I have a textual classification problem that consists of two categories- zero an one. Up until now I tried solving it by creating a Document Term Matrix, and to run it through SVM (using RTextTools package). Here's a code snippet: (in R)
models <- train_models(container, algorithms=c("SVM")) results <- classify_models(container, models) analytics <- create_analytics(container, results) View(summary(analytics)) >>ALGORITHM PERFORMANCE >>SVM_PRECISION SVM_RECALL SVM_FSCORE >> 0.64 0.63 0.63
My questions are as follows:
1.Why are all the predicted values in the result matrix between 0.5-1? isn't it supposed to be 0-1?
2.Supposed we have theta as threshold to separate that all scores above it are of class 1, and the rest are 0. How can I analyze (in R) under which theta are these precision and recall values being calculated? How can I change this threshold to get different values?
3.How can I create in R two different thresholds values for each class (with what's left in between labeled as "unidentified")?