text = nltk.word_tokenize("hello, my name is John") words = nltk.pos_tag(text) for w in words: print "%s = %s" % (w, w)
And I got:
hello = NN , = , my = PRP$ name = NN is = VBZ John = NNP
According to the Penn Treebank tagset, hello is definitely an interjection and is consistently tagged UH. The problem you're running into is that the taggers that NLTK ships with were most likely trained on the part of the Wall Street Journal section of the Penn Treebank that is available for free, which unfortunately for you contains zero occurrences of the word hello and only three words tagged UH (interjection). If you want to tag spoken text, you'll need to train your tagger on the whole Penn Treebank, which includes something like 3 million words of spoken English.
By the way, the NLTK taggers won't always call hello a noun -- try tagging "don't hello me!" or "he said hello".
NLTK use it own tagger to tag part of speech.
But the accuracy will vary from text to text. It is because the tagger was trained using a corpus provided by NLTK itself. The corpus could be about anything.
The corpus is not similar to your text, then the tagger will fail to tag your text because the context, style is all very different.
You can train your own tagger if you got the time to do it.
Computer are not human, computer just do what we told them to do. So in order to make it do it properly, you should teach them properly to achieve best result.
Look in any dictionary and you will find hello defined as a "noun" (e.g. Longman). It's often described as an "exclamation" or "interjection" but the tag "noun" is not incorrect.