Ensure that the outcome has binary factors
validate - asserts the following:
outcomes
must have binary factor columns.
check - returns the following:
ok
A logical. Does the check pass?
bad_cols
A character vector. The names of the columns with problems.
num_levels
An integer vector. The actual number of levels of the columns
with problems.
validate_outcomes_are_binary(outcomes) check_outcomes_are_binary(outcomes)
outcomes |
An object to check. |
The expected way to use this validation function is to supply it the
$outcomes
element of the result of a call to mold()
.
validate_outcomes_are_binary()
returns outcomes
invisibly.
check_outcomes_are_binary()
returns a named list of three components,
ok
, bad_cols
, and num_levels
.
hardhat provides validation functions at two levels.
check_*()
: check a condition, and return a list. The list
always contains at least one element, ok
, a logical that specifies if the
check passed. Each check also has check specific elements in the returned
list that can be used to construct meaningful error messages.
validate_*()
: check a condition, and error if it does not pass. These
functions call their corresponding check function, and
then provide a default error message. If you, as a developer, want a
different error message, then call the check_*()
function yourself,
and provide your own validation function.
Other validation functions:
validate_column_names()
,
validate_no_formula_duplication()
,
validate_outcomes_are_factors()
,
validate_outcomes_are_numeric()
,
validate_outcomes_are_univariate()
,
validate_prediction_size()
,
validate_predictors_are_numeric()
# Not a binary factor. 0 levels check_outcomes_are_binary(data.frame(x = 1)) # Not a binary factor. 1 level check_outcomes_are_binary(data.frame(x = factor("A"))) # All good check_outcomes_are_binary(data.frame(x = factor(c("A", "B"))))
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