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I have a text file labeled "all.txt" It contains a regular english paragraph

For some reason when I run this code:

    import nltk
    from nltk.collocations import *
    bigram_measures = nltk.collocations.BigramAssocMeasures()
    trigram_measures = nltk.collocations.TrigramAssocMeasures()

    # change this to read in your data                                                                                                                                                   
    finder = BigramCollocationFinder.from_words(('all.txt'))

    # only bigrams that appear 3+ times                                                                                                                                                  
    #finder.apply_freq_filter(3)                                                                                                                                                         

    # return the 10 n-grams with the highest PMI                                                                                                                                         
    print finder.nbest(bigram_measures.pmi, 10)

I get the following result:

       [('.', 't'), ('a', 'l'), ('l', '.'), ('t', 'x'), ('x', 't')]

What am I doing wrong, since I am only getting letters? I am looking for words not letters!

Here is an example of what is in "all.txt", so you get an idea of what is being processed: "and it 's not just democrats who oppose this plan . americans across the country have expressed their opposition to this plan .my democratic colleagues and i have a better plan that will strengthen the ethics rules to improve congressional accountability and to make sure that legislation is properly considered . the republican plan fails to close a loophole that allows legislation to be considered before members have read it ."

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upvote for uncommented downvote. –  alvas Feb 8 '13 at 3:41

1 Answer 1

up vote 3 down vote accepted

The first problem is that you aren't actually reading the file in, you're just passing a string containing the file path to the function, and the second problem is that you need to use a tokenizer, first. To resolve the second problem:

from nltk.tokenize import word_tokenize
finder = BigramCollocationFinder.from_words(word_tokenize("This is a test sentence"))
print finder.nbest(bigram_measures.pmi, 10)

Yields [('This', 'is'), ('a', 'test'), ('is', 'a'), ('test', 'sentence')]

Note that you may want to use a different tokenizer--the tokenize package documentation will explain more about the various options.

In the case of the first, you can use something like:

with open('all.txt', 'r') as data_file:
    finder = BigramCollocationFinder.from_words(word_tokenize(data_file.read())
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1  
Worked perfectly! Thanks! –  user1011332 Feb 1 '13 at 5:46

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