Challenge: Feature Selection Pipeline
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 RΒ² score on the test set.
- Print:
- The RΒ² score (rounded to 3 decimals).
- The number of features selected.
Solution
Thanks for your feedback!
single
Ask AI
Ask AI
Ask anything or try one of the suggested questions to begin our chat
Can you explain that in more detail?
What are the main benefits or drawbacks?
Can you provide an example?
Awesome!
Completion rate improved to 8.33
Challenge: Feature Selection Pipeline
Swipe to show menu
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 RΒ² score on the test set.
- Print:
- The RΒ² score (rounded to 3 decimals).
- The number of features selected.
Solution
Thanks for your feedback!
single