I recently switched over from Java to Python to take advantage of NLTK that I need to work with. I have tried with NLTK's NB Classifier and it worked well. But now, I would like to try to use Scikit-learn's Multinomial NB Classifier and I am trying to find how I can do that with my own dataset.
My datset consists of a few words/phrases instead of long text like movie_reviews or the newgroup collection and should have 6 labels. For example:
Label: A A_001 = ['word1', 'word2', 'word3', 'word4'] A_002 = ['word1', 'word2', 'word3', 'word4'] . . A_n = ['word1', 'word2', 'word3', 'word4']
(1) How does the input format for the Scikit-learn or NLTK's SKlearn's looks like? Will it be able to accept strings or list with strings?
(2) Each of the labels have different amount of instance. For example: Label A may have 86 and Label B may have 200. The total for all the labels combined is 1000. How can I split up the labels to a certain percentage like 75%:25% for training and testing purposes.
(3) Is it possible to train the Multinomial NB Classifier to obtain an accuracy or recall. I do not seem to see any methods like that in NLTK's SKlearn documentation.
Please let me know if my questions are not clear. I am not very good at explaining things clearly. I would appreciate if anyone could point me to a simple example that shows how to train the Multinomial NB Classifier using own data and get the accuracy and recall.