Questions tagged [mlr]

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

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15 views

Is it possible to subset a classification task in mlr keeping the positive/negative class ratio unchanged?

In order to make small tests on a large machine learning classification task in mlr, I would like to create small tasks first that maintain the positive/negative ratio of the original task. ...
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1answer
33 views

Cox model concordance value is different from c-index caculated by mlr

If I train a cox model using resampling with 5-fold cross validation in mlr, the value for Concordance that is output by printing the summary of the Cox model for each fold is different from the value ...
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1answer
21 views

MLR - Resampling of cox model

If I train a single Cox PH model in mlr, I can print a summary that shows the statistical significance of each predictor as shown below. But if I use resampling eg 5-fold cross validation, is there ...
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13 views

MLR: cforest learner throws error in resampling

I am getting the following error when using mlr to do resampling on a conditional inference forest: Error in Hmisc::rcorr.cens(-1 * y, s) : NA/NaN/Inf in foreign function call (arg 1) My code is ...
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1answer
31 views

R MLR package - Saving performance for each parameter

I am using the mlr package in R to run the KNN algorithm. I am using tuneParams to search for the optimal k. When I run tuneParams the output shows the performance for each value of k. How can I save ...
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28 views

reusable holdout in mlr

How can someone change the cross validation or holdout procedures in mlr so that before testing with the validation set, that same validation set is changed according to a procedure, namely the ...
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22 views

mlr: Define own Preprocessing Wrapper for Outlier Detection

I am struggling with defining a new preprocessing-Wrapper for Outlier Detection based on the given example in the mlr-tutorial: [https://mlr.mlr-org.com/articles/tutorial/preproc.html#preprocessing-...
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1answer
19 views

Meaning of alpha and beta parameters in function makeFeatSelControlSequential (MLR library in R)

For deterministic forward or backward search, I'm used to give thresholds for p-values linked to coefficients linked to individual features. In the documention of makeFeatSelControlSequential in R/...
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1answer
25 views

Order of preprocessing step in mlr package in R

Working with already implemented preprocessing Wrappers as well as own Wrappers in mlr, I am wondering in which order the preprocessing steps are computed for the following example? classif.lrn.net = ...
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1answer
24 views

Retrieve models from resample function in mlr

I would like to retrieve the binary classification models (i.e. selected features and coefficients) generated by resample function in MLR. Below, you can find my code sample. It seems to be located ...
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1answer
41 views

How to jointly use makeFeatSelWrapper and resample function in mlr

I'm fitting classification models for binary issues using MLR package in R. For each model, I perform a cross-validation with embedded feature selection using "selectFeatures" function. In output, I ...
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1answer
38 views

Get predictions on test sets in MLR

I'm fitting classification models for binary issues using MLR package in R. For each model, I perform a cross-validation with embedded feature selection using "selectFeatures" function and retrieve ...
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1answer
30 views

Extracting predictions from batchmark in r (mlr)

I conducted a batchmark and am having struggles to retrieve the predictions. After reducing the results with the following code res = reduceResultsDataTable() jt = getJobTable() I pulled the ...
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1answer
40 views

Predicting counts using mlr

I am using the learner regr.gbm to predict counts. Outside of mlr, using the gbm package directly, I use distribution = "poisson" and predict.gbm, using type = "response", returns predictions on the ...
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1answer
56 views

How many iterations for model-based optimization (in mlrMBO) are necessary?

I would like to use model-based optimization within the mlr-Package in R (mlrMBO) to tune my hyperparameters. How many iterations are recommended here? I have read that the number of necessary ...
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1answer
136 views

Using bit.names and bits.to.features arguments to makeFeatSelWrapper (mlr) to perform wrapper selection over groups of features

I would like to perform feature selection by a wrapper method on the iris data set using mlr package, however I would like to look only at groups of features associated with Petal and/or Sepal. So ...
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1answer
19 views

instantiateResampleInstance.CVDesc: too many folds for size

Working on parameter tuning an xgboost model, and ran into an interesting error in my implementation of mlr, which I believe caused by my resample instance due to the documentation here. the problem ...
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1answer
24 views

auc in mlr benchmark experiment for classification problem gives error (requires predict type to be: 'prob')

I am conducting a benchmark analysis using the mlr package and would like to use auc as my performance measure. I have specified predict.type = "prob" and am still getting the following error message: ...
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1answer
19 views

Fusing learners with preprocessing in mlr - what settings to use?

