Regression MultilayerPerceptron Learner
Source:R/learner_RWeka_regr_multilayer_perceptron.R
mlr_learners_regr.multilayer_perceptron.RdRegressor that uses backpropagation to learn a multi-layer perceptron.
Calls RWeka::make_Weka_classifier() from RWeka.
Custom mlr3 parameters
output_debug_info:original id: output-debug-info
do_not_check_capabilities:original id: do-not-check-capabilities
num_decimal_places:original id: num-decimal-places
batch_size:original id: batch-size
Reason for change: This learner contains changed ids of the following control arguments since their ids contain irregular pattern
Gremoved:GUI will be opened
Reason for change: The parameter is removed because we don't want to launch GUI.
Parameters
| Id | Type | Default | Levels | Range |
| subset | untyped | - | - | |
| na.action | untyped | - | - | |
| L | numeric | 0.3 | \([0, 1]\) | |
| M | numeric | 0.2 | \([0, 1]\) | |
| N | integer | 500 | \([1, \infty)\) | |
| V | numeric | 0 | \([0, 100]\) | |
| S | integer | 0 | \([0, \infty)\) | |
| E | integer | 20 | \([1, \infty)\) | |
| A | logical | FALSE | TRUE, FALSE | - |
| B | logical | FALSE | TRUE, FALSE | - |
| H | untyped | "a" | - | |
| C | logical | FALSE | TRUE, FALSE | - |
| I | logical | FALSE | TRUE, FALSE | - |
| R | logical | FALSE | TRUE, FALSE | - |
| D | logical | FALSE | TRUE, FALSE | - |
| output_debug_info | logical | FALSE | TRUE, FALSE | - |
| do_not_check_capabilities | logical | FALSE | TRUE, FALSE | - |
| num_decimal_places | integer | 2 | \([1, \infty)\) | |
| batch_size | integer | 100 | \([1, \infty)\) | |
| options | untyped | NULL | - |
See also
as.data.table(mlr_learners)for a table of available Learners in the running session (depending on the loaded packages).Chapter in the mlr3book: https://mlr3book.mlr-org.com/chapters/chapter2/data_and_basic_modeling.html#sec-learners
mlr3learners for a selection of recommended learners.
mlr3cluster for unsupervised clustering learners.
mlr3pipelines to combine learners with pre- and postprocessing steps.
mlr3tuning for tuning of hyperparameters, mlr3tuningspaces for established default tuning spaces.
Super classes
mlr3::Learner -> mlr3::LearnerRegr -> LearnerRegrMultilayerPerceptron
Methods
Inherited methods
mlr3::Learner$base_learner()mlr3::Learner$configure()mlr3::Learner$encapsulate()mlr3::Learner$format()mlr3::Learner$help()mlr3::Learner$predict()mlr3::Learner$predict_newdata()mlr3::Learner$print()mlr3::Learner$reset()mlr3::Learner$selected_features()mlr3::Learner$train()mlr3::LearnerRegr$predict_newdata_fast()
Method marshal()
Marshal the learner's model.
Arguments
...(any)
Additional arguments passed tomlr3::marshal_model().
Method unmarshal()
Unmarshal the learner's model.
Arguments
...(any)
Additional arguments passed tomlr3::unmarshal_model().
Examples
# Define the Learner
learner = lrn("regr.multilayer_perceptron")
print(learner)
#>
#> ── <LearnerRegrMultilayerPerceptron> (regr.multilayer_perceptron): MultilayerPer
#> • Model: -
#> • Parameters: list()
#> • Packages: mlr3 and RWeka
#> • Predict Types: [response]
#> • Feature Types: logical, integer, numeric, factor, and ordered
#> • Encapsulation: none (fallback: -)
#> • Properties: marshal and missings
#> • Other settings: use_weights = 'error', predict_raw = 'FALSE'
# Define a Task
task = tsk("mtcars")
# 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)
#> Linear Node 0
#> Inputs Weights
#> Threshold 2.0690351682477175
#> Node 1 -1.4167384292693588
#> Node 2 -1.8199273698430836
#> Node 3 -0.9207888530020237
#> Node 4 -0.9491523360119549
#> Node 5 -1.1759543037311293
#> Sigmoid Node 1
#> Inputs Weights
#> Threshold -0.7775873336468616
#> Attrib am 0.7751522936994147
#> Attrib carb 0.6622586099203641
#> Attrib cyl -0.7135067370157182
#> Attrib disp 0.07863040539082183
#> Attrib drat 1.5715318813155201
#> Attrib gear -0.015321123949458915
#> Attrib hp 0.9200214468872467
#> Attrib qsec -0.8152569229678894
#> Attrib vs 0.362905585476129
#> Attrib wt 1.1880966894272054
#> Sigmoid Node 2
#> Inputs Weights
#> Threshold 1.3899023920140623
#> Attrib am -0.8289436726579645
#> Attrib carb -1.0838605450386658
#> Attrib cyl -0.23911308720481292
#> Attrib disp -0.087255908753737
#> Attrib drat -0.24098972957379558
#> Attrib gear -1.5686813336500132
#> Attrib hp 1.5413317044689603
#> Attrib qsec -0.20757417798468103
#> Attrib vs 0.3397480643650655
#> Attrib wt 2.260076955400855
#> Sigmoid Node 3
#> Inputs Weights
#> Threshold -0.9579269015597053
#> Attrib am -0.02766976194285475
#> Attrib carb 0.16394807545901832
#> Attrib cyl 0.207520905240283
#> Attrib disp -1.1543524190333583
#> Attrib drat -0.20762148853509693
#> Attrib gear -0.23528741581271553
#> Attrib hp -1.0370528669544068
#> Attrib qsec -0.3930346292136593
#> Attrib vs -0.6917529276137269
#> Attrib wt 1.0997498505943104
#> Sigmoid Node 4
#> Inputs Weights
#> Threshold -1.0223001038886397
#> Attrib am -0.055648265244976965
#> Attrib carb 0.15324713335652956
#> Attrib cyl 0.25447909561705984
#> Attrib disp -1.1039241516381622
#> Attrib drat -0.3535779552614027
#> Attrib gear -0.11293269385709218
#> Attrib hp -1.116267880641682
#> Attrib qsec -0.10999023533457505
#> Attrib vs -0.67063986614761
#> Attrib wt 0.904127113607597
#> Sigmoid Node 5
#> Inputs Weights
#> Threshold -0.7133678915708722
#> Attrib am 0.49320407023469764
#> Attrib carb 0.9290457566671577
#> Attrib cyl -0.36409653497244715
#> Attrib disp 0.055920776047130694
#> Attrib drat 1.479919938000615
#> Attrib gear -0.11914079632113882
#> Attrib hp 0.7545543435214774
#> Attrib qsec -0.9195960970015754
#> Attrib vs 0.033855579161178734
#> Attrib wt 1.4812634663402369
#> Class
#> Input
#> Node 0
#>
# Make predictions for the test rows
predictions = learner$predict(task, row_ids = ids$test)
# Score the predictions
predictions$score()
#> regr.mse
#> 17.35694