I'm trying to understand and plot TPR/FPR for different types of classifiers. I'm using kNN, NaiveBayes and Decision Trees in R. With kNN I'm doing the following:

```
clnum <- as.vector(diabetes.trainingLabels[,1], mode = "numeric")
dpknn <- knn(train = diabetes.training, test = diabetes.testing, cl = clnum, k=11, prob = TRUE)
prob <- attr(dpknn, "prob")
tstnum <- as.vector(diabetes.testingLabels[,1], mode = "numeric")
pred_knn <- prediction(prob, tstnum)
pred_knn <- performance(pred_knn, "tpr", "fpr")
plot(pred_knn, avg= "threshold", colorize=TRUE, lwd=3, main="ROC curve for Knn=11")
```

where diabetes.trainingLabels[,1] is a vector of labels (class) I want to predict, diabetes.training is the training data and diabetest.testing is the testing.data.

Plot looks like the following:

The values stored in prob attribute is a numeric vector (decimal between 0 and 1). I convert the class labels factor into numbers and then I can use it with prediciton/performance function from ROCR library. Not 100% sure I'm doing it correct but at least it works.

For the NaiveBayes and Decision Trees tho, with prob/raw parameter speciefied in predict function I don't get a single numeric vector but a vector of lists or matrix where probability for each class is specified (I guess), eg:

```
diabetes.model <- naiveBayes(class ~ ., data = diabetesTrainset)
diabetes.predicted <- predict(diabetes.model, diabetesTestset, type="raw")
```

and diabetes.predicted is:

```
tested_negative tested_positive
[1,] 5.787252e-03 0.9942127
[2,] 8.433584e-01 0.1566416
[3,] 7.880800e-09 1.0000000
[4,] 7.568920e-01 0.2431080
[5,] 4.663958e-01 0.5336042
```

The question is how to use it to plot ROC curve and why in kNN I get one vector and for other classifieres I get them separate for both classes?