Creates a cost measure for non-standard classification error costs.
makeCostMeasure(id = "costs", minimize = TRUE, costs, combine = mean,
best = NULL, worst = NULL, name = id, note = "")
(character(1)
)
Name of measure.
Default is “costs”.
(logical(1)
)
Should the measure be minimized?
Otherwise you are effectively specifying a benefits matrix.
Default is TRUE
.
([matrix`) Matrix of misclassification costs. Rows and columns have to be named with class labels, order does not matter. Rows indicate true classes, columns predicted classes.
(function
)
How to combine costs over all cases for a SINGLE test set?
Note this is not the same as the aggregate
argument in makeMeasure
You can set this as well via setAggregation, as for any measure.
Default is mean.
(`numeric(1)`) Best obtainable value for measure. Default is -`Inf` or `Inf`, depending on `minimize`.
(`numeric(1)`) Worst obtainable value for measure. Default is `Inf` or -`Inf`, depending on `minimize`.
([character]) Name of the measure. Default is `id`.
([character]) Description and additional notes for the measure. Default is “”.
Other performance: ConfusionMatrix
,
calculateConfusionMatrix
,
calculateROCMeasures
,
estimateRelativeOverfitting
,
makeCustomResampledMeasure
,
makeMeasure
, measures
,
performance
, setAggregation
,
setMeasurePars