I am working on a simple naive bayes classifier and I had a conceptual question about it.
I know that the training set is extremely important so I wanted to know what constitutes a good training set in the following example. Say I am classifying web pages and concluding if they are relevant or not. The factors on which this decision is based takes into account the probabilities of certain attributes being present on that page. These would be certain keywords that increase the relevancy of the page. The keywords are apple, banana, mango. The relevant/irrelevant score is for each user. Assume that a user marks the page relevant/irrelevant equally likely.
Now for the training data, to get the best training for my classifier, would I need to have the same number of relevant results as irrelevant results? Do I need to make sure that each user would have relevant/irrelevant results present for them to make a good training set? What do I need to keep in mind?