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Aprende Challenge: Compare Ridge and Lasso on Real Data | Regularization Fundamentals
Feature Selection and Regularization Techniques

bookChallenge: Compare Ridge and Lasso on Real Data

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In this challenge, you will compare Ridge and Lasso regression on a real dataset to see how regularization strength affects model performance and coefficient magnitudes.

You will use the Diabetes dataset from scikit-learn, which is a standard regression dataset with 10 input features and a continuous target variable.

Your goals are:

  1. Load the dataset and split it into training and testing sets (70% / 30%).
  2. Fit two models:
    • A Ridge regression model with alpha=1.0
    • A Lasso regression model with alpha=0.1
  3. Evaluate both models using R² score and Mean Squared Error (MSE) on the test set.
  4. Compare their coefficients to observe how Lasso drives some coefficients toward zero (feature selection effect).
  5. Print the metrics and model coefficients for each model.

Solución

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Sección 1. Capítulo 4
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bookChallenge: Compare Ridge and Lasso on Real Data

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Tarea

Swipe to start coding

In this challenge, you will compare Ridge and Lasso regression on a real dataset to see how regularization strength affects model performance and coefficient magnitudes.

You will use the Diabetes dataset from scikit-learn, which is a standard regression dataset with 10 input features and a continuous target variable.

Your goals are:

  1. Load the dataset and split it into training and testing sets (70% / 30%).
  2. Fit two models:
    • A Ridge regression model with alpha=1.0
    • A Lasso regression model with alpha=0.1
  3. Evaluate both models using R² score and Mean Squared Error (MSE) on the test set.
  4. Compare their coefficients to observe how Lasso drives some coefficients toward zero (feature selection effect).
  5. Print the metrics and model coefficients for each model.

Solución

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¿Todo estuvo claro?

¿Cómo podemos mejorarlo?

¡Gracias por tus comentarios!

Sección 1. Capítulo 4
single

single

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