Questions tagged [mlr3]

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

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Combining rpart hyper tuning parameters with down sampling in MLR3

I am walking through great examples from the MLR3 package (mlr3gallery:imbalanced data examples), and I was hoping to see an example that combines hyper parameter tuning AND an imbalance correction. ...
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35 views

Tuning SMOTE's K with a trafo fails: 'warning(“k should be less than sample size!”)'

I'm having trouble with the trafo function for SMOTE {smotefamily}'s K parameter. In particular, when the number of nearest neighbours K is greater than or equal to the sample size, an error is ...
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1answer
39 views

mlr3 predictions to new data with parameters from autotune

I have a follow-up question to this one. As in the initial question, I am using the mlr3verse, have a new dataset, and would like to make predictions using parameters that performed well during ...
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1answer
55 views

Custom Precision-Recall AUC measure in mlr3

I would like to create a custom Precision-Recall AUC measure in mlr3. I am following the mlr3 book chapter on creating custom measures. I feel I'm almost there, but R throws an annoying error that I ...
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1answer
22 views

mlr_measures_classif.costs with predict_type = “prob”

The cost-sensitive measure mlr_measures_classif.costs requires a 'response' predict type. msr("classif.costs") #<MeasureClassifCosts:classif.costs> #* Packages: - #* Range: [-Inf, Inf] #* ...
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36 views

Is it possible, in mlr3, to predict new data without retraining the model?

An example with iris. We have some data, called tr. df = iris set.seed(1) sp = sample(nrow(iris), 0.7*nrow(iris)) tr = df[sp,] newdata = df[-sp,] We build a model in mlr3 with the data we have: tsk ...
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2answers
134 views

mlr3 PipeOps: Create branches with different data transformations and benchmark different learners within and between branches

I'd like use PipeOps to train a learner on three alternative transformations of a dataset: No transformation. Class balancing- down. Class balancing- up. Then, I'd like to benchmark the three ...
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1answer
63 views

Tuning GLMNET using mlr3

MLR3 is really cool. I am trying to tune the regularisation prarameter searchspace_glmnet_trafo = ParamSet$new(list( ParamDbl$new("regr.glmnet.lambda", log(0.01), log(10)) )) ...
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1answer
62 views

mlr3 resample autotuner - not showing tuned parameters?

I'm fairly new to mlr3, and have had issues in both getting the tuned hyper-parameters (from each of the cross validations), as well as the optimised hyper parameters using the AutoTuner method (to ...
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1answer
131 views

Using mlr3-pipelines to impute data and encode factor columns in GraphLearner?

I have a few questions regarding the use of mlr3-pipelines. Indeed, my goal is to create a pipeline that combines three 3 graphs: 1 - A graph to process categorical variables: level imputation => ...
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1answer
103 views

How to impute data with mlr3 and predict with NA values?

I followed the documentation of mlr3 regarding the imputation of data with pipelines. However, the mode that I have trained does not allow predictions if a one column is NA Do you have any idea why ...
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1answer
74 views

How to decode JSON data with mlr3 package in the prediction phase?

I have developed a graphlearner with the mlr3 package and I would like to publish it in a Rplumber service. However, when I receive the data to make predictions (data in JSON format), the graphlearner ...
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1answer
102 views

Error on tuning parameters using classif.svm in mlr3

I'm using the mlr3 to build a machine learning workflow using SVM classfier. When I try to tune the parameter library(mlr3) library(mlr3learners) library(paradox) library(mlr3tuning) task = tsk("...
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1answer
66 views

SVM has not been trained using `probability = TRUE`, probabilities not available for predictions

I met problems when trying to output prediction probabilities of SVM using mlr3. library(mlr3) task = mlr_tasks$get("iris") svm_learner = mlr_learners$get("classif.svm") train_set = sample(task$nrow, ...
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1answer
83 views

Why during model training chosen is different hyperparameter than that coming from resampling?

During resampling, the max_depth parameter with values of 5 and 9 is tested. However, while training, a completely different value of 10 is used. I expected that during training the parameter ...
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1answer
269 views

How use predict to new data?

I would like to make predictions using created model by mlr3 package for new data that are previously unknown. I trained model by using AutoTuner function. I read chapter "3.4.1.4 Predicting" of mlr3 ...
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1answer
222 views

“cannot add bindings to a locked environment” when creating AutoTuner in mlr3

i have error message when I run code from mlr Manual. library(mlr3) task = mlr_tasks$get("iris") learner = mlr_learners$get("classif.rpart") resampling = mlr_resamplings$get("holdout") measures = ...