new

How much are your skills worth?

Find out how much developers like you are making with our Salary Calculator, now updated with 2018 Developer Survey data.

Compare salary

Questions tagged [mlr]

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

0
votes
0answers
15 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 ...
1
vote
0answers
13 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 ...
0
votes
0answers
29 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 = ...
0
votes
0answers
38 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. &...
1
vote
1answer
34 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
votes
1answer
83 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:::...
0
votes
0answers
21 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 ...
0
votes
0answers
43 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)...
0
votes
1answer
36 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'...
0
votes
1answer
34 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 ...
0
votes
1answer
32 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(...
0
votes
1answer
21 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 ...
0
votes
0answers
45 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 ...
0
votes
2answers
48 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 -...
1
vote
2answers
94 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)...
0
votes
1answer
91 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 ...
0
votes
0answers
58 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....
0
votes
0answers
79 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 ...
1
vote
2answers
86 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 ...
0
votes
1answer
61 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 ...
2
votes
2answers
81 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/...
1
vote
0answers
40 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 ...
0
votes
1answer
16 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: ...
0
votes
0answers
26 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", ...
1
vote
1answer
109 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 = ...
0
votes
0answers
28 views

Multiple Linear Regression with several variables (Using R)

In a multiple linear regression problem, let's say there are 10 independent AND quantitative variables. and 1 dependent variable . If we were to fit a model a model using multiple regression, is it ...
2
votes
1answer
63 views

MLR and randomForestSRC: Incoherence between computers

Our team run the following code to create a random forest model and train it: # Define a cross validation strategy rdesc <- makeResampleDesc("CV", iters = cv_fold, predict = "both") # Define a (...
1
vote
0answers
39 views

R-mlr: How to pass extra parameters to predict while using resampling?

Is there a way to pass parameters to the predict call when using resampling in mlr? E.g. predict.coxph has an extra parameter "reference", which i want to change when using resampling, but extra-...
0
votes
1answer
34 views

Passing data type argument for feature selection in mlr package

I have just started to experiment with mlr package and I love the ease of training models and all other things that it can do. However, I am stuck at the feature selection section which is the last ...
0
votes
2answers
79 views

R - MLR - randomForestSRC - model size enormous, prediction times very slow - how to reduce both?

Having trained a classification randomForestSRC (https://www.rdocumentation.org/packages/randomForestSRC/versions/2.6.0) using MLR, the model size is many GBs and the prediction time per instance is ...
0
votes
0answers
76 views

mlr error in randomForestSRC after first run

I have installed Java 9.0.4 and all the relevant R libraries on macOS 10.13.4 to run the following script in R 3.5.0 (invoked in RStudio 1.1.423): options("java.home"="/Library/Java/...
1
vote
0answers
51 views

Survival Analysis with time-varying covariates in R with the mlr package

is it possible to implement time-varying covariates in survival analysis with the mlr package like the method described in https://cran.r-project.org/web/packages/survival/vignettes/timedep.pdf?
0
votes
0answers
177 views

Using mlr package for 10-fold cross-validation on svyglm

I am an R newbie. I am using R to explore how I can do a 10-fold cross-validation on svyglm for machine learning. None of the popular R packages such as caret, mlr support svyglm. I want to use mlr's ...
0
votes
1answer
70 views

mlr: Extract penalized logistic regression coefficients

When using mlr, the parameters of the fitted model are (according to the documentation https://mlr-org.github.io/mlr-tutorial/release/html/train/index.html) accessed with getLearnerModel(). However, ...
1
vote
1answer
112 views

MLR - getBMRModels - How to access each model from the benchmark result

When running a Benchmark Experiment on multiple algorithms, with tuning wrappers etc. there will be multiple models returned for each algorithm. What is the canonical way, or an effective way, of ...
0
votes
1answer
221 views

Plotting Partial Dependence Plots in R for binary target (mlr)

I have a problem to get partial dependence plots with mlr to work properly for me. Somehow not the probability is plottet, but just the class label. I suspect, that the target may be lost during the ...
2
votes
1answer
53 views

MLR: How can I wrap the selection of specified features around the learner?

I would like to compare simple logistic regressions models where each model considers a specified set of features only. I would like to perform comparisons of these regression models on resamples of ...
0
votes
0answers
52 views

mlr impute seem to take forever & hangs

I am trying to finish a tutorial problem on a multi-categorical loan prediction using mlr,rpart & randomforest package. I did preprocess the data for NA & missing data yet when i reach the ...
1
vote
1answer
95 views

Using MSE to split decision tree on MLR

I'm trying to split my decision tree in MLR using MSE. Here's my code library(mlr) cl = "classif.rpart" getParamSet(cl) learner = makeLearner(cl = cl , predict.type = "prob" ...
0
votes
1answer
657 views

R: Using MLR (or caret or…) to tune parameters for XGBoost

Having walked through several tutorials, I have managed to make a script that successfully uses XGBoost to predict categorial prices on the Boston housing dataset. However, I cannot successfully ...
1
vote
0answers
161 views

R library(FSelector) failed to run due to java error

I have been trying to get FSelector from MLR package working recently, but have been running into the same java issue on my mac: Error: package or namespace load failed for ‘FSelector’: .onLoad ...
0
votes
1answer
453 views

unused argument error R

I am trying to impute missing values using mlr library. Getting following error. Error in impute(data = train_1, target = "target", classes = list(integer = imputeMedian(), : unused argument (...
2
votes
0answers
512 views

R - mlr: Is there a easy way to get the variable importance of tuned support vector machine models in nested resampling (spatial)?

I am trying to get the variable importance for all predictors (or variables, or features) of a tuned support vector machine (svm) model using e1071::svm through the mlr-package in R. But I am not sure,...
2
votes
1answer
148 views

MLR - Benchmark Experiment using nested resampling. How to access the inner resampling tuning results?

I am using Benchmark Experiments on a task. I am using a nested re-sampling strategy (https://mlr-org.github.io/mlr-tutorial/devel/html/nested_resampling/index.html). I create a learner using an ...
0
votes
0answers
260 views

R package mlr Multilabel Text Classification: how to classify new data

I found this code in a tutorial about multilabel classification with package mlr. library("mlr") yeast = getTaskData(yeast.task) labels = colnames(yeast)[1:14] yeast.task = makeMultilabelTask(id = "...
0
votes
1answer
246 views

R MLR package: Stop makeClassifTask from dropping empty factor levels for testing set

I have a binary classification problem involving categorical predictor variables Var1 & Var2: > head(traindata) # ID Var1 Var2 response # 1 101 -2 0 0 # 2 201 0 -1 1 # 3 ...
2
votes
1answer
255 views

R package mlr exhausts memory with multicore

I am trying to run a reproducible example with the mlr R package in parallel, for which I have found the solution of using parallelStartMulticore (link). The project runs with packrat as well. The ...
1
vote
0answers
381 views

Text Categorization by uisng mlr package in R

I need to train a model which would perform multilabel multiclass categorization on text data. Currently, i'm using mlr package in R. But unluckily I didn't proceed further because of the error I got ...
0
votes
1answer
65 views

How to handle with dummy features

I am sorry if the question came up earlier, but I found nothing like that. I have a problem with the predictive models. I would like to build xgboost and random forest. The package I use requires that ...
1
vote
1answer
58 views

Can we use a pre-defined column for CV (resampling) in mlr?

To conduct a cross-validation (resampling) in mlr R package, normally we need to call makeResampleDesc function to specify the methods and folds. My questions are: Would it be possible to use a pre-...