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applicable (version 0.1.0)

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, ...)

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.

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.

Examples

Run this code
# \donttest{
data(qsar_binary)

jacc_sim <- apd_similarity(binary_tr)

mean_sim <- score(jacc_sim, new_data = binary_unk)
mean_sim
# }

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