I use Naive Bayes from Weka to do text classification. I have two classes for my sentences, "Positive" and "Negative". I collected about 207 sentences with positive meaning and 189 sentences with negative meaning, in order to create my training set.
When I ran Naive Bayes with a test set that contains sentences with strong negative meaning, such as the one of the word "hate", the accuracy of the results is pretty good, about 88%. But when I use sentences with positive meaning, such as the one of the word "love", as a test set, the accuracy is much worse, about 56%.
I think that this difference probably has something to do with my training set and especially its "Positive" sentences.
Can you think of any reason that could explain this difference? Or maybe a way to help me find out where the problem begins?
Thanks a lot for your time,
Nantia