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I have a text file. I need get a list of sentences.

How can this be implemented? There are a lot of subtleties, such as dot being used in abbreviations.

My old regexp works bad.

re.compile('(\. |^|!|\?)([A-Z][^;↑\.<>@\^&/\[\]]*(\.|!|\?) )',re.M)
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Define "sentence". –  martineau Jan 1 '11 at 22:28

5 Answers 5

up vote 54 down vote accepted

The Natural Language Toolkit (http://www.nltk.org/) has what you need. This group posting indicates this does it:

import nltk.data

tokenizer = nltk.data.load('tokenizers/punkt/english.pickle')
fp = open("test.txt")
data = fp.read()
print '\n-----\n'.join(tokenizer.tokenize(data))

(I haven't tried it!)

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+1 for using someone else's hard work –  John La Rooy - AKA gnibbler Jan 1 '11 at 22:45
Thanks, i hope this library will works with Russian language. –  Artyom Jan 1 '11 at 23:10
@Artyom: It probably can work with Russian -- see can NLTK/pyNLTK work “per language” (i.e. non-english), and how?. –  martineau Jan 2 '11 at 0:28
@Artyom: Here's direct link to the online documentation for nltk .tokenize.punkt.PunktSentenceTokenizer. –  martineau Jan 2 '11 at 0:32
You might have to execute nltk.download() first and download models -> punkt –  moose Jan 12 at 18:36

Here is a middle of the road approach that doesn't rely on any external libraries. I use list comprehension to exclude overlaps between abbreviations and terminators as well as to exclude overlaps between variations on terminations, for example: '.' vs. '."'

abbreviations = {'dr.': 'doctor', 'mr.': 'mister', 'bro.': 'brother', 'bro': 'brother', 'mrs.': 'mistress', 'ms.': 'miss', 'jr.': 'junior', 'sr.': 'senior',
                 'i.e.': 'for example', 'e.g.': 'for example', 'vs.': 'versus'}
terminators = ['.', '!', '?']
wrappers = ['"', "'", ')', ']', '}']

def find_sentences(paragraph):
   end = True
   sentences = []
   while end > -1:
       end = find_sentence_end(paragraph)
       if end > -1:
           paragraph = paragraph[:end]
   return sentences

def find_sentence_end(paragraph):
    [possible_endings, contraction_locations] = [[], []]
    contractions = abbreviations.keys()
    sentence_terminators = terminators + [terminator + wrapper for wrapper in wrappers for terminator in terminators]
    for sentence_terminator in sentence_terminators:
        t_indices = list(find_all(paragraph, sentence_terminator))
        possible_endings.extend(([] if not len(t_indices) else [[i, len(sentence_terminator)] for i in t_indices]))
    for contraction in contractions:
        c_indices = list(find_all(paragraph, contraction))
        contraction_locations.extend(([] if not len(c_indices) else [i + len(contraction) for i in c_indices]))
    possible_endings = [pe for pe in possible_endings if pe[0] + pe[1] not in contraction_locations]
    if len(paragraph) in [pe[0] + pe[1] for pe in possible_endings]:
        max_end_start = max([pe[0] for pe in possible_endings])
        possible_endings = [pe for pe in possible_endings if pe[0] != max_end_start]
    possible_endings = [pe[0] + pe[1] for pe in possible_endings if sum(pe) > len(paragraph) or (sum(pe) < len(paragraph) and paragraph[sum(pe)] == ' ')]
    end = (-1 if not len(possible_endings) else max(possible_endings))
    return end

def find_all(a_str, sub):
    start = 0
    while True:
        start = a_str.find(sub, start)
        if start == -1:
        yield start
        start += len(sub)

I used Karl's find_all function from this entry: Find all occurrences of a substring in Python

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For simple cases (where sentences are terminated normally), this should work:

import re
text = ''.join(open('somefile.txt').readlines())
sentences = re.split(r' *[\.\?!][\'"\)\]]* *', text)

The regex is *\. +, which matches a period surrounded by 0 or more spaces to the left and 1 or more to the right (to prevent something like the period in re.split being counted as a change in sentence).

Obviously, not the most robust solution, but it'll do fine in most cases. The only case this won't cover is abbreviations (perhaps run through the list of sentences and check that each string in sentences starts with a capital letter?)

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You can't think of a situation in English where a sentence doesn't end with a period? Imagine that! My response to that would be, "think again." (See what I did there?) –  Ned Batchelder Jan 1 '11 at 22:37
@Ned wow, can't believe I was that stupid. I must be drunk or something. –  Rafe Kettler Jan 1 '11 at 22:39
I am using Python 2.7.2 on Win 7 x86, and the regex in the above code gives me this error: SyntaxError: EOL while scanning string literal, pointing to the closing parenthesis (after text). Also, the regex you reference in your text does not exist in your code sample. –  Sabuncu Jul 23 '13 at 18:35
@Sabuncu see update –  Rafe Kettler Jul 26 '13 at 6:05


Hi! You could make a new tokenizer for Russian (and some other languages) using this function:

def russianTokenizer(text):
    result = text
    result = result.replace('.', ' . ')
    result = result.replace(' .  .  . ', ' ... ')
    result = result.replace(',', ' , ')
    result = result.replace(':', ' : ')
    result = result.replace(';', ' ; ')
    result = result.replace('!', ' ! ')
    result = result.replace('?', ' ? ')
    result = result.replace('\"', ' \" ')
    result = result.replace('\'', ' \' ')
    result = result.replace('(', ' ( ')
    result = result.replace(')', ' ) ') 
    result = result.replace('  ', ' ')
    result = result.replace('  ', ' ')
    result = result.replace('  ', ' ')
    result = result.replace('  ', ' ')
    result = result.strip()
    result = result.split(' ')
    return result

and then call it in this way:

text = 'вы выполняете поиск, используя Google SSL;'
tokens = russianTokenizer(text)

Good luck, Marilena.

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No doubt that NLTK is the most suitable for the purpose. But getting started with NLTK is quite painful (But once you install it - you just reap the rewards)

So here is simple re based code available at http://pythonicprose.blogspot.com/2009/09/python-split-paragraph-into-sentences.html

# split up a paragraph into sentences
# using regular expressions

def splitParagraphIntoSentences(paragraph):
    ''' break a paragraph into sentences
        and return a list '''
    import re
    # to split by multile characters

    #   regular expressions are easiest (and fastest)
    sentenceEnders = re.compile('[.!?]')
    sentenceList = sentenceEnders.split(paragraph)
    return sentenceList

if __name__ == '__main__':
    p = """This is a sentence.  This is an excited sentence! And do you think this is a question?"""

    sentences = splitParagraphIntoSentences(p)
    for s in sentences:
        print s.strip()

#   This is a sentence
#   This is an excited sentence

#   And do you think this is a question 
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Yey but this fails so easily, with: "Mr. Smith knows this is a sentence." –  tomaszbrue Feb 11 '14 at 10:15

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