0

I'm trying to find k most common n-grams from a large corpus. I've seen lots of places suggesting the naïve approach - simply scanning through the entire corpus and keeping a dictionary of the count of all n-grams. Is there a better way to do this?

  • Possible duplicate of cs.stackexchange.com/questions/8972/… – pltrdy Feb 21 '17 at 17:23
  • What are you comparing against? How big is the corpus? I think you can easily count number of ngrams in C++ rather quickly for a huge corpus and even in Python it's pretty fast =) – alvas Feb 22 '17 at 8:23
  • Do you mean character ngrams or word ngrams? – alvas Feb 22 '17 at 8:24
  • I'm using word ngrams, but I imagine that character ngrams would generalize. As for the corpus, this should be able to scale to a corpus as large as 20gb or so, run on a hadoop cluster – bendl Feb 23 '17 at 0:01
3

In Python, using NLTK:

$ wget http://norvig.com/big.txt
$ python
>>> from collections import Counter
>>> from nltk import ngrams
>>> bigtxt = open('big.txt').read()
>>> ngram_counts = Counter(ngrams(bigtxt.split(), 2))
>>> ngram_counts.most_common(10)
[(('of', 'the'), 12422), (('in', 'the'), 5741), (('to', 'the'), 4333), (('and', 'the'), 3065), (('on', 'the'), 2214), (('at', 'the'), 1915), (('by', 'the'), 1863), (('from', 'the'), 1754), (('of', 'a'), 1700), (('with', 'the'), 1656)]

In Python, native (see Fast/Optimize N-gram implementations in python):

>>> def ngrams(text, n=2):
...     return zip(*[text[i:] for i in range(n)])
>>> ngram_counts = Counter(ngrams(bigtxt.split(), 2))
>>> ngram_counts.most_common(10)
    [(('of', 'the'), 12422), (('in', 'the'), 5741), (('to', 'the'), 4333), (('and', 'the'), 3065), (('on', 'the'), 2214), (('at', 'the'), 1915), (('by', 'the'), 1863), (('from', 'the'), 1754), (('of', 'a'), 1700), (('with', 'the'), 1656)]

In Julia, see Generate ngrams with Julia

import StatsBase: countmap
import Iterators: partition
bigtxt = readstring(open("big.txt"))
ngram_counts = countmap(collect(partition(split(bigtxt), 2, 1)))

Rough timing:

$ time python ngram-test.py # With NLTK.

real    0m3.166s
user    0m2.274s
sys 0m0.528s

$ time python ngram-native-test.py 

real    0m1.521s
user    0m1.317s
sys 0m0.145s

$ time julia ngram-test.jl 

real    0m3.573s
user    0m3.188s
sys 0m0.306s

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.