I'm trying to create a small english-like language for specifying tasks. The basic idea is to split a statement into verbs and noun-phrases that those verbs should apply to. I'm working with nltk but not getting the results i'd hoped for, eg:

>>> nltk.pos_tag(nltk.word_tokenize("select the files and copy to harddrive'"))
[('select', 'NN'), ('the', 'DT'), ('files', 'NNS'), ('and', 'CC'), ('copy', 'VB'), ('to', 'TO'), ("harddrive'", 'NNP')]
>>> nltk.pos_tag(nltk.word_tokenize("move the files to harddrive'"))
[('move', 'NN'), ('the', 'DT'), ('files', 'NNS'), ('to', 'TO'), ("harddrive'", 'NNP')]
>>> nltk.pos_tag(nltk.word_tokenize("copy the files to harddrive'"))
[('copy', 'NN'), ('the', 'DT'), ('files', 'NNS'), ('to', 'TO'), ("harddrive'", 'NNP')]

In each case it has failed to realise the first word (select, move and copy) were intended as verbs. I know I can create custom taggers and grammars to work around this but at the same time I'm hesitant to go reinventing the wheel when a lot of this stuff is out of my league. I particularly would prefer a solution where non-English languages could be handled as well.

So anyway, my question is one of: Is there a better tagger for this type of grammar? Is there a way to weight an existing tagger towards using the verb form more frequently than the noun form? Is there a way to train a tagger? Is there a better way altogether?

4 Answers 4


One solution is to create a manual UnigramTagger that backs off to the NLTK tagger. Something like this:

>>> import nltk.tag, nltk.data
>>> default_tagger = nltk.data.load(nltk.tag._POS_TAGGER)
>>> model = {'select': 'VB'}
>>> tagger = nltk.tag.UnigramTagger(model=model, backoff=default_tagger)

Then you get

>>> tagger.tag(['select', 'the', 'files'])
[('select', 'VB'), ('the', 'DT'), ('files', 'NNS')]

This same method can work for non-english languages, as long as you have an appropriate default tagger. You can train your own taggers using train_tagger.py from nltk-trainer and an appropriate corpus.


Jacob's answer is spot on. However, to expand upon it, you may find you need more than just unigrams.

For example, consider the three sentences:

select the files
use the select function on the sockets
the select was good

Here, the word "select" is being used as a verb, adjective, and noun respectively. A unigram tagger won't be able to model this. Even a bigram tagger can't handle it, because two of the cases share the same preceding word (i.e. "the"). You'd need a trigram tagger to handle this case correctly.

import nltk.tag, nltk.data
from nltk import word_tokenize
default_tagger = nltk.data.load(nltk.tag._POS_TAGGER)

def evaluate(tagger, sentences):
    good,total = 0,0.
    for sentence,func in sentences:
        tags = tagger.tag(nltk.word_tokenize(sentence))
        print tags
        good += func(tags)
        total += 1
    print 'Accuracy:',good/total

sentences = [
    ('select the files', lambda tags: ('select', 'VB') in tags),
    ('use the select function on the sockets', lambda tags: ('select', 'JJ') in tags and ('use', 'VB') in tags),
    ('the select was good', lambda tags: ('select', 'NN') in tags),

train_sents = [
    [('select', 'VB'), ('the', 'DT'), ('files', 'NNS')],
    [('use', 'VB'), ('the', 'DT'), ('select', 'JJ'), ('function', 'NN'), ('on', 'IN'), ('the', 'DT'), ('sockets', 'NNS')],
    [('the', 'DT'), ('select', 'NN'), ('files', 'NNS')],

tagger = nltk.TrigramTagger(train_sents, backoff=default_tagger)
evaluate(tagger, sentences)
#model = tagger._context_to_tag

Note, you can use NLTK's NgramTagger to train a tagger using an arbitrarily high number of n-grams, but typically you don't get much performance increase after trigrams.

  • Is it possible to use a model (like in Jacobs answer) AND training sentence (like in this answer)?
    – Sadık
    Oct 17, 2015 at 13:11

See Jacob's answer.

In later versions (at least nltk 3.2) nltk.tag._POS_TAGGER does not exist. The default taggers are usually downloaded into the nltk_data/taggers/ directory, e.g.:

>>> import nltk
>>> nltk.download('maxent_treebank_pos_tagger') 

Usage is as follows.

>>> import nltk.tag, nltk.data
>>> tagger_path = '/path/to/nltk_data/taggers/maxent_treebank_pos_tagger/english.pickle'
>>> default_tagger = nltk.data.load(tagger_path)
>>> model = {'select': 'VB'}
>>> tagger = nltk.tag.UnigramTagger(model=model, backoff=default_tagger)

See also: How to do POS tagging using the NLTK POS tagger in Python.


Bud's answer is correct. Also, according to this link,

if your nltk_data packages were correctly installed, then NLTK knows where they are on your system, and you don't need to pass an absolute path.

Meaning, you can just say

tagger_path = '/path/to/nltk_data/taggers/maxent_treebank_pos_tagger/english.pickle'
default_tagger = nltk.data.load(tagger_path)
  • In general cases it would be 'taggers/maxent_treebank_pos_tagger/english.pickle'
    – Pablo Glez
    Aug 21, 2018 at 21:31

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