# Two class
data("two_class_example")
mn_log_loss(two_class_example, truth, Class1)
# Multiclass
library(dplyr)
data(hpc_cv)
# You can use the col1:colN tidyselect syntax
hpc_cv %>%
filter(Resample == "Fold01") %>%
mn_log_loss(obs, VF:L)
# Groups are respected
hpc_cv %>%
group_by(Resample) %>%
mn_log_loss(obs, VF:L)
# Vector version
# Supply a matrix of class probabilities
fold1 <- hpc_cv %>%
filter(Resample == "Fold01")
mn_log_loss_vec(
truth = fold1$obs,
matrix(
c(fold1$VF, fold1$F, fold1$M, fold1$L),
ncol = 4
)
)
# Supply `...` with quasiquotation
prob_cols <- levels(two_class_example$truth)
mn_log_loss(two_class_example, truth, Class1)
mn_log_loss(two_class_example, truth, !!prob_cols[1])
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