10

I am unable to understand the difference between the two. Though, I come to know that word_tokenize uses Penn-Treebank for tokenization purposes. But nothing on TweetTokenizer is available. For which sort of data should I be using TweetTokenizer over word_tokenize?

2 Answers 2

22

Well, both tokenizers almost work the same way, to split a given sentence into words. But you can think of TweetTokenizer as a subset of word_tokenize. TweetTokenizer keeps hashtags intact while word_tokenize doesn't.

I hope the below example will clear all your doubts...

from nltk.tokenize import TweetTokenizer
from nltk.tokenize import  word_tokenize
tt = TweetTokenizer()
tweet = "This is a cooool #dummysmiley: :-) :-P <3 and some arrows < > -> <-- @remy: This is waaaaayyyy too much for you!!!!!!"
print(tt.tokenize(tweet))
print(word_tokenize(tweet))

# output
# ['This', 'is', 'a', 'cooool', '#dummysmiley', ':', ':-)', ':-P', '<3', 'and', 'some', 'arrows', '<', '>', '->', '<--', '@remy', ':', 'This', 'is', 'waaaaayyyy', 'too', 'much', 'for', 'you', '!', '!', '!']
# ['This', 'is', 'a', 'cooool', '#', 'dummysmiley', ':', ':', '-', ')', ':', '-P', '<', '3', 'and', 'some', 'arrows', '<', '>', '-', '>', '<', '--', '@', 'remy', ':', 'This', 'is', 'waaaaayyyy', 'too', 'much', 'for', 'you', '!', '!', '!', '!', '!', '!']

You can see that word_tokenize has split #dummysmiley as '#' and 'dummysmiley', while TweetTokenizer didn't, as '#dummysmiley'. TweetTokenizer is built mainly for analyzing tweets. You can learn more about tokenizer from this link

1
  • 2
    In addition to this answer, aonther great tutorial on TweetTokenizer can also be found here and focuses on problems with tokenizing social media data.
    – edesz
    Commented Dec 18, 2020 at 15:49
1

It also seems to deal differently with abbreviated negations ("isn't" for example):

from nltk.tokenize import (TweetTokenizer,
                           wordpunct_tokenize,)

text = "The quick brown fox isn't jumping over the lazy dog, co-founder 
multi-word expression. #yes!"

standard_nltk = word_tokenize(text)
print(standard_nltk)
# output: ['The', 'quick', 'brown', 'fox', 'is', "n't", 'jumping', 'over', 
# 'the', 'lazy', 'dog', ',', 'co-founder', 'multi-word', 'expression', '.', 
# '#', 'yes', '!']

twitter_nltk = tweet_tokenizer.tokenize(text)
print(twitter_nltk)
# output: ['The', 'quick', 'brown', 'fox', "isn't", 'jumping', 'over', 
# 'the', 'lazy', 'dog', ',', 'co-founder', 'multi-word', 'expression', '.', 
# '#yes', '!']

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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