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I need to iterate through two files many million times, counting the number of appearances of word pairs throughout the files. (in order to build contingency table of two words to calculate Fisher's Exact Test score)

I'm currently using

from itertools import izip
for x,y in izip(src,tgt):
    if w1 in x:
    if w2 in y:

While this is not bad, I want to know if there is any faster way to iterate through two files, hopefully significantly faster.

I appreciate your help in advance.

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You will need to provide more information. Please clarify your specific problem or add additional details to highlight exactly what you need. As it's currently written, it’s hard to tell exactly what you're asking. –  Inbar Rose Oct 17 '13 at 9:55
@InbarRose I added more information. Please let me know if it still doesn't suffice :) –  CosmicRabbitMediaInc Oct 17 '13 at 10:00
Well, there is still much information missing. Any variable that you use in any code that you display here, you should show the declaration, for instance: what is src, tgt, w1, w2, w1count, and w2count? –  Inbar Rose Oct 17 '13 at 10:06
What do you mean by counting "word pairs"? Do your files have the same number of lines? –  Sven Marnach Oct 17 '13 at 10:10
@SvenMarnach yes they do –  CosmicRabbitMediaInc Oct 17 '13 at 10:11

3 Answers 3

up vote 2 down vote accepted

I still don't quite get what exactly you are trying to do, but here's some example code that might point you in the right direction.

We can use a dictionary or a collections.Counter instance to count all occurring words and pairs in a single pass through the files. After that, we only need to query the in-memory data.

import collections
import itertools
import re

def find_words(line):
    for match in re.finditer("\w+", line):
        yield match.group().lower()

counts1 = collections.Counter()
counts2 = collections.Counter()
counts_pairs = collections.Counter()

with open("src.txt") as f1, open("tgt.txt") as f2:
    for line1, line2 in itertools.izip(f1, f2):
        words1 = list(find_words(line1))
        words2 = list(find_words(line2))
        counts_pairs.update(itertools.product(words1, words2))

print counts1["someword"]
print counts1["anotherword"]
print counts_pairs["someword", "anotherword"]
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thank you soooo much!!!!!! –  CosmicRabbitMediaInc Oct 17 '13 at 11:30
sorry just one more question. After running this program, how do I retrieve each word's or word pair's count? –  CosmicRabbitMediaInc Oct 17 '13 at 19:03
btw I had to change your code yield str(word).lower() –  CosmicRabbitMediaInc Oct 17 '13 at 19:03
I tried counts1.most_common() but it returns ('<_sre.sre_match object at 0x10c7325e0>', 17) which is why I get 0 for counts1['you']... is there a way to handle this? –  CosmicRabbitMediaInc Oct 17 '13 at 19:13
@CosmicRabbitMediaInc: I fixed find_words() and added examples on how to get some counts. –  Sven Marnach Oct 18 '13 at 12:24

In general if your data is small enough to fit into memory then your best bet is to:

  1. Pre-process data into memory

  2. Iterate from memory structures

If the files are large you may be able to pre-process into data structures, such as your zipped data, and save into a format such as pickle that is much faster to load & work with in a separate file then process that.

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my files are 37MB and 36MB each. Is it small enough to fit into memory? –  CosmicRabbitMediaInc Oct 17 '13 at 10:04
@CosmicRabbitMediaInc: Almost certainly. But I think changing your algorithm would be the right approach. –  Sven Marnach Oct 17 '13 at 10:07
@SvenMarnach thanx. any advice as to how to change the algorithm? –  CosmicRabbitMediaInc Oct 17 '13 at 10:12
@CosmicRabbitMediaInc: I can only answer that if you specify what you mena by "counting word pairs". It's completely unclear to me from both your code and your explanation. –  Sven Marnach Oct 17 '13 at 10:19

Just as an out of the box thinking solution: Have you tried making the files into Pandas data frames? I.e. I assume you already you make a word list out of the input (by removing reading signs such as . and ,) and using a input.split(' ') or something similar. That you can then make into DataFrames, perform a wordd count and then make a cartesian join?

import pandas as pd
df_1 = pd.DataFrame(src, columns=['word_1'])
df_1['count_1'] = 1
df_1 = df_1.groupby(['word_1']).sum()
df_1 = df_1.reset_index()

df_2 = pd.DataFrame(trg, columns=['word_2'])
df_2['count_2'] = 1
df_2 = df_2.groupby(['word_2']).sum()
df_2 = df_2.reset_index()

df_1['link'] = 1
df_2['link'] = 1

result_df = pd.merge(left=df_1, right=df_2, left_on='link', right_on='link')
del result_df['link']

I use stuff like this for basket analysis, works really well.

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