I am also trying to perform a 10 fold cross validation. I think that using tune is not the right way in order to perform it, since this function is used to optimize the parameters, but not to train and test the model.

I have the following code to perform a Leave-One-Out cross validation. Suppose that *dataset* is a data.frame with your data stored. In each LOO step, the observed vs. predicted matrix is added, so that at the end, *result* contains the global observed vs. predicted matrix.

```
#LOOValidation
for (i in 1:length(dataset)){
fit = svm(classes ~ ., data=dataset[-i,], type='C-classification', kernel='linear')
pred = predict(fit, dataset[i,])
result <- result + table(true=dataset[i,]$classes, pred=pred);
}
classAgreement(result)
```

So in order to perform a 10-fold cross validation, I guess we should manually partition the dataset, and use the folds to train and test the model.

```
for (i in 1:10)
train <- getFoldTrainSet(dataset, i)
test <- getFoldTestSet(dataset,i)
fit = svm(classes ~ ., train, type='C-classification', kernel='linear')
pred = predict(fit, test)
results <- c(results,table(true=test$classes, pred=pred));
}
# compute mean accuracies and kappas ussing results, which store the result of each fold
```

I hope this help you.

`caret`

package may prove useful for you. It has extensive vignettes and the ability to fit many different models through a common interface (the`train`

function).