# Questions tagged [mlr3]

mlr3 is the next generation of the mlr package for machine learning in R.

mlr3

296
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### Managing problems of class imbalance in machine learning models using spatial data in R

I am trying to simultaneously perform feature selection and hyperparameter tuning on stacked learners (glmnet and rpart). However, I am encountering the following error message with the classif.glmnet ...

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1
answer

23
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### Extracting non-zero coefficient in lrn("surv.penalized")

I'm doing an ML study. I've used surv.penalized for lasso Penalized Cox Regression Learner, and get the non-zero coefficients. And it seems to work i.e. I do get some non-zero coefficients and the ...

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125
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### R6 class function: Error in self$assert(xs) : Assertion on 'xs' failed

I modified a function in an R6 class defining a pipeline step for supervised learning, specifically using cross-validation (CV). This class encapsulates a learner and performs cross-validation on the ...

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1
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67
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### Error in stacking with spatial resampling: response is not a factor at two levels but ‘family = Binomial()

I've coded a graph that performs stacking using the mlr3 package. In the first step, I tuned the parameters of the level 0 learners, and in the final step, I used the predictions from the tuned level ...

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### How to simultaneously and manually perform feature selection and hyperparameter tuning using multiple performance measures?

I am exploring the possibility of simultaneously performing feature selection and hyperparameter tuning using multiple performance measures. I am building ecological niche models, and it is advised to ...

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65
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### Error message in parameter tuning: OptimInstanceMultiCrit is deprecated. Use OptimInstanceBatchMultiCrit instead

I have an error message when I run a tuning process using the function mlr3tuning::ti from the mlr3 package:
Here is a reproducible example:
task <- tsk("sonar")
tuner <- mlr3tuning::...

1
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1
answer

74
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### Error with 'classif.svm' learner while tuning parameters : <simpleError: '<OptimizerMbo>' does not support param sets with dependencies!>

I am tuning parameters for multiple learners using parallel computing. However, I am encountering this error message for the learner 'classif.svm':
<simpleError: '<OptimizerMbo>' does not ...

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28
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### Implementation of the cascade classifier in the mlr3

I have a predictor variable with five classes and each algorithm classifies one of the classes of this variable well. Can I make a classifier with all these algorithms and have each one classify its ...

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### How to make tar_map and mlr3misc::pmap work together?

I've written a mlr3-pipeline inside a targets-pipeline. I would like to run this pipeline multiple times for an experiment and I wanted to tar_map the whole thing. I chose static branching since I aim ...

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2
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194
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### Spatial resampling in stacking pipelines

I've coded a graph that performs stacking using the mlr3 package. The original code can be found here using a reproducible example. In summary, in a first step, I tuned the parameters of the level 0 ...

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### Tuning Over Multiple Learners using mutations and target transformations via pipelines

Next to a mutation, I want to transform the target variable through a pipeline.
My orginal graph, I've created through the following code:
pomut = po("mutate")
mutations = list(
PM25_01....

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37
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### mlr3: How to extract predicted survival time? (to compare the model predictions with the real data)

I want to predict the response of predicted survival times in survival analysis. According to the book mlr3 for comparing the predictions from the model to the true data (https://mlr3book.mlr-org.com/...

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### graphlearners doesn't work in conterfactual packages

My code is showed below:
prc_rf_lrn <- lrn("classif.ranger",predict_type="prob", importance="impurity")
graph_rf <- prc_rf_lrn %>>% po("threshold")
...

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48
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### Parallelization of stacked learner tuning using the ti() function from the mlr3 package

I am trying to integrate parallel computing into the stacked learner tuning using the ti() function from the mlr3tuning package. I have included two levels: level 0 allows tuning of 9 learners, and ...

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### MLR3 Pipeline: Access Data of PipeOP SMOTE in a Resample-/Benchmark-Structure

I would like to be able to view the data generated with the PipeOp SMOTE. When I generate a graph or convert the graph to a GraphLearner, it works. However, if I generate a resample structure (or a ...

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2
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103
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### How to extract predictions, say of survival probability, of the outer loop sample during nested cv (mlr3 benchmark)?

Note: The code/analysis output of this question has been edited using reprex() upon request to increase reproducibility
I would appreciate some guidance on extraction of distributional predictions (...

