Questions tagged [mlr]

mlr is a machine learning package for R that provides an interface to many other packages.

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Tune threshold in hyperparameter tuning is giving worse results in MLR [closed]

First, I tried not tuning the hyperparameters without setting tune.threshold=TRUE. lrner1 = makeLearner(learner, predict.type = "prob" ) ctrl = makeTuneControlRandom(maxit = 10) lrn2 = ...
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Error while parallelizing mlr::resample function in R

I'm getting the error: Error in parallelMap(doResampleIteration, seq_len(rin$desc$iters), level = "mlr.resample", : Level 'mlr.resample' not registered while running this function: train....
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1 answer
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Set hyper-parameters to tune with makeParamSet

I am running random forest classification in R with mlr package. I would like to tune the following hyper-parameters: number of trees, number of variables to consider at each split, terminal node size ...
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how to fill order arguments in multilabel in R - MLR package

I want to change the order in Classifier Chains multilabel classification makeMultilabelClassifierChainsWrapper(learner, order = NULL) how to fill order arguments ? except NULL
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1 answer
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Why won't MLR package create the single classification task for my data?

I am having a similar issue as this person , but the link to the tutorial they reference seems broken and my problem is more related to a single classifying function, whereas most other posts on this ...
1 vote
1 answer
40 views

Is there an R function to combine the results of 2 training data sets?

I have a 2.2 Million row dataset. RandomForest throws an error if I have a training data set with more than 1 000 000 rows. So I split the data sets in two pieces and the models learn seperately. How ...
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40 views

What is happening in this R code? mlr learners

As part of a course we were given an example of a predictive maintenance (or maybe survival?) analysis. The first part of the code was all about data preprocessing which I understood, I´m just not ...
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0 answers
65 views

Apply the Random Forest Algorithm to a Dataset containing missing values

I would like to apply the Random Forest algorithm from the package mlr to a data set. This is the Zoo dataset from the package mlbench. data(Zoo, package = "mlbench") zooTib <- as_tibble(...
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1 vote
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Difference in Computation Speed and Results Between MLR and MLR3

I don't get similar results when I use the same data and models using mlr and mlr3. Also I find mlr runs at least 20-fold faster. I used lung data from survival and I was able to replicate the ...
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53 views

How to Get Optimal Models From Benchmark For Prediction on Test Data

This question is applicable to both mlr and mlr3 but I only included the code for mlr since I have it handy. As an example, when we have 3 folds outer CV, we get 3 sets of optimal hyperparameters (...
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1 answer
348 views

How to manually set the range of coefficients on sklearn

I am trying to fit a regression equation of the following type in sklearn y=ax+bx^2+cx^3+dx^5....... I have a condition on the range of a i.e a should be between amin and amax. Is there a way to do it?...
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1 answer
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How to Create Parametric Survival Learner for MLR in R

I am following the instructions (https://mlr.mlr-org.com/articles/tutorial/create_learner.html) to create a parametric survival learner to use with MLR. My code is below. When I try to make the ...
1 vote
1 answer
25 views

Can a resample result object be converted to BMR result object in MLR?

I want to convert resample result object to BMR result object and combine it with previous BMR result object? This is possible in MLR3 (as_benchmark_result() and $cobmine()) but not sure if it is also ...
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1 answer
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Is there a way to add a Cutoff Parameter to makeParamSet() for 'classif.rpart' trees in the mlr package?

When making a parameter set for the randomForest model, I was able to use the following code to include cutoff values as parameters that are checked when doing a random search through the parameter ...
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Is there a way to apply the makeResampleDesc() function to imbalanced data for Hyperparameter Tuning in the mlr package?

I am working with a dataset in which over 95% of the outcome variable values are zeros and less than 5% of them are ones. I am wondering how to apply the makeResampleDesc() function to perform 5-fold ...
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1 answer
138 views

Machine learning in R: Using MLR package survival filters in MLR3

I want to run a number of machine learning algorithms with different feature selection methods on survival data using the MLR3 package. For that, I am using the Benchmark() function of MLR3. ...
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How does the mlrMBO package optimize hyperparameters when no objective function is specified?

