23

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?

27

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.

20

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)? – Sadik Oct 17 '15 at 13:11
5

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.

1

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 '18 at 21:31

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