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I am using nltk, so I want to create my own custom texts just like the default ones on nltk.books. However, I've just got up to the method like

my_text = ['This', 'is', 'my', 'text']

I'd like to discover any way to input my "text" as:

my_text = "This is my text, this is a nice way to input text."

Which method, python's or from nltk allows me to do this. And more important, how can I underestimate punctuation symbols?

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Could you clarify, what do you mean by underestimate punctation symbols ? –  quetzalcoatl Feb 25 '13 at 14:01
i think he meant to tokenize the input sentence –  alvas Feb 25 '13 at 14:03
Yeah, for example if I did: sentente = "This is my sentence, a sentence is a short expression" So, 'sentence,' and 'sentence' would be two different elements ... –  diegoaguilar Mar 2 '13 at 18:15

3 Answers 3

up vote -6 down vote accepted

Using the string.punctuation set, remove punctuation then split using the whitespace delimiter:

import string
x = "This is my text, this is a nice way to input text."
y = "".join([i for i in x if not in string.punctuation]).split(" ")
print y
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@pavel's answer will resolve problems like didn't -> did + n't –  alvas Jun 17 '13 at 7:03

If the former is too cumbersome to type, try this instead, which will give the exact same result:

>>> "This is a sample string.".split()
['This', 'is', 'a', 'sample', 'string.']


Note that using the above suggestion is recommended, as it will take care of punctuation for you. split() is a string method that can only split the string by predefined substrings.

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the OP wanted to remove the punctuation in the text. –  alvas Jun 18 '13 at 8:11
"This, my friend, I wonder: what about punctuation? Not only spaces are word separators!" –  Nikana Reklawyks Apr 8 at 4:08

This is actually on the main page of

>>> import nltk
>>> sentence = """At eight o'clock on Thursday morning
... Arthur didn't feel very good."""
>>> tokens = nltk.word_tokenize(sentence)
>>> tokens
['At', 'eight', "o'clock", 'on', 'Thursday', 'morning',
'Arthur', 'did', "n't", 'feel', 'very', 'good', '.']
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