I have used this code:
# Step 1 : TOKENIZE from nltk.tokenize import * words = word_tokenize(text) # Step 2 : POS DISAMBIG from nltk.tag import * tags = pos_tag(words)
to tag two sentences: John is very nice. Is John very nice?
John in the first sentence was NN while in the second was VB! So, how can we correct pos_tag function without training back-off taggers?
I have seen the demonstration of NLTK taggers here http://text-processing.com/demo/tag/. When I tried the option "English Taggers & Chunckers: Treebank" or "Brown Tagger", I get the correct tags. So how to use Brown Tagger for example without training it?