luz_metric_binary_auroc | R Documentation |
To avoid storing all predictions and targets for an epoch we compute confusion matrices across a range of pre-established thresholds.
luz_metric_binary_auroc(
num_thresholds = 200,
thresholds = NULL,
from_logits = FALSE
)
num_thresholds |
Number of thresholds used to compute confusion matrices.
In that case, thresholds are created by getting |
thresholds |
(optional) If threshold are passed, then those are used to compute the
confusion matrices and |
from_logits |
Boolean indicating if predictions are logits, in that case we use sigmoid to put them in the unit interval. |
Other luz_metrics:
luz_metric_accuracy()
,
luz_metric_binary_accuracy_with_logits()
,
luz_metric_binary_accuracy()
,
luz_metric_mae()
,
luz_metric_mse()
,
luz_metric_multiclass_auroc()
,
luz_metric_rmse()
,
luz_metric()
if (torch::torch_is_installed()){
library(torch)
actual <- c(1, 1, 1, 0, 0, 0)
predicted <- c(0.9, 0.8, 0.4, 0.5, 0.3, 0.2)
y_true <- torch_tensor(actual)
y_pred <- torch_tensor(predicted)
m <- luz_metric_binary_auroc(thresholds = predicted)
m <- m$new()
m$update(y_pred[1:2], y_true[1:2])
m$update(y_pred[3:4], y_true[3:4])
m$update(y_pred[5:6], y_true[5:6])
m$compute()
}
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