I'm classifying websites. One of the tasks is to filter out porn. I'm using is a binary SVM classifier with bag-of-words. I have a question about the words I should include in BoW: should it be just porn-related words (words commonly found on porn websites) or should it also include words that are rarely found on porn websites, but found frequently on other websites as well (for example, "mathematics", "engineering", "guitar", "birth", etc)?.
The problem I'm encountering is false positives on medicine and family related sites. If I only look for porn-related words, then the vectors for such sites end up very sparse. Words like "sex" appear fairly often, but in a completely innocent context.
Should I include the non-porn words as well? Or should I look at other ways of resolving the false positives? Suggestions are most welcome.