R Package:
method = "guerrero"
: Guerrero's (1993) method is used, where lambda minimizes
the coefficient of variation for subseries of x.
method = loglik
: the value of lambda is chosen to maximize the profile
log likelihood of a linear model fitted to x. For non-seasonal data, a
linear time trend is fitted while for seasonal data, a linear time trend
with seasonal dummy variables is used.
Guerrero, V.M. (1993) Time-series analysis supported by power transformations. Journal of Forecasting, 12, 37<U+2013>48.
Box, G. E. P. and Cox, D. R. (1964) An analysis of transformations. JRSS B 26 211<U+2013>246.
Time Series Analysis:
Engineered Features: step_timeseries_signature()
, step_holiday_signature()
, step_fourier()
Diffs & Lags step_diff()
, recipes::step_lag()
Smoothing: step_slidify()
, step_smooth()
Variance Reduction: step_box_cox()
Imputation: step_ts_impute()
, step_ts_clean()
Padding: step_ts_pad()
Transformations to reduce variance:
recipes::step_log()
- Log transformation
recipes::step_sqrt()
- Square-Root Power Transformation
Recipe Setup and Application:
recipes::recipe()
recipes::prep()
recipes::bake()
# NOT RUN {
library(tidyverse)
library(tidyquant)
library(recipes)
library(timetk)
FANG_wide <- FANG %>%
select(symbol, date, adjusted) %>%
pivot_wider(names_from = symbol, values_from = adjusted)
recipe_box_cox <- recipe(~ ., data = FANG_wide) %>%
step_box_cox(FB, AMZN, NFLX, GOOG) %>%
prep()
recipe_box_cox %>% bake(FANG_wide)
recipe_box_cox %>% tidy(1)
# }
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