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Title is pretty self-explanatory: in my language most three-or-less letter words don't add value to the text, except for the word "no" that may change the meaning of a sentence completely.

I can drop all words with 3 or less letters doing the following:

shortword = re.compile(r'\W*\b\w{1,3}\b')
df.text=df.text.apply(lambda x: shortword.sub('', x) )

I just need to input some conditional statement to leave the word "no" out, but I'm not sure how to proceed.

Any ideas?

  • Your regexp matches words with 3 or less letters, not 2 or less. – Barmar Feb 12 at 19:23
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You may use

r'\W*\b(?!no)\w{1,2}\b'
       ^^^^^^

Details

  • \W* - 0+ non-word chars
  • \b - a word boundary
  • (?!no) - immediately to the right of the current location, there cannot be no char sequence
  • \w{1,2} - 1 or 2 word chars (if you need to only match letter words, use [^\W\d_]{1,2} instead)
  • \b - a word boundary

Also, you may use df['text'] = df['text'].str.replace(r'\W*\b(?!no)\w{1,2}\b', '') to perform a search and replace operation on a single column.

  • 1
    working demo – Barmar Feb 12 at 19:25
  • 1
    Thank you very much! worked exactly as intended. I should improve my regex skills, as it seems – Juan C Feb 12 at 19:35

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