I am still very new to the mlrMBO package and hyperparameter tuning in general, so I apologize for the ignorance here. Previously I was using the makeTuneControlGrid() function for grid search ...
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-1 votes
1 answer
168 views

How to construct a learner or random forest regression in R [closed]

Example scripts for random forest using the mlr package are for classification problems. I have a random forest regression model for water contamination. I could classify the continuous target ...
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How do I display other accuracy metrics when optimizing for one in particular using the mlrMBO package?

When using grid search using the mlr package for hyperparameter tuning, I am able to easily display all accuracy measures using measures = list(tpr, auc, fnr,mmce,tnr), however, when using the same ...
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3 votes
1 answer
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R Error: unused argument (measures = list("f1", FALSE, etc)

I am trying to use the "mlr" library in R and the "c50" algorithm on the iris dataset (using the F1 score as the metric) : library(mlr) library(C50) data(iris) zooTask <- ...
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Lack of consistency in bayesian optimization of xgboost's hyperparameters using mlrmbo

I am trying to optimize the hyperparameters in an xgboost model using Bayesian optimization (mlrmbo R package). The code below seem to produce reasonable results, but the problem I keep facing is that ...
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Problem loading mlr package in R due to memory limit

I am trying to reproduce the example of Spatial interpolation / prediction using Ensemble Machine Learning for which I need to use the "mlr" package I have installed it and everything is ...
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1 answer
56 views

How to invert factor.levels of learner in R (mlr), so the output is the same order between different questions

thank you for supporting me with my question! I'm running the code for different questions (e.g "Yellow"/"notYellow", "Blue"/"NotBlue"...). In the end I would ...
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1 answer
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Why do I have more observations in my Multiple Linear Regression than I do rows in my dataframe in R?

I'm running an MLR in R examining the effects of 4 explanatory variables (Temperature, Dissolved Oxygen, Practical Salinity, and Oxidative Reductive Potential) on 1 response variable (Shell Roundness):...
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1 answer
244 views

AdaBoost algorithm Hyperparameter Tuning MLR

Im trying to tune the hyperparameters of the AdaBoost algorithm. The goal is to train a model with a multiclass classification variable as target. Im working with the MLR package in R. However, MLR ...
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1 answer
67 views

Hyperparameter tuning; what parameter space for ML algorithms (rf, adaboost, xgboost)

Im trying to tune the hyperparameters of several ML algorithms (rf, adaboost and xgboost) to train a model with a multiclass classification variable as target. Im working with the MLR package in R. ...
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78 views

The predict() function is throwing an error even though model columns and data are identical

I currently have a model already trained and saved in MLR. I am trying to produce predictions on new data but it is not working properly and throwing this error: Error in predict.xgb.Booster(m, ...
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0 votes
1 answer
141 views

How to use mlrMBO with mlr for hyperparameter optimisation and tuning

Im trying to train ML algorithms (rf, adaboost, xgboost) in R on a dataset where the target is multiclass classification. For hyperparameter tuning I use the MLR package. My goal of the code below is ...
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233 views

XGBoost hyper tuned parameters give a lower accuracy compared to the default model

Problem: XGBoost hyper tuned parameters give a lower accuracy compared to the default model. I have a question regarding the XGBoost algorithm. The goal is to predict a multiclass classification ...
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2 votes
0 answers
111 views

mlr3 Error: Cannot combine stratification with grouping

Code Example: # BLOCKING by "userID" task$col_roles$group = "userID" # Remove "userID" from features task$col_roles$feature = setdiff(task$col_roles$feature, "...
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1 vote
0 answers
265 views

Error in makeRegrTask: Assertion on 'id' failed: Must be of type 'string', not 'tbl_df/tbl/data.frame'

I have this strange error popping up when defining my mlr Random Forest (regression) Task. I cannot find anything online about this type of error. The error is: era.af.Al_Task <- era.af.Al_Tib %>...
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1 answer
77 views

Tuning hyperparameters in mlr does not produce sensible results?

I am trying to tune the hyperparameters in mlr using the tuneParams function. However, I can't make sense of the results it is giving me (or else Im using it incorrectly). For example, if I create ...
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0 votes
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276 views

Feature names stored in `object` and `newdata` are different! using mlr package

I am trying to make a multilabel classification model for XGBoost. I have one that works for RF, but when I try this code below for XGBoost I get the error: "Error in predict.xgb.Booster(m, ...
1 vote
0 answers
38 views

How to tune parameters using h2o DL with mlr?

