Get startedGet started for free

Removing punctuation

Now that you've removed stop words from the feedback text, it's time to handle punctuation. The tokens you obtained in the previous exercise still contain punctuation marks, which are often unnecessary when categorizing feedback.

Your task is to remove punctuation from the list of tokens provided, helping to clean up the data even further.

This exercise is part of the course

Natural Language Processing (NLP) in Python

View Course

Exercise instructions

  • Clean the filtered_tokens list by removing all punctuation.

Hands-on interactive exercise

Have a go at this exercise by completing this sample code.

import string

filtered_tokens = ['reached', 'support', 'got', 'helpful', 'response', 'within', 'minutes', '!', '!', '!', '#', 'impressed']

# Remove punctuation
clean_tokens = [____ for word in filtered_tokens if ____ not in ____.____]

print(clean_tokens)
Edit and Run Code