I trained a random forest using caret + ranger.

fit <- train(
    y ~ x1 + x2
    ,data = total_set
    ,method = "ranger"
    ,trControl = trainControl(method="cv", number = 5, allowParallel = TRUE, verbose = TRUE)
    ,tuneGrid = expand.grid(mtry = c(4,5,6))
    ,importance = 'impurity'

Now I'd like to see the importance of variables. However, none of these work :

> importance(fit)
Error in UseMethod("importance") : no applicable method for 'importance' applied to an object of class "c('train', 'train.formula')"
> fit$variable.importance
> fit$importance

> fit
Random Forest 

217380 samples
    32 predictors

No pre-processing
Resampling: Cross-Validated (5 fold) 
Summary of sample sizes: 173904, 173904, 173904, 173904, 173904 
Resampling results across tuning parameters:

  mtry  RMSE        Rsquared 
  4     0.03640464  0.5378731
  5     0.03645528  0.5366478
  6     0.03651451  0.5352838

RMSE was used to select the optimal model using  the smallest value.
The final value used for the model was mtry = 4. 

Any idea if & how I can get it ?


3 Answers 3


varImp(fit) will get it for you.

To figure that out, I looked at names(fit), which led me to names(fit$modelInfo) - then you'll see varImp as one of the options.

  • 10
    Yeah, I found it too in the meantime by diving into caret's doc. Thank you for that useful method to find information, though ! It turns out varImp() is the way to get variable importance for most models trained with caret's train(). Note to future users though : I'm not 100% certain and don't have the time to check, but it seems it's necessary to have importance = 'impurity' (I guess importance = 'permutation' would work too) passed as parameter in train() to be able to use varImp(). May 17, 2016 at 16:17
  • 10
    Another note : it seems that if you train your model with ranger but without caret, then importance(fit) would be the right way to get variable importance. As above, I think the parameter importance = 'impurity' (or 'permutation') needs to be in train() May 17, 2016 at 16:22
  • 1
    Strange it's not working for me. No importance values available... hmmm
    – Hack-R
    Jun 22, 2017 at 23:15
  • 1
    this doesn't work for me. The function exists but it returns no importance values available? Nov 13, 2017 at 7:26
  • 10
    Just to be clear, the default for ranger is to not compute importance. You must explicitly specify importance = 'impurity' or importance = 'permutation' for any of these methods to work, even if you are using train.
    – John M
    Apr 16, 2018 at 15:51

according to @fmalaussena

ctrl <- trainControl(method = 'cv', 
                     number = 10,
                     classProbs = TRUE,
                     savePredictions = TRUE,
                     verboseIter = TRUE)

rfFit <- train(Species ~ ., 
               data = iris, 
               method = "ranger",
               importance = "permutation", #***
               trControl = ctrl,
               verbose = T)

You can pass either "permutation" or "impurity" to argument importance. The description for both value can be found here: https://alexisperrier.com/datascience/2015/08/27/feature-importance-random-forests-gini-accuracy.html

  • 1
    Hi, unfortunately, the link is dead by now. Please consider a replacement link
    – saQuist
    Nov 27, 2023 at 9:52

For 'ranger' package you could call an importance with


As a side note, you could see the all available outputs for the model using str()


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