mlr_learners_surv.mboost: Boosted Generalized Additive Survival Learner

mlr_learners_surv.mboostR Documentation

Boosted Generalized Additive Survival Learner

Description

Model-based boosting for survival analysis. Calls mboost::mboost() from mboost.

Details

distr prediction made by mboost::survFit().

Prediction types

This learner returns two to three prediction types:

  1. lp: a vector containing the linear predictors (relative risk scores), where each score corresponds to a specific test observation. Calculated using mboost::predict.mboost(). If the family parameter is not "coxph", -lp is returned, since non-coxph families represent AFT-style distributions where lower lp values indicate higher risk.

  2. crank: same as lp.

  3. distr: a survival matrix in two dimensions, where observations are represented in rows and time points in columns. Calculated using mboost::survFit(). This prediction type is present only when the family distribution parameter is equal to "coxph" (default). By default the Breslow estimator is used for computing the baseline hazard.

Dictionary

This Learner can be instantiated via lrn():

lrn("surv.mboost")

Meta Information

  • Task type: “surv”

  • Predict Types: “crank”, “distr”, “lp”

  • Feature Types: “logical”, “integer”, “numeric”, “factor”

  • Required Packages: mlr3, mlr3proba, mlr3extralearners, mboost

Parameters

Id Type Default Levels Range
family character coxph coxph, weibull, loglog, lognormal, gehan, cindex, custom -
custom.family untyped - -
nuirange untyped c(0, 100) -
offset numeric - (-\infty, \infty)
center logical TRUE TRUE, FALSE -
mstop integer 100 [0, \infty)
nu numeric 0.1 [0, 1]
risk character inbag inbag, oobag, none -
stopintern logical FALSE TRUE, FALSE -
trace logical FALSE TRUE, FALSE -
oobweights untyped NULL -
baselearner character bbs bbs, bols, btree -
sigma numeric 0.1 [0, 1]
ipcw untyped 1 -
na.action untyped stats::na.omit -

Super classes

mlr3::Learner -> mlr3proba::LearnerSurv -> LearnerSurvMBoost

Methods

Public methods

Inherited methods

Method new()

Creates a new instance of this R6 class.

Usage
LearnerSurvMBoost$new()

Method importance()

The importance scores are extracted with the function mboost::varimp() with the default arguments.

Usage
LearnerSurvMBoost$importance()
Returns

Named numeric().


Method selected_features()

Selected features are extracted with the function mboost::variable.names.mboost(), with used.only = TRUE.

Usage
LearnerSurvMBoost$selected_features()
Returns

character().


Method clone()

The objects of this class are cloneable with this method.

Usage
LearnerSurvMBoost$clone(deep = FALSE)
Arguments
deep

Whether to make a deep clone.

Author(s)

RaphaelS1

References

Bühlmann, Peter, Yu, Bin (2003). “Boosting with the L 2 loss: regression and classification.” Journal of the American Statistical Association, 98(462), 324–339.

See Also

Examples

lrn("surv.mboost")

mlr-org/mlr3extralearners documentation built on Nov. 11, 2024, 11:11 a.m.