Comments (2)
I found the answer as follows.
opt_cut <- cutpointr(data = suicide, x = dsi, class = suicide,
pos_class = 'yes', neg_class = 'no',
direction = '>=', boot_stratify = TRUE,
method = oc_manual, cutpoint = 2.5)
from cutpointr.
Hi Jian,
yes, your solution is correct.
The first approach 'ignores' the oc_manual
parameter, because is gets passed on to the metric function where it is then unused by sum_sens_spec
when using the defaults.
Maybe we could issue a warning if parameters are supplied that are not being used by the metric function.
from cutpointr.
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from cutpointr.