I have to do spam detection application using a few classifiers(e.g. Naive Bayes, SVM and another one yet) and compare them efficiency but unfortunately I don't know what should I do exactly.
Is this correct: Firstly I should have corpus spam such as trec2005, spamassasin or enron-spam. Then, I do text pre-processing like stemming, stop words removal, tokenize, etc.
After that I can measure weight my features/terms in spam emails using tf-idf . Next I remove these features with very low and very high frequencies. And I can classify my emails then. Right?
After that I can measure my correct classifications by true-positive, false-positive, etc..
If 10fold cross validation is required for something ? How should I use it?
Could you tell me if these steps for email classifications are OK? If not, please explain what are the correct steps for spam classification.