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Maybe this is a stupid question, but I have a problem with extracting the ten most frequent words out of a corpus with Python. This is what I've got so far. (btw, I work with NLTK for reading a corpus with two subcategories with each 10 .txt files)

import re
import string
from nltk.corpus import stopwords
stoplist = stopwords.words('dutch')

from collections import defaultdict
from operator import itemgetter

def toptenwords(mycorpus):
    words = mycorpus.words()
    no_capitals = set([word.lower() for word in words]) 
    filtered = [word for word in no_capitals if word not in stoplist]
    no_punct = [s.translate(None, string.punctuation) for s in filtered] 
    wordcounter = {}
    for word in no_punct:
        if word in wordcounter:
            wordcounter[word] += 1
            wordcounter[word] = 1
    sorting = sorted(wordcounter.iteritems(), key = itemgetter, reverse = True)
    return sorting 

If I print this function with my corpus, it gives me a list of all words with '1' behind it. It gives me a dictionary but all my values are one. And I know that for example the word 'baby' is five or six times in my corpus... And still it gives 'baby: 1'... So it doesn't function the way I want...
Can someone help me?

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What are you studying, because I had the exact same task a few months back? –  Amberlamps Jan 24 '13 at 11:18
I'm studying linguistics. Did you solve the task? –  user2007220 Jan 24 '13 at 11:19

3 Answers 3

The problem is in your usage of set.

A set contains no duplicates, so when you create a set of words in lowercase, you only have one ocurrence of each word from there on.

Let's say your words are:

 ['banana', 'Banana', 'tomato', 'tomato','kiwi']

After your lambda lowering all cases you have:

 ['banana', 'banana', 'tomato', 'tomato','kiwi']

But then you do:

 set(['banana', 'Banana', 'tomato', 'tomato','kiwi'])

which returns:


Since from that moment on you base your calculations on the no_capitals set, you'll get only one occurrence of each word. Don't create a set, and your program will probably work just fine.

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THANK YOU so much! That makes sense of course –  user2007220 Jan 24 '13 at 11:34
You can thank by accepting the answer so it'll be marked as closed :) –  pcalcao Jan 24 '13 at 12:19

If you're using the NLTK anyway, try the FreqDist(samples) function to first generate a frequency distribution from the given sample. Then call the most_common(n) attribute to find the n most common words in the sample, sorted by descending frequency. Something like:

fdist = FreqDist(stoplist)
top_ten = fdist.most_common(10)
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You should check this out. http://www.doughellmann.com/PyMOTW/collections/counter.html This has what you need for word counts.

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I suggest you elaborate your answer, as now it is only a link (althrough correct one), hence more appropriate to be a comment. –  alko Dec 9 '13 at 10:41
While this link may answer the question, it is better to include the essential parts of the answer here and provide the link for reference. Link-only answers can become invalid if the linked page changes. –  Szymon Dec 9 '13 at 10:44

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