Questions tagged [mlr3]

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

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How to solve this error when using "classif.svm" in mlr3? [closed]

I'm trying to use mlr3 to do the benchmark, but I have met these two errors, and I can't solve them , anyone can help? Thank you. This is my code: library(mlr3verse) tasks = tsk("sonar") ...
ayue's user avatar
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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 ...
Ferial Hantash's user avatar
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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 ...
Marine Régis's user avatar
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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 ...
Paul Racino's user avatar
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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 ...
Pierre's user avatar
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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 ...
Panos Stamatis's user avatar
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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 ...
Marine Régis's user avatar
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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 ...
Faiza's user avatar
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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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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 ...
Ferial Hantash's user avatar
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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 ...
hzl's user avatar
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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"...
Little L's user avatar
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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 ...
Shahab Einabadi's user avatar
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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 ...
pricklpitty's user avatar
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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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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 ...
Gang Zhao's user avatar
1 vote
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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 ...
Huazhong's user avatar
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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$...
Gang Zhao's user avatar
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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 ...
Dirk's user avatar
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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 = ...
hzl's user avatar
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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 ...
DuesserBaest's user avatar
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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. ...
ayue's user avatar
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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 ...
JacquieS's user avatar
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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 ...
Christian's user avatar
1 vote
1 answer
66 views

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 ...
Luis's user avatar
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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 ...
gggg's user avatar
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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. ...
intelinsight's user avatar
1 vote
1 answer
123 views

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 ...
NDe's user avatar
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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 ...
Jason Connelly's user avatar
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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/...
Jason Connelly's user avatar
-1 votes
1 answer
117 views

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 ...
pbengou's user avatar
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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 ...
Theresa's user avatar
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1 answer
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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 ...
NDe's user avatar
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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"))[...
NDe's user avatar
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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 ...
Jason Connelly's user avatar
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68 views

MLR3 : Extract predictions on my train set

After building my at algorithm, I trained him on my train set and tried to make predictions on the test set. Unfortunately, it's very difficult for me to extract the predictions my model made on my ...
NDe's user avatar
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Xgboost modifies ground truth values?

I'm running xgboost model on multiple tasks and I saw after extraction of predictions on my validation and test, that my xgboost just modified some ground truth values : Here are the predictions ...
NDe's user avatar
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Problem with relaxed LASSO using glmnet within mlr3: object 'cv' not found

I need to replicate some relaxed LASSO regression R code that currently uses the glmnet package directly. I want to transfer the code to the mlr3 framework so that the model can be compared with other ...
KxZzvv's user avatar
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1 answer
90 views

Changing features in mlr3 task

Is it possible to change a feature in an mlr3 task object? I know that po("mutate") can be used to engineer new feature, but i don't know if there is a way to change an existing one. I tried ...
Yodi's user avatar
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60 views

Is rr and at results the same?

I'm studying some models of machine learning and currently optimizing the models : I have to compare these algos on my validation set to select the best one. I use two methods with mlr3 (the code here ...
NDe's user avatar
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How to save mlr3 resample object results to disk

Has anyone an efficient way to serialize and save the R6 class objects produced by the resample() function in the mlr3 package? Using saveRDS() doesn't seem to work as it takes forever. Googling ...
Yodi's user avatar
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Are mlr3 class weights applied to validation score calculations?

I have previously used mlr3 for imbalanced classification problems, and used PipeOpClassWeights to apply class weights to learners during training. This pipe op adds a column of observation weights to ...
AhmetZamanis's user avatar
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1 answer
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How Do I Perform Hyperparameter Optimization for a Non-Toy Dataset in R Using mlr3hyperband?

I have a dataset, let's call it "train.csv", train = na.omit(read_csv('train.csv')) that I want to use to train an XGBoost predictive model. Now under the example given by the mlr3hyperband ...
Abubakar Popoola's user avatar
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1 answer
87 views

Problem on Auto tune and custom resampling mlr3

I have some problems on my datas, I put again my native datas : structure(list(PatientID = c("P1", "P1", "P1", "P1", "P1", "P1", "P2&...
NDe's user avatar
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1 answer
65 views

Change the resampling of an auto_tuner in mlr3

I am using mlr3 and I wanted to ask if it is possible to change the resampling method of an exiting auto_tuner(). Example: library(mlr3verse) # Some existing auto_tuner learner = lrn("classif....
Markus's user avatar
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Use mlr3hyperband with sobol sampling in the base stage

I have read in the mlr3hyperband documentation that on can define custom samplers (based on paradox::Sampler) for the initial base stage of each bracket. Now I was wondering if one could use that to ...
Markus's user avatar
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120 views

Extract predictions from all modles that are part of the pipeline using R mlr3

Below, I have created mlr3 graph and trained it on sample dataset. I know how to create predictions for final ste (regression average), but is it possible to get predictions for models before ...
Mislav Sagovac's user avatar
1 vote
1 answer
125 views

Create a stack model with the package mlr3

I'm using the mlr3pipelines package to It define a pipeline object named "stack" which is used for stacking ensemble learning. However, I'm unable to find an alternative to the 'po' function,...
Programming Noob's user avatar
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38 views

Benchmarking mlr3 - build models that differ in included predictors?

I have data where the predictors have some natural grouping (some are questionnaire scores, some are biological variables). Is there any way to use the benchmarking in mlr3 to compare models based on ...
JacquieS's user avatar
0 votes
1 answer
79 views

knn Imputation for features with mlr3 pipelines; tune value for k with nested resampling

I have another question concerning mlr3 pipelines. In my dataset some values are missing, so what I have learned from reading the literature it is best to delete the cases with missing values on the ...
Hanna's user avatar
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