prediction
object. This function is used to
transform the input data (which can be in vector, matrix, data frame, or
list form) into a standardized format.prediction(predictions, labels, label.ordering = NULL)
prediction
.<
relation (e.g. 0 < 1, -1 < 1, 'a' < 'b',
FALSE < TRUE). Use label.ordering
to override this default
ordering. Please note that the ordering can be locale-dependent
e.g. for character labels '-1' and '1'.
Currently, ROCR supports only binary classification (extensions toward
multiclass classification are scheduled for the next release,
however). If there are more than two distinct label symbols, execution
stops with an error message. If all predictions use the same two
symbols that are used for the labels, categorical predictions are
assumed. If there are more than two predicted values, but all numeric,
continuous predictions are assumed (i.e. a scoring
classifier). Otherwise, if more than two symbols occur in the
predictions, and not all of them are numeric, execution stops with an
error message.prediction-class
, performance
,
performance-class
, plot.performance
# create a simple prediction object
library(ROCR)
data(ROCR.simple)
pred <- prediction(ROCR.simple$predictions,ROCR.simple$labels)
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