I am working on problem solution where I am collecting social feeds from twitter and Facebook for a product X . I am labeling these posts,comments or tweets using five labels
--Positive --Negative --Campaign --Reply --Queries
I have a training set of around 5000 which includes tweets,Facebook posts and Comments . But these training set are unbalanced and have more of Negatives and Campaign data . Below is the list of sentiments and their count:
--Positive--> 492 --Negative--> 2193 --Campaign--> 1422 --Reply--> 430 --Queries--> 922
I am using Naive Bayes for predicting these sentiments . As you can see the above training set is high unbalanced is there any way that I can improve my model with these training set . Any suggestion for improving my prediction model would be helpful .
I am using Mahout for these building this prediction model .