I am trying to change some of the parameters for a h2o deep learner using mlr. Similar questions have been asked here and here. However, I'm still confused as to how to change some specific parameters....
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44 views

Combining Multi Class Wrapper with Sampling Wrappers in mlr to get subproblem specific sampling

I face an imbalanced multi-class classification problem I am working on using the mlr package: label samples A 232 B 657 C 221 D 154 I would like to use different machine learning algorithms to ...
0 votes
1 answer
184 views

How to use tune parameters for multilabel classification in mlr?

problem I am trying to run a multilabel classification in r using mlr package. I used https://www.rdocumentation.org/packages/mlr/versions/2.19.0/topics/makeMultilabelClassifierChainsWrapper to ...
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0 answers
67 views

Warning "Unknown or uninitialised column: `ntree`." when trying to pass hyperparameters to a learner with package mlr

problem I want to do a grid search with different hyperparameters that are provided by a self-made grid. But when I am running the code I get a warning: "Unknown or uninitialised column: ntree.&...
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0 answers
182 views

How do I fix error in resample function in R

When I run the code below, I get an error: Error in resample(learner = knn, task = diabestertask, resampling = holdout, : Assertion on 'resampling' failed: Must inherit from class 'ResampleInstance',...
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1 answer
65 views

R: plotting results with the ml3 library

I am using the R programming language. I am trying to replicate the plots from the following stackoverflow post using the "mlr" library: R: multiplot for plotLearnerPrediction ggplot objects ...
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1 vote
1 answer
190 views

Setting the parameters for SVM Classification in R

Description: For a data set, I would like to apply SVM by using radial basis function (RBF) kernel with Weston, Watkins native multi-class. The rbf kernel parameter sigma must be tuned and I want to ...
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168 views

Relative variable importance from CoxBoost

I am fitting time-to-event survival data using surv.CoxBoost in the mlr package. My question: is there any way to get relative importance for the variables in the fitted model? I have seen this post ...
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2 answers
175 views

Different runtime for svm and ranger using the same task

I've bench-marked the runtime of the two learners and also took two screenshots of the {htop} while {ranger} and {svm} was training to make my point more clearer. As stated in the title of this post, ...
0 votes
1 answer
156 views

Parallelization on resampling within a stacked learner (ensemble/stack of classification learners) doesn't work

The below code works fine, however, I am interested to run it in parallel. I have tried different plans within future and future.apply but couldn't managed. Any help appreciated. I am running on ...
0 votes
1 answer
152 views

How can I use packages (e.g. glmnet) within mlr in R?

I want to reduce features and wanted to use an elastic net regression. Therefore, I wanted to use the glmnet-package and its built-in functions like cv.glment and plot the results etc. The problem is ...
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196 views

R: Wrap parts of environment with carrier::crate for prediction of new data

I want to deploy a machine learning model that was created using mlr. Therefor I tried wrapping the learned model's predictor applying carrier::crate() function: predictor <- carrier::crate( ...
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0 votes
2 answers
86 views

In MLR, How to set Logical Hyperparameter to either TRUE or FALSE only?

I have this dataset to try to make a classification task using classif.ada library(mlr) data("HouseVotes84") #Using HouseVotes84 as Classification Task Dataset and mtcars as Regression Task ...
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Extract Elastic Net penalized logistic regression Coefficients from mlr

I have read a few other answers but none have worked for me in extracting the penalized logistic regression coefficients from my final trained model. penlrntune = makeLearner("classif.glmnet"...
0 votes
1 answer
120 views

Error with SVM hyperparameter tuning in mlrMBO Bayesian optimization

I am trying to optimize an SVM for a classification task, which has worked for many other models I've tried this process on. Yet, when I used an SVM in my model based optimization function it returns ...
0 votes
1 answer
418 views

MLR - calculating feature importance for bagged, boosted trees (XGBoost)

Good morning, I have a question about calculating feature importance for bagged and boosted regression tree models with MLR package in R. I am using XGBOOST to make predictions and i'm using bagging ...
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1 answer
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Imputation using MICE in mlr

I am trying to write my own imputation method in mlr using makeImputeMethod to perform multiple imputation by chained equations with the mice package in R. My imputeMice() method runs to completion ...
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