Questions tagged [mlr]

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

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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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2answers
49 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, ...
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1answer
64 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 ...
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20 views

How to retain the observation ID in mlr classification task

I have a classification task that I am using to classify new data. train$ID <- as.character(train$ID) task = makeClassifTask(data = train, target = "MIS") mod = train("classif.ada&...
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13 views

How to add interaction terms into formula in mlr (R)?

I have a dataset where there the target is a binary variable and there are around 200 predicators. I would like to add 5-6 pairs of interaction terms to the formular. In lm, glm, glmnet I can do it by ...
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1answer
68 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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0answers
33 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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2answers
32 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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0answers
39 views

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"...
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1answer
47 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 ...
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1answer
118 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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1answer
69 views

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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1answer
87 views

How to get the vip package to work with an mlr model in R?

I'm not sure what I'm doing wrong here... but I'm trying to use an mlr package created model with the vip package in R. Specifically, im trying to use the vint function from the vip package to ...
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30 views

How to integrate a custom learner (not available in any R package) in mlr pipeline

I have created following learner using mlr in R makeRLearner.classif.dt_c4_5 = function() { makeRLearnerClassif( cl = "classif.dt_c4_5", package = "dtc45", par.set = makeParamSet( ...
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19 views

mlrCPO - Task conversion TOCPO

I would like to build a CPO for the mlr::makeClassificationViaRegression wrapper. The wrapper builds regression models that predict for the positive class whether a particular example belongs to it (1)...
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1answer
90 views

Error with mlrMBO rBayesianOptimization of R keras model through caret

I am trying to implement a Multi-layer Perceptron through the Keras package (and tensorflow) to run a fast MLP. I want to use Bayesian Optimization to train the algorithm's hyperparameters. I get an ...
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45 views

How to drop variables from a model created from the mlr package in R?

This is somewhat similar to the question I asked here. However, that question as zero answers and I think this question might be more fruitful in getting a response. What I am trying to do is remove ...
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1answer
33 views

Prediction with knn model from mlr library

How to make predictions with new data? I was only able to use the predict() function with the dataset. If I have x = 62.5, how do I predict the value of y? library(mlr) library(tidyverse) x <- c(...
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0answers
36 views

How to remove a variable from a model using iml package in R?

Im wondering if it's possible to drop variables from a model created from the iml package in R? The code below ultimately doesn't work but it should outline what im trying to achieve.To begin, im ...
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1answer
252 views

How to interpret the variable importance plot produced via randomForestSRC::vimp?

This is a question directly related to the answer provided here: MLR random forest multi label get feature importance To summarize, the question is about producing a variable importance plot for a ...
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1answer
196 views

MLR random forest multi label get feature importance

I am using multilabel.randomForestSRC learner from mlr package for a multi-label classification problem I would like to return the variables importances The getFeatureImportance function return ...
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1answer
42 views

How to build XML file with package PMML using mlr?

I want to convert a logistic model built by the mlr-package directly into a XML-file using the package pmml. The problem is that the model.learner built by the mlr wrapper doesn't include the model ...
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1answer
23 views

mlr makeModelMultiplexerParamSet with named ParamSets

The docs for makeModelMultiplexerParamSet the the mlr R package state that named ParamSets can be provided to disambiguate which parameters go to which learner, but the docs don't include an example ...
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1answer
40 views

mlr Package in R, makeLearner mtry default value

What is the mtry default value in function makeLearner() from mlr package? If I don't specify my mtry parameter like the code below, what is the mtry default value? Thank you! I cannot really find ...
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1answer
11 views

Merge multiple crossvalidations (same tasks, same learners)

I have several already calculated multiple benchmark results (10fold CV each) in which the same learners were applied to the same tasks. I would like to merge these in the sense of a 5-fold repeated ...
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1answer
59 views

Custom performance measure when building models with mlr-package

I have just made the switch from caret to mlr for a specific problem I am working on at the moment. I am wondering if anyone here is familiar with specifying custom performance measures within the ...
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0answers
150 views

How do I tune a posterior probability threshold value for a binary classifier using more than one performance measure with the mlr package in R?

The following link provided me with a greater understanding of incorporating ordinary cost in my binary classification model: https://mlr.mlr-org.com/articles/tutorial/cost_sensitive_classif.html ...
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0answers
24 views

friedmanTestBMR using one classifier with multitasks - mlr

I have run a benchmark experiment with several tasks, containing different subsets of the data, with one classifier (random forest from the package ranger). Now I would like to compare on significance ...
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0answers
35 views

residuals plot using mlr package in R regression

I am using mlr package to predict a continuous response. I used the code provided in the link below to fit my model. https://www.kaggle.com/xanderhorn/train-r-ml-models-efficiently-with-mlr My ...
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30 views

MLR Package R - Confidence Intervals and store Imputation

The Reviewer of my manuscript recommended splitting my healthcare data in the training/test set. On the training set, I should use a nested wrapper by amputating and filtering my variables (chi ...
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56 views

fail during optimization via cross validation with XGBoost

I run a random search cross validation for the XGboost regression via mlr package. My setup: library('mlr') library('xgboost') train.task <- makeRegrTask(data = train_data, target = "target") ...
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1answer
2k views

error : argument “x” is missing, with no default?

