0

Let's say I'm using the Sonar data and I'd like to make a hold-out validation in R. I partitioned the data using the createFolds from caret package as folds <- createFolds(mydata$Class, k=5).

I would like then to use exactly the fold mydata[i] as test data and train a classifier using mydata[-i] as train data.

My first thought was to use the train function, but I couldn't find any support for hold-out validation. Am I missing something here?

Also, I'd like to be able to use exactly the pre-defined folds as parameter, instead of letting the function partition the data. Does anyone have any thoughts?

Thanks in advance

  • If you want to have a hold-out validation set, couldn't you just split your data frame into a training and validation set and only provide the training set to the caret package? – josliber Apr 9 '14 at 21:51
  • I'm sorry @josilber, but I think I didn't get it. I'm splitting my dataframe into two sets already, but to which function should I pass them? – gcolucci Apr 9 '14 at 22:00
  • It looks like you can actually do it within caret: stackoverflow.com/questions/18155482/… – josliber Apr 9 '14 at 22:15
3

I think that maybe you want to use 1/5th of the data as a test set and train using the other 4/5ths?

If that is the case, you should used createDataPartition first and let train do the rest. For example:

> library(caret)
> library(mlbench)
> data(Sonar)
> 
> set.seed(1)
> in_train <- createDataPartition(Sonar$Class, p = 4/5, list = FALSE)
> 
> training <- Sonar[ in_train,]
> testing  <- Sonar[-in_train,]
> 
> nrow(Sonar)
[1] 208
> nrow(training)
[1] 167
> nrow(testing)
[1] 41
> 
> lda_fit <- train(Class ~ ., data = training, method = "lda")
> lda_fit
Linear Discriminant Analysis 

167 samples
 60 predictors
  2 classes: 'M', 'R' 

No pre-processing
Resampling: Bootstrapped (25 reps) 

Summary of sample sizes: 167, 167, 167, 167, 167, 167, ... 

Resampling results

  Accuracy  Kappa  Accuracy SD  Kappa SD
  0.71      0.416  0.0532       0.108  

Max

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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