Ridge & Lasso Regression MCQ 15 Questions
Time: 25 mins Intermediate

Ridge & Lasso Regression MCQ Test

Practice L1/L2 regularization to understand how Ridge and Lasso control overfitting, shrink coefficients and balance bias–variance.

Easy: 5 Q Medium: 6 Q Hard: 4 Q

Ridge, Lasso & Elastic Net: MCQ Practice

Regularization is a key tool to reduce overfitting in regression models. These MCQs focus on how L1 and L2 penalties affect coefficients, sparsity, and generalization performance.

Shrink to Generalize

Ridge shrinks all coefficients smoothly, while Lasso can drive some exactly to zero, performing feature selection.

Typical Regularization Workflow

Choose Model → Add L1/L2 Penalty → Tune Strength (α / C) via Cross‑Validation → Evaluate