I am working on a project to classify snippets of text using the python nltk module and the naivebayes classifier. I am able to train on corpus data and classify another set of data but would like to feed additional training information into the classifier after initial training.
If I'm not mistaken, there doesn't appear to be a way to do this, in that the NaiveBayesClassifier.train method takes a complete set of training data. Is there a way to add to the the training data without feeding in the original featureset?
I'm open to suggestions including other classifiers that can accept new training data over time.