Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am trying to write a function that produces the output from several classification algorithms on different data-sets in a summary table. I am using the caret package.

I will attempt to walk-through the different bits of code that I have thus far:

library(foreign)  ## Get a concacated list of files is working directry

##  create and view an object with file names and full paths
file<-file.path("C:/Users/Documents/Datasets",c (f))

# use a loop to read all of these files from my working directry
lapply(d, names)

So dlist contains my set of training and test data-sets. I have already split my data; so for example, the files are named pca.test, pca.train, svm.test, svm.train, rf.train, rf.test. Just realized that the files in dlist are also already data.frames in R, i.e. I created them first in R, then saved them as tab-delimited files (REDUNDANT!).

For each pair of data-sets (pca.test and pca.train for example), I would like to perform different classification and prediction methods:


# Classification method 1, Naive baiyes
model_pca.NB = train(pca.train[,-5],pca.train[,5],'nb',   trControl=trainControl(method='cv',number=5))

pca.nb.pred<-predict(model_pca.NB, pca.test[,-5])

# Classification method 2, LDA
ctrl <- trainControl( repeats = 5, method='cv', number = 5,
                  allowParallel = FALSE)

model.pca.LDA <- train(Species~., data= pca.train,
             method = "lda", trControl = ctrl)

pred.anova.LDA<-predict(model.pca.LDA, pca.test[,-5])

# Classification method 3, ANN
                       number =2, repeats=2, returnResamp = 'none')

model.pca.ann<-train(Species~., data=pca.train, method='mlp',
  tuneGrid = data.frame(.size = c(10,20,30,40,50,60,70,80,90,100)),
  allowParallel = TRUE, trControl=mlpcontrol)

pred.pca.ann<-predict(model.pca.ann, pca.test[,-5])

For a reproducible example, will be using the iris data-set; both for the training and test:

pca.train<-iris;  pca.test<-iris

By using lda.conf$byClass, I can access a table listing

> lda.conf$byClass
 Sensitivity Specificity Pos Pred Value Neg Pred Value Prevalence       Detection Rate   Detection Prevalence
Class: setosa            1.00        1.00      1.0000000       1.000000  0.3333333        0.3333333            0.3333333
Class: versicolor        0.96        0.99      0.9795918       0.980198  0.3333333      0.3200000            0.3266667
Class: virginica         0.98        0.98      0.9607843       0.989899  0.3333333      0.3266667            0.3400000

From each pair of data-sets and for each method, I would like to obtain the Sensitivity, Specificity and Pos Pred in one table... I would suppose cbind, but I am not sure how to get the labeling to reflect the classification method and the data-set used. So something to the effect of:

pca_LDA_Sensitivity  pca_lda_Specifi   pca_lda_PosPred pca_ANN_Sensistivity svm_LDA_Sensitivity.....
      1                        1              1                      .98

Then I would need the same for (more than likely a separate table) the accuracy and Kappa values accessed via lda.conf$overall.

Just for safety, I may need the individual confusion matrices (lda.conf$table) per pair of data-set for each method.

Lastly, I would like to create a list of all the results from the train functions.

I am not sure how to proceed with implementing a function to do the above. I am aware that the question is long, but I would appreciate any assistance given.

share|improve this question

1 Answer 1

I have been tackling a similar problem, what i did was write the results to several files using sink, and graphs to pdf files in varying levels of detail. I set up a folder structure with the key things for me in the first folder (confusion matrices and roc curves), then more detail in sub folders. So in my setup i train my models first with caret, then have a section of code that runs through model one by one and picks out the details. I just typed this code manually because i didn't think it worth the effort of trying to automate it.

share|improve this answer
Thanks Kharoof, Guess I will have to go the old fashioned way. –  user2507608 Nov 13 '13 at 19:10

Your Answer


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.