I have used this code:

# Step 1 : TOKENIZE
from nltk.tokenize import *
words = word_tokenize(text)

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?

Modified question:

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?


Short answer: you can't. Slightly longer answer: you can override specific words using a manually created UnigramTagger. See my answer for custom tagging with nltk for details on this method.


I tried to reproduce the bug using NLTK v3.0. I think now nltk.pos_tag() is fixed. As #Jacob mentioned, you can use Brown Corpus to train a tagger(nltk in python) as follows;

from nltk.corpus import brown
train_sents = brown.tagged_sents()
unigram_tagger = nltk.UnigramTagger(train_sents)
tokens=nltk.word_tokenize("Is John very nice?")

But note that The tag set depends on the corpus that was used to train the tagger. The default tagger of nltk.pos_tag() uses the Penn Treebank Tag Set.

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