The function resample
fits a model specified by Learner on a Task
and calculates predictions and performance measures for all training
and all test sets specified by a either a resampling description (ResampleDesc)
or resampling instance (ResampleInstance).
You are able to return all fitted models (parameter models
) or extract specific parts
of the models (parameter extract
) as returning all of them completely
might be memory intensive.
The remaining functions on this page are convenience wrappers for the various
existing resampling strategies. Note that if you need to work with precomputed training and
test splits (i.e., resampling instances), you have to stick with resample
.
resample(learner, task, resampling, measures, weights = NULL,
models = FALSE, extract, keep.pred = TRUE, ...,
show.info = getMlrOption("show.info"))crossval(learner, task, iters = 10L, stratify = FALSE, measures,
models = FALSE, keep.pred = TRUE, ...,
show.info = getMlrOption("show.info"))
repcv(learner, task, folds = 10L, reps = 10L, stratify = FALSE,
measures, models = FALSE, keep.pred = TRUE, ...,
show.info = getMlrOption("show.info"))
holdout(learner, task, split = 2/3, stratify = FALSE, measures,
models = FALSE, keep.pred = TRUE, ...,
show.info = getMlrOption("show.info"))
subsample(learner, task, iters = 30, split = 2/3, stratify = FALSE,
measures, models = FALSE, keep.pred = TRUE, ...,
show.info = getMlrOption("show.info"))
bootstrapOOB(learner, task, iters = 30, stratify = FALSE, measures,
models = FALSE, keep.pred = TRUE, ...,
show.info = getMlrOption("show.info"))
bootstrapB632(learner, task, iters = 30, stratify = FALSE, measures,
models = FALSE, keep.pred = TRUE, ...,
show.info = getMlrOption("show.info"))
bootstrapB632plus(learner, task, iters = 30, stratify = FALSE,
measures, models = FALSE, keep.pred = TRUE, ...,
show.info = getMlrOption("show.info"))
growingcv(learner, task, horizon = 1, initial.window = 0.5, skip = 0,
measures, models = FALSE, keep.pred = TRUE, ...,
show.info = getMlrOption("show.info"))
fixedcv(learner, task, horizon = 1L, initial.window = 0.5, skip = 0,
measures, models = FALSE, keep.pred = TRUE, ...,
show.info = getMlrOption("show.info"))
(Learner | character(1)
)
The learner.
If you pass a string the learner will be created via makeLearner.
(Task) The task.
(ResampleDesc or ResampleInstance) Resampling strategy. If a description is passed, it is instantiated automatically.
(Measure | list of Measure) Performance measure(s) to evaluate. Default is the default measure for the task, see here getDefaultMeasure.
(numeric)
Optional, non-negative case weight vector to be used during fitting.
If given, must be of same length as observations in task and in corresponding order.
Overwrites weights specified in the task
.
By default NULL
which means no weights are used unless specified in the task.
(logical(1)
)
Should all fitted models be returned?
Default is FALSE
.
(function
)
Function used to extract information from a fitted model during resampling.
Is applied to every WrappedModel resulting from calls to train
during resampling.
Default is to extract nothing.
(logical(1)
)
Keep the prediction data in the pred
slot of the result object.
If you do many experiments (on larger data sets) these objects might unnecessarily increase
object size / mem usage, if you do not really need them.
In this case you can set this argument to FALSE
.
Default is TRUE
.
(any)
Further hyperparameters passed to learner
.
(logical(1)
)
Print verbose output on console?
Default is set via configureMlr.
(integer(1)
)
See ResampleDesc.
(logical(1)
)
See ResampleDesc.
(integer(1)
)
See ResampleDesc.
(integer(1)
)
See ResampleDesc.
(numeric(1)
)
See ResampleDesc.
(numeric(1)
)
See ResampleDesc.
(numeric(1)
)
See ResampleDesc.
(integer(1)
)
See ResampleDesc.
Other resample: ResamplePrediction
,
ResampleResult
, addRRMeasure
,
getRRPredictionList
,
getRRPredictions
,
getRRTaskDescription
,
getRRTaskDesc
,
makeResampleDesc
,
makeResampleInstance
# NOT RUN {
task = makeClassifTask(data = iris, target = "Species")
rdesc = makeResampleDesc("CV", iters = 2)
r = resample(makeLearner("classif.qda"), task, rdesc)
print(r$aggr)
print(r$measures.test)
print(r$pred)
# include the training set performance as well
rdesc = makeResampleDesc("CV", iters = 2, predict = "both")
r = resample(makeLearner("classif.qda"), task, rdesc,
measures = list(mmce, setAggregation(mmce, train.mean)))
print(r$aggr)
# }
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