Challenge: Feature Selection Pipeline
Tarea
Swipe to start coding
You will build a feature selection + regression pipeline to predict disease progression using the Diabetes dataset. Your goal is to combine preprocessing, feature selection, and model training in one efficient workflow.
Follow these steps:
- Load the dataset using
load_diabetes(). - Split it into train/test sets (
test_size=0.3,random_state=42). - Build a pipeline with:
StandardScaler().SelectFromModel(Lasso(alpha=0.01, random_state=42))for automatic feature selection.LinearRegression()as the final model.
- Fit the pipeline and evaluate it using R² score on the test set.
- Print:
- The R² score (rounded to 3 decimals).
- The number of features selected.
Solución
¿Todo estuvo claro?
¡Gracias por tus comentarios!
Sección 2. Capítulo 4
single
Pregunte a AI
Pregunte a AI
Pregunte lo que quiera o pruebe una de las preguntas sugeridas para comenzar nuestra charla
Awesome!
Completion rate improved to 8.33
Challenge: Feature Selection Pipeline
Desliza para mostrar el menú
Tarea
Swipe to start coding
You will build a feature selection + regression pipeline to predict disease progression using the Diabetes dataset. Your goal is to combine preprocessing, feature selection, and model training in one efficient workflow.
Follow these steps:
- Load the dataset using
load_diabetes(). - Split it into train/test sets (
test_size=0.3,random_state=42). - Build a pipeline with:
StandardScaler().SelectFromModel(Lasso(alpha=0.01, random_state=42))for automatic feature selection.LinearRegression()as the final model.
- Fit the pipeline and evaluate it using R² score on the test set.
- Print:
- The R² score (rounded to 3 decimals).
- The number of features selected.
Solución
¿Todo estuvo claro?
¡Gracias por tus comentarios!
Sección 2. Capítulo 4
single