I am conducting a benchmark analysis comparing different learners (logistic regression, gradient boosting, random forest, extreme gradient boosting) with the mlr package. I understand that there are ...
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0answers
22 views

Interpreting/Explaining the prediction result

I used MLR package to create a model in R to predict the price using distance.( Linear regression model). on doing the performance metric check - I get the below output : mse 0.01985664 0. ...
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0answers
26 views

cost-sensitive multi-label classification using mlr package

Is there a way to perform a cost-sensitive multi-label classification with example-dependent costs using the mlr package? (not class-dependent costs! see: mlr tutorial) It seems to me the according ...
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1answer
61 views

Recursive feature elimination with mlr

It is possible to conduct a recursive feature elimination feature (rfe) with mlr ? I know this is possible with caret here but even if there is some documentation about feature selection with mlr, I ...
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30 views

Benchmark experiment using MLR: No correlation coefficients for LASSO (but for SVR and Random Forest)

I conducted a benchmark experiment using the mlr package in R. Among others I chose three correlation coefficients as my performance measures (spearmanrho, my.pearson, kendalltau). I am benchmarking ...
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1answer
19 views

Average Stacking in MLR over responses, when two base learners disagree

I was using the 'average' stacking method to stack two base learners in MLR. It looks something like this: stacked.lrns[[1]] = makeStackedLearner(base.lrns, ...
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22 views

Error in parameter tuning with surv.ranger

I want to fit a survival model, using random forest technique with ranger package. The data (df) in the code is example data, real data consist of about 1000 observation and 5 variables (including ...
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1answer
33 views

mlr / parallelMap: How to pass libPaths to workers when working with checkpoint?

This is basically the same question as this How to set .libPaths (checkpoint) on workers when running parallel computation in R, but now addressing parallelization of mlr model fits. I understand that ...
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0answers
20 views

Combining getOOBPreds with nested resampling and parameter tuning

In the package R::mlr I read from the tutorial that the getOOBPreds function that I can access the out-of-bag predictions from say a random forest model, but I cannot figure out how to use this in a ...
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80 views

Saving and Loading an mlr Model

I've been able to successfully generate a model to assist in my multilabel assignment using the mlr library using the following setup, scene.task = makeMultilabelTask(data = training.data, target = ...
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54 views

Information.Gain error for Random Forest with MLR Package in R

Below is the complete code which I m trying to execute with MLR Library in R for a Random forest to check "information.gain" and "chi-square" values. My DV is sales "quantity" which is continuous. &...
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1answer
121 views

Random forest cutoff and accuracy metrics for binary classification in R

I am training a random forest classifier in R using mlr for binary classification. My classes are well balanced. 0 1 0.5162791 0.4837209 I've tuned my various model in various ways ...
2
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1answer
165 views

R: Plotting importance feature using FeatureImp$new

Here is the code library(mlr) library(xgboost) library(iml) data("iris") tsk = makeClassifTask(data = iris, target = "Species") lrn = makeLearner("classif.xgboost",predict.type = "prob") mod = mlr:::...
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0answers
29 views

MLR - Hyperparameter tuning for stackedlearner

I'd like to use tuneparams function for parameter search on a stackedlearner. I would also like to use the benchmark function to benchmark against different combinations of base learners. I've tried ...
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54 views

r- 'regr.xgboost' does not support factor input

I keep getting an error that regr.xgboost does not support factor input, I am trying to use the Hyper-paramter to determine parameter values for the train model. train <- createDummyFeatures(train)...
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1answer
41 views

