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Lære Challenge: TF-IDF | Basic Text Models
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Challenge: TF-IDF

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You have a text corpus stored in corpus variable. Your task is to display the vector for the 'medical' unigram in a TF-IDF model with unigrams, bigrams, and trigrams. To do this:

  1. Import the TfidfVectorizer class to create a TF-IDF model.
  2. Instantiate the TfidfVectorizer class as tfidf_vectorizer and configure it to include unigrams, bigrams, and trigrams.
  3. Use the appropriate method of tfidf_vectorizer to generate a TF-IDF matrix from the 'Document' column in the corpus and store the result in tfidf_matrix.
  4. Convert tfidf_matrix to a dense array and create a DataFrame from it, setting the unique features (terms) as its columns. Store the result in the tfidf_matrix_df variable.
  5. Display the vector for 'medical' as an array.

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Challenge: TF-IDF

Opgave

Swipe to start coding

You have a text corpus stored in corpus variable. Your task is to display the vector for the 'medical' unigram in a TF-IDF model with unigrams, bigrams, and trigrams. To do this:

  1. Import the TfidfVectorizer class to create a TF-IDF model.
  2. Instantiate the TfidfVectorizer class as tfidf_vectorizer and configure it to include unigrams, bigrams, and trigrams.
  3. Use the appropriate method of tfidf_vectorizer to generate a TF-IDF matrix from the 'Document' column in the corpus and store the result in tfidf_matrix.
  4. Convert tfidf_matrix to a dense array and create a DataFrame from it, setting the unique features (terms) as its columns. Store the result in the tfidf_matrix_df variable.
  5. Display the vector for 'medical' as an array.

Løsning

Switch to desktopSkift til skrivebord for at øve i den virkelige verdenFortsæt der, hvor du er, med en af nedenstående muligheder
Var alt klart?

Hvordan kan vi forbedre det?

Tak for dine kommentarer!

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Awesome!

Completion rate improved to 3.45

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