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### MLR3 training error with Deepsurv (deephit works fine)

My code was running just fine with an 80/20 training test split. For own reasons, I want to test out performance at 70/30 split but DeepSurv is giving an error. Although no errors before, and other ...

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172
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### Error message while tuning the threshold for classification learners using stacking with the mlr3 package

I've coded a graph that performs stacking using the mlr3 package. Here is the graph:
The objective is for the graph to return weighted average predictions via the learner classif.avg. I am currently ...

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0
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66
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### A learner for MaxEnt models using the mlr3 package

I am creating a learner for Maximum Entropy (MaxEnt) models using the mlr3 package. I use the maxnet function (from the maxnet package) to fit MaxEnt models. Here is a link to the function: maxnet.
I ...

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1
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110
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### Tune GAMs based on multiple formulas using the mlr3 package

I would like to tune a Generalized Additive Model (GAM) based on several formulas associated with different combinations of k (i.e., dimension of the basis used to represent the smooth term).
I am ...

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35
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### Importance scores for classification task derived via mlr3 and gbm packages

I applied the gradient boosted classification trees algorithm via the mlr3 and gbm packages. My task is classification with 8 predictors. I extracted the importance scores from the learner utilizing ...

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227
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### Creating a learner object for Bayesian optimization using the mlr and mlrMBO packages: example with a neural network model using the nnet package in R

I aim to build species distribution models (SDMs) using various machine learning models to evaluate the relationships between species presence/absence (encoded as a binary variable 1/0, where the ...

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### How to get the model results from a benchmark result?

I have been trying to use mlr3 to do some hyperparameter tuning for xgboost. I want to compare three different models:
1. xgboost tuned over just the alpha hyperparameter
2. xgboost tuned over alpha ...

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1
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205
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### Tune the hyper-parameters of XGBoost with #mlr3

I am new to gradient boosting (XGBoost). I tried using mlr3 to set hyperparameters for xgboost. I want to perform "nested cross-validation" with 10 inner folds and 3 outer folds to evaluate ...

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2
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125
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### Model Interpretability for Survival task in MLR3

I have performed previously model interpretation (pdp) on my survival models in MLR.
However, I am unable to do it in MLR3 due to the "Predictor" object that is not accept models from type ...

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108
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### mlr3 object calculate shap value (kernelshap)

I have a piece of biological data with 200 samples and 500 features. After modeling with the mlr3 framework, I selected random forest or XGB as the final model. What should I do to calculate the shap ...

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1
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86
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### Grid Search Hyperparameter Tuning of Ranger model with mlr3 R library

I ran the following grid search model using mlr3verse with ranger model.
task <- TaskClassif$new("df_cont_train.binary", df_cont_train, target = "label", positive = "1"...

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67
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### Error in the book Applied Machine Learning Using mlr3 in R example

I recently began exploring mlr3 through the book "Applied Machine Learning Using mlr3 in R". However, I'm currently stuck on the second example and unable to proceed further. I'm using ...

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140
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### How to create a 2D partial dependence plot on a trained random forest model using the iml package in R?

I have trained randomForest models using the mlr3 package in R and successfully used the iml package to create 1D plots of partial dependence (PDP) and accumulated local effects (ALE) to interpret the ...

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1
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56
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### Error when performing HPO with Hyperband and MBO with helper function auto_tuner() but not with tune() on #mlr3

I have a dataset containing 100 features, which I want to analyze using mlr3.
I want to use XGBoost as a learner and Hyperband or MBO as tuners.
However, I run into errors when using the helper ...

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0
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34
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### This "undefined columns selected" error always occur when I try to tune hyper-parameters of the Cubist-learner by mlr3

This is the code when I tried to tune hyperparameters of the regr.cubist learner in mlr3.
I first saw the error with my own data, I then took the example data set from Cubist website and it occured ...

1
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1
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62
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### How to add curated list of features to the results of a filter in an mlr3 pipeline

I need to add a select number of pre-selected features to an mlr3 pipeline. I'm hoping I can add those features the results of another filter, as in this snippet of an mlr3 graph:
Is this possible ...

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1
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26
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### export a random forest model to C code for use outside of mlr3

I have trained a radom forest model like this:
task <- as_task_regr(my_data, id= "rf", target = "Q")
train_set = sample(task$row_ids, 0.80 * task$nrow)
test_set = setdiff(task$...

