Undersampling: For a given class (usually the larger one) the number of observations is reduced (downsampled) by randomly sampling without replacement from this class.
oversample(task, rate, cl = NULL)
undersample(task, rate, cl = NULL)Task]
The task.numeric(1)]
Factor to upsample or downsample a class.
For undersampling: Must be between 0 and 1,
where 1 means no downsampling, 0.5 implies reduction to 50 percent
and 0 would imply reduction to 0 observations.
For oversampling: Must be between 1 and Inf,
where 1 means no oversampling and 2 would mean doubling the class size.character(1)]
Which class should be over- or undersampled. If NULL, oversample
will select the smaller and undersample the larger class.Task].
makeOverBaggingWrapper,
makeUndersampleWrapper, smote