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Lære Challenge: Encoding Categorical Variables | Section
Machine Learning Foundations with Scikit-Learn
Seksjon 1. Kapittel 13
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bookChallenge: Encoding Categorical Variables

Sveip for å vise menyen

To summarize the previous three chapters, here is a table showing what encoder you should use:

In this challenge, you work with the penguins dataset (no missing values). All categorical features — including the target 'species' — must be encoded for ML use.

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import pandas as pd df = pd.read_csv('https://codefinity-content-media.s3.eu-west-1.amazonaws.com/a65bbc96-309e-4df9-a790-a1eb8c815a1c/penguins_imputed.csv') print(df.head())
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Keep in mind that 'island' and 'sex' are categorical features and 'species' is a categorical target.

Oppgave

Sveip for å begynne å kode

You are given a DataFrame df. Encode all categorical columns:

  1. Import OneHotEncoder and LabelEncoder from sklearn.preprocessing.
  2. Split the data into X (features) and y (target).
  3. Create a OneHotEncoder and apply it to the 'island' and 'sex' columns in X.
  4. Replace those original columns with their encoded versions.
  5. Use LabelEncoder on the 'species' column to encode y.

Løsning

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Seksjon 1. Kapittel 13
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