export_auc_data | R Documentation |
Extract and export ROC and Precision-Recall curves for models in a familiarCollection.
export_auc_data(
object,
dir_path = NULL,
aggregate_results = TRUE,
export_collection = FALSE,
...
)
## S4 method for signature 'familiarCollection'
export_auc_data(
object,
dir_path = NULL,
aggregate_results = TRUE,
export_collection = FALSE,
...
)
## S4 method for signature 'ANY'
export_auc_data(
object,
dir_path = NULL,
aggregate_results = TRUE,
export_collection = FALSE,
...
)
object |
A |
dir_path |
Path to folder where extracted data should be saved. |
aggregate_results |
Flag that signifies whether results should be aggregated for export. |
export_collection |
(optional) Exports the collection if TRUE. |
... |
Arguments passed on to
|
Data is usually collected from a familiarCollection
object.
However, you can also provide one or more familiarData
objects, that will
be internally converted to a familiarCollection
object. It is also
possible to provide a familiarEnsemble
or one or more familiarModel
objects together with the data from which data is computed prior to export.
Paths to the previous files can also be provided.
All parameters aside from object
and dir_path
are only used if object
is not a familiarCollection
object, or a path to one.
ROC curve data are exported for individual and ensemble models. For ensemble models, a credibility interval for the ROC curve is determined using bootstrapping for each metric. In case of multinomial outcomes, ROC-curves are computed for each class, using a one-against-all approach.
A list of data.tables (if dir_path
is not provided), or nothing, as
all data is exported to csv
files.
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