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Logistic regression with a quadratic penalization on the coefficient. Calls stepPlr::plr() from stepPlr.

Dictionary

This Learner can be instantiated via lrn():

lrn("classif.stepPlr")

Meta Information

  • Task type: “classif”

  • Predict Types: “response”, “prob”

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

  • Required Packages: mlr3, stepPlr

Parameters

IdTypeDefaultLevelsRange
cpcharacteraicaic, bic-
lambdanumeric1e-04\([0, \infty)\)
offset.coefficientsuntyped--
offset.subsetuntyped--

References

Park, Young M, Hastie, Trevor (2007). “Penalized logistic regression for detecting gene interactions.” Biostatistics, 9(1), 30-50. ISSN 1465-4644, doi:10.1093/biostatistics/kxm010 , https://doi.org/10.1093/biostatistics/kxm010.

See also

Author

annanzrv

Super classes

mlr3::Learner -> mlr3::LearnerClassif -> LearnerClassifStepPlr

Methods

Inherited methods


LearnerClassifStepPlr$new()

Creates a new instance of this R6 class.

Usage


LearnerClassifStepPlr$clone()

The objects of this class are cloneable with this method.

Usage

LearnerClassifStepPlr$clone(deep = FALSE)

Arguments

deep

Whether to make a deep clone.

Examples

# Define the Learner
learner = lrn("classif.stepPlr")
print(learner)
#> 
#> ── <LearnerClassifStepPlr> (classif.stepPlr): Logistic Regression with a L2 Pena
#> • Model: -
#> • Parameters: list()
#> • Packages: mlr3 and stepPlr
#> • Predict Types: [response] and prob
#> • Feature Types: logical, integer, and numeric
#> • Encapsulation: none (fallback: -)
#> • Properties: twoclass and weights
#> • Other settings: use_weights = 'use', predict_raw = 'FALSE'

# Define a Task
task = tsk("sonar")

# Create train and test set
ids = partition(task)

# Train the learner on the training ids
learner$train(task, row_ids = ids$train)

print(learner$model)
#> 
#> Call:
#> stepPlr::plr(x = data, y = y)
#> 
#> Coefficients:
#> Intercept        V1       V10       V11       V12       V13       V14       V15 
#>  43.46051 -67.66197  25.32881 -37.08723 -43.67493  10.10522  11.33524 -14.97675 
#>       V16       V17       V18       V19        V2       V20       V21       V22 
#> -12.25457  27.84821  -5.60292  -3.78195 -12.77573 -25.42816  36.18908 -37.95753 
#>       V23       V24       V25       V26       V27       V28       V29        V3 
#>  18.23367 -29.14288  10.36280  23.88343 -19.17293 -22.74951  28.80175  21.94846 
#>       V30       V31       V32       V33       V34       V35       V36       V37 
#> -35.97302  14.12725   6.72979  -9.02111  10.63640 -35.68718  22.47502   9.74649 
#>       V38       V39        V4       V40       V41       V42       V43       V44 
#>  18.21148 -32.68545 -20.80315  36.00459  -1.64380 -39.29472  25.22495  -3.78554 
#>       V45       V46       V47       V48       V49        V5       V50       V51 
#> -20.45448 -32.77754  45.68465 -69.70146 -41.67089   5.40899  36.89074 -29.20727 
#>       V52       V53       V54       V55       V56       V57       V58       V59 
#> -46.34987 -46.95810 -20.49534  13.07616   2.96123  10.37814 -14.30766 -33.11624 
#>        V6       V60        V7        V8        V9 
#> -24.80720 -37.89548  18.47151  46.93699 -22.14821 
#> 
#>     Null deviance: 191.07 on 138 degrees of freedom
#> Residual deviance: 11.45 on 95.93 degrees of freedom
#>             Score: deviance + 4.9 * df = 223.98 


# Make predictions for the test rows
predictions = learner$predict(task, row_ids = ids$test)

# Score the predictions
predictions$score()
#> classif.ce 
#>  0.2608696