As im very new to XGBoost, I am trying to tune the parameters using mlr library and model but after using setHayperPars() learning using train() throws an error (in particular when i run xgmodel line):...
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1answer
47 views

How to view all k neighbors when performing knn with the mir package?

I'm using the mlr package for knn (both for classification and regression problems), e.g.: knnTask <- makeClassifTask(data = df_train, target = "CLASS") knn <- makeLearner("classif.knn", par....
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1answer
471 views

is there a way to set the “base margin” for XgBoost in the MLR framework?

I am trying to fit an XgBoost model within the MLR framework. While the framework is fairly well documented, there are some specifics of the XgBoost library that I cannot replicate within MLR, one in ...
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0answers
89 views

feature importance from autoxgboost models

I have models that are auto-tuned using autoxgboost which uses mlr as well and would you please advise how i can use the getFeatureImportance on the trained model? system.time(tuned.labeled....
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22 views

mlr - issues tuning classif.ctree

I am trying to tune classif.ctree in a nested cross-vaildation, maximizing AUC. I get an error which to me seems to suggest that the only tuning parameter allowed for classif.ctree is ntree. This ...
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1answer
85 views

R mlr - How does tuneThreshold work to tune the prediction threshold?

This is a cross-post from Cross Validated. I haven't had any luck posting questions related to the mlr package there so I thought I would try here. I would like to tune the threshold for the ...
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0answers
29 views

When carrying out CV in mlr: Error in x$clone() : attempt to apply non-function

I am attempting to carry out repeated cross validation of a random forest model using mlr. I understand that this is a syntax error, but I just cannot work out what part of my syntax is wrong, as I ...
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0answers
57 views

Add stratification in surv.coxph for mlr library? (R)

I'm unable to add strata() anywhere in the formula when training a Cox regression using mlr's surv.coxph Here's a rough example using lung dataset from survival package. I've arbitrarily chosen sex ...
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1answer
213 views

R, iml, mlr. Feature Importance always returns 1 for every feature

I'm doing something with the mlr framework that causes FeatureImp to return 1 for every feature and I can't put my finger on it. Here's an exemple: library(caret) #> Carregando pacotes exigidos: ...
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0answers
112 views

Is there a way to reduce the weight of a certain attribute/variable in XGBoost?

I'm using the mlr package and trying to build an XGBoost model in R studio on the following dataset: return age diff_in_days item_odds picky_users 0 50.75877 ...
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0answers
104 views

Error: $ operator is invalid for atomic vectors in using MLR to predict a SVM model

I encountered this error message while I used prediction after training. Anyone knows where I went wrong? # Create train and test tasks trainTask <- makeClassifTask(data = data.train, target = "...
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1answer
66 views

Get access to regression train model

I got an exercise, where I need to train a linear regression model and get some information about the model: linear relationship between my chosen variable and the other variables which variables are ...
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1answer
59 views

What will the inner tuning learner return in nested cv in MLR?

In MLR there is a method to implement the nested cross validation. In nested cv, the inner loop is used to select the best tuning parameters and the outer loop is used to evaluate the model ...
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2answers
46 views

How do the aggregation methods aggregate performance metrics in MLR?

In MLR R package, there are methods to aggregate the parameter tuning model performance metrics, like train.mean, train.sd, test.mean, test.sd. I'm wondering how the aggregation process was done. From ...
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1answer
42 views

Is there any function to make complex learner in MLR

I'm currently learning the MLR package. MLR provide function to enhance the power of base learner. Like makePreprocWrapperCaret for data preprocessing, makeFilterWrapperfor feature selection. I'm ...
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1answer
49 views

MLR: How exactly is the process when using sequential optimization in nested resampling?

This is a questions of understanding. Suppose I want to do nested cross-validation (e.g. outer:5 x inner:4) and use sequential optimization to find the best set of parameters. Tuning parameters ...
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1answer
53 views

getResamplingIndices from resampling used in benchmark experiment - mlr

I am using nested cross-validation in a benchmark experiment. I would like to retrieve the indices of the instances used for each outer loop. I am aware there is a function getResamplingIndices() ...
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1answer
96 views

How to see intermediate results from tuning in mlr in parallel?

Is it possible to see results for tuning rounds when using mlr and parallelMap and parallelizing at the mlr.tuneParams level? When I tune in serial, I see the results (hyperparameters, measures) in ...
2
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1answer
176 views

R-MLR : tuning hyper parameters using ' makeTuneControlRandom ' for a wrapped learner

Following my previous question and recommendations addressed in its comments, I was trying to find a proper value for the maxit argument of the makeTuneControlRandom function so that when I shrink the ...

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