I have a theoretical question about a Naive Bayes Classifier. Assume I have trained the classifier with the following training data:
class word count ----------------- pos good 1 sun 1 neu tree 1 neg bad 1 sad 1
Assume I now classify "good sun great". There are now two options:
1) classify against the trainingdata, which remains static. Meaning both "good" and "sun" come from the positive category, classifying this string as a positive. After classification, the training table remains unchanged. All strings are thus classified against the static set of training data.
2) You classify the string, but then update the training data, as in the table underneath. Thus, the next string will be classified against a more "advanced" set of training data than this one. By the end of (automatic) classification, the table that started out as a simple training set, will have grown in size, having been expanded with many words (and updated word counts)
class word count ----------------- pos good 2 sun 2 great 1 neu tree 1 neg bad 1 sad 1
In my implementation of NMB I used the first method, but I'm now second-guessing I should have done the latter. Please enlighten me :-)