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学ぶ Challenge: Evaluating the Model with Cross-Validation | Section
Machine Learning Foundations with Scikit-Learn
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bookChallenge: Evaluating the Model with Cross-Validation

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In this challenge, build and evaluate a model using both the train-test split and cross-validation on the preprocessed penguins dataset.

The following functions will be useful:

  • cross_val_score() from sklearn.model_selection;
  • train_test_split() from sklearn.model_selection;
  • .fit() and .score() methods of the model.
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You are given a preprocessed version of the penguin dataset, where the feature matrix X and the target variable y are ready for modeling. Your goal is to train and evaluate a KNeighborsClassifier model using both cross-validation and a train-test split.

  1. Initialize a KNeighborsClassifier object with n_neighbors=4.
  2. Use the cross_val_score() function with cv=3 to calculate cross-validation scores for the model.
  3. Split the data into training and test sets using the train_test_split() function.
  4. Fit the model on the training set using the .fit() method.
  5. Evaluate the model on the test set using the .score() method and print the result.

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?

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