Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I have been trying to apply recursive feature selection using caret package. What I need is that ref uses the AUC as performance measure. After googling for a month I cannot get the process working. Here is the code I have used:

library(caret)
library(doMC)
registerDoMC(cores = 4)

data(mdrr)

subsets <- c(1:10)

ctrl <- rfeControl(functions=caretFuncs, 
                   method = "cv",
                   repeats =5, number = 10,
                   returnResamp="final", verbose = TRUE)

trainctrl <- trainControl(classProbs= TRUE)

caretFuncs$summary <- twoClassSummary

set.seed(326)

rf.profileROC.Radial <- rfe(mdrrDescr, mdrrClass, sizes=subsets,
                            rfeControl=ctrl,
                            method="svmRadial",
                            metric="ROC",
                            trControl=trainctrl)

When executing this script I get the following results:

Recursive feature selection

Outer resampling method: Cross-Validation (10 fold) 

Resampling performance over subset size:

Variables Accuracy  Kappa AccuracySD KappaSD Selected
     1   0.7501 0.4796    0.04324 0.09491         
     2   0.7671 0.5168    0.05274 0.11037         
     3   0.7671 0.5167    0.04294 0.09043         
     4   0.7728 0.5289    0.04439 0.09290         
     5   0.8012 0.5856    0.04144 0.08798         
     6   0.8049 0.5926    0.02871 0.06133         
     7   0.8049 0.5925    0.03458 0.07450         
     8   0.8124 0.6090    0.03444 0.07361         
     9   0.8181 0.6204    0.03135 0.06758        *
    10   0.8069 0.5971    0.04234 0.09166         
   342   0.8106 0.6042    0.04701 0.10326         

The top 5 variables (out of 9):
nC, X3v, Sp, X2v, X1v

The process always uses Accuracy as performance mesure. Another problem that arises is that when I try to get prediction from the model obtained using:

predictions <- predict(rf.profileROC.Radial$fit,mdrrDescr)

I get the following message

In predictionFunction(method, modelFit, tempX, custom = models[[i]]$control$custom$prediction) :
  kernlab class prediction calculations failed; returning NAs

turning out to be imposible to get some prediction from the model.

Here is the information obtained through sessionInfo()

R version 3.0.2 (2013-09-25)
Platform: x86_64-pc-linux-gnu (64-bit)

locale:
 [1] LC_CTYPE=es_ES.UTF-8       LC_NUMERIC=C               LC_TIME=es_ES.UTF-8       
 [4] LC_COLLATE=es_ES.UTF-8     LC_MONETARY=es_ES.UTF-8    LC_MESSAGES=es_ES.UTF-8   
 [7] LC_PAPER=es_ES.UTF-8       LC_NAME=C                  LC_ADDRESS=C              
 [10] LC_TELEPHONE=C             LC_MEASUREMENT=es_ES.UTF-8 LC_IDENTIFICATION=C       

attached base packages:
 [1] grid      parallel  splines   stats     graphics  grDevices utils     datasets  methods   base     

other attached packages:
 [1] e1071_1.6-2     class_7.3-9     pROC_1.6.0.1    doMC_1.3.2      iterators_1.0.6 foreach_1.4.1  
 [7] caret_6.0-21    ggplot2_0.9.3.1 lattice_0.20-24 kernlab_0.9-19 

loaded via a namespace (and not attached):
 [1] car_2.0-19         codetools_0.2-8    colorspace_1.2-4   compiler_3.0.2     dichromat_2.0-0   
 [6] digest_0.6.4       gtable_0.1.2       labeling_0.2       MASS_7.3-29        munsell_0.4.2     
 [11] nnet_7.3-7         plyr_1.8           proto_0.3-10       RColorBrewer_1.0-5 Rcpp_0.10.6       
 [16] reshape2_1.2.2     scales_0.2.3       stringr_0.6.2      tools_3.0.2       
share|improve this question

One problem is a minor typo ('trControl=' instead of 'trainControl='). Also, you change caretFuncs after you attached it to rfe's control function. Lastly, you will need to tell trainControl to calculate the ROC curves.

This code works:

 caretFuncs$summary <- twoClassSummary

 ctrl <- rfeControl(functions=caretFuncs, 
                    method = "cv",
                    repeats =5, number = 10,
                    returnResamp="final", verbose = TRUE)

 trainctrl <- trainControl(classProbs= TRUE,
                           summaryFunction = twoClassSummary)
 rf.profileROC.Radial <- rfe(mdrrDescr, mdrrClass, 
                             sizes=subsets,
                             rfeControl=ctrl,
                             method="svmRadial",
                             ## I also added this line to
                             ## avoid a warning:
                             metric = "ROC",
                             trControl = trainctrl)


 > rf.profileROC.Radial

 Recursive feature selection

 Outer resampling method: Cross-Validated (10 fold) 

 Resampling performance over subset size:

  Variables    ROC   Sens   Spec   ROCSD  SensSD  SpecSD Selected
          1 0.7805 0.8356 0.6304 0.08139 0.10347 0.10093         
          2 0.8340 0.8491 0.6609 0.06955 0.10564 0.09787         
          3 0.8412 0.8491 0.6565 0.07222 0.10564 0.09039         
          4 0.8465 0.8491 0.6609 0.06581 0.09584 0.10207         
          5 0.8502 0.8624 0.6652 0.05844 0.08536 0.09404         
          6 0.8684 0.8923 0.7043 0.06222 0.06893 0.09999         
          7 0.8642 0.8691 0.6913 0.05655 0.10837 0.06626         
          8 0.8697 0.8823 0.7043 0.05411 0.08276 0.07333         
          9 0.8792 0.8753 0.7348 0.05414 0.08933 0.07232        *
         10 0.8622 0.8826 0.6696 0.07457 0.08810 0.16550         
        342 0.8650 0.8926 0.6870 0.07392 0.08140 0.17367         

 The top 5 variables (out of 9):
    nC, X3v, Sp, X2v, X1v

For the prediction problems, you should use rf.profileROC.Radial instead of the fit component:

 > predict(rf.profileROC.Radial, head(mdrrDescr))
       pred    Active  Inactive
 1 Inactive 0.4392768 0.5607232
 2   Active 0.6553482 0.3446518
 3   Active 0.6387261 0.3612739
 4 Inactive 0.3060582 0.6939418
 5   Active 0.6661557 0.3338443
 6   Active 0.7513180 0.2486820

Max

share|improve this answer
    
Thank you for you comments, but fixing the typo don't fix the problem in my case. Accuracy performance measure is used again, as well as the problem with predictions is not solved. – José Palma Jan 15 '14 at 12:03
    
I accidentally left two things out. I've updated the code above. – topepo Jan 15 '14 at 17:52
    
So, trainControl object is passed directly from rfe() to train() in each size iteration. Therefore, is it correct to suppose that all the rest of params for train() can be modified in the same way? – José Palma Jan 16 '14 at 9:41
    
@topepo, won't be necessary in SVM to pre-process the data? if yes, would it be passed inside the rfe() also? other issue for the rfeControl won't be necessary to pass method="repeatedcv" instead of method="cv" only, since repeated CV was intended? – doctorate Jan 23 '14 at 13:11

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.