Computes a weighted average of inputs. Used in the context of computing weighted averages of predictions.
Predictions are averaged using weights
(in order of appearance in the data) which are optimized using
nonlinear optimization from the package "nloptr" for a measure provided in measure
(defaults to classif.acc
for LearnerClassifAvg
and regr.mse
for LearnerRegrAvg
).
Learned weights can be obtained from $model
.
Using non-linear optimization is implemented in the SuperLearner R package.
For a more detailed analysis the reader is referred to LeDell (2015).
Note, that weights always sum to 1 by dividing through sum(weights) before weighting incoming features.
mlr_learners_classif.avgmlr_learners_regr.avg
R6Class
object inheriting from mlr3::LearnerClassif
/mlr3::Learner
.
The parameters are the parameters inherited from LearnerClassif
, as well as:
measure
:: Measure
| character
Measure
to optimize for.
Will be converted to a Measure
in case it is character
.
Initialized to "classif.ce"
, i.e. misclassification error for classification
and "regr.mse"
, i.e. mean squared error for regression.
optimizer
:: Optimizer
| character(1)
Optimizer
used to find optimal thresholds.
If character
, converts to Optimizer
via opt
. Initialized to OptimizerNLoptr
.
Nloptr hyperparameters are initialized to xtol_rel = 1e-8
, algorithm = "NLOPT_LN_COBYLA"
and equal initial weights for each learner.
For more fine-grained control, it is recommended to supply a instantiated Optimizer
.
log_level
:: character(1)
| integer(1)
Set a temporary log-level for lgr::get_logger("bbotk")
. Initialized to: "warn".
LearnerClassifAvg$new(), id = "classif.avg")
(chr
) -> self
Constructor.
LearnerRegrAvg$new(), id = "regr.avg")
(chr
) -> self
Constructor.
mlr3pipelinesledell_2015
Other Learners:
mlr_learners_graph
Other Ensembles:
PipeOpEnsemble
,
mlr_pipeops_classifavg
,
mlr_pipeops_ovrunite
,
mlr_pipeops_regravg