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学ぶ Challenge: Clean Messy Reviews | Advanced Text Cleaning
Data Cleaning Techniques in Python
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bookChallenge: Clean Messy Reviews

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You are given a list of customer review texts in the variable reviews. The reviews may contain emojis, hashtags, repeated characters, noise words, punctuation, and informal expressions.

Your goal is to create a normalized version of each review using several NLP cleaning steps.

Follow these steps:

  1. Convert each review to lowercase.
  2. Remove emojis, hashtags, and mentions using a regular expression.
  3. Normalize repeated characters: any character repeated 3 or more times should be reduced to a single instance (cooooolcool).
  4. Tokenize each review using nltk.word_tokenize().
  5. Remove stopwords using the provided stopwords list.
  6. Apply stemming to the remaining tokens using PorterStemmer.
  7. Store each cleaned review (joined back with spaces) in a list named cleaned_reviews.

Make sure the variable cleaned_reviews is declared and contains all normalized reviews in the correct order.

解答

Switch to desktop実践的な練習のためにデスクトップに切り替える下記のオプションのいずれかを利用して、現在の場所から続行する
すべて明確でしたか?

どのように改善できますか?

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