score.apd_similarity: Score new samples using similarity methods
Description
Score new samples using similarity methods
Usage
# S3 method for apd_similarity
score(object, new_data, type = "numeric", add_percentile = TRUE, ...)
Arguments
object
A apd_similarity object.
new_data
A data frame or matrix of new predictors.
type
A single character. The type of predictions to generate.
Valid options are:
"numeric" for a numeric value that summarizes the similarity values for
each sample across the training set.
add_percentile
A single logical; should the percentile of the
similarity score relative to the training set values by computed?
...
Not used, but required for extensibility.
Value
A tibble of predictions. The number of rows in the tibble is guaranteed
to be the same as the number of rows in new_data. For type = "numeric",
the tibble contains a column called "similarity". If add_percentile = TRUE,
an additional column called similarity_pctl will be added. These values are
in percent units so that a value of 11.5 indicates that, in the training set,
11.5 percent of the training set samples had smaller values than the sample
being scored.