R OOP change the name of a slot

I'm using MLR package and I stumbled on a problem with an S4 object. More specifically it's the slot name that causes the trouble. I'm looking for a way to change the slot's name, not the value. Here'...
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1answer
58 views

mlr: Tune model parameters with validation set

Just switched to mlr for my machine learning workflow. I am wondering if it is possible to tune hyperparameters using a separate validation set. From my minimum understanding, makeResampleDesc and ...
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1answer
70 views

MLR package: generateFilterValuesData chi.squared and information.gain

I am experimenting with the mlr package and would like to get chi-squared and information-gain values. library(mlr) library(FSelector) data(PimaIndiansDiabetes) indi <- sample(1:nrow(...
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1answer
28 views

Extracing CV results of feature subsets in mlr

The mlr package provides the opportunity to fuse a learner with a random feature subset. Uncorrelated subsets could be useful to make a voting ensemble/averaging ensemble. This might be interesting if ...
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0answers
82 views

Error in multilabel classification using the mlr package

I am trying to do a multilabel text classification, based on the tutorial available here: https://mlr-org.github.io/Multilabel-Classification-with-mlr/ I am getting this error: Error in ...
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2answers
75 views

mlr - How to see the direction (positive or negative) features influencing the target variable

Let's start with an simple linear regression output (copied from here), Call: lm(formula = a1 ~ ., data = clean.algae[, 1:12]) Residuals: Min 1Q Median 3Q Max -37.679 -11.893 -...
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2answers
235 views

mlr: why does reproducibility of hyperparameter tuning fail using parallelization?

I use code based on Quickstart example in mlr cheatsheet. I added parallelization and tried to tune parameters several times. Question: Why does reproducibility fail (why aren't the results identical)...
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1answer
158 views

Set hyperparameters to a learner in mlr after parameter tuning

I'm building a classification task in R using the mlr package, to tune the hyperparameters I'm using a validation set, and one of these parameters is the percentage of variables used based on ...
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0answers
105 views

how to solve mlr, rose and caret errors in r

I'm working on is unbalanced, so I'm trying to balance the dataset and for this purpose I tried various techniques such as caret, mlr, ROSE but got error? str(mydata) Classes ‘data.table’ and 'data....
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196 views

Passing parameters to the predict function in mlr for xgboost

The latest version of xgboost (0.7) allows for the interpretation of predictions by setting the predcontrib parameter to TRUE. I tried to modify the default xgboost learner in order to get these ...
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2answers
180 views

Hyperparameter tuning using MLR package

I want to tune hyperparameters for random forest using the MLR package. I have a few questions: 1) How do I decide which of the parameters I should tune? I heard something about keeping num.trees as ...
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1answer
100 views

How to predict the brier score for a cox regression?

I am using the mlr package to do machine learning in R. I am using a the cvcoxboost algorithmn on a dataset and would like to calculate the brier score of the output. This should work, since ...
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2answers
215 views

Nested resampling + LASSO (regr.cvglment) using mlr

I am trying to conduct nested resampling with 10 CVs for the inner and 10 CVs for the outer loop using regr.cvglment. Mlr provides the code using a wrapper function (https://mlr-org.github.io/mlr/...
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0answers
48 views

Can ensemble classifiers underperform the best single classifier?

I have recently run an ensemble classifier in MLR (R) of a multicenter data set. I noticed that the ensemble over three classifiers (that were trained on different data modalities) was worse than the ...
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1answer
21 views

could not find function “generateFunctionalANOVAData”

use the mlr 2.12.1 to do the interaction analysis just run the example code on the http://mlr-org.github.io/exploring-learner-predictions-with-partial-dependence/ but return the error as follows: ...
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0answers
28 views

How to use “else”, “if, ”for“, ”while“, and ”next" and columnnames in R in a DocumentTermMatrix with mlr package

I'm building a machine learning model on a DocumentTermMatrix in R, using the mlr package. This means that tokenising some text may result in these words as column names: "else", "if, "for", "while", ...
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1answer
242 views

How to plot a decision tree horizontally in R Markdown?

In R Markdown, I would like to plot a decision tree horizontally, so that it fits better the entire PDF page. This code plots it vertically: ```{r, message=FALSE, warning = FALSE, echo=FALSE, cache = ...