Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I'm trying to extract all the proper nouns from a tagged paragraph. What I did in my code is that first I've extracted the paragraph separately and then I have checked whether there is any proper noun in it. But the problem is, I haven't been able to extract the proper noun. My code doesn't even go inside the loop where it checks for a specific tag.

My code:

def noun(sen):
if (sen.split('/')[1].lower().startswith('np')&sen.split('/')[1].lower().endswith('np')):
return m

import nltk
rp = open("tesu.txt", 'r')
text =
list = []
sentences = splitParagraph(text)
for s in sentences:

Sample input from 'tesu.txt'

Several/ap defendants/nns in/in the/at Summerdale/np police/nn burglary/nn trial/nn      made/vbd statements/nns indicating/vbg their/pp$ guilt/nn at/in the/at.... 

Bellows/np made/vbd the/at disclosure/nn when/wrb he/pps asked/vbd Judge/nn-tl Parsons/np to/to grant/vb his/pp$ client/nn ,/, Alan/np Clements/np ,/, 30/cd ,/, a/at separate/jj trial/nn ./.

How can I extract all the tagged proper nouns from a paragraph?

share|improve this question
Please show us an example tagged paragraph, otherwise we have no way to tell if your code is doing the right thing. – DNA Feb 23 '12 at 9:13
@DNA i have given a sample input..please check thanks – user1052462 Feb 23 '12 at 10:16
up vote 1 down vote accepted

Thanks for the data sample.

You need to:

  • read each paragraph/line
  • split the line by whitespace to extract each tagged word, e.g. Summerdale/np
  • split the word by / to see if it is tagged np
  • if so, add the other half of the split (the actual word) to your noun list

So something like the following (based on Bogdan's answer, thanks!)

def noun(word):
    nouns = []
    for word in sentence.split():
      word, tag = word.split('/')
      if (tag.lower() == 'np'):
    return nouns

if __name__ == '__main__':
    nouns = []
    with open('tesu.txt', 'r') as file_p:
         for sentence in'\n\n'): 
              result = noun(sentence)
              if result:
    print nouns

which for your example data, produces:

['Summerdale', 'Bellows', 'Parsons', 'Alan', 'Clements']

Update: In fact, you can shorten the whole thing down to this:

nouns = []
with open('tesu.txt', 'r') as file_p:
  for word in 
    word, tag = word.split('/')
    if (tag.lower() == 'np'):
print nouns

if you don't care which paragraph the nouns come from.

You could also get rid of the .lower() if the tags are always lowercase as they are in your example.

share|improve this answer

You should work on your code style. There are a lot of unnecessary loops in there I think. You also have a unnecessary method in splitParagraph that basically only calls the already existing split method, and you import re but never use it afterwards. Also ident you code, it's very hard to follow this way. You should provide a sample of the input from "tesu.txt" so we can help you more. Anyway all of your code there could be compact into:

 def noun(sentence);
    word, tag = sentence.split('/')
    if (tag.lower().startswith('np') and tag.lower().endswith('np')):
         return word
    return False

if __name__ == '__main__'
    words = []
    with open('tesu.txt', 'r') as file_p:
         for sentence in'\n\n'): 
              result = noun(sentence)
              if result:
share|improve this answer
thanks a lot..for your help. but if i try with your code it gives the error word, tag = sentence.split('/') ValueError: too many values to unpack..and i have given sample input above – user1052462 Feb 23 '12 at 10:15

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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