Calculates the per-observation 0/1 loss as $$ t_i \neq r_1. $$
Measure to compare true observed labels with predicted labels in multiclass classification tasks.
Note that this is an unaggregated measure, returning the losses per observation.
zero_one(truth, response, ...)Performance value as numeric(length(truth)).
Type: "classif"
Range (per observation): \([0, 1]\)
Minimize (per observation): TRUE
Required prediction: response
Other Classification Measures:
acc(),
bacc(),
ce(),
logloss(),
mauc_aunu(),
mbrier()