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quick question that is confusing me. I have NLTK installed and it has been working fine. However I am trying to get bigrams of a corpus and want to use bigrams(corpus) basically.. but it says that bigrams is not defined when i "from nltk import bigrams"

Same with trigrams. Am I missing something? Also, how could I get bigrams from the corpus manually.

I am also looking to calculate the frequencies of bigrams trigrams and quads, but am unsure exactly how to go about this.

I have the corpus tokenized with "<s>" and "</s>" at the beginning and end appropriately. Program so far here:

 #!/usr/bin/env python
import re
import nltk
import nltk.corpus as corpus
import tokenize
from nltk.corpus import brown

def alter_list(row):
    if row[-1] == '.':
        row[-1] = '</s>'
    return ['<s>'] + row

news = corpus.brown.sents(categories = 'editorial')
print len(news),'\n'

x = len(news)
for row in news[:x]:
share|improve this question
up vote 1 down vote accepted

I tested this in a virtualenv and it works:

In [20]: from nltk import bigrams

In [21]: bigrams('This is a test')
[('T', 'h'),
 ('h', 'i'),
 ('i', 's'),
 ('s', ' '),
 (' ', 'i'),
 ('i', 's'),
 ('s', ' '),
 (' ', 'a'),
 ('a', ' '),
 (' ', 't'),
 ('t', 'e'),
 ('e', 's'),
 ('s', 't')]

Is that the only error you're getting?

By the way, as for your second question:

from collections import Counter
In [44]: b = bigrams('This is a test')

In [45]: Counter(b)
Out[45]: Counter({('i', 's'): 2, ('s', ' '): 2, ('a', ' '): 1, (' ', 't'): 1, ('e', 's'): 1, ('h', 'i'): 1, ('t', 'e'): 1, ('T', 'h'): 1, (' ', 'i'): 1, (' ', 'a'): 1, ('s', 't'): 1})

For words:

In [49]: b = bigrams("This is a test".split(' '))

In [50]: b
Out[50]: [('This', 'is'), ('is', 'a'), ('a', 'test')]

In [51]: Counter(b)
Out[51]: Counter({('is', 'a'): 1, ('a', 'test'): 1, ('This', 'is'): 1})

This split by words obviously is very superficial but depending on your application it may suffice. Obviously you could use nltk's tokenize which is far more sophisticated.

In order to accomplish your final goal, you can do something like that:

In [56]: d = "Lorem Ipsum is simply dummy text of the printing and typesetting industry. Lorem Ipsum has been the industry's standard dummy text ever since the 1500s, when an unknown printer took a galley of type and scrambled it to make a type specimen book. It has survived not only five centuries, but also the leap into electronic typesetting, remaining essentially unchanged. It was popularised in the 1960s with the release of Letraset sheets containing Lorem Ipsum passages, and more recently with desktop publishing software like Aldus PageMaker including versions of Lorem Ipsum."

In [56]: from nltk import trigrams
In [57]: tri = trigrams(d.split(' '))

In [60]: counter = Counter(tri)

In [61]: import random

In [62]: random.sample(counter, 5)
[('Ipsum', 'has', 'been'),
 ('industry.', 'Lorem', 'Ipsum'),
 ('Ipsum', 'passages,', 'and'),
 ('was', 'popularised', 'in'),
 ('galley', 'of', 'type')]

I trimmed the output because it was unnecessarily large, but you get the idea.

share|improve this answer
Thanks for the response, I have no idea what I did but it's importing now.. Hmm... the problem now is that I need bigrams per word not per letter so that I can calculate based on each word.. How could I do that? Also still need to figure out to even do the calculations of ngrams based off bigrams (and tri and quad) I need to in the end generate random text based on the ngrams that resembles the original corpus. – user1378618 Oct 26 '12 at 4:04
Updated... See my answer. – Robert Smith Oct 26 '12 at 4:14
I see now. Ok unfortunately "news" as used above in the program is not a type that I can use .split with. I get the error: AttributeError: 'ConcatenatedCorpusView' object has no attribute 'split' How could I use my changed version of news with the annotations and also use it to separate into bigrams, tri etc? Edit: Ok let me see here one sec – user1378618 Oct 26 '12 at 4:28
But I guess tokenize is allowed. You don't want to use split, anyway. Tokenizing is too complex to try that route. – Robert Smith Oct 26 '12 at 4:29
Sorry never knew about the tokenize library or used it. What version should I used? Seems like wordpunct_tokenize is a good option? looking at: How could I tokenize the corpus and have the special character additions I need? – user1378618 Oct 26 '12 at 4:36

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