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I have just started using Natural Language Toolkit (NLTK) as a part of my Engineering college project. Can anybody please tell me how do I read an input paragraph text and

1) break it down into textual components i.e into number of sentences, number of words, number of characters and number of polysyllabic or complex words in the given paragraph


2) Also print the above determined values

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2 Answers 2

Where's the input paragraph coming from? File? Console? That's more of a python issue than NLTK.

For the rest, look at the nltk.tokenize module & nltk.probability.FreqDist.

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The input paragraph comes from both the console and a file. I need to use the number of sentences, words, characters and complex words to find the readability score of the input text. – ash Feb 16 '11 at 3:32
Once you have the text, nltk.tokenize.sent_tokenize will give you the number of sentences, nltk.tokenize.word_tokenize the number of words, and of course len(text) the number of characters. But I don't know of a way to determine if a word is complex or not - maybe count number of vowels? – Jacob Feb 16 '11 at 15:12
If the input could be either from the console or a file, you'll need separate methods for reading the file. – Adam_G May 20 '12 at 16:47

From a discussion on the NLTK google group:

import curses 
from curses.ascii import isdigit 
import nltk 
from nltk.corpus import cmudict

d = cmudict.dict() 

def nsyl(word): 
  return [len(list(y for y in x if isdigit(y[-1]))) for x in d[word.lower()]] 

This should be able to give you a syllable count for each word. Hope this helps.

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