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### Packages, libraries, functions and their dependencies among each other, especially for mlr3

Community, I would like to understand better the economy and dependencies of packages, libraries and functions in R, especially concerning the “mlr3verse” package. When I start R in Version 4.3.2 on ...

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87
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### randomforest variable importance: results of mlr3 is different from randomForest packages

i want to know why the results are different?
Thanks for the help!
mlr3
library(mlr3)
library(mlr3verse)
library(mlr3learners)
library(randomForest)
library(tidyverse)
library(tidymodels)
tasks = ...

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0
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102
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### Is it possible to transfer a ML model from R into ONNX format

I am currently training a ML model in R (specifically using the mlr3 framework - if this is a no-go I would be open to using other packages also). Later I want to apply the model into production, but ...

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1
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### How to tune kernel.pars of surv.svm in mlr3

For survival SVM model, different kernel has different parameters, for example, the kernel "poly_kernel"(polynomial) has the degree parameter, but it is included in the kernel.pars argument. ...

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0
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### MLR3MBO - function with inputs not to optimise

When defining the objective function to be optimised in MLR3MBO, is it possible for it to have inputs NOT to be optimised?
Longer description:
Data: humans playing a computer task, so a series of y ...

0
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1
answer

48
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### Using mlr3 to stop and resume optimization

I would like to optimize the parameters of a numerical model. To do this, I run my model sequentially over and over again. Each time a genetic algorithm from the R-package GA proposes a different set ...

1
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1
answer

98
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### How to get confusion matrix with relative values from kNN models with more than two factor levels?

I built a simple kNN model with the packages mlr3 and mlr3learners, using the diabetes data set from the mclust package. I am trying to use the kNN model to predict the class category based on the ...

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1
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53
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### Is there a way to use surv.aorsf with Harrel's concordance in MLR3?

I am trying to use the surv.aorsf implementation in mlr3extralearners with the ’cstat’ split_rule setting. This parameter is valid in the orsf package. on the surv.aorsf mlr3 page (see here) the ...

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1
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59
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### Comparing performance of classification learners within a benchmark

I've created a benchmark object for a (binary) classification task with heavy class imbalance in the training data and thrown in few classification learners into it including the featureless learner. ...

1
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1
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156
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### MLR3 : ROC curves and extraction of standard deviation/IC?

I want to extract the standard deviation and/or an IC95 of the result obtain in a benchmark of multiple learners on a task in order to ensure that the results are complete. I read this : mlr3 standard ...

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0
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55
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### Confusion with classbalancing pipeline in 'mlr3pipelines' when using resample

I am very confused about how the 'classbalancing' pipeline operates, specifically during resampling with 'resample'.
I am performing a binary logistic regression using a large dataset, and would like ...

0
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1
answer

55
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### Viewing data properties after proceeding through 'classbalancing' pipeline mlr3

I am trying to find a way of ensure my mlr3pipeline is working as expected. I have a classbalancing pipeline and am trying to view properties of the data being given to my model, and split for testing/...

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1
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146
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### Is it possible to get the probability predictions for each class with mlr3, ranger and terra?

ML beginner here, so apologies for any wrong terminology.
I have two questions. Firstly, is it possible to add an additional "unknown" class, when the probability of any one class is very ...

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2
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56
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### Why are tuned minsplit & minbucket from rpart decimal numbers?

I estimate a model using a classif.rpart learner. The estimation is embedded in a nested resampling. When I look at the inner tuning results using mlr3tuning::extract_inner_tuning_results(bmr), the ...

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1
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97
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### MLR3 : Extract predictions in a data table

I have a simple question concerning the extraction of predictions when we do a nested resampling. I don't know how to extract in data table the results from the validation and test sets :
Here is my ...

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0
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131
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### MLR3 : Prediction of new datas

I just trained and performed prediction with a learner.
He's good at predicting, so I wanted to keep and save it to use on new datas :
best_ranger<-bmr_ranger$score(msr("classif.bacc"))[...

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1
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122
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### 'classif.ranger' not found in DictionaryLearner

I am trying to implement the tuning space 'classif.ranger.rbv1' from mlr3tuningspaces
However, I am getting an error for the learner that the 'classif.ranger' is not found in the DictionaryLearner
I ...