PCA Signal Extraction
step_pca
creates a specification of a recipe step that will convert
numeric data into one or more principal components.
step_pca( recipe, ..., role = "predictor", trained = FALSE, num_comp = 5, threshold = NA, options = list(), res = NULL, prefix = "PC", keep_original_cols = FALSE, skip = FALSE, id = rand_id("pca") ) ## S3 method for class 'step_pca' tidy(x, type = "coef", ...)
recipe |
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 will be
used to compute the components. See |
role |
For model terms created by this step, what analysis role should they be assigned?. By default, the function assumes that the new principal component columns created by the original variables will be used as predictors in a model. |
trained |
A logical to indicate if the quantities for preprocessing have been estimated. |
num_comp |
The number of PCA components to retain as new predictors.
If |
threshold |
A fraction of the total variance that should be covered by
the components. For example, |
options |
A list of options to the default method for
|
res |
The |
prefix |
A character string that will be the prefix to the resulting new variables. See notes below. |
keep_original_cols |
A logical to keep the original variables in the
output. Defaults to |
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 |
type |
For the |
Principal component analysis (PCA) is a transformation of a group of variables that produces a new set of artificial features or components. These components are designed to capture the maximum amount of information (i.e. variance) in the original variables. Also, the components are statistically independent from one another. This means that they can be used to combat large inter-variables correlations in a data set.
It is advisable to standardize the variables prior to running
PCA. Here, each variable will be centered and scaled prior to
the PCA calculation. This can be changed using the
options
argument or by using step_center()
and step_scale()
.
The argument num_comp
controls the number of components that
will be retained (the original variables that are used to derive
the components are removed from the data). The new components
will have names that begin with prefix
and a sequence of
numbers. The variable names are padded with zeros. For example,
if num_comp < 10
, their names will be PC1
- PC9
.
If num_comp = 101
, the names would be PC001
-
PC101
.
Alternatively, threshold
can be used to determine the
number of components that are required to capture a specified
fraction of the total variance in the variables.
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), value
(the
loading), and component
.
Jolliffe, I. T. (2010). Principal Component Analysis. Springer.
rec <- recipe( ~ ., data = USArrests) pca_trans <- rec %>% step_normalize(all_numeric()) %>% step_pca(all_numeric(), num_comp = 3) pca_estimates <- prep(pca_trans, training = USArrests) pca_data <- bake(pca_estimates, USArrests) rng <- extendrange(c(pca_data$PC1, pca_data$PC2)) plot(pca_data$PC1, pca_data$PC2, xlim = rng, ylim = rng) with_thresh <- rec %>% step_normalize(all_numeric()) %>% step_pca(all_numeric(), threshold = .99) with_thresh <- prep(with_thresh, training = USArrests) bake(with_thresh, USArrests) tidy(pca_trans, number = 2) tidy(pca_estimates, number = 2)
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