Questions tagged [mlr3]

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

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44 views

Cant calculate interactions using flashlight package with iris data in R?

So Im trying to use the flashlight package with the iris data. One of the functions flashlight provides is to calculate the interactions between variables called light_interaction. I can get ...
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1answer
29 views

creating learner in mlr3: Error in sprintf(msg, …) : too few arguments

I want to create a learner in mlr3, using the distRforest package. my code: library(mlr3extralearners) create_learner( pkg = "." , classname = 'distRforest', ...
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1answer
45 views

How to rename mlr3 task feature values within pipeline

I have a mlr3 task df <- data.frame(v1 = c("a", "b", "a"), v2 = c(1, 2, 2), data = c(3.15, 4.11, 3.56)) library(mlr3) task <- TaskRegr$new(&...
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51 views

How to access the measure(eg:“classif.acc” or other measures) of the train set if I use “holdout” resampling?

I'm learning the mlr3 package for machine learning in R. I split the data into the train set and test set using the "holdout" resampling, how can I get the measure of the train set? It seems ...
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47 views

How to fix PipeOP's state?

How can we Fix a PipeOp's $state, so that its parameters or config are fixed from the beginning and remain the same in both training and prediction. task = tsk("iris") pos1 = po("scale&...
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1answer
42 views

Roc curves with mlr3::autoplot() for benchmark with “holdout” resampling

I am using the mlr3 package and I want to plot ROC curves for different models. If I use cross validation as explained in the documentation it works perfectly well, but if I use "holdout" ...
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32 views

mlr3 - Editing `task$data()`

Is there a way to edit task$data() or replace it with a new data.frame() with exactly the same colnames? I've tried the following task_train$data() <- newDF and task_train$data <- newDF. They ...
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61 views

mlr3 - how to remove incomplete observations using `mlr3` interface

Is it possible to remove incomplete observation within a task --- task <- TaskRegr$new("data", data, "y") --- using mlr3 filters or pipeops?
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1answer
68 views

Where does mlr3 save the final model?

Where does mlr3 save the final model, after training a learner --- learner$train(data)? By "final model", I mean something like a list produced by the following code: model <- xgboost::...
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40 views

mlr3 - confidence interval for predictions

After tuning a learner and using it, we can use it to make predictions through the command line predict(Learner, newdata, predict_type="response") But, how do we compute confidence ...
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2answers
69 views

mlr3 - Apply pre-processing to new data

Using lmr3verse package here. Let's say I applied the following pre-processing to the training set used to train Learner: preprocess <- po("scale", param_vals = list(center = TRUE, scale =...
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59 views

mlr3: obtaining response (predicted survival time) from surv.gbm

surv.gbm in the mlr3 framework outputs linear predictors, however what I'm really interested in are predicted survival times per case, which I want to compare with the actual survival times. Is there ...
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67 views

Create branches with different subsets of data with mlr3 PipeOps

I want to train models on different subsets of data using mlr3, and I was wondering if there a way to train models on different subsets of data in a pipeline. What I want to do is similar to the ...
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55 views

MLR3 average scores from an ensemble

Using an example from the very helpful mlr3 book, I am trying to simply return the average score of the stacked model output. Can someone please explain how to do this using mlr3? I've tried using ...
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25 views

Why am I measuring an interaction between noise variables using iml package in R?

So in my model im simulating data from the Friedman benchmark 1 problem, that is: Where Xn∼U(0,1) and e∼N(0,1). In my model I have added extra noise variables which should have no interaction (the ...
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52 views

Why is xgboost not calculating the importance for all variables when using it with mlr3?

So, im using the superconductivity dataset found here... It contains 82 variables and I am subsetting the data to 2000 rows. But when I use xgboost with mlr3 it does not calculate the importance for ...
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58 views

mlr3: How to filter with mlr on training data set and apply results to model training?

When creating a filter in mlr3 how do you base the filter on only the training data? Once the filter is created how do you apply the filter to the modeling process and subset the training data to only ...
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1answer
63 views

How to filter mlr3 task dataset by feature value

I have a mlr3 task, where I have dataset like this: Dataset "all" all <- data.frame(v1 = c("a", "b"), v2 = c(1, 2), data = c("test&...
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1answer
63 views

MLR 3 Learners contains 5 learner only?

I am learning new MLR environment using MLR3 Compared to MLR, I can get the learners list using: library(mlr) ListLearners() in MLR3, I get the learners list using: library(mlr3) mlr_learners <...
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2answers
94 views

Is there a way to group rows (especially dummy variables) in the recipes package in R (or ml3)

# Packages library(dplyr) library(recipes) # toy dataset, with A being multicolored df <- tibble(name = c("A", "A", "A", "B", "C"), color = c(&...
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1answer
59 views

mlr3 distrcompose cdf: subscript out of bounds

R version used: 3.6.3, mlr3 version: 0.4.0-9000, mlr3proba version: 0.1.6.9000, mlr3pipelines version: 0.1.2 and xgboost version: 0.90.0.2 (as stated on Rstudio package manager) I have deployed the ...
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1answer
42 views

mlr3proba surv.xgboost is not producing distr output + documentation link unstable

R version used: 3.6.3, mlr3 version: 0.4.0-9000, mlr3proba version: 0.1.6.9000 and xgboost version: 0.90.0.2 (as stated on Rstudio package manager) Unfortunately, when applying surv.xgboost for ...
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1answer
46 views

Variable importance not defined in mlr3 rpart learner

I trained and tested a decision tree classifier with mlr3 package in R: pred_probability = learner_DT$train(task_train)$predict(task_test) How can I get the variable importance from this model? I ...
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1answer
81 views

Element with key 'surv.xgboost' not found in DictionaryLearner

I am using R version 3.6.3, mlr3 version 0.3.0 and mlr3proba version 0.1.6 (the latest development versions I could find) and xgboost version 0.90.0.2 → I am trying to use the command: lrn("surv....
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29 views

Reorder mlr3's trained model importance values to match that of task in R?

I was wonder how I could reorder the importance of features produced from a trained model from 'mlr3' to match the order of the feature names from task$feature_names? For example, if I create a task ...
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1answer
66 views

How to set specific values in `paradox`?

Is there a way to set particular values of parameters in the R package paradox? Say I do hyperparameter tuning for a random forest method and I want to test for mtry = c(2, 3, 7, 8) and min.node.size =...
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2answers
92 views

mlr3's task$feature_names is re-ordering variables in R?

So my issue is, when I have a data frame and then create a task using mlr3's task$feature_names function, it is returning the variables in alphabetical or a (kind of) incorrect numerical order, ...
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1answer
96 views

How to subset task according to indicator column and batch train-predict in mlr3?

Background I'm modeling and predicting with the mlr3 package in R. I'm working with one big data set that consists out of test and train sets. Test and train sets are indicated by an indicator column (...
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226 views

How to access and compare LASSO model coefficients with MLR3 (glmnet learner)?

Goal Create a LASSO model using MLR3 Use nested CV with inner CV or bootstraps for hyperparameter (lambda) determination and outer CV for model performance evaluation (instead of doing just one test-...
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1answer
105 views

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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1answer
109 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
145 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
106 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
31 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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0answers
87 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
285 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
135 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
159 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
253 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
202 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
86 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
181 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
90 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
100 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 ...
2
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1answer
409 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
347 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 = ...