bal_accuracy(data, ...)
# S3 method for class 'data.frame'
bal_accuracy(
data,
truth,
estimate,
estimator = NULL,
na_rm = TRUE,
case_weights = NULL,
event_level = yardstick_event_level(),
...
)
bal_accuracy_vec(
truth,
estimate,
estimator = NULL,
na_rm = TRUE,
case_weights = NULL,
event_level = yardstick_event_level(),
...
)Either a data.frame containing the columns specified by the
truth and estimate arguments, or a table/matrix where the true
class results should be in the columns of the table.
Not currently used.
The column identifier for the true class results
(that is a factor). This should be an unquoted column name although
this argument is passed by expression and supports
quasiquotation (you can unquote column
names). For _vec() functions, a factor vector.
The column identifier for the predicted class
results (that is also factor). As with truth this can be
specified different ways but the primary method is to use an
unquoted variable name. For _vec() functions, a factor vector.
One of: "binary", "macro", "macro_weighted",
or "micro" to specify the type of averaging to be done. "binary" is
only relevant for the two class case. The other three are general methods
for calculating multiclass metrics. The default will automatically choose
"binary" or "macro" based on estimate.
A logical value indicating whether NA
values should be stripped before the computation proceeds.
The optional column identifier for case weights.
This should be an unquoted column name that evaluates to a numeric column
in data. For _vec() functions, a numeric vector,
hardhat::importance_weights(), or hardhat::frequency_weights().
A single string. Either "first" or "second" to specify
which level of truth to consider as the "event". This argument is only
applicable when estimator = "binary". The default uses an internal helper
that defaults to "first".
A tibble with columns .metric, .estimator,
and .estimate and 1 row of values.
For grouped data frames, the number of rows returned will be the same as the number of groups.
For bal_accuracy_vec(), a single numeric value (or NA).
There is no common convention on which factor level should
automatically be considered the "event" or "positive" result
when computing binary classification metrics. In yardstick, the default
is to use the first level. To alter this, change the argument
event_level to "second" to consider the last level of the factor the
level of interest. For multiclass extensions involving one-vs-all
comparisons (such as macro averaging), this option is ignored and
the "one" level is always the relevant result.
Macro, micro, and macro-weighted averaging is available for this metric.
The default is to select macro averaging if a truth factor with more
than 2 levels is provided. Otherwise, a standard binary calculation is done.
See vignette("multiclass", "yardstick") for more information.
# Two class
data("two_class_example")
bal_accuracy(two_class_example, truth, predicted)
#> # A tibble: 1 × 3
#> .metric .estimator .estimate
#> <chr> <chr> <dbl>
#> 1 bal_accuracy binary 0.837
# Multiclass
library(dplyr)
data(hpc_cv)
hpc_cv %>%
filter(Resample == "Fold01") %>%
bal_accuracy(obs, pred)
#> # A tibble: 1 × 3
#> .metric .estimator .estimate
#> <chr> <chr> <dbl>
#> 1 bal_accuracy macro 0.717
# Groups are respected
hpc_cv %>%
group_by(Resample) %>%
bal_accuracy(obs, pred)
#> # A tibble: 10 × 4
#> Resample .metric .estimator .estimate
#> <chr> <chr> <chr> <dbl>
#> 1 Fold01 bal_accuracy macro 0.717
#> 2 Fold02 bal_accuracy macro 0.711
#> 3 Fold03 bal_accuracy macro 0.767
#> 4 Fold04 bal_accuracy macro 0.724
#> 5 Fold05 bal_accuracy macro 0.715
#> 6 Fold06 bal_accuracy macro 0.707
#> 7 Fold07 bal_accuracy macro 0.699
#> 8 Fold08 bal_accuracy macro 0.734
#> 9 Fold09 bal_accuracy macro 0.717
#> 10 Fold10 bal_accuracy macro 0.706
# Weighted macro averaging
hpc_cv %>%
group_by(Resample) %>%
bal_accuracy(obs, pred, estimator = "macro_weighted")
#> # A tibble: 10 × 4
#> Resample .metric .estimator .estimate
#> <chr> <chr> <chr> <dbl>
#> 1 Fold01 bal_accuracy macro_weighted 0.771
#> 2 Fold02 bal_accuracy macro_weighted 0.763
#> 3 Fold03 bal_accuracy macro_weighted 0.799
#> 4 Fold04 bal_accuracy macro_weighted 0.758
#> 5 Fold05 bal_accuracy macro_weighted 0.762
#> 6 Fold06 bal_accuracy macro_weighted 0.746
#> 7 Fold07 bal_accuracy macro_weighted 0.733
#> 8 Fold08 bal_accuracy macro_weighted 0.768
#> 9 Fold09 bal_accuracy macro_weighted 0.734
#> 10 Fold10 bal_accuracy macro_weighted 0.750
# Vector version
bal_accuracy_vec(
two_class_example$truth,
two_class_example$predicted
)
#> [1] 0.8366167
# Making Class2 the "relevant" level
bal_accuracy_vec(
two_class_example$truth,
two_class_example$predicted,
event_level = "second"
)
#> [1